flow-svc's long-lived ConfigClient was constructed with
subscription=f"{self.id}--config--{id}", where id=params.get("id") is
the deterministic processor id. On Pulsar the config-response topic
maps to class=response -> Exclusive subscription; when the supervisor
restarts flow-svc within Pulsar's inactive-subscription TTL (minutes),
the previous process's ghost consumer still holds the subscription
and the new process's re-subscribe is rejected with ConsumerBusy,
crash-looping flow-svc.
This is a v2.2 -> v2.3 regression in practice, but not a change in
subscription semantics: the Exclusive mapping for response/notify is
identical between releases. The regression is that PR #822 split
flow-svc out of config-svc and added this new, long-lived
request/response call site — the new site simply didn't follow the
uuid convention used by the equivalent sites elsewhere
(gateway/config/receiver.py, AsyncProcessor._create_config_client).
Fix: generate a fresh uuid per process instance for the subscription
suffix, matching that convention.
The extract-with-ontologies prompt is a JSONL prompt, which means the
prompt service returns a PromptResult with response_type="jsonl" and
the parsed items in `.objects` (plural). The ontology extractor was
reading `.object` (singular) — the field used for response_type="json"
— which is always None for JSONL prompts.
Effect: the parser received None on every chunk, hit its "Unexpected
response type: <class 'NoneType'>" branch, returned no ExtractionResult,
and extract_with_simplified_format returned []. Every extraction
silently produced zero triples.
Graphs populated only with the seed ontology schema (TBox) and
document/chunk provenance — no instance triples at all. The e2e test
threshold of >=100 edges per collection was met by schema + provenance
alone, so the failure mode was invisible until RAG queries couldn't
find any content.
Regression introduced in v2.3 with the token-usage work (commit
56d700f3 / 14e49d83) when PromptClient.prompt() began returning a
PromptResult wrapper instead of the raw text/dict/list. All other
call sites of .prompt() across retrieval/, agent/, orchestrator/ were
already reading the correct field for their prompt's response_type;
ontology extraction was the sole stranded caller.
Also adds tests/unit/test_extract/test_ontology/test_extract_with_simplified_format.py
covering:
- happy path: populated .objects produces non-empty triples
- production failure shape: .objects=None returns [] cleanly
- empty .objects returns [] without raising
- defensive: do not silently fall back to .object for a JSONL prompt
DispatcherManager caches one ServiceRequestor per (flow_id, kind) in
self.dispatchers, lazily created on first use. stop_flow dropped the
flow from self.flows but never touched the cached dispatchers, so
their publisher/subscriber connections persisted — bound to the
per-flow exchanges that flow-svc tears down when the flow stops.
If the same flow id was later re-created, flow-svc re-declared fresh
per-flow exchanges, but the gateway's cached dispatcher still held a
subscription queue bound to the now-gone old response exchange.
Requests went out fine (publishers target exchanges by name and the
new exchange has the right name), but responses landed on an exchange
with no binding to the dispatcher's queue and were silently dropped.
The calling CLI or websocket session hung waiting for a reply that
would never arrive.
Reproduction before fix:
tg-start-flow -i test-flow-1 ...
# any query on test-flow-1 works
tg-stop-flow -i test-flow-1
tg-start-flow -i test-flow-1 ...
tg-show-graph -f test-flow-1 -C <collection> # hangs
Flows that were never stopped (e.g. "default" in a typical session)
were unaffected — their cached dispatcher still pointed at live
plumbing. That's why the bug appeared flow-name-specific at first
glance; it's actually lifecycle-specific.
Fix: in stop_flow, evict and cleanly stop() every cached dispatcher
keyed on the stopped flow id. Next request after restart constructs
a fresh dispatcher against the freshly-declared exchanges. Tuple
shape check preserves global dispatchers, which use (None, kind) as
their key and must survive flow churn.
