Files
Copilot b05fc9e849 Python: Add load_dotenv() to samples for .env file support (#4043)
* Initial plan

* Add load_dotenv() to 303 Python samples for environment variable loading

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Update SAMPLE_GUIDELINES.md to document load_dotenv() requirement

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Update samples README.md to document .env file usage

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Run ruff format on all changed sample files

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Clarify load_dotenv() usage in README - local dev vs production

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Remove deprecated getting_started folder as requested

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Document env_file_path parameter for per-client configuration

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Merge main branch to resolve conflicts

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Fix run_evaluation.py file that was empty in merge commit

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Remove dotnet changes from merge - out of scope for this PR

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Remove package and test changes from merge - only sample changes needed

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Remove test_func_utils.py - only sample changes needed

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Revert sample files not in original changeset - keep only load_dotenv additions

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Move load_dotenv() outside snippet tag in 06_host_your_agent.py

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Fix comment placement - move load_dotenv before code comments

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Fix load_dotenv() placement across all samples - after docstring, before code comments

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Merge latest main branch with load_dotenv changes

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Remove non-sample changes from merge - keep only load_dotenv additions

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Revert non-load_dotenv sample changes from merge

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Fix run_evaluation.py - use main's improved version (file already had load_dotenv)

Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>

* Manual update

* Manual update 2

* Fix Role usage and load_dotenv placement per PR review feedback

Co-authored-by: eavanvalkenburg <13749212+eavanvalkenburg@users.noreply.github.com>

* Fix Role usage - use string literals not enum attributes

Co-authored-by: eavanvalkenburg <13749212+eavanvalkenburg@users.noreply.github.com>

* Fix SAMPLE_GUIDELINES.md example - load_dotenv before docstring per guidance

Co-authored-by: eavanvalkenburg <13749212+eavanvalkenburg@users.noreply.github.com>

* Move load_dotenv() before docstrings in all samples per SAMPLE_GUIDELINES ordering

Co-authored-by: eavanvalkenburg <13749212+eavanvalkenburg@users.noreply.github.com>

* Address PR review: rename files, fix placement, add session usage, remove note

Co-authored-by: eavanvalkenburg <13749212+eavanvalkenburg@users.noreply.github.com>

* Update Redis README to reference renamed file redis_history_provider.py

Co-authored-by: eavanvalkenburg <13749212+eavanvalkenburg@users.noreply.github.com>

---------

Co-authored-by: copilot-swe-agent[bot] <198982749+Copilot@users.noreply.github.com>
Co-authored-by: TaoChenOSU <12570346+TaoChenOSU@users.noreply.github.com>
Co-authored-by: Tao Chen <taochen@microsoft.com>
Co-authored-by: eavanvalkenburg <13749212+eavanvalkenburg@users.noreply.github.com>
Co-authored-by: Eduard van Valkenburg <eavanvalkenburg@users.noreply.github.com>
2026-02-19 10:55:13 +00:00

