Files
agent-framework/python/samples/03-workflows/state-management/workflow_kwargs.py
T
Eduard van Valkenburg 1e350ea22f Python: [BREAKING] PR2 — Wire context provider pipeline, remove old types, update all consumers (#3850)
* PR2: Wire context provider pipeline and update all internal consumers

- Replace AgentThread with AgentSession across all packages
- Replace ContextProvider with BaseContextProvider across all packages
- Replace context_provider param with context_providers (Sequence)
- Replace thread= with session= in run() signatures
- Replace get_new_thread() with create_session()
- Add get_session(service_session_id) to agent interface
- DurableAgentThread -> DurableAgentSession
- Remove _notify_thread_of_new_messages from WorkflowAgent
- Wire before_run/after_run context provider pipeline in RawAgent
- Auto-inject InMemoryHistoryProvider when no providers configured

* fix: update all tests for context provider pipeline, fix lazy-loaders, remove old test files

* refactor: update all sample files for context provider pipeline (AgentThread→AgentSession, ContextProvider→BaseContextProvider)

* fix: update remaining ag-ui references (client docstring, getting_started sample)

* fix: make get_session service_session_id keyword-only to avoid confusion with session_id

* refactor: rename _RunContext.thread_messages to session_messages

* refactor: remove _threads.py, _memory.py, and old provider files; migrate devui to use plain message lists

* rename: remove _new_ prefix from test files

* refactor: rewrite SlidingWindowChatMessageStore as SlidingWindowHistoryProvider(InMemoryHistoryProvider)

* fix: read full history from session state directly instead of reaching into provider internals

* fix: update stale .pyi stubs, sample imports, and README references for new provider types

* fix: remove stale message_store, _notify_thread_of_new_messages, and session_id.key references in samples

* refactor: merge context_providers and sessions sample folders into sessions, remove aggregate_context_provider

* refactor: UserInfoMemory stores state in session.state instead of instance attributes

* feat: add Pydantic BaseModel support to session state serialization

Pydantic models stored in session.state are now automatically serialized
via model_dump() and restored via model_validate() during to_dict()/from_dict()
round-trips. Models are auto-registered on first serialization; use
register_state_type() for cold-start deserialization.

Also export register_state_type as a public API.

* fix mem0

* Update sample README links and descriptions for session terminology

- Replace 'thread' with 'session' in sample descriptions across all READMEs
- Update file links for renamed samples (mem0_sessions, redis_sessions, etc.)
- Fix Threads section → Sessions section in main samples/README.md
- Update tools, middleware, workflows, durabletask, azure_functions READMEs
- Update architecture diagrams in concepts/tools/README.md
- Update migration guides (autogen, semantic-kernel)

* Fix broken Redis README link to renamed sample

* Fix Mem0 OSS client search: pass scoping params as direct kwargs

AsyncMemory (OSS) expects user_id/agent_id/run_id as direct kwargs,
while AsyncMemoryClient (Platform) expects them in a filters dict.
Adds tests for both client types.

Port of fix from #3844 to new Mem0ContextProvider.

* Fix rebase issues: restore missing _conversation_state.py and checkpoint decode logic

- Add back _conversation_state.py (encode/decode_chat_messages) lost in rebase
- Fix on_checkpoint_restore to decode cache/conversation with decode_chat_messages
- Fix on_checkpoint_restore to use decode_checkpoint_value for pending requests
- Add tests/workflow/__init__.py for relative import support
- Fix test_agent_executor checkpoint selection (checkpoints[1] not superstep)

* Add STORES_BY_DEFAULT ClassVar to skip redundant InMemoryHistoryProvider injection

Chat clients that store history server-side by default (OpenAI Responses API,
Azure AI Agent) now declare STORES_BY_DEFAULT = True. The agent checks this
during auto-injection and skips InMemoryHistoryProvider unless the user
explicitly sets store=False.

* Fix broken markdown links in azure_ai and redis READMEs

* Fix getting-started samples to use session API instead of removed thread/ContextProvider API

* updates to workflow as agent

* fix group chat import

* Rename Thread→Session throughout, fix service_session_id propagation, remove stale AGUIThread

- Fix: Propagate conversation_id from ChatResponse back to session.service_session_id
  in both streaming and non-streaming paths in _agents.py
- Rename AgentThreadException → AgentSessionException
- Remove stale AGUIThread from ag_ui lazy-loader
- Rename use_service_thread → use_service_session in ag-ui package
- Rename test functions from *_thread_* to *_session_*
- Rename sample files from *_thread* to *_session*
- Update docstrings and comments: thread → session
- Update _mcp.py kwargs filter: add 'session' alongside 'thread'
- Fix ContinuationToken docstring example: thread=thread → session=session
- Fix _clients.py docstring: 'Agent threads' → 'Agent sessions'

