Crewai Multi Agent
Skill Verified ActiveMulti-agent orchestration framework for autonomous AI collaboration. Use when building teams of specialized agents working together on complex tasks, when you need role-based agent collaboration with memory, or for production workflows requiring sequential/hierarchical execution. Built without LangChain dependencies for lean, fast execution.
To empower developers to build autonomous AI agents that collaborate effectively on complex tasks, enabling sophisticated multi-agent systems and production workflows.
Features
- Multi-agent orchestration framework
- Role-based agent collaboration with memory
- Sequential/hierarchical task execution
- Standalone, no LangChain dependencies
- Support for custom tools and YAML configuration
- Event-driven flows for complex workflows
Use Cases
- Building teams of specialized AI agents
- Enabling autonomous collaboration between agents
- Implementing role-based task delegation (e.g., researcher, writer)
- Creating production workflows requiring memory and observability
Non-Goals
- General-purpose LLM app development (use LangChain)
- Complex stateful workflows with cycles (use LangGraph)
- Acting as a replacement for individual LLM providers
Installation
First, add the marketplace
/plugin marketplace add Orchestra-Research/AI-Research-SKILLs/plugin install AI-Research-SKILLs@ai-research-skillsQuality Score
VerifiedTrust Signals
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