trustgraph/trustgraph-cli/trustgraph/cli/show_explain_trace.py

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"""
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
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Show full explainability trace for a GraphRAG or Agent session.
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
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Given a question/session URI, displays the complete trace:
- GraphRAG: Question -> Exploration -> Focus (edge selection) -> Synthesis (answer)
- Agent: Session -> Iteration(s) (thought/action/observation) -> Final Answer
The tool auto-detects the trace type based on rdf:type.
Examples:
tg-show-explain-trace -U trustgraph -C default "urn:trustgraph:question:abc123"
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
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tg-show-explain-trace -U trustgraph -C default "urn:trustgraph:agent:abc123"
tg-show-explain-trace --max-answer 1000 "urn:trustgraph:question:abc123"
tg-show-explain-trace --show-provenance "urn:trustgraph:question:abc123"
"""
import argparse
import json
import os
import sys
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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from trustgraph.api import (
Api,
ExplainabilityClient,
Question,
Exploration,
Focus,
Synthesis,
Analysis,
Split Analysis into Analysis+ToolUse and Observation, add message_id (#747) Refactor agent provenance so that the decision (thought + tool selection) and the result (observation) are separate DAG entities: Question ← Analysis+ToolUse ← Observation ← ... ← Conclusion Analysis gains tg:ToolUse as a mixin RDF type and is emitted before tool execution via an on_action callback in react(). This ensures sub-traces (e.g. GraphRAG) appear after their parent Analysis in the streaming event order. Observation becomes a standalone prov:Entity with tg:Observation type, emitted after tool execution. The linear DAG chain runs through Observation — subsequent iterations and the Conclusion derive from it, not from the Analysis. message_id is populated on streaming AgentResponse for thought and observation chunks, using the provenance URI of the entity being built. This lets clients group streamed chunks by entity. Wire changes: - provenance/agent.py: Add ToolUse type, new agent_observation_triples(), remove observation from iteration - agent_manager.py: Add on_action callback between reason() and tool execution - orchestrator/pattern_base.py: Split emit, wire message_id, chain through observation URIs - orchestrator/react_pattern.py: Emit Analysis via on_action before tool runs - agent/react/service.py: Same for non-orchestrator path - api/explainability.py: New Observation class, updated dispatch and chain walker - api/types.py: Add message_id to AgentThought/AgentObservation - cli: Render Observation separately, [analysis: tool] labels
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Observation,
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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Conclusion,
Decomposition,
Finding,
Plan,
StepResult,
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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)
default_url = os.getenv("TRUSTGRAPH_URL", 'http://localhost:8088/')
default_token = os.getenv("TRUSTGRAPH_TOKEN", None)
default_user = 'trustgraph'
default_collection = 'default'
# Graphs
RETRIEVAL_GRAPH = "urn:graph:retrieval"
SOURCE_GRAPH = "urn:graph:source"
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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# Provenance predicates for edge tracing
TG = "https://trustgraph.ai/ns/"
TG_CONTAINS = TG + "contains"
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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PROV = "http://www.w3.org/ns/prov#"
PROV_WAS_DERIVED_FROM = PROV + "wasDerivedFrom"
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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def trace_edge_provenance(flow, user, collection, edge, label_cache, explain_client):
"""
Trace an edge back to its source document via reification.
