* Python: Fix hosted MCP replay producing orphan function_call_output Resolves part of #5546. After a turn ran a hosted MCP / Foundry-toolbox-MCP tool, the next turn's replayed input array carried a function_call_output with an mcp_* call_id and no matching function_call, and the Responses API returned a 400. Two layers covered here: * Chat-client serialize layer (packages/openai): adds mcp_server_tool_call and mcp_server_tool_result cases to _prepare_message_for_openai and _prepare_content_for_openai. Pairs are coalesced via a post-pass into a single mcp_call input item carrying both arguments and output. Orphan results are dropped (debug-logged) rather than serialized as orphan function_call_output, which is what the Responses API rejected. * Host read layer (packages/foundry_hosting): _item_to_message and _output_item_to_message now route custom_tool_call_output whose call_id.startswith("mcp_") to Content.from_mcp_server_tool_result. Non-mcp_ call_ids continue to produce Content.from_function_result. Symmetric with the host write-side choice for hosted-MCP results. Two further fixes (agentserver SDK additions, host write-side single-item emission) remain tracked on the issue and depend on an SDK release. * Python: Fix pyright unknown-type in _stringify_mcp_output cast(Sequence[Any], output) after the isinstance check so pyright stops flagging the loop variable as unknown. Also normalizes a couple of em-dashes in docstrings I introduced in the prior commit. * Python: Harden _stringify_mcp_output for dict-shaped MCP outputs Address Copilot review on PR #5581. Today the helper falls back to str() for any non-string, non-text-attribute entry, which produces Python repr (single-quoted dicts) for the canonical MCP raw-JSON text-content shape `{"type": "text", "text": "..."}` and any other dict-shaped output. Three small changes: * List-entry path: prefer plain string entries, then `.text` attribute (Content objects), then `entry["text"]` for Mapping entries in the canonical MCP shape, then JSON-encode anything else. * Final fallback: `json.dumps(output, default=str)` so Mappings and scalars produce valid JSON rather than Python repr. * Two new unit tests covering the dict-with-text shape and the non-text-dict JSON fallback. * Python: Suppress mypy redundant-cast on _stringify_mcp_output narrowing The cast is needed by pyright (reportUnknownVariableType) but mypy considers it redundant after the preceding isinstance narrowing. Pyright's behavior is correct for the strict-mode reporting we run, so keep the cast and silence mypy on the line.
Welcome to Microsoft Agent Framework!
Welcome to Microsoft's comprehensive multi-language framework for building, orchestrating, and deploying AI agents with support for both .NET and Python implementations. This framework provides everything from simple chat agents to complex multi-agent workflows with graph-based orchestration.
Watch the full Agent Framework introduction (30 min)
📋 Getting Started
📦 Installation
Python
pip install agent-framework
# This will install all sub-packages, see `python/packages` for individual packages.
# It may take a minute on first install on Windows.
.NET
dotnet add package Microsoft.Agents.AI
📚 Documentation
- Overview - High level overview of the framework
- Quick Start - Get started with a simple agent
- Tutorials - Step by step tutorials
- User Guide - In-depth user guide for building agents and workflows
- Migration from Semantic Kernel - Guide to migrate from Semantic Kernel
- Migration from AutoGen - Guide to migrate from AutoGen
Still have questions? Join our weekly office hours or ask questions in our Discord channel to get help from the team and other users.
✨ Highlights
- Graph-based Workflows: Connect agents and deterministic functions using data flows with streaming, checkpointing, human-in-the-loop, and time-travel capabilities
- AF Labs: Experimental packages for cutting-edge features including benchmarking, reinforcement learning, and research initiatives
- DevUI: Interactive developer UI for agent development, testing, and debugging workflows
See the DevUI in action (1 min)
- Python and C#/.NET Support: Full framework support for both Python and C#/.NET implementations with consistent APIs
- Observability: Built-in OpenTelemetry integration for distributed tracing, monitoring, and debugging
- Multiple Agent Provider Support: Support for various LLM providers with more being added continuously
- Middleware: Flexible middleware system for request/response processing, exception handling, and custom pipelines
💬 We want your feedback!
- For bugs, please file a GitHub issue.
Quickstart
Basic Agent - Python
Create a simple Azure Responses Agent that writes a haiku about the Microsoft Agent Framework
# pip install agent-framework
# Use `az login` to authenticate with Azure CLI
import os
import asyncio
from agent_framework import Agent
from agent_framework.foundry import FoundryChatClient
from azure.identity import AzureCliCredential
async def main():
# Initialize a chat agent with Microsoft Foundry
# the endpoint, deployment name, and api version can be set via environment variables
# or they can be passed in directly to the FoundryChatClient constructor
agent = Agent(
client=FoundryChatClient(
credential=AzureCliCredential(),
# project_endpoint=os.environ["FOUNDRY_PROJECT_ENDPOINT"],
# model=os.environ["FOUNDRY_MODEL_DEPLOYMENT_NAME"],
),
name="HaikuBot",
instructions="You are an upbeat assistant that writes beautifully.",
)
print(await agent.run("Write a haiku about Microsoft Agent Framework."))
if __name__ == "__main__":
asyncio.run(main())
Basic Agent - .NET
Create a simple Agent, using Microsoft Foundry with token-based auth, that writes a haiku about the Microsoft Agent Framework
// dotnet add package Microsoft.Agents.AI.Foundry
// Use `az login` to authenticate with Azure CLI
using Azure.AI.Projects;
using Azure.Identity;
using System;
using Azure.AI.Projects;
using Azure.Identity;
var endpoint = Environment.GetEnvironmentVariable("AZURE_AI_PROJECT_ENDPOINT") ?? throw new InvalidOperationException("AZURE_AI_PROJECT_ENDPOINT is not set.");
var deploymentName = Environment.GetEnvironmentVariable("AZURE_AI_MODEL_DEPLOYMENT_NAME") ?? "gpt-5.4-mini";
var agent = new AIProjectClient(new Uri(endpoint), new DefaultAzureCredential())
.AsAIAgent(model: deploymentName, name: "HaikuBot", instructions: "You are an upbeat assistant that writes beautifully.");
Console.WriteLine(await agent.RunAsync("Write a haiku about Microsoft Agent Framework."));
Create a simple Agent, using OpenAI Responses, that writes a haiku about the Microsoft Agent Framework
// dotnet add package Microsoft.Agents.AI.OpenAI
using System;
using OpenAI;
using OpenAI.Responses;
// Replace the <apikey> with your OpenAI API key.
var agent = new OpenAIClient("<apikey>")
.GetResponsesClient()
.AsAIAgent(model: "gpt-5.4-mini", name: "HaikuBot", instructions: "You are an upbeat assistant that writes beautifully.");
Console.WriteLine(await agent.RunAsync("Write a haiku about Microsoft Agent Framework."));
More Examples & Samples
Python
- Getting Started: progressive tutorial from hello-world to hosting
- Agent Concepts: deep-dive samples by topic (tools, middleware, providers, etc.)
- Workflows: workflow creation and integration with agents
- Hosting: A2A, Azure Functions, Durable Task hosting
- End-to-End: full applications, evaluation, and demos
.NET
- Getting Started: progressive tutorial from hello agent to hosting
- Agent Concepts: basic agent creation and tool usage
- Agent Providers: samples showing different agent providers
- Workflows: advanced multi-agent patterns and workflow orchestration
- Hosting: A2A, Durable Agents, Durable Workflows
- End-to-End: full applications and demos
Troubleshooting
Authentication
| Problem | Cause | Fix |
|---|---|---|
| Authentication errors when using Azure credentials | Not signed in to Azure CLI | Run az login before starting your app |
| API key errors | Wrong or missing API key | Verify the key and ensure it's for the correct resource/provider |
Tip:
DefaultAzureCredentialis convenient for development but in production, consider using a specific credential (e.g.,ManagedIdentityCredential) to avoid latency issues, unintended credential probing, and potential security risks from fallback mechanisms.
Environment Variables
The samples typically read configuration from environment variables. Common required variables:
| Variable | Used by | Purpose |
|---|---|---|
AZURE_OPENAI_ENDPOINT |
Azure OpenAI samples | Your Azure OpenAI resource URL |
AZURE_OPENAI_DEPLOYMENT_NAME |
Azure OpenAI samples | Model deployment name (e.g. gpt-4o-mini) |
AZURE_AI_PROJECT_ENDPOINT |
Microsoft Foundry samples | Your Microsoft Foundry project endpoint |
AZURE_AI_MODEL_DEPLOYMENT_NAME |
Microsoft Foundry samples | Model deployment name |
OPENAI_API_KEY |
OpenAI (non-Azure) samples | Your OpenAI platform API key |
Contributor Resources
Important Notes
Important
If you use Microsoft Agent Framework to build applications that operate with any third-party servers, agents, code, or non-Azure Direct models (“Third-Party Systems”), you do so at your own risk. Third-Party Systems are Non-Microsoft Products under the Microsoft Product Terms and are governed by their own third-party license terms. You are responsible for any usage and associated costs.
We recommend reviewing all data being shared with and received from Third-Party Systems and being cognizant of third-party practices for handling, sharing, retention and location of data. It is your responsibility to manage whether your data will flow outside of your organization’s Azure compliance and geographic boundaries and any related implications, and that appropriate permissions, boundaries and approvals are provisioned.
You are responsible for carefully reviewing and testing applications you build using Microsoft Agent Framework in the context of your specific use cases, and making all appropriate decisions and customizations. This includes implementing your own responsible AI mitigations such as metaprompt, content filters, or other safety systems, and ensuring your applications meet appropriate quality, reliability, security, and trustworthiness standards. See also: Transparency FAQ