Uses pop(id, None) instead of del in case stop_flow is invoked
defensively for a flow the gateway never saw.
Test fixes for Kafka:
- Consumer: isinstance(max_concurrency, int) instead of is not None:
MagicMock won't pass the check
- Kafka test: updated expected topic name to
tg.request.prompt.default (colons replaced with dots)
- Producer: add delivery callback to surface send errors instead of
silently swallowing them, and raise message.max.bytes to 10MB
- Consumer: raise fetch.message.max.bytes to 10MB to match producer,
tighten session/heartbeat timeouts for fast group joins, and add
partition assign/revoke logging for diagnostics
- Topic naming: replace colons with dots in topic names since Kafka
rejects colons (flow:tg:document-load:default was producing invalid
topic name tg.flow.document-load:default)
- Response consumers: use auto.offset.reset=earliest instead of latest
so responses published before partition assignment aren't lost
- UNKNOWN_TOPIC_OR_PART: treat as timeout instead of fatal error so
consumers wait for auto-created topics instead of crashing
- Concurrency: cap consumer workers to 1 for Kafka since topics have
1 partition — extra consumers trigger rebalance storms that block
all message delivery
A previous commit moved SDK imports into __init__/methods and
stashed them on self, which broke @patch targets in 24 unit tests.
This fixes the approach: chunker and pdf_decoder use module-level
sentinels with global/if-None guards so imports are still deferred but
patchable. Google AI Studio reverts to standard module-level imports
since the module is only loaded when communicating with Gemini.
Keeps lazy loading on other imports.
Third backend alongside Pulsar and RabbitMQ. Topics map 1:1 to Kafka
topics, subscriptions map to consumer groups. Response/notify uses
unique consumer groups with correlation ID filtering. Topic lifecycle
managed via AdminClient with class-based retention.
Initial code drop: Needs major integration testing
The RabbitMQ backend used a single topic exchange per topicspace
with routing keys to differentiate logical topics. This meant the
flow service had to manually create named queues for every
processor-topic pair, including producer-side topics — creating
phantom queues that accumulated unread message copies indefinitely.
Replace with one fanout exchange per logical topic. Consumers now
declare and bind their own queues on connect. The flow service
manages topic lifecycle (create/delete exchanges) rather than queue
lifecycle, and only collects unique topic identifiers instead of
per-processor (topic, subscription) pairs.
Backend API: create_queue/delete_queue/ensure_queue replaced with
create_topic/delete_topic/ensure_topic (subscription parameter
removed).
feat: separate flow service from config service with explicit queue
lifecycle management
The flow service is now an independent service that owns the lifecycle
of flow and blueprint queues. System services own their own queues.
Consumers never create queues.
Flow service separation:
- New service at trustgraph-flow/trustgraph/flow/service/
- Uses async ConfigClient (RequestResponse pattern) to talk to config
service
- Config service stripped of all flow handling
Queue lifecycle management:
- PubSubBackend protocol gains create_queue, delete_queue,
queue_exists, ensure_queue — all async
- RabbitMQ: implements via pika with asyncio.to_thread internally
- Pulsar: stubs for future admin REST API implementation
- Consumer _connect() no longer creates queues (passive=True for named
queues)
- System services call ensure_queue on startup
- Flow service creates queues on flow start, deletes on flow stop
- Flow service ensures queues for pre-existing flows on startup
Two-phase flow stop:
- Phase 1: set flow status to "stopping", delete processor config
entries
- Phase 2: retry queue deletion, then delete flow record
Config restructure:
- active-flow config replaced with processor:{name} types
- Each processor has its own config type, each flow variant is a key
- Flow start/stop use batch put/delete — single config push per
operation
- FlowProcessor subscribes to its own type only
Blueprint format:
- Processor entries split into topics and parameters dicts
- Flow interfaces use {"flow": "topic"} instead of bare strings
- Specs (ConsumerSpec, ProducerSpec, etc.) read from
definition["topics"]
Tests updated
asyncio.iscoroutinefunction is deprecated since Python 3.14 and slated for
removal in 3.16. The inspect equivalent has an identical signature and return
semantics. Replaces 8 call sites across 3 modules to silence DeprecationWarnings
reported in #818.