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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Args:
flow: SocketFlowInstance
user: User identifier
collection: Collection identifier
edge: Dict with s, p, o keys
label_cache: Dict for caching labels
explain_client: ExplainabilityClient for label resolution
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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Returns:
List of provenance chains, each chain is list of {uri, label}
"""
edge_s = edge.get("s", "")
edge_p = edge.get("p", "")
edge_o = edge.get("o", "")
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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# Build quoted triple for lookup
def build_term(val):
if isinstance(val, str) and (val.startswith("http") or val.startswith("urn:")):
return {"t": "i", "i": val}
return {"t": "l", "v": str(val)}
quoted_triple = {
"t": "t",
"tr": {
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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"s": build_term(edge_s),
"p": build_term(edge_p),
"o": build_term(edge_o),
}
}
# Query: ?subgraph tg:contains <<edge>>
try:
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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results = flow.triples_query(
p=TG_CONTAINS,
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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o=quoted_triple,
g=SOURCE_GRAPH,
user=user,
collection=collection,
limit=10
)
except Exception:
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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return []
# Extract statement URIs
stmt_uris = []
for t in results:
s_term = t.get("s", {})
s_val = s_term.get("i") or s_term.get("v", "")
if s_val:
stmt_uris.append(s_val)
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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# For each statement, trace wasDerivedFrom chain
provenance_chains = []
for stmt_uri in stmt_uris:
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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chain = trace_provenance_chain(flow, user, collection, stmt_uri, label_cache, explain_client)
if chain:
provenance_chains.append(chain)
return provenance_chains
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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def trace_provenance_chain(flow, user, collection, start_uri, label_cache, explain_client, max_depth=10):
"""Trace prov:wasDerivedFrom chain from start_uri to root."""
chain = []
current = start_uri
for _ in range(max_depth):
if not current:
break
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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# Get label
if current in label_cache:
label = label_cache[current]
else:
label = explain_client.resolve_label(current, user, collection)
label_cache[current] = label
chain.append({"uri": current, "label": label})
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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# Get parent via wasDerivedFrom
try:
results = flow.triples_query(
s=current,
p=PROV_WAS_DERIVED_FROM,
g=SOURCE_GRAPH,
user=user,
collection=collection,
limit=1
)
except Exception:
break
parent = None
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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for t in results:
o_term = t.get("o", {})
parent = o_term.get("i") or o_term.get("v", "")
break
if not parent or parent == current:
break
current = parent
return chain
def format_provenance_chain(chain):
"""Format a provenance chain for display."""
if not chain:
return ""
labels = [item.get("label", item.get("uri", "?")) for item in chain]
return " -> ".join(labels)
def print_graphrag_text(trace, explain_client, flow, user, collection, api=None, show_provenance=False):
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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"""Print GraphRAG trace in text format."""
question = trace.get("question")
print(f"=== GraphRAG Session: {question.uri if question else 'Unknown'} ===")
print()
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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if question:
print(f"Question: {question.query}")
if question.timestamp:
print(f"Time: {question.timestamp}")
print()
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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# Exploration
print("--- Exploration ---")
exploration = trace.get("exploration")
if exploration:
print(f"Retrieved {exploration.edge_count} edges from knowledge graph")
else:
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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print("No exploration data found")
print()
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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# Focus
print("--- Focus (Edge Selection) ---")
focus = trace.get("focus")
if focus:
edges = focus.edge_selections
print(f"Selected {len(edges)} edges:")
print()
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
label_cache = {}
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
for i, edge_sel in enumerate(edges, 1):
if edge_sel.edge:
s_label, p_label, o_label = explain_client.resolve_edge_labels(
edge_sel.edge, user, collection
)
print(f" {i}. ({s_label}, {p_label}, {o_label})")
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
if edge_sel.reasoning:
r_short = edge_sel.reasoning[:100] + "..." if len(edge_sel.reasoning) > 100 else edge_sel.reasoning
print(f" Reasoning: {r_short}")
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
if show_provenance and edge_sel.edge:
provenance = trace_edge_provenance(
flow, user, collection, edge_sel.edge,
label_cache, explain_client
)
for chain in provenance:
chain_str = format_provenance_chain(chain)
if chain_str:
print(f" Source: {chain_str}")
# Show content ID for the chunk (second item in chain)
for item in chain:
uri = item.get("uri", "")
if uri.startswith("urn:chunk:"):
print(f" Content: {uri}")
break
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
print()
else:
print("No focus data found")
print()
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
# Synthesis
print("--- Synthesis ---")
synthesis = trace.get("synthesis")
if synthesis:
content = ""
if synthesis.document and api:
content = explain_client.fetch_document_content(
synthesis.document, api, user
)
if content:
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
print("Answer:")
for line in content.split("\n"):
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
print(f" {line}")
elif synthesis.document:
print(f"Document: {synthesis.document}")
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
else:
print("No answer content found")
else:
print("No synthesis data found")
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
def print_docrag_text(trace, explain_client, api, user):
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
"""Print DocRAG trace in text format."""
