
Semantic Kernel
Open-source SDK for orchestrating AI models within conventional code.
Pārskats
Galvenās funkcijas
- Prompt and plugin abstractions
- Agent and planner orchestration
- Memory and vector store connectors
- Multi-language SDK support
- Integration with Azure and OpenAI services
- Telemetry and dependency injection hooks
Lietošanas gadījumi
Embed LLMs into enterprise C# applications
Use the SDK to integrate OpenAI or Azure OpenAI models into existing .NET codebases, treating AI capabilities as composable functions alongside native code.
Build multi-step AI agents and planners
Leverage planner and agent abstractions to orchestrate prompts, plugins, and tools into automated workflows that execute complex tasks.
Add memory and retrieval to AI workflows
Connect vector stores through memory abstractions to give applications context-aware recall, supporting RAG patterns across supported model providers.
Swap AI providers without rewriting apps
Use pluggable model connectors to switch between OpenAI, Azure OpenAI, and Hugging Face, reducing vendor lock-in for production AI systems.
Plusi un mīnusi
Plusi
- Open source and backed by Microsoft
- Supports C#, Python, and Java
- Pluggable model and memory providers
- Fits into existing enterprise codebases
Mīnusi
- Steeper learning curve than no-code tools
- APIs have evolved with breaking changes
- Documentation can lag behind releases
Atsauksmes
Vidējais no 5 vērtējumiem.
Pieslēdzies, lai atstātu atsauksmi.
Carlos Mendoza
Skeptical, then convinced
I went in skeptical — most tools in this space overpromise. It actually delivers on agent and planner orchestration, and open source and backed by Microsoft caught me off guard. APIs have evolved with breaking changes is why this isn't a perfect score, still, I'd recommend giving it a real trial.
Nadia Petrova
Does the job
Pretty happy overall. Multi-language SDK support just works and fits into existing enterprise codebases. Documentation can lag behind releases can be annoying, but no dealbreakers — I'd recommend it to a friend without hesitating.
Margaret Whitfield
Compared a few options
Evaluated this against two competitors. Where it wins: multi-language SDK support and pluggable model and memory providers. On balance the feature set — especially agent and planner orchestration — justifies the 5 stars for our use case.
Leila Hassan
Solid for our team
We rolled this out across the team last quarter and open source and backed by Microsoft. Agent and planner orchestration fits neatly into how we already work, and agent and planner orchestration removed a step we used to do by hand. Steeper learning curve than no-code tools, which is the main caveat, but it has held up under daily use.
Aisha Khan
Use it every day
Honestly didn't expect to like it this much. Integration with Azure and OpenAI services is exactly what I needed, and supports C#, Python, and Java. but I reach for it almost every day now and it just clicks.
Jautājumi
Vēl nav jautājumu — uzdod pirmais.
Uzdod jautājumu
AI Agents Frameworks alternatīvas
Rig
AI Agents Frameworks
Rust framework for building LLM-powered applications with type-safe ergonomics.

Mission Squad
AI Agents Frameworks
Agentic AI platform for building and deploying cooperative multi-agent workflows.

Airtop API
AI Agents Frameworks
Cloud browser automation API built for AI agents to navigate, extract, and act on the web.

Plansom
AI Agents Frameworks
AI-powered work OS that turns business goals into prioritized, executable plans.

Kortix Suna AI
AI Agents Frameworks
Open-source AI agent that acts as a virtual employee for complex, multi-step tasks.

Burr Framework
AI Agents Frameworks
Open-source Python framework for building stateful, decision-making applications like agents and chatbots.
PraisonAI
AI Agents Frameworks
Framework for building autonomous AI agents that automate tasks and solve complex problems.

FloAI
AI Agents Frameworks
Open-source Python framework for building composable AI agents and workflows.