Python 3.14 deprecates datetime.utcnow(). Replace all 9 occurrences with
datetime.now(timezone.utc) and normalize the output to preserve the existing
ISO-8601 "Z"-suffixed format so downstream parsers are unaffected.
Fixes#814
feat: add type hints to all public functions in trustgraph/base
Add type annotations to 23 modules covering:
- Metrics classes (ConsumerMetrics, ProducerMetrics, etc.)
- Spec classes (ConsumerSpec, ProducerSpec, SubscriberSpec, etc.)
- Service classes with add_args() and run() methods
- Utility functions (logging, pubsub, clients)
- AsyncProcessor methods
All 93 public functions now fully typed.
Refs #785
* refactor: deduplicate imports and move __future__ after docstrings
Addresses review feedback on PR #803:
- Remove duplicate 'from argparse import ArgumentParser' across 12 files
- Move 'from __future__ import annotations' to line 1 in all files
- Clean up excessive blank lines
Add class-level docstrings to five public classes in trustgraph-base:
Flow, LlmService, ConsumerMetrics, ToolClient, and TriplesStoreService.
Each docstring summarises the class's role in the system to aid
discoverability for new contributors.
Signed-off-by: Jenkins, Kenneth Alexander <kjenkins60@gatech.edu>
- Silence pika, cassandra etc. logging at INFO (too much chatter)
- Add per processor log tags so that logs can be understood in
processor group.
- Deal with RabbitMQ lag weirdness
- Added more processor group examples
Processor group implementation: A wrapper to launch multiple
processors in a single processor
- trustgraph-base/trustgraph/base/processor_group.py — group runner
module. run_group(config) is the async body; run() is the
endpoint. Loads JSON or YAML config, validates that every entry
has a unique params.id, instantiates each class via importlib,
shares one TaskGroup, mirrors AsyncProcessor.launch's retry loop
and Prometheus startup.
- trustgraph-base/pyproject.toml — added [project.scripts] block
with processor-group = "trustgraph.base.processor_group:run".
Key behaviours:
- Unique id enforced up front — missing or duplicate params.id fails
fast with a clear error, preventing the Prometheus Info label
collision we flagged.
- No registry — dotted class path is the identifier; any
AsyncProcessor descendant importable at runtime is packable.
- YAML import is lazy — only pulled in if the config file ends in
.yaml/.yml, so JSON-only users don't need PyYAML installed.
- Single Prometheus server — start_http_server runs once at
startup, before the retry loop, matching launch()'s pattern.
- Retry loop — same shape as AsyncProcessor.launch: catches
ExceptionGroup from TaskGroup, logs, sleeps 4s,
retries. Fail-group semantics (one processor dying tears down the
group) — simple and surfaces bugs, as discussed.
Example config:
processors:
- class: trustgraph.extract.kg.definitions.extract.Processor
params:
id: kg-extract-definitions
- class: trustgraph.chunking.recursive.Processor
params:
id: chunker-recursive
Run with processor-group -c group.yaml.
Native CLI i18n: The TrustGraph CLI has built-in translation support
that dynamically loads language strings. You can test and use
different languages by simply passing the --lang flag (e.g., --lang
es for Spanish, --lang ru for Russian) or by configuring your
environment's LANG variable.
Automated Docs Translations: This PR introduces autonomously
translated Markdown documentation into several target languages,
including Spanish, Swahili, Portuguese, Turkish, Hindi, Hebrew,
Arabic, Simplified Chinese, and Russian.