question = trace.get("question")
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
print(f"=== DocRAG Session: {question.uri if question else 'Unknown'} ===")
print()
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
if question:
print(f"Question: {question.query}")
if question.timestamp:
print(f"Time: {question.timestamp}")
print()
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
# Grounding
grounding = trace.get("grounding")
if grounding:
print("--- Grounding ---")
print(f"Concepts: {', '.join(grounding.concepts)}")
print()
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
# Exploration
print("--- Exploration ---")
exploration = trace.get("exploration")
if exploration:
print(f"Retrieved {exploration.chunk_count} chunks from document store")
else:
print("No exploration data found")
print()
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
# Synthesis (no Focus step for DocRAG)
print("--- Synthesis ---")
synthesis = trace.get("synthesis")
if synthesis:
content = ""
if synthesis.document and api:
content = explain_client.fetch_document_content(
synthesis.document, api, user
)
if content:
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
print("Answer:")
for line in content.split("\n"):
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
print(f" {line}")
elif synthesis.document:
print(f"Document: {synthesis.document}")
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
else:
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
print("No answer content found")
else:
print("No synthesis data found")
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
def _print_document_content(explain_client, api, user, document_uri, label="Answer"):
"""Fetch and print document content, or fall back to URI."""
if not document_uri:
return
content = ""
if api:
content = explain_client.fetch_document_content(
document_uri, api, user
)
if content:
print(f"{label}:")
for line in content.split("\n"):
print(f" {line}")
else:
print(f"Document: {document_uri}")
def print_agent_text(trace, explain_client, api, user):
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
"""Print Agent trace in text format."""
question = trace.get("question")
print(f"=== Agent Session: {question.uri if question else 'Unknown'} ===")
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
print()
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
if question:
print(f"Question: {question.query}")
if question.timestamp:
print(f"Time: {question.timestamp}")
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
print()
# Walk the steps list which contains all entity types
steps = trace.get("steps", [])
for step in steps:
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
if isinstance(step, Decomposition):
print("--- Decomposition ---")
print(f"Decomposed into {len(step.goals)} research threads:")
for i, goal in enumerate(step.goals):
print(f" {i}: {goal}")
print()
elif isinstance(step, Finding):
print("--- Finding ---")
print(f"Goal: {step.goal}")
_print_document_content(
explain_client, api, user, step.document, "Result",
)
print()
elif isinstance(step, Plan):
print("--- Plan ---")
print(f"Plan with {len(step.steps)} steps:")
for i, s in enumerate(step.steps):
print(f" {i}: {s}")
print()
elif isinstance(step, StepResult):
print("--- Step Result ---")
print(f"Step: {step.step}")
_print_document_content(
explain_client, api, user, step.document, "Result",
)
print()
elif isinstance(step, Analysis):
print("--- Analysis ---")
print(f" Action: {step.action or 'N/A'}")
if step.arguments:
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
try:
args_obj = json.loads(step.arguments)
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
args_str = json.dumps(args_obj, indent=4)
print(f" Arguments:")
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
for line in args_str.split('\n'):
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
print(f" {line}")
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
except Exception:
print(f" Arguments: {step.arguments}")
