trustgraph/docs/apis/api-flow.md
cybermaggedon 89be656990
Release/v1.2 (#457)
* Bump setup.py versions for 1.1

* PoC MCP server (#419)

* Very initial MCP server PoC for TrustGraph

* Put service on port 8000

* Add MCP container and packages to buildout

* Update docs for API/CLI changes in 1.0 (#421)

* Update some API basics for the 0.23/1.0 API change

* Add MCP container push (#425)

* Add command args to the MCP server (#426)

* Host and port parameters

* Added websocket arg

* More docs

* MCP client support (#427)

- MCP client service
- Tool request/response schema
- API gateway support for mcp-tool
- Message translation for tool request & response
- Make mcp-tool using configuration service for information
  about where the MCP services are.

* Feature/react call mcp (#428)

Key Features

  - MCP Tool Integration: Added core MCP tool support with ToolClientSpec and ToolClient classes
  - API Enhancement: New mcp_tool method for flow-specific tool invocation
  - CLI Tooling: New tg-invoke-mcp-tool command for testing MCP integration
  - React Agent Enhancement: Fixed and improved multi-tool invocation capabilities
  - Tool Management: Enhanced CLI for tool configuration and management

Changes

  - Added MCP tool invocation to API with flow-specific integration
  - Implemented ToolClientSpec and ToolClient for tool call handling
  - Updated agent-manager-react to invoke MCP tools with configurable types
  - Enhanced CLI with new commands and improved help text
  - Added comprehensive documentation for new CLI commands
  - Improved tool configuration management

Testing

  - Added tg-invoke-mcp-tool CLI command for isolated MCP integration testing
  - Enhanced agent capability to invoke multiple tools simultaneously

* Test suite executed from CI pipeline (#433)

* Test strategy & test cases

* Unit tests

* Integration tests

* Extending test coverage (#434)

* Contract tests

* Testing embeedings

* Agent unit tests

* Knowledge pipeline tests

* Turn on contract tests

* Increase storage test coverage (#435)

* Fixing storage and adding tests

* PR pipeline only runs quick tests

* Empty configuration is returned as empty list, previously was not in response (#436)

* Update config util to take files as well as command-line text (#437)

* Updated CLI invocation and config model for tools and mcp (#438)

* Updated CLI invocation and config model for tools and mcp

* CLI anomalies

* Tweaked the MCP tool implementation for new model

* Update agent implementation to match the new model

* Fix agent tools, now all tested

* Fixed integration tests

* Fix MCP delete tool params

* Update Python deps to 1.2

* Update to enable knowledge extraction using the agent framework (#439)

* Implement KG extraction agent (kg-extract-agent)

* Using ReAct framework (agent-manager-react)
 
* ReAct manager had an issue when emitting JSON, which conflicts which ReAct manager's own JSON messages, so refactored ReAct manager to use traditional ReAct messages, non-JSON structure.
 
* Minor refactor to take the prompt template client out of prompt-template so it can be more readily used by other modules. kg-extract-agent uses this framework.

* Migrate from setup.py to pyproject.toml (#440)

* Converted setup.py to pyproject.toml

* Modern package infrastructure as recommended by py docs

* Install missing build deps (#441)

* Install missing build deps (#442)

* Implement logging strategy (#444)

* Logging strategy and convert all prints() to logging invocations

* Fix/startup failure (#445)

* Fix loggin startup problems

* Fix logging startup problems (#446)

* Fix logging startup problems (#447)

* Fixed Mistral OCR to use current API (#448)

* Fixed Mistral OCR to use current API

* Added PDF decoder tests

* Fix Mistral OCR ident to be standard pdf-decoder (#450)

* Fix Mistral OCR ident to be standard pdf-decoder

* Correct test

* Schema structure refactor (#451)

* Write schema refactor spec

* Implemented schema refactor spec

* Structure data mvp (#452)

* Structured data tech spec

* Architecture principles

* New schemas

* Updated schemas and specs

* Object extractor

* Add .coveragerc

* New tests

* Cassandra object storage

* Trying to object extraction working, issues exist

* Validate librarian collection (#453)

* Fix token chunker, broken API invocation (#454)

* Fix token chunker, broken API invocation (#455)

* Knowledge load utility CLI (#456)

* Knowledge loader

* More tests
2025-08-18 20:56:09 +01:00

6.4 KiB

TrustGraph Flow API

This API provides workflow management for TrustGraph components. It manages flow classes (workflow templates) and flow instances (active running workflows) that orchestrate complex data processing pipelines.