Fix test suite Prometheus registry pollution and remove default coverage
The test_metrics.py fixture (added in 4e63dbda) deleted
class-level metric singleton attributes without restoring them. This
stripped the hasattr() guards that prevent duplicate Prometheus
registration, so every subsequent Processor construction in the test
run raised ValueError: Duplicated timeseries. Fix by saving and
restoring the original attributes around each test.
Remove --cov=trustgraph from pytest.ini defaults — the coverage
import hooks interact badly with the trustgraph namespace package,
causing duplicate class loading. Coverage can still be requested
explicitly via the command line.
- add unit tests for base metrics, logging, spec, parameter_spec,
and flow modules
- add a lightweight test-only module loader so these tests can run
without optional runtime dependencies
- fix Parameter.start/stop to accept self
Addresses recommendations from the UX developer's agent experience report.
Adds provenance predicates, DAG structure changes, error resilience, and
a published OWL ontology.
Explainability additions:
- Tool candidates: tg:toolCandidate on Analysis events lists the tools
visible to the LLM for each iteration (names only, descriptions in config)
- Termination reason: tg:terminationReason on Conclusion/Synthesis events
(final-answer, plan-complete, subagents-complete)
- Step counter: tg:stepNumber on iteration events
- Pattern decision: new tg:PatternDecision entity in the DAG between
session and first iteration, carrying tg:pattern and tg:taskType
- Latency: tg:llmDurationMs on Analysis events, tg:toolDurationMs on
Observation events
- Token counts on events: tg:inToken/tg:outToken/tg:llmModel on
Grounding, Focus, Synthesis, and Analysis events
- Tool/parse errors: tg:toolError on Observation events with tg:Error
mixin type. Parse failures return as error observations instead of
crashing the agent, giving it a chance to retry.
Envelope unification:
- Rename chunk_type to message_type across AgentResponse schema,
translator, SDK types, socket clients, CLI, and all tests.
Agent and RAG services now both use message_type on the wire.
Ontology:
- specs/ontology/trustgraph.ttl — OWL vocabulary covering all 26 classes,
7 object properties, and 36+ datatype properties including new predicates.
DAG structure tests:
- tests/unit/test_provenance/test_dag_structure.py verifies the
wasDerivedFrom chain for GraphRAG, DocumentRAG, and all three agent
patterns (react, plan, supervisor) including the pattern-decision link.
Expose LLM token usage (in_token, out_token, model) across all
service layers
Propagate token counts from LLM services through the prompt,
text-completion, graph-RAG, document-RAG, and agent orchestrator
pipelines to the API gateway and Python SDK. All fields are Optional
— None means "not available", distinguishing from a real zero count.
Key changes:
- Schema: Add in_token/out_token/model to TextCompletionResponse,
PromptResponse, GraphRagResponse, DocumentRagResponse,
AgentResponse
- TextCompletionClient: New TextCompletionResult return type. Split
into text_completion() (non-streaming) and
text_completion_stream() (streaming with per-chunk handler
callback)
- PromptClient: New PromptResult with response_type
(text/json/jsonl), typed fields (text/object/objects), and token
usage. All callers updated.
- RAG services: Accumulate token usage across all prompt calls
(extract-concepts, edge-scoring, edge-reasoning,
synthesis). Non-streaming path sends single combined response
instead of chunk + end_of_session.
- Agent orchestrator: UsageTracker accumulates tokens across
meta-router, pattern prompt calls, and react reasoning. Attached
to end_of_dialog.
- Translators: Encode token fields when not None (is not None, not truthy)
- Python SDK: RAG and text-completion methods return
TextCompletionResult (non-streaming) or RAGChunk/AgentAnswer with
token fields (streaming)
- CLI: --show-usage flag on tg-invoke-llm, tg-invoke-prompt,
tg-invoke-graph-rag, tg-invoke-document-rag, tg-invoke-agent
* Fix Metadata/EntityEmbeddings schema migration tail and add regression tests (#776)
The Metadata dataclass dropped its `metadata: list[Triple]` field
and EntityEmbeddings/ChunkEmbeddings settled on a singular
`vector: list[float]` field, but several call sites kept passing
`Metadata(metadata=...)` and `EntityEmbeddings(vectors=...)`. The
bugs were latent until a websocket client first hit
`/api/v1/flow/default/import/entity-contexts`, at which point the
dispatcher TypeError'd on construction.