Split Analysis into Analysis+ToolUse and Observation, add message_id (#747) Refactor agent provenance so that the decision (thought + tool selection) and the result (observation) are separate DAG entities: Question ← Analysis+ToolUse ← Observation ← ... ← Conclusion Analysis gains tg:ToolUse as a mixin RDF type and is emitted before tool execution via an on_action callback in react(). This ensures sub-traces (e.g. GraphRAG) appear after their parent Analysis in the streaming event order. Observation becomes a standalone prov:Entity with tg:Observation type, emitted after tool execution. The linear DAG chain runs through Observation — subsequent iterations and the Conclusion derive from it, not from the Analysis. message_id is populated on streaming AgentResponse for thought and observation chunks, using the provenance URI of the entity being built. This lets clients group streamed chunks by entity. Wire changes: - provenance/agent.py: Add ToolUse type, new agent_observation_triples(), remove observation from iteration - agent_manager.py: Add on_action callback between reason() and tool execution - orchestrator/pattern_base.py: Split emit, wire message_id, chain through observation URIs - orchestrator/react_pattern.py: Emit Analysis via on_action before tool runs - agent/react/service.py: Same for non-orchestrator path - api/explainability.py: New Observation class, updated dispatch and chain walker - api/types.py: Add message_id to AgentThought/AgentObservation - cli: Render Observation separately, [analysis: tool] labels
2026-03-31 17:51:22 +01:00
print()
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
Split Analysis into Analysis+ToolUse and Observation, add message_id (#747) Refactor agent provenance so that the decision (thought + tool selection) and the result (observation) are separate DAG entities: Question ← Analysis+ToolUse ← Observation ← ... ← Conclusion Analysis gains tg:ToolUse as a mixin RDF type and is emitted before tool execution via an on_action callback in react(). This ensures sub-traces (e.g. GraphRAG) appear after their parent Analysis in the streaming event order. Observation becomes a standalone prov:Entity with tg:Observation type, emitted after tool execution. The linear DAG chain runs through Observation — subsequent iterations and the Conclusion derive from it, not from the Analysis. message_id is populated on streaming AgentResponse for thought and observation chunks, using the provenance URI of the entity being built. This lets clients group streamed chunks by entity. Wire changes: - provenance/agent.py: Add ToolUse type, new agent_observation_triples(), remove observation from iteration - agent_manager.py: Add on_action callback between reason() and tool execution - orchestrator/pattern_base.py: Split emit, wire message_id, chain through observation URIs - orchestrator/react_pattern.py: Emit Analysis via on_action before tool runs - agent/react/service.py: Same for non-orchestrator path - api/explainability.py: New Observation class, updated dispatch and chain walker - api/types.py: Add message_id to AgentThought/AgentObservation - cli: Render Observation separately, [analysis: tool] labels
2026-03-31 17:51:22 +01:00
elif isinstance(step, Observation):
print("--- Observation ---")
_print_document_content(
explain_client, api, user, step.document, "Content",
)
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
print()
elif isinstance(step, Synthesis):
print("--- Synthesis ---")
_print_document_content(
explain_client, api, user, step.document, "Answer",
)
print()
elif isinstance(step, Conclusion):
print("--- Conclusion ---")
_print_document_content(
explain_client, api, user, step.document, "Answer",
)
print()
if not steps:
print("No trace steps recorded")
print()
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
def trace_to_dict(trace, trace_type):
"""Convert trace entities to JSON-serializable dict."""
if trace_type == "agent":
question = trace.get("question")
def _step_to_dict(step):
if isinstance(step, Decomposition):
return {
"type": "decomposition",
"id": step.uri,
"goals": step.goals,
}
elif isinstance(step, Finding):
return {
"type": "finding",
"id": step.uri,
"goal": step.goal,
"document": step.document,
}
elif isinstance(step, Plan):
return {
"type": "plan",
"id": step.uri,
"steps": step.steps,
}
elif isinstance(step, StepResult):
return {
"type": "step-result",
"id": step.uri,
"step": step.step,
"document": step.document,
}
