Comprehensive cooperação entre agentes Tools for Every Need

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cooperação entre agentes

  • Open ACN enables decentralized multi-agent coordination, consensus, and communication to build scalable, autonomous, cross-platform AI agent networks.
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    What is Open ACN?
    Open ACN is a robust AI platforms and frameworks solution designed for building decentralized multi-agent systems. It offers a suite of consensus protocols tailored for agent cooperation, ensuring reliable decision-making across geodistributed nodes. The framework includes modular communication layers, customizable strategy plug-ins, and a built-in simulation environment for end-to-end testing. Developers can define agent behaviors, deploy across Linux, macOS, Windows, or Docker, and leverage real-time logging and monitoring tools. By providing extensible APIs and seamless integration with existing machine learning models, Open ACN simplifies complex orchestration tasks, fostering interoperable, resilient autonomous networks suitable for applications in robotics, supply chain automation, decentralized finance, and IoT.
    Open ACN Core Features
    • Decentralized consensus protocols
    • Modular communication layers
    • Plug-and-play strategy modules
    • Built-in simulation environment
    • Real-time logging and monitoring
    • Extensible Python APIs
  • Implements prediction-based reward sharing across multiple reinforcement learning agents to facilitate cooperative strategy development and evaluation.
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    What is Multiagent-Prediction-Reward?
    Multiagent-Prediction-Reward is a research-oriented framework that integrates prediction models and reward distribution mechanisms for multi-agent reinforcement learning. It includes environment wrappers, neural modules for forecasting peer actions, and customizable reward routing logic that adapts to agent performance. The repository provides configuration files, example scripts, and evaluation dashboards to run experiments on cooperative tasks. Users can extend the code to test novel reward functions, integrate new environments, and benchmark against established multi-agent RL algorithms.
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