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catalog / Orchestration / CrewAI
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CrewAI

Role-based multi-agent orchestration framework — define a crew of AI agents with distinct roles, tools, and goals that collaborate autonomously.

@ai-supply
Установки124k
Рейтинг★ 4.8
Отзывы41
↗ Исходный репозиторий

CrewAI

CrewAI is a lean, fast multi-agent orchestration framework built on a role-playing metaphor. You define a "crew" of agents, each with a distinct role, backstory, goal, and toolset. CrewAI handles task delegation, inter-agent communication, and result synthesis automatically.

Key features

  • Role-based agents — give each agent a persona, goal, and backstory for more focused behavior
  • Sequential and hierarchical processes — choose how tasks flow between agents
  • Tool use — agents can use search, code execution, file I/O, and custom tools
  • Memory — short-term, long-term, and entity memory across tasks
  • Async execution — run agents concurrently for faster pipelines
  • Model-agnostic — works with OpenAI, Anthropic, Groq, Ollama, and more

Quick start

npx ai-supply add crewai-multi-agent

# Or install directly
pip install crewai crewai-tools
from crewai import Agent, Task, Crew

researcher = Agent(
    role="Research Analyst",
    goal="Find key facts about a topic",
    backstory="You are a meticulous researcher.",
    verbose=True
)

writer = Agent(
    role="Content Writer",
    goal="Write a concise summary from research findings",
    backstory="You craft clear, engaging summaries.",
    verbose=True
)

task1 = Task(description="Research the history of the MCP protocol", agent=researcher)
task2 = Task(description="Write a 3-paragraph summary of the research", agent=writer)

crew = Crew(agents=[researcher, writer], tasks=[task1, task2])
result = crew.kickoff()
print(result)

Curated mirror of the open-source CrewAI project (MIT). Install upstream from the repository.

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