Files
Eduard van Valkenburg a2856d3b92 Python: restructure: Python samples into progressive 01-05 layout (#3862)
* restructure: Python samples into progressive 01-05 layout

- 01-get-started/: 6 numbered steps (hello agent → hosting)
- 02-agents/: all agent concept samples (tools, middleware, providers, etc.)
- 03-workflows/: ALL existing workflow samples preserved as-is
- 04-hosting/: azure-functions, durabletask, a2a
- 05-end-to-end/: demos, evaluation, hosted agents
- Old files moved to _to_delete/ for review
- Added AGENTS.md with structure documentation
- autogen-migration/ and semantic-kernel-migration/ preserved at root

* fix: switch to AzureOpenAI Foundry, fix CI failures

- Switch all 01-get-started samples to AzureOpenAIResponsesClient with
  Azure AI Foundry project endpoint (AZURE_AI_PROJECT_ENDPOINT +
  AZURE_OPENAI_RESPONSES_DEPLOYMENT_NAME + AzureCliCredential)
- Add _to_delete/ and 05-end-to-end/ to pyrightconfig.samples.json excludes
- Fix test paths in packages/ that referenced old getting_started/ dirs:
  durabletask conftest + streaming test, azurefunctions conftest,
  devui conftest + capture_messages + openai_sdk_integration
- Fix workflow_as_agent_human_in_the_loop.py import (sibling import)
- Update hosting READMEs and tool comment paths
- Replace root README.md with new structure overview
- Update AGENTS.md to document Azure OpenAI Foundry as default provider

* cleanup: remove _to_delete folder, copy resource files to active dirs

All files in _to_delete/ were either:
- Exact duplicates of files in the new structure (240 files)
- Same file with only comment path updates (100 files)
- One import-fix diff (workflow_as_agent_human_in_the_loop.py)
- One superseded minimal_sample.py

Resource files (sample.pdf, countries.json, employees.pdf, weather.json)
copied to 02-agents/sample_assets/ and 02-agents/resources/ since active
samples reference them.

* fix: address PR review comments, centralize resources, remove root duplicates

- Fix type annotation in 04_memory.py (string union -> proper types)
- Fix old sample paths in observability files
- Fix grammar/spelling in observability samples
- Move sample_assets/ and resources/ to shared/ folder
- Remove 8 duplicate observability files from 02-agents root
- Update resource path references in multimodal_input and provider samples

* fix: update broken links from old getting_started paths to new structure

- Update relative paths in READMEs: getting_started/ → 01-get-started/,
  02-agents/, 03-workflows/, 04-hosting/, 05-end-to-end/
- Fix absolute GitHub URLs in package READMEs
- Fix broken link in ollama package README

* fix: convert absolute GitHub URLs to relative paths for link checker

Absolute URLs to python/samples/ on main branch 404 until PR merges.
Converted to relative paths that linkspector can verify locally.

* fix: update link for handoff sample moved to orchestrations/

* fix: update chatkit-integration README path from demos/ to 05-end-to-end/

* fix: update broken links in orchestrations README to match flat directory structure
2026-02-12 17:36:36 +00:00