Production fixes (5 call sites on the same migration tail):
* trustgraph-flow gateway dispatchers entity_contexts_import.py
and graph_embeddings_import.py — drop the stale
Metadata(metadata=...) kwarg; switch graph_embeddings_import
to the singular `vector` wire key.
* trustgraph-base messaging translators knowledge.py and
document_loading.py — fix decode side to read the singular
`"vector"` key, matching what their own encode sides have
always written.
* trustgraph-flow tables/knowledge.py — fix Cassandra row
deserialiser to construct EntityEmbeddings(vector=...)
instead of vectors=.
* trustgraph-flow gateway core_import/core_export — switch the
kg-core msgpack wire format to the singular `"v"`/`"vector"`
key and drop the dead `m["m"]` envelope field that referenced
the removed Metadata.metadata triples list (it was a
guaranteed KeyError on the export side).
Defense-in-depth regression coverage (32 new tests across 7 files):
* tests/contract/test_schema_field_contracts.py — pin the field
set of Metadata, EntityEmbeddings, ChunkEmbeddings,
EntityContext so any future schema rename fails CI loudly
with a clear diff.
* tests/unit/test_translators/test_knowledge_translator_roundtrip.py
and test_document_embeddings_translator_roundtrip.py -
encode→decode round-trip the affected translators end to end,
locking in the singular `"vector"` wire key.
* tests/unit/test_gateway/test_entity_contexts_import_dispatcher.py
and test_graph_embeddings_import_dispatcher.py — exercise the
websocket dispatchers' receive() path with realistic
payloads, the direct regression test for the original
production crash.
* tests/unit/test_gateway/test_core_import_export_roundtrip.py
— pack/unpack the kg-core msgpack format through the real
dispatcher classes (with KnowledgeRequestor mocked),
including a full export→import round-trip.
* tests/unit/test_tables/test_knowledge_table_store.py —
exercise the Cassandra row → schema conversion via __new__ to
bypass the live cluster connection.
Also fixes an unrelated leaked-coroutine RuntimeWarning in
test_gateway/test_service.py::test_run_method_calls_web_run_app: the
mocked aiohttp.web.run_app now closes the coroutine that Api.run() hands
it, mirroring what the real run_app would do, instead of leaving it for
the GC to complain about.
* Fix RabbitMQ request/response race and chunker Flow API drift
Two unrelated regressions surfaced after the v2.2 queue class
refactor. Bundled here because both are small and both block
production.
1. Request/response race against ephemeral RabbitMQ response
queues
Commit feeb92b3 switched response/notify queues to per-subscriber
auto-delete exclusive queues. That fixed orphaned-queue
accumulation but introduced a setup race: Subscriber.start()
created the run() task and returned immediately, while the
underlying RabbitMQ consumer only declared and bound its queue
lazily on the first receive() call. RequestResponse.request()
therefore published the request before any queue was bound to the
matching routing key, and the broker dropped the reply. Symptoms:
"Failed to fetch config on notify" / "Request timeout exception"
repeating roughly every 10s in api-gateway, document-embeddings
and any other service exercising the config notify path.
Fix:
* Add ensure_connected() to the BackendConsumer protocol;
implement it on RabbitMQBackendConsumer (calls _connect
synchronously, declaring and binding the queue) and as a
no-op on PulsarBackendConsumer (Pulsar's client.subscribe is
already synchronous at construction).