Request/response

Request

The request contains the following fields:

  • operation: The operation to perform (see operations below)
  • class_name: Flow class name (for class operations and start-flow)
  • class_definition: Flow class definition JSON (for put-class)
  • description: Flow description (for start-flow)
  • flow_id: Flow instance ID (for flow instance operations)

Response

The response contains the following fields:

  • class_names: Array of flow class names (returned by list-classes)
  • flow_ids: Array of active flow IDs (returned by list-flows)
  • class_definition: Flow class definition JSON (returned by get-class)
  • flow: Flow instance JSON (returned by get-flow)
  • description: Flow description (returned by get-flow)
  • error: Error information if operation fails

Operations

Flow Class Operations

LIST-CLASSES - List All Flow Classes

Request:

{
    "operation": "list-classes"
}

Response:

{
    "class_names": ["pdf-processor", "text-analyzer", "knowledge-extractor"]
}

GET-CLASS - Get Flow Class Definition

Request:

{
    "operation": "get-class",
    "class_name": "pdf-processor"
}

Response:

{
    "class_definition": "{\"interfaces\": {\"text-completion\": {\"request\": \"persistent://tg/request/text-completion\", \"response\": \"persistent://tg/response/text-completion\"}}, \"description\": \"PDF processing workflow\"}"
}

PUT-CLASS - Create/Update Flow Class

Request:

{
    "operation": "put-class",
    "class_name": "pdf-processor",
    "class_definition": "{\"interfaces\": {\"text-completion\": {\"request\": \"persistent://tg/request/text-completion\", \"response\": \"persistent://tg/response/text-completion\"}}, \"description\": \"PDF processing workflow\"}"
}

Response:

{}

DELETE-CLASS - Remove Flow Class

Request:

{
    "operation": "delete-class",
    "class_name": "pdf-processor"
}

Response:

{}

Flow Instance Operations

LIST-FLOWS - List Active Flow Instances

Request:

{
    "operation": "list-flows"
}

Response:

{
    "flow_ids": ["flow-123", "flow-456", "flow-789"]
}

GET-FLOW - Get Flow Instance

Request:

{
    "operation": "get-flow",
    "flow_id": "flow-123"
}

Response:

{
    "flow": "{\"interfaces\": {\"text-completion\": {\"request\": \"persistent://tg/request/text-completion-flow-123\", \"response\": \"persistent://tg/response/text-completion-flow-123\"}}}",
    "description": "PDF processing workflow instance"
}

START-FLOW - Start Flow Instance

Request:

{
    "operation": "start-flow",
    "class_name": "pdf-processor",
    "flow_id": "flow-123",
    "description": "Processing document batch 1"
}

Response:

{}

STOP-FLOW - Stop Flow Instance

Request:

{
    "operation": "stop-flow",
    "flow_id": "flow-123"
}

Response:

{}

REST service

The REST service is available at /api/v1/flow and accepts the above request formats.

Websocket

Requests have a request object containing the operation fields. Responses have a response object containing the response fields.

Request:

{
    "id": "unique-request-id",
    "service": "flow",
    "request": {
        "operation": "list-classes"
    }
}

Response:

{
    "id": "unique-request-id",
    "response": {
        "class_names": ["pdf-processor", "text-analyzer"]
    },
    "complete": true
}

Pulsar

The Pulsar schema for the Flow API is defined in Python code here:

https://github.com/trustgraph-ai/trustgraph/blob/master/trustgraph-base/trustgraph/schema/flows.py

Default request queue: non-persistent://tg/request/flow

Default response queue: non-persistent://tg/response/flow

Request schema: trustgraph.schema.FlowRequest

Response schema: trustgraph.schema.FlowResponse

Flow Service Methods

Flow instances provide access to various TrustGraph services through flow-specific endpoints:

MCP Tool Service - Invoke MCP Tools

The mcp_tool method allows invoking MCP (Model Control Protocol) tools within a flow context.

Request:

{
    "name": "file-reader",
    "parameters": {
        "path": "/path/to/file.txt"
    }
}

Response:

{
    "object": {"content": "file contents here", "size": 1024}
}

Or for text responses:

{
    "text": "plain text response"
}

Other Service Methods

Flow instances also provide access to:

  • text_completion - LLM text completion
  • agent - Agent question answering
  • graph_rag - Graph-based RAG queries
  • document_rag - Document-based RAG queries
  • embeddings - Text embeddings
  • prompt - Prompt template processing
  • triples_query - Knowledge graph queries
  • load_document - Document loading
  • load_text - Text loading

Python SDK

The Python SDK provides convenient access to the Flow API:

from trustgraph.api.flow import FlowClient

client = FlowClient()

# List all flow classes
classes = await client.list_classes()

# Get a flow class definition
definition = await client.get_class("pdf-processor")

# Start a flow instance
await client.start_flow("pdf-processor", "flow-123", "Processing batch 1")

# List active flows
flows = await client.list_flows()

# Stop a flow instance
await client.stop_flow("flow-123")

# Use flow instance services
flow = client.id("flow-123")
result = await flow.mcp_tool("file-reader", {"path": "/path/to/file.txt"})

Features

  • Flow Classes: Templates that define workflow structure and interfaces
  • Flow Instances: Active running workflows based on flow classes
  • Dynamic Management: Flows can be started/stopped dynamically
  • Template Processing: Uses template replacement for customizing flow instances
  • Integration: Works with TrustGraph ecosystem for data processing pipelines
  • Persistent Storage: Flow definitions and instances stored for reliability

Use Cases

  • Document Processing: Orchestrating PDF processing through chunking, extraction, and storage
  • Knowledge Extraction: Managing workflows for relationship and definition extraction
  • Data Pipelines: Coordinating complex multi-step data processing workflows
  • Resource Management: Dynamically scaling processing flows based on demand