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8.9 KiB
Python

# Copyright (c) Microsoft. All rights reserved.
"""Redis Context Provider: Thread scoping examples
This sample demonstrates how conversational memory can be scoped when using the
Redis context provider. It covers three scenarios:
1) Global thread scope
- Provide a fixed thread_id to share memories across operations/threads.
2) Per-operation thread scope
- Enable scope_to_per_operation_thread_id to bind the provider to a single
thread for the lifetime of that provider instance. Use the same thread
object for reads/writes with that provider.
3) Multiple agents with isolated memory
- Use different agent_id values to keep memories separated for different
agent personas, even when the user_id is the same.
Requirements:
- A Redis instance with RediSearch enabled (e.g., Redis Stack)
- agent-framework with the Redis extra installed: pip install "agent-framework-redis"
- Optionally an OpenAI API key for the chat client in this demo
Run:
python redis_threads.py
"""
import asyncio
import os
from agent_framework.azure import AzureOpenAIResponsesClient
from agent_framework.redis import RedisContextProvider
from azure.identity import AzureCliCredential
from dotenv import load_dotenv
from redisvl.extensions.cache.embeddings import EmbeddingsCache
from redisvl.utils.vectorize import OpenAITextVectorizer
# Load environment variables from .env file
load_dotenv()
# Default Redis URL for local Redis Stack.
# Override via the REDIS_URL environment variable for remote or authenticated instances.
REDIS_URL = os.getenv("REDIS_URL", "redis://localhost:6379")
# Please set OPENAI_API_KEY to use the OpenAI vectorizer.
# For chat responses, also set AZURE_AI_PROJECT_ENDPOINT and AZURE_OPENAI_RESPONSES_DEPLOYMENT_NAME.
def create_chat_client() -> AzureOpenAIResponsesClient:
"""Create an Azure OpenAI Responses client using a Foundry project endpoint."""
return AzureOpenAIResponsesClient(
project_endpoint=os.environ["AZURE_AI_PROJECT_ENDPOINT"],
deployment_name=os.environ["AZURE_OPENAI_RESPONSES_DEPLOYMENT_NAME"],
credential=AzureCliCredential(),
)
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)
client = create_chat_client()
provider = RedisContextProvider(
source_id="redis_context",
redis_url=REDIS_URL,
index_name="redis_threads_global",
application_id="threads_demo_app",
agent_id="threads_demo_agent",
user_id="threads_demo_user",
)
agent = client.as_agent(
name="GlobalMemoryAssistant",
instructions=(
"You are a helpful assistant. Personalize replies using provided context. "
"Before answering, always check for stored context containing information"
),
tools=[],
context_providers=[provider],
)
# Store a preference in the global scope
query = "Remember that I prefer technical responses with code examples when discussing programming."
print(f"User: {query}")
result = await agent.run(query)
print(f"Agent: {result}\n")
# Create a new session - memories should still be accessible due to global scope
new_session = agent.create_session()
query = "What technical responses do I prefer?"
print(f"User (new session): {query}")
result = await agent.run(query, session=new_session)
print(f"Agent: {result}\n")
# Clean up the Redis index
await provider.redis_index.delete()
async def example_per_operation_thread_scope() -> None:
"""Example 2: Per-operation thread scope (memories isolated per session).
Note: When scope_to_per_operation_thread_id=True, the provider is bound to a single session
throughout its lifetime. Use the same session object for all operations with that provider.
"""
print("2. Per-Operation Thread Scope Example:")
print("-" * 40)
client = create_chat_client()
vectorizer = OpenAITextVectorizer(
model="text-embedding-ada-002",
api_config={"api_key": os.getenv("OPENAI_API_KEY")},
cache=EmbeddingsCache(name="openai_embeddings_cache", redis_url=REDIS_URL),
)
provider = RedisContextProvider(
source_id="redis_context",
redis_url=REDIS_URL,
index_name="redis_threads_dynamic",
application_id="threads_demo_app",
agent_id="threads_demo_agent",
user_id="threads_demo_user",
redis_vectorizer=vectorizer,
vector_field_name="vector",
vector_algorithm="hnsw",
vector_distance_metric="cosine",
)
agent = client.as_agent(
name="ScopedMemoryAssistant",
instructions="You are an assistant with thread-scoped memory.",
context_providers=[provider],
)
# Create a specific session for this scoped provider
dedicated_session = agent.create_session()
# Store some information in the dedicated session
query = "Remember that for this conversation, I'm working on a Python project about data analysis."
print(f"User (dedicated session): {query}")
result = await agent.run(query, session=dedicated_session)
print(f"Agent: {result}\n")
# Test memory retrieval in the same dedicated session
query = "What project am I working on?"
print(f"User (same dedicated session): {query}")
result = await agent.run(query, session=dedicated_session)
print(f"Agent: {result}\n")
# Store more information in the same session
query = "Also remember that I prefer using pandas and matplotlib for this project."
print(f"User (same dedicated session): {query}")
result = await agent.run(query, session=dedicated_session)
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 session): {query}")
result = await agent.run(query, session=dedicated_session)
print(f"Agent: {result}\n")
# Clean up the Redis index
await provider.redis_index.delete()
async def example_multiple_agents() -> None:
"""Example 3: Multiple agents with different thread configurations (isolated via agent_id) but within 1 index."""
print("3. Multiple Agents with Different Thread Configurations:")
print("-" * 40)
client = create_chat_client()
vectorizer = OpenAITextVectorizer(
model="text-embedding-ada-002",
api_config={"api_key": os.getenv("OPENAI_API_KEY")},
cache=EmbeddingsCache(name="openai_embeddings_cache", redis_url=REDIS_URL),
)
personal_provider = RedisContextProvider(
source_id="redis_context",
redis_url=REDIS_URL,
index_name="redis_threads_agents",
application_id="threads_demo_app",
agent_id="agent_personal",
user_id="threads_demo_user",
redis_vectorizer=vectorizer,
vector_field_name="vector",
vector_algorithm="hnsw",
vector_distance_metric="cosine",
)
personal_agent = client.as_agent(
name="PersonalAssistant",
instructions="You are a personal assistant that helps with personal tasks.",
context_providers=[personal_provider],
)
work_provider = RedisContextProvider(
source_id="redis_context",
redis_url=REDIS_URL,
index_name="redis_threads_agents",
application_id="threads_demo_app",
agent_id="agent_work",
user_id="threads_demo_user",
redis_vectorizer=vectorizer,
vector_field_name="vector",
vector_algorithm="hnsw",
vector_distance_metric="cosine",
)
work_agent = client.as_agent(
name="WorkAssistant",
instructions="You are a work assistant that helps with professional tasks.",
context_providers=[work_provider],
)
# 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")
# Clean up the Redis index (shared)
await work_provider.redis_index.delete()
async def main() -> None:
print("=== Redis Thread Scoping Examples ===\n")
await example_global_thread_scope()
await example_per_operation_thread_scope()
await example_multiple_agents()
if __name__ == "__main__":
asyncio.run(main())