Split Analysis into Analysis+ToolUse and Observation, add message_id (#747) Refactor agent provenance so that the decision (thought + tool selection) and the result (observation) are separate DAG entities: Question ← Analysis+ToolUse ← Observation ← ... ← Conclusion Analysis gains tg:ToolUse as a mixin RDF type and is emitted before tool execution via an on_action callback in react(). This ensures sub-traces (e.g. GraphRAG) appear after their parent Analysis in the streaming event order. Observation becomes a standalone prov:Entity with tg:Observation type, emitted after tool execution. The linear DAG chain runs through Observation — subsequent iterations and the Conclusion derive from it, not from the Analysis. message_id is populated on streaming AgentResponse for thought and observation chunks, using the provenance URI of the entity being built. This lets clients group streamed chunks by entity. Wire changes: - provenance/agent.py: Add ToolUse type, new agent_observation_triples(), remove observation from iteration - agent_manager.py: Add on_action callback between reason() and tool execution - orchestrator/pattern_base.py: Split emit, wire message_id, chain through observation URIs - orchestrator/react_pattern.py: Emit Analysis via on_action before tool runs - agent/react/service.py: Same for non-orchestrator path - api/explainability.py: New Observation class, updated dispatch and chain walker - api/types.py: Add message_id to AgentThought/AgentObservation - cli: Render Observation separately, [analysis: tool] labels
2026-03-31 17:51:22 +01:00
elif isinstance(step, Observation):
return {
"type": "observation",
"id": step.uri,
"document": step.document,
}
elif isinstance(step, Analysis):
return {
"type": "analysis",
"id": step.uri,
"action": step.action,
"arguments": step.arguments,
"thought": step.thought,
}
elif isinstance(step, Synthesis):
return {
"type": "synthesis",
"id": step.uri,
"document": step.document,
}
elif isinstance(step, Conclusion):
return {
"type": "conclusion",
"id": step.uri,
"document": step.document,
}
return {"type": step.entity_type, "id": step.uri}
steps = trace.get("steps", [])
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
return {
"type": "agent",
"session_id": question.uri if question else None,
"question": question.query if question else None,
"time": question.timestamp if question else None,
"steps": [_step_to_dict(s) for s in steps],
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
}
elif trace_type == "docrag":
question = trace.get("question")
grounding = trace.get("grounding")
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
exploration = trace.get("exploration")
synthesis = trace.get("synthesis")
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
return {
"type": "docrag",
"question_id": question.uri if question else None,
"question": question.query if question else None,
"time": question.timestamp if question else None,
"grounding": {
"id": grounding.uri,
"concepts": grounding.concepts,
} if grounding else None,
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
"exploration": {
"id": exploration.uri,
"chunk_count": exploration.chunk_count,
} if exploration else None,
"synthesis": {
"id": synthesis.uri,
"document": synthesis.document,
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
} if synthesis else None,
}
else:
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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# graphrag
question = trace.get("question")
exploration = trace.get("exploration")
focus = trace.get("focus")
synthesis = trace.get("synthesis")
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
return {
"type": "graphrag",
"question_id": question.uri if question else None,
"question": question.query if question else None,
"time": question.timestamp if question else None,
"exploration": {
"id": exploration.uri,
"edge_count": exploration.edge_count,
} if exploration else None,
"focus": {
"id": focus.uri,
"selected_edges": [
{
"edge": edge_sel.edge,
"reasoning": edge_sel.reasoning,
}
for edge_sel in focus.edge_selections
],
} if focus else None,
"synthesis": {
"id": synthesis.uri,
"document": synthesis.document,
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
} if synthesis else None,
}
def main():
parser = argparse.ArgumentParser(
prog='tg-show-explain-trace',
description=__doc__,
formatter_class=argparse.RawDescriptionHelpFormatter,
)
parser.add_argument(
'question_id',
help='Question/session URI to show trace for',
)
parser.add_argument(
'-u', '--api-url',
default=default_url,
help=f'API URL (default: {default_url})',
)
parser.add_argument(
'-t', '--token',
default=default_token,
help='Auth token (default: $TRUSTGRAPH_TOKEN)',
)
parser.add_argument(
'-U', '--user',
default=default_user,
help=f'User ID (default: {default_user})',
)
parser.add_argument(
'-C', '--collection',
default=default_collection,
help=f'Collection (default: {default_collection})',
)
parser.add_argument(
'-f', '--flow-id',
default='default',
help='Flow ID (default: default)',
)
parser.add_argument(
'--max-answer',
type=int,
default=500,
help='Max chars for answer display (default: 500)',
)
parser.add_argument(
