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  • An open-source framework enabling training, deployment, and evaluation of multi-agent reinforcement learning models for cooperative and competitive tasks.
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    What is NKC Multi-Agent Models?
    NKC Multi-Agent Models provides researchers and developers with a comprehensive toolkit for designing, training, and evaluating multi-agent reinforcement learning systems. It features a modular architecture where users define custom agent policies, environment dynamics, and reward structures. Seamless integration with OpenAI Gym allows for rapid prototyping, while support for TensorFlow and PyTorch enables flexibility in selecting learning backends. The framework includes utilities for experience replay, centralized training with decentralized execution, and distributed training across multiple GPUs. Extensive logging and visualization modules capture performance metrics, facilitating benchmarking and hyperparameter tuning. By simplifying the setup of cooperative, competitive, and mixed-motive scenarios, NKC Multi-Agent Models accelerates experimentation in domains such as autonomous vehicles, robotic swarms, and game AI.
    NKC Multi-Agent Models Core Features
    • Modular agent architecture for custom policies
    • Integration with OpenAI Gym environments
    • Support for TensorFlow and PyTorch backends
    • Centralized training with decentralized execution
    • Utilities for experience replay and multi-GPU distributed training
    • Configuration via YAML and Python scripts
    • Logging and visualization tools for metrics analysis
    • Pre-built cooperative and competitive scenario templates
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