* Convert Subscriber's readiness signal from a non-existent
Event to an asyncio.Future created in start(). run() calls
consumer.ensure_connected() immediately after
create_consumer() and sets _ready.set_result(None) on first
successful bind. start() awaits the future via asyncio.wait
so it returns only once the consumer is fully bound. Any
reply published after start() returns is therefore guaranteed
to land in a bound queue.
* First-attempt connection failures call
_ready.set_exception(e) and exit run() so start() unblocks
with the error rather than hanging forever — the existing
higher-level retry pattern in fetch_and_apply_config takes
over from there. Runtime failures after a successful start
still go through the existing retry-with-backoff path.
* Update the two existing graceful-shutdown tests that
monkey-patch Subscriber.run with a custom coroutine to honor
the new contract by signalling _ready themselves.
* Add tests/unit/test_base/test_subscriber_readiness.py with
five regression tests pinning the readiness contract:
ensure_connected must be called before start() returns;
start() must block while ensure_connected runs
(race-condition guard with a threading.Event gate);
first-attempt create_consumer and ensure_connected failures
must propagate to start() instead of hanging;
ensure_connected must run before any receive() call.
2. Chunker Flow parameter lookup using the wrong attribute
trustgraph-base/trustgraph/base/chunking_service.py was reading
flow.parameters.get("chunk-size") and chunk-overlap, but the Flow
class has no `parameters` attribute — parameter lookup is exposed
through Flow.__call__ (flow("chunk-size") returns the resolved
value or None). The exception was caught and logged as a
WARNING, so chunking continued with the default sizes and any
configured chunk-size / chunk-overlap was silently ignored:
chunker - WARNING - Could not parse chunk-size parameter:
'Flow' object has no attribute 'parameters'
The chunker tests didn't catch this because they constructed
mock_flow = MagicMock() and configured
mock_flow.parameters.get.side_effect = ..., which is the same
phantom attribute MagicMock auto-creates on demand. Tests and
production agreed on the wrong API.
Fix: switch chunking_service.py to flow("chunk-size") /
flow("chunk-overlap"). Update both chunker test files to mock the
__call__ side_effect instead of the phantom parameters.get,
merging parameter values into the existing flow() lookup the
on_message tests already used for producer resolution.
The Metadata dataclass dropped its `metadata: list[Triple]` field
and EntityEmbeddings/ChunkEmbeddings settled on a singular
`vector: list[float]` field, but several call sites kept passing
`Metadata(metadata=...)` and `EntityEmbeddings(vectors=...)`. The
bugs were latent until a websocket client first hit
`/api/v1/flow/default/import/entity-contexts`, at which point the
dispatcher TypeError'd on construction.
Production fixes (5 call sites on the same migration tail):
* trustgraph-flow gateway dispatchers entity_contexts_import.py
and graph_embeddings_import.py — drop the stale
Metadata(metadata=...) kwarg; switch graph_embeddings_import
to the singular `vector` wire key.
* trustgraph-base messaging translators knowledge.py and
document_loading.py — fix decode side to read the singular
`"vector"` key, matching what their own encode sides have
always written.
* trustgraph-flow tables/knowledge.py — fix Cassandra row
deserialiser to construct EntityEmbeddings(vector=...)
instead of vectors=.
* trustgraph-flow gateway core_import/core_export — switch the
kg-core msgpack wire format to the singular `"v"`/`"vector"`
key and drop the dead `m["m"]` envelope field that referenced
the removed Metadata.metadata triples list (it was a
guaranteed KeyError on the export side).
Defense-in-depth regression coverage (32 new tests across 7 files):
* tests/contract/test_schema_field_contracts.py — pin the field
set of Metadata, EntityEmbeddings, ChunkEmbeddings,
EntityContext so any future schema rename fails CI loudly
with a clear diff.
* tests/unit/test_translators/test_knowledge_translator_roundtrip.py
and test_document_embeddings_translator_roundtrip.py -
encode→decode round-trip the affected translators end to end,
locking in the singular `"vector"` wire key.
