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代理人編排

  • Agent API by HackerGCLASS: a Python RESTful framework for deploying AI agents with custom tools, memory, and workflows.
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    What is HackerGCLASS Agent API?
    HackerGCLASS Agent API is an open-source Python framework that exposes RESTful endpoints to run AI agents. Developers can define custom tool integrations, configure prompt templates, and maintain agent state and memory across sessions. The framework supports orchestrating multiple agents in parallel, handling complex conversational flows, and integrating external services. It simplifies deployment via Uvicorn or other ASGI servers and offers extensibility with plugin modules, enabling rapid creation of domain-specific AI agents for diverse use cases.
  • An open-source AI agent framework facilitating coordinated multi-agent task orchestration with GPT integration.
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    What is MCP Crew AI?
    MCP Crew AI is a developer-focused framework that simplifies the creation and coordination of GPT-based AI agents in collaborative teams. By defining manager, worker, and monitor agent roles, it automates task delegation, execution, and oversight. The package offers built-in support for OpenAI’s API, a modular architecture for custom agent plugins, and a CLI for running and monitoring your Crew. MCP Crew AI accelerates multi-agent system development, making it easier to build scalable, transparent, and maintainable AI-driven workflows.
  • An open-source Python framework enabling multiple AI agents to collaboratively solve complex tasks via role-based communication.
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    What is Multi-Agent ColComp?
    Multi-Agent ColComp is an extensible, open-source framework for orchestrating a team of AI agents to work together on complex tasks. Developers can define distinct agent roles, configure communication channels, and share contextual data through a unified memory store. The library includes plug-and-play components for negotiation, coordination, and consensus building. Example setups demonstrate collaborative text generation, distributed planning, and multi-agent simulation. Its modular design supports easy extension, enabling teams to prototype and evaluate multi-agent strategies rapidly in research or production environments.
  • Nefi enables non-technical users to design, deploy, and manage custom AI agents via a no-code workflow builder.
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    What is Nefi.ai?
    Nefi.ai is a cloud-based platform for designing, training, and orchestrating AI-powered agents without writing code. It offers a visual canvas to assemble blocks like LLM modules, vector database retrieval, external API calls, conditional logic, and memory stores. Agents can be trained on custom documents or linked to enterprise data. Once built, they deploy as chatbots, email assistants, or scheduled tasks. Advanced features include monitoring dashboards, version control, role-based access, and integrations with Slack, Teams, and Zapier.
  • OpenAGI lets you build, deploy, and manage autonomous AI agents tailored for specific tasks and workflows.
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    What is OpenAGI?
    OpenAGI offers a unified environment for creating autonomous AI agents that perform tasks like data extraction, document processing, customer support automation, and research assistance. Users can configure agent behaviors through visual workflows, integrate any LLM endpoint, and deploy agents to production with built-in monitoring and logging. The platform streamlines iterative testing, collaboration, and scalability, enabling rapid rollout of intelligent automation solutions.
  • Triagent orchestrates three specialized AI sub-agents—Strategist, Researcher, and Executor—to plan, research, and execute tasks automatically.
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    What is Triagent?
    Triagent provides a tri-agent architecture consisting of Strategist, Researcher, and Executor modules. The Strategist breaks down high-level goals into actionable steps, the Researcher retrieves and synthesizes data from documents, APIs, and web sources, and the Executor performs tasks like generating text, creating files, or invoking HTTP requests. Built on top of OpenAI language models and extensible via a plugin system, Triagent supports memory management, concurrent processing, and external API integrations. Developers can configure prompts, set resource limits, and visualize task progress through a CLI or web dashboard, simplifying multi-step automation pipelines.
  • pyafai is a Python modular framework to build, train, and run autonomous AI agents with plug-in memory and tool support.
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    What is pyafai?
    pyafai is an open-source Python library designed to help developers architect, configure, and execute autonomous AI agents. It offers pluggable modules for memory management to retain context, tool integration for external API calls, observers for environment monitoring, planners for decision making, and an orchestrator to run agent loops. Logging and monitoring features provide visibility into agent performance and behavior. pyafai supports major LLM providers out of the box, enables custom module creation, and reduces boilerplate so teams can rapidly prototype virtual assistants, research bots, and automation workflows with full control over each component.
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