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  • Open-source PyTorch framework for multi-agent systems to learn and analyze emergent communication protocols in cooperative reinforcement learning tasks.
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    What is Emergent Communication in Agents?
    Emergent Communication in Agents is an open-source PyTorch framework designed for researchers exploring how multi-agent systems develop their own communication protocols. The library offers flexible implementations of cooperative reinforcement learning tasks, including referential games, combination games, and object identification challenges. Users define speaker and listener agent architectures, specify message channel properties like vocabulary size and sequence length, and select training strategies such as policy gradients or supervised learning. The framework includes end-to-end scripts for running experiments, analyzing communication efficiency, and visualizing emergent