* tests/unit/test_gateway/test_entity_contexts_import_dispatcher.py
and test_graph_embeddings_import_dispatcher.py — exercise the
websocket dispatchers' receive() path with realistic
payloads, the direct regression test for the original
production crash.
* tests/unit/test_gateway/test_core_import_export_roundtrip.py
— pack/unpack the kg-core msgpack format through the real
dispatcher classes (with KnowledgeRequestor mocked),
including a full export→import round-trip.
* tests/unit/test_tables/test_knowledge_table_store.py —
exercise the Cassandra row → schema conversion via __new__ to
bypass the live cluster connection.
Also fixes an unrelated leaked-coroutine RuntimeWarning in
test_gateway/test_service.py::test_run_method_calls_web_run_app: the
mocked aiohttp.web.run_app now closes the coroutine that Api.run() hands
it, mirroring what the real run_app would do, instead of leaving it for
the GC to complain about.
Derive consumer behaviour from queue class, remove
consumer_type parameter
The queue class prefix (flow, request, response, notify) now
fully determines consumer behaviour in both RabbitMQ and Pulsar
backends. Added 'notify' class for ephemeral broadcast (config
push notifications). Response and notify classes always create
per-subscriber auto-delete queues, eliminating orphaned queues
that accumulated on service restarts.
Change init-trustgraph to set up the 'notify' namespace in
Pulsar instead of old hangover 'state'.
Fixes 'stuck backlog' on RabbitMQ config notification queue.
The triples client returns Uri/Literal (str subclasses), not Term
objects. _quoted_triple() treated all values as IRIs, so literal
objects like skos:definition values were mistyped in focus
provenance events, and trace_source_documents could not match
them in the store.
Added to_term() to convert Uri/Literal back to Term, threaded a
term_map from follow_edges_batch through
get_subgraph/get_labelgraph into uri_map, and updated
_quoted_triple to accept Term objects directly.
Subscriber resilience: recreate consumer after connection failure
- Move consumer creation from Subscriber.start() into the run() loop,
matching the pattern used by Consumer. If the connection drops and the
consumer is closed in the finally block, the loop now recreates it on
the next iteration instead of spinning forever on a None consumer.
Consumer thread safety:
- Dedicated ThreadPoolExecutor per consumer so all pika operations
(create, receive, acknowledge, negative_acknowledge) run on the
same thread — pika BlockingConnection is not thread-safe
- Applies to both Consumer and Subscriber classes
Config handler type audit — fix four mismatched type registrations:
- librarian: was ["librarian"] (non-existent type), now ["flow",
"active-flow"] (matches config["flow"] that the handler reads)
- cores/service: was ["kg-core"], now ["flow"] (reads
config["flow"])
- metering/counter: was ["token-costs"], now ["token-cost"]
(singular)
- agent/mcp_tool: was ["mcp-tool"], now ["mcp"] (reads
config["mcp"])
Update tests
Provenance triples are now included directly in explain messages from
GraphRAG, DocumentRAG, and Agent services, eliminating the need for
follow-up knowledge graph queries to retrieve explainability details.
Each explain message in the response stream now carries:
- explain_id: root URI for this provenance step (unchanged)
- explain_graph: named graph where triples are stored (unchanged)
- explain_triples: the actual provenance triples for this step (new)
Changes across the stack:
- Schema: added explain_triples field to GraphRagResponse,
DocumentRagResponse, and AgentResponse
- Services: all explain message call sites pass triples through
(graph_rag, document_rag, agent react, agent orchestrator)
- Translators: encode explain_triples via TripleTranslator for
gateway wire format
- Python SDK: ProvenanceEvent now includes parsed ExplainEntity
and raw triples; expanded event_type detection
- CLI: invoke_graph_rag, invoke_agent, invoke_document_rag use
inline entity when available, fall back to graph query
- Tech specs updated
Additional explainability test