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代理整合

  • An open-source Python framework integrating multi-agent AI models with path planning algorithms for robotics simulation.
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    What is Multi-Agent-AI-Models-and-Path-Planning?
    Multi-Agent-AI-Models-and-Path-Planning provides a comprehensive toolkit for developing and testing multi-agent systems combined with classical and modern path planning methods. It includes implementations of algorithms such as A*, Dijkstra, RRT, and potential fields, alongside customizable agent behavior models. The framework features simulation and visualization modules, allowing seamless scenario creation, real-time monitoring, and performance analysis. Designed for extensibility, users can plug in new planning algorithms or agent decision models to evaluate cooperative navigation and task allocation in complex environments.
  • Open Agent Leaderboard evaluates and ranks open-source AI agents on tasks like reasoning, planning, Q&A, and tool utilization.
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    What is Open Agent Leaderboard?
    Open Agent Leaderboard offers a complete evaluation pipeline for open-source AI agents. It includes a curated task suite covering reasoning, planning, question answering, and tool usage, an automated harness to run agents in isolated environments, and scripts to collect performance metrics such as success rate, runtime, and resource consumption. Results are aggregated and displayed on a web-based leaderboard with filters, charts, and historical comparisons. The framework supports Docker for reproducible setups, integration templates for popular agent architectures, and extensible configurations to add new tasks or metrics easily.
  • Vellum AI: Develop and deploy production-ready LLM-powered applications.
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    What is Vellum?
    Vellum AI provides a comprehensive platform for companies to take their Large Language Model (LLM) applications from prototype to production. With advanced tools such as prompt engineering, semantic search, model versioning, prompt chaining, and rigorous quantitative testing, it allows developers to confidently build and deploy AI-powered features. This platform aids in integrating models with agents, using RAG and APIs to ensure seamless deployment of AI applications.
  • A Python-based AI agent orchestrator supervising interactions between multiple autonomous agents for coordinated task execution and dynamic workflow management.
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    What is Agent Supervisor Example?
    The Agent Supervisor Example repository demonstrates how to orchestrate several autonomous AI agents in a coordinated workflow. Built in Python, it defines a Supervisor class to dispatch tasks, monitor agent status, handle failures, and aggregate responses. You can extend base agent classes, plug in different model APIs, and configure scheduling policies. It logs activities for auditing, supports parallel execution, and offers a modular design for easy customization and integration into larger AI systems.
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