* 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file with only comment path updates (100 files) - One import-fix diff (workflow_as_agent_human_in_the_loop.py) - One superseded minimal_sample.py Resource files (sample.pdf, countries.json, employees.pdf, weather.json) copied to 02-agents/sample_assets/ and 02-agents/resources/ since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
Custom Agent and Chat Client Examples
This folder contains examples demonstrating how to implement custom agents and chat clients using the Microsoft Agent Framework.
Examples
| File | Description |
|---|---|
custom_agent.py |
Shows how to create custom agents by extending the BaseAgent class. Demonstrates the EchoAgent implementation with both streaming and non-streaming responses, proper thread management, and message history handling. |
custom_chat_client.py |
Demonstrates how to create custom chat clients by extending the BaseChatClient class. Shows a EchoingChatClient implementation and how to integrate it with Agent using the as_agent() method. |
Key Takeaways
Custom Agents
- Custom agents give you complete control over the agent's behavior
- You must implement both
run()for both thestream=Trueandstream=Falsecases - Use
self._normalize_messages()to handle different input message formats - Use
self._notify_thread_of_new_messages()to properly manage conversation history
Custom Chat Clients
- Custom chat clients allow you to integrate any backend service or create new LLM providers
- You must implement
_inner_get_response()with a stream parameter to handle both streaming and non-streaming responses - Custom chat clients can be used with
Agentto leverage all agent framework features - Use the
as_agent()method to easily create agents from your custom chat clients
Both approaches allow you to extend the framework for your specific use cases while maintaining compatibility with the broader Agent Framework ecosystem.
Understanding Raw Client Classes
The framework provides Raw...Client classes (e.g., RawOpenAIChatClient, RawOpenAIResponsesClient, RawAzureAIClient) that are intermediate implementations without middleware, telemetry, or function invocation support.
Warning: Raw Clients Should Not Normally Be Used Directly
The Raw...Client classes should not normally be used directly. They do not include the middleware, telemetry, or function invocation support that you most likely need. If you do use them, you should carefully consider which additional layers to apply.
Layer Ordering
There is a defined ordering for applying layers that you should follow:
- ChatMiddlewareLayer - Should be applied first because it also prepares function middleware
- FunctionInvocationLayer - Handles tool/function calling loop
- ChatTelemetryLayer - Must be inside the function calling loop for correct per-call telemetry
- Raw...Client - The base implementation (e.g.,
RawOpenAIChatClient)
Example of correct layer composition:
class MyCustomClient(
ChatMiddlewareLayer[TOptions],
FunctionInvocationLayer[TOptions],
ChatTelemetryLayer[TOptions],
RawOpenAIChatClient[TOptions], # or BaseChatClient for custom implementations
Generic[TOptions],
):
"""Custom client with all layers correctly applied."""
pass
Use Fully-Featured Clients Instead
For most use cases, use the fully-featured public client classes which already have all layers correctly composed:
OpenAIChatClient- OpenAI Chat completions with all layersOpenAIResponsesClient- OpenAI Responses API with all layersAzureOpenAIChatClient- Azure OpenAI Chat with all layersAzureOpenAIResponsesClient- Azure OpenAI Responses with all layersAzureAIClient- Azure AI Project with all layers
These clients handle the layer composition correctly and provide the full feature set out of the box.