168 lines
6.5 KiB
Python

# Copyright (c) Microsoft. All rights reserved.
import asyncio
import uuid
from agent_framework import tool
from agent_framework.azure import AzureAIAgentClient
from agent_framework.mem0 import Mem0Provider
from azure.identity.aio import AzureCliCredential
# 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_threads.py.
@tool(approval_mode="never_require")
def get_user_preferences(user_id: str) -> str:
"""Mock function to get user preferences."""
preferences = {
"user123": "Prefers concise responses and technical details",
"user456": "Likes detailed explanations with examples",
}
return preferences.get(user_id, "No specific preferences found")
async def example_global_thread_scope() -> None:
"""Example 1: Global thread_id scope (memories shared across all operations)."""
print("1. Global Thread Scope Example:")
print("-" * 40)
global_thread_id = str(uuid.uuid4())
user_id = "user123"
async with (
AzureCliCredential() as credential,
AzureAIAgentClient(credential=credential).as_agent(
name="GlobalMemoryAssistant",
instructions="You are an assistant that remembers user preferences across conversations.",
tools=get_user_preferences,
context_provider=Mem0Provider(
user_id=user_id,
thread_id=global_thread_id,
scope_to_per_operation_thread_id=False, # Share memories across all threads
),
) as global_agent,
):
# Store some preferences in the global scope
query = "Remember that I prefer technical responses with code examples when discussing programming."
print(f"User: {query}")
result = await global_agent.run(query)
print(f"Agent: {result}\n")
# Create a new thread - but memories should still be accessible due to global scope
new_thread = global_agent.get_new_thread()
query = "What do you know about my preferences?"
print(f"User (new thread): {query}")
result = await global_agent.run(query, thread=new_thread)
print(f"Agent: {result}\n")
async def example_per_operation_thread_scope() -> None:
"""Example 2: Per-operation thread scope (memories isolated per thread).
Note: When scope_to_per_operation_thread_id=True, the provider is bound to a single thread
throughout its lifetime. Use the same thread object for all operations with that provider.
"""
print("2. Per-Operation Thread Scope Example:")
print("-" * 40)
user_id = "user123"
async with (
AzureCliCredential() as credential,
AzureAIAgentClient(credential=credential).as_agent(
name="ScopedMemoryAssistant",
instructions="You are an assistant with thread-scoped memory.",
tools=get_user_preferences,
context_provider=Mem0Provider(
user_id=user_id,
scope_to_per_operation_thread_id=True, # Isolate memories per thread
),
) as scoped_agent,
):
# Create a specific thread for this scoped provider
dedicated_thread = scoped_agent.get_new_thread()
# Store some information in the dedicated thread
query = "Remember that for this conversation, I'm working on a Python project about data analysis."
print(f"User (dedicated thread): {query}")
result = await scoped_agent.run(query, thread=dedicated_thread)
print(f"Agent: {result}\n")
# Test memory retrieval in the same dedicated thread
query = "What project am I working on?"
print(f"User (same dedicated thread): {query}")
result = await scoped_agent.run(query, thread=dedicated_thread)
print(f"Agent: {result}\n")
# Store more information in the same thread
query = "Also remember that I prefer using pandas and matplotlib for this project."
print(f"User (same dedicated thread): {query}")
result = await scoped_agent.run(query, thread=dedicated_thread)
print(f"Agent: {result}\n")
# Test comprehensive memory retrieval
query = "What do you know about my current project and preferences?"
print(f"User (same dedicated thread): {query}")
result = await scoped_agent.run(query, thread=dedicated_thread)
print(f"Agent: {result}\n")
async def example_multiple_agents() -> None:
"""Example 3: Multiple agents with different thread configurations."""
print("3. Multiple Agents with Different Thread Configurations:")
print("-" * 40)
agent_id_1 = "agent_personal"
agent_id_2 = "agent_work"
async with (
AzureCliCredential() as credential,
AzureAIAgentClient(credential=credential).as_agent(
name="PersonalAssistant",
instructions="You are a personal assistant that helps with personal tasks.",
context_provider=Mem0Provider(
agent_id=agent_id_1,
),
) as personal_agent,
AzureAIAgentClient(credential=credential).as_agent(
name="WorkAssistant",
instructions="You are a work assistant that helps with professional tasks.",
context_provider=Mem0Provider(
agent_id=agent_id_2,
),
) as work_agent,
):
# Store personal information
query = "Remember that I like to exercise at 6 AM and prefer outdoor activities."
print(f"User to Personal Agent: {query}")
result = await personal_agent.run(query)
print(f"Personal Agent: {result}\n")
# Store work information
query = "Remember that I have team meetings every Tuesday at 2 PM."
print(f"User to Work Agent: {query}")
result = await work_agent.run(query)
print(f"Work Agent: {result}\n")
# Test memory isolation
query = "What do you know about my schedule?"
print(f"User to Personal Agent: {query}")
result = await personal_agent.run(query)
print(f"Personal Agent: {result}\n")
print(f"User to Work Agent: {query}")
result = await work_agent.run(query)
print(f"Work Agent: {result}\n")
async def main() -> None:
"""Run all Mem0 thread management examples."""
print("=== Mem0 Thread Management Example ===\n")
await example_global_thread_scope()
await example_per_operation_thread_scope()
await example_multiple_agents()
if __name__ == "__main__":
asyncio.run(main())