* Fix broken markdown links after thread→session file renames

* fix azure ai test
2026-02-12 21:00:32 +00:00

144 lines
5.0 KiB
Python

# Copyright (c) Microsoft. All rights reserved.
import asyncio
import json
import os
from typing import Annotated, Any, cast
from agent_framework import Message, tool
from agent_framework.azure import AzureOpenAIResponsesClient
from agent_framework.orchestrations import SequentialBuilder
from azure.identity import AzureCliCredential
from pydantic import Field
"""
Sample: Workflow kwargs Flow to @tool Tools
This sample demonstrates how to flow custom context (skill data, user tokens, etc.)
through any workflow pattern to @tool functions using the **kwargs pattern.
Key Concepts:
- Pass custom context as kwargs when invoking workflow.run()
- kwargs are stored in State and passed to all agent invocations
- @tool functions receive kwargs via **kwargs parameter
- Works with Sequential, Concurrent, GroupChat, Handoff, and Magentic patterns
Prerequisites:
- AZURE_AI_PROJECT_ENDPOINT must be your Azure AI Foundry Agent Service (V2) project endpoint.
- Environment variables configured
"""
# Define tools that accept custom context via **kwargs
# NOTE: approval_mode="never_require" is for sample brevity. Use "always_require" in production;
# see samples/02-agents/tools/function_tool_with_approval.py
# and samples/02-agents/tools/function_tool_with_approval_and_sessions.py.
@tool(approval_mode="never_require")
def get_user_data(
query: Annotated[str, Field(description="What user data to retrieve")],
**kwargs: Any,
) -> str:
"""Retrieve user-specific data based on the authenticated context."""
user_token = kwargs.get("user_token", {})
user_name = user_token.get("user_name", "anonymous")
access_level = user_token.get("access_level", "none")
print(f"\n[get_user_data] Received kwargs keys: {list(kwargs.keys())}")
print(f"[get_user_data] User: {user_name}")
print(f"[get_user_data] Access level: {access_level}")
return f"Retrieved data for user {user_name} with {access_level} access: {query}"
@tool(approval_mode="never_require")
def call_api(
endpoint_name: Annotated[str, Field(description="Name of the API endpoint to call")],
**kwargs: Any,
) -> str:
"""Call an API using the configured endpoints from custom_data."""
custom_data = kwargs.get("custom_data", {})
api_config = custom_data.get("api_config", {})
base_url = api_config.get("base_url", "unknown")
endpoints = api_config.get("endpoints", {})
print(f"\n[call_api] Received kwargs keys: {list(kwargs.keys())}")
print(f"[call_api] Base URL: {base_url}")
print(f"[call_api] Available endpoints: {list(endpoints.keys())}")
if endpoint_name in endpoints:
return f"Called {base_url}{endpoints[endpoint_name]} successfully"
return f"Endpoint '{endpoint_name}' not found in configuration"
async def main() -> None:
print("=" * 70)
print("Workflow kwargs Flow Demo (SequentialBuilder)")
print("=" * 70)
# Create chat client
client = AzureOpenAIResponsesClient(
project_endpoint=os.environ["AZURE_AI_PROJECT_ENDPOINT"],
deployment_name=os.environ["AZURE_AI_MODEL_DEPLOYMENT_NAME"],
credential=AzureCliCredential(),
)
# Create agent with tools that use kwargs
agent = client.as_agent(
name="assistant",
instructions=(
"You are a helpful assistant. Use the available tools to help users. "
"When asked about user data, use get_user_data. "
"When asked to call an API, use call_api."
),
tools=[get_user_data, call_api],
)
# Build a simple sequential workflow
workflow = SequentialBuilder(participants=[agent]).build()
# Define custom context that will flow to tools via kwargs
custom_data = {
"api_config": {
"base_url": "https://api.example.com",
"endpoints": {
"users": "/v1/users",
"orders": "/v1/orders",
"products": "/v1/products",
},
},
}
user_token = {
"user_name": "bob@contoso.com",
"access_level": "admin",
}
print("\nCustom Data being passed:")
print(json.dumps(custom_data, indent=2))
print(f"\nUser: {user_token['user_name']}")
print("\n" + "-" * 70)
print("Workflow Execution (watch for [tool_name] logs showing kwargs received):")
print("-" * 70)
# Run workflow with kwargs - these will flow through to tools
async for event in workflow.run(
"Please get my user data and then call the users API endpoint.",
additional_function_arguments={"custom_data": custom_data, "user_token": user_token},
stream=True,
):
if event.type == "output":
output_data = cast(list[Message], event.data)
if isinstance(output_data, list):
for item in output_data:
if isinstance(item, Message) and item.text:
print(f"\n[Final Answer]: {item.text}")
print("\n" + "=" * 70)
print("Sample Complete")
print("=" * 70)
if __name__ == "__main__":
asyncio.run(main())