* refactor KB for index creation logic * add user agent header for tracking * fix mypy issues --------- Co-authored-by: farzad528 <farzad528@users.noreply.github.com>
Context Provider Examples
Context providers enable agents to maintain memory, retrieve relevant information, and enhance conversations with external context. The Agent Framework supports various context providers for different use cases, from simple in-memory storage to advanced persistent solutions with search capabilities.
This folder contains examples demonstrating how to use different context providers with the Agent Framework.
Overview
Context providers implement two key methods:
invoking: Called before the agent processes a request. Provides additional context, instructions, or retrieved information to enhance the agent's response.invoked: Called after the agent generates a response. Allows for storing information, updating memory, or performing post-processing.
Examples
Simple Context Provider
| File | Description | Installation |
|---|---|---|
simple_context_provider.py |
Demonstrates building a custom context provider that extracts and stores user information (name and age) from conversations. Shows how to use structured output to extract data and provide dynamic instructions based on stored context. | No additional package required - uses core agent-framework |
Install:
pip install agent-framework-azure-ai
Azure AI Search
| File | Description |
|---|---|
azure_ai_search/azure_ai_with_search_context_agentic.py |
Agentic mode (recommended for most scenarios): Uses Knowledge Bases in Azure AI Search for query planning and multi-hop reasoning. Provides more accurate results through intelligent retrieval. Slightly slower with more token consumption. |
azure_ai_search/azure_ai_with_search_context_semantic.py |
Semantic mode (fast queries): Fast hybrid search combining vector and keyword search with semantic ranking. Best for scenarios where speed is critical. |
Install:
pip install agent-framework-azure-ai-search agent-framework-azure-ai
Prerequisites:
- Azure AI Search service with a search index
- Azure AI Foundry project with a model deployment
- For agentic mode: Azure OpenAI resource for Knowledge Base model calls
- Environment variables:
AZURE_SEARCH_ENDPOINT,AZURE_SEARCH_INDEX_NAME,AZURE_AI_PROJECT_ENDPOINT
Key Concepts:
- Agentic mode: Intelligent retrieval with multi-hop reasoning, better for complex queries
- Semantic mode: Fast hybrid search with semantic ranking, better for simple queries and speed
Mem0
The mem0 folder contains examples using Mem0, a self-improving memory layer that enables applications to have long-term memory capabilities.
| File | Description |
|---|---|
mem0/mem0_basic.py |
Basic example storing and retrieving user preferences across different conversation threads. |
mem0/mem0_threads.py |
Advanced thread scoping strategies: global scope (memories shared), per-operation scope (memories isolated), and multiple agents with different memory configurations. |
mem0/mem0_oss.py |
Using Mem0 Open Source self-hosted version as the context provider. |
Install:
pip install agent-framework-mem0
Prerequisites:
- Mem0 API key from app.mem0.ai OR self-host Mem0 Open Source
- For Mem0 Platform:
MEM0_API_KEYenvironment variable - For Mem0 OSS:
OPENAI_API_KEYfor embedding generation
Key Concepts:
- Global Scope: Memories shared across all conversation threads
- Thread Scope: Memories isolated per conversation thread
- Memory Association: Records can be associated with
user_id,agent_id,thread_id, orapplication_id
See the mem0 README for detailed documentation.
Redis
The redis folder contains examples using Redis (RediSearch) for persistent, searchable memory with full-text and optional hybrid vector search.
| File | Description |
|---|---|
redis/redis_basics.py |
Standalone provider usage and agent integration. Demonstrates writing messages, full-text/hybrid search, persisting preferences, and tool output memory. |
redis/redis_conversation.py |
Conversational examples showing memory persistence across sessions. |
redis/redis_threads.py |
Thread scoping: global scope, per-operation scope, and multiple agents with isolated memory via different agent_id values. |
Install:
pip install agent-framework-redis
Prerequisites:
- Running Redis with RediSearch (Redis Stack or managed service)
- Docker:
docker run --name redis -p 6379:6379 -d redis:8.0.3 - Redis Cloud: redis.io/cloud
- Azure Managed Redis: Azure quickstart
- Docker:
- Optional:
OPENAI_API_KEYfor vector embeddings (hybrid search)
Key Concepts:
- Full-text search: Fast keyword-based retrieval
- Hybrid vector search: Optional embeddings for semantic search (
vectorizer_choice="openai"or"hf") - Memory scoping: Partition by
application_id,agent_id,user_id, orthread_id - Thread scoping:
scope_to_per_operation_thread_id=Trueisolates memory per operation
See the redis README for detailed documentation.
Choosing a Context Provider
| Provider | Use Case | Persistence | Search | Complexity |
|---|---|---|---|---|
| Simple/Custom | Learning, prototyping, simple memory needs | No (in-memory) | No | Low |
| Azure AI Search | RAG, document search, enterprise knowledge bases | Yes | Hybrid + Semantic | Medium |
| Mem0 | Long-term user memory, preferences, personalization | Yes (cloud/self-hosted) | Semantic | Low-Medium |
| Redis | Fast retrieval, session memory, full-text + vector search | Yes | Full-text + Hybrid | Medium |
Common Patterns
1. User Preference Memory
Store and retrieve user preferences, settings, or personal information across sessions.
- Examples:
simple_context_provider.py,mem0/mem0_basic.py,redis/redis_basics.py
2. Document Retrieval (RAG)
Retrieve relevant documents or knowledge base articles to answer questions.
- Examples:
azure_ai_search/azure_ai_with_search_context_*.py
3. Conversation History
Maintain conversation context across multiple turns and sessions.
- Examples:
redis/redis_conversation.py,mem0/mem0_threads.py
4. Thread Scoping
Isolate memory per conversation thread or share globally across threads.
- Examples:
mem0/mem0_threads.py,redis/redis_threads.py
5. Multi-Agent Memory
Different agents with isolated or shared memory configurations.
- Examples:
mem0/mem0_threads.py,redis/redis_threads.py
Building Custom Context Providers
To create a custom context provider, implement the ContextProvider protocol:
from agent_framework import ContextProvider, Context, ChatMessage
from collections.abc import MutableSequence, Sequence
from typing import Any
class MyContextProvider(ContextProvider):
async def invoking(
self,
messages: ChatMessage | MutableSequence[ChatMessage],
**kwargs: Any
) -> Context:
"""Provide context before the agent processes the request."""
# Return additional instructions, messages, or context
return Context(instructions="Additional instructions here")
async def invoked(
self,
request_messages: ChatMessage | Sequence[ChatMessage],
response_messages: ChatMessage | Sequence[ChatMessage] | None = None,
invoke_exception: Exception | None = None,
**kwargs: Any,
) -> None:
"""Process the response after the agent generates it."""
# Store information, update memory, etc.
pass
def serialize(self) -> str:
"""Serialize the provider state for persistence."""
return "{}"
See simple_context_provider.py for a complete example.