Some checks are pending
CodeQL / Analyze (csharp) (push) Waiting to run
CodeQL / Analyze (python) (push) Waiting to run
dotnet-build-and-test / paths-filter (push) Waiting to run
dotnet-build-and-test / dotnet-build-and-test (Debug, windows-latest, net9.0) (push) Blocked by required conditions
dotnet-build-and-test / dotnet-build-and-test (Release, integration, true, ubuntu-latest, net10.0) (push) Blocked by required conditions
dotnet-build-and-test / dotnet-build-and-test (Release, integration, true, windows-latest, net472) (push) Blocked by required conditions
dotnet-build-and-test / dotnet-build-and-test (Release, ubuntu-latest, net8.0) (push) Blocked by required conditions
dotnet-build-and-test / dotnet-build-and-test-check (push) Blocked by required conditions
1.6 KiB
1.6 KiB
About Microsoft Agent Framework
Microsoft Agent Framework is a comprehensive .NET library for building, orchestrating, and deploying AI agents and multi-agent workflows. The framework provides everything from simple chat agents to complex multi-agent systems with graph-based orchestration capabilities.
Key Features
- Multi-Agent Orchestration: Coordinate multiple agents using sequential, concurrent, group chat, and handoff patterns
- Graph-based Workflows: Connect agents and functions with streaming, checkpointing, and human-in-the-loop capabilities, with both imperative or declarative workflow support
- Multiple Provider Support: Seamlessly integrate with various LLM providers with more being added continuously
- Extensible Middleware: Flexible request/response processing with custom pipelines and exception handling
- Built-in Observability: OpenTelemetry integration for distributed tracing, monitoring, and debugging
- Cross-Platform: Compatible with .NET 8.0, .NET Standard 2.0, and .NET Framework for broad deployment options
Whether you're building simple AI assistants or complex multi-agent systems, Microsoft Agent Framework provides the tools and abstractions needed to create robust, scalable AI applications in .NET.
Getting Started ⚡
- Learn more at the documentation site.
- Join the Discord community.
- Follow the team on Semantic Kernel blog.
- Check out the GitHub repository for the latest updates.