'--show-provenance',
action='store_true',
help='Also trace edges back to source documents',
)
parser.add_argument(
'--format',
choices=['text', 'json'],
default='text',
help='Output format: text (default), json',
)
args = parser.parse_args()
try:
api = Api(args.api_url, token=args.token)
socket = api.socket()
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
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flow = socket.flow(args.flow_id)
explain_client = ExplainabilityClient(flow)
try:
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
# Detect trace type
trace_type = explain_client.detect_session_type(
args.question_id,
graph=RETRIEVAL_GRAPH,
user=args.user,
collection=args.collection,
)
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
if trace_type == "agent":
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
# Fetch and display agent trace
trace = explain_client.fetch_agent_trace(
args.question_id,
graph=RETRIEVAL_GRAPH,
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
user=args.user,
collection=args.collection,
api=api,
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
max_content=args.max_answer,
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
)
if args.format == 'json':
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
print(json.dumps(trace_to_dict(trace, "agent"), indent=2))
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
else:
print_agent_text(trace, explain_client, api, args.user)
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
elif trace_type == "docrag":
# Fetch and display DocRAG trace
trace = explain_client.fetch_docrag_trace(
args.question_id,
graph=RETRIEVAL_GRAPH,
user=args.user,
collection=args.collection,
api=api,
max_content=args.max_answer,
)
if args.format == 'json':
print(json.dumps(trace_to_dict(trace, "docrag"), indent=2))
else:
print_docrag_text(trace, explain_client, api, args.user)
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
else:
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
# Fetch and display GraphRAG trace
trace = explain_client.fetch_graphrag_trace(
args.question_id,
graph=RETRIEVAL_GRAPH,
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
user=args.user,
collection=args.collection,
api=api,
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
max_content=args.max_answer,
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
)
if args.format == 'json':
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
print(json.dumps(trace_to_dict(trace, "graphrag"), indent=2))
Adding explainability to the ReACT agent (#689) * Added tech spec * Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Agent traces record: - Session start with query and timestamp - Each iteration's thought, action, arguments, and observation - Final answer with derivation chain Changes: - Add session_id and collection fields to AgentRequest schema - Add agent predicates (TG_THOUGHT, TG_ACTION, etc.) to namespaces - Create agent provenance triple generators in provenance/agent.py - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render agent traces alongside GraphRAG * Updated explainability taxonomy: GraphRAG: tg:Question → tg:Exploration → tg:Focus → tg:Synthesis Agent: tg:Question → tg:Analysis(s) → tg:Conclusion All entities also have their PROV-O type (prov:Activity or prov:Entity). Updated commit message: Add provenance recording to React agent loop Enables agent sessions to be traced and debugged using the same explainability infrastructure as GraphRAG. Entity types follow human reasoning patterns: - tg:Question - the user's query (shared with GraphRAG) - tg:Analysis - each think/act/observe cycle - tg:Conclusion - the final answer Also adds explicit TG types to GraphRAG entities: - tg:Question, tg:Exploration, tg:Focus, tg:Synthesis All types retain their PROV-O base types (prov:Activity, prov:Entity). Changes: - Add session_id and collection fields to AgentRequest schema - Add explainability entity types to namespaces.py - Create agent provenance triple generators - Register explainability producer in agent service - Emit provenance triples during agent execution - Update CLI tools to detect and render both trace types * Document RAG explainability is now complete. Here's a summary of the changes made: Schema Changes: - trustgraph-base/trustgraph/schema/services/retrieval.py: Added explain_id and explain_graph fields to DocumentRagResponse - trustgraph-base/trustgraph/messaging/translators/retrieval.py: Updated translator to handle explainability fields Provenance Changes: - trustgraph-base/trustgraph/provenance/namespaces.py: Added TG_CHUNK_COUNT and TG_SELECTED_CHUNK predicates - trustgraph-base/trustgraph/provenance/uris.py: Added docrag_question_uri, docrag_exploration_uri, docrag_synthesis_uri generators - trustgraph-base/trustgraph/provenance/triples.py: Added docrag_question_triples, docrag_exploration_triples, docrag_synthesis_triples builders - trustgraph-base/trustgraph/provenance/__init__.py: Exported all new Document RAG functions and predicates Service Changes: - trustgraph-flow/trustgraph/retrieval/document_rag/document_rag.py: Added explainability callback support and triple emission at each phase (Question → Exploration → Synthesis) - trustgraph-flow/trustgraph/retrieval/document_rag/rag.py: Registered explainability producer and wired up the callback Documentation: - docs/tech-specs/agent-explainability.md: Added Document RAG entity types and provenance model documentation Document RAG Provenance Model: Question (urn:trustgraph:docrag:{uuid}) │ │ tg:query, prov:startedAtTime │ rdf:type = prov:Activity, tg:Question │ ↓ prov:wasGeneratedBy │ Exploration (urn:trustgraph:docrag:{uuid}/exploration) │ │ tg:chunkCount, tg:selectedChunk (multiple) │ rdf:type = prov:Entity, tg:Exploration │ ↓ prov:wasDerivedFrom │ Synthesis (urn:trustgraph:docrag:{uuid}/synthesis) │ │ tg:content = "The answer..." │ rdf:type = prov:Entity, tg:Synthesis * Specific subtype that makes the retrieval mechanism immediately obvious: System: GraphRAG TG Types on Question: tg:Question, tg:GraphRagQuestion URI Pattern: urn:trustgraph:question:{uuid} ──────────────────────────────────────── System: Document RAG TG Types on Question: tg:Question, tg:DocRagQuestion URI Pattern: urn:trustgraph:docrag:{uuid} ──────────────────────────────────────── System: Agent TG Types on Question: tg:Question, tg:AgentQuestion URI Pattern: urn:trustgraph:agent:{uuid} Files modified: - trustgraph-base/trustgraph/provenance/namespaces.py - Added TG_GRAPH_RAG_QUESTION, TG_DOC_RAG_QUESTION, TG_AGENT_QUESTION - trustgraph-base/trustgraph/provenance/triples.py - Added subtype to question_triples and docrag_question_triples - trustgraph-base/trustgraph/provenance/agent.py - Added subtype to agent_session_triples - trustgraph-base/trustgraph/provenance/__init__.py - Exported new types - docs/tech-specs/agent-explainability.md - Documented the subtypes This allows: - Query all questions: ?q rdf:type tg:Question - Query only GraphRAG: ?q rdf:type tg:GraphRagQuestion - Query only Document RAG: ?q rdf:type tg:DocRagQuestion - Query only Agent: ?q rdf:type tg:AgentQuestion * Fixed tests
2026-03-11 15:28:15 +00:00
else:
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
print_graphrag_text(
trace, explain_client, flow,
args.user, args.collection,
api=api,
Add unified explainability support and librarian storage for (#693) Add unified explainability support and librarian storage for all retrieval engines Implements consistent explainability/provenance tracking across GraphRAG, DocumentRAG, and Agent retrieval engines. All large content (answers, thoughts, observations) is now stored in librarian rather than as inline literals in the knowledge graph. Explainability API: - New explainability.py module with entity classes (Question, Exploration, Focus, Synthesis, Analysis, Conclusion) and ExplainabilityClient - Quiescence-based eventual consistency handling for trace fetching - Content fetching from librarian with retry logic CLI updates: - tg-invoke-graph-rag -x/--explainable flag returns explain_id - tg-invoke-document-rag -x/--explainable flag returns explain_id - tg-invoke-agent -x/--explainable flag returns explain_id - tg-list-explain-traces uses new explainability API - tg-show-explain-trace handles all three trace types Agent provenance: - Records session, iterations (think/act/observe), and conclusion - Stores thoughts and observations in librarian with document references - New predicates: tg:thoughtDocument, tg:observationDocument DocumentRAG provenance: - Records question, exploration (chunk retrieval), and synthesis - Stores answers in librarian with document references Schema changes: - AgentResponse: added explain_id, explain_graph fields - RetrievalResponse: added explain_id, explain_graph fields - agent_iteration_triples: supports thought_document_id, observation_document_id Update tests.
2026-03-12 21:40:09 +00:00
show_provenance=args.show_provenance
)
finally:
socket.close()
except Exception as e:
print(f"Error: {e}", file=sys.stderr)
sys.exit(1)
if __name__ == "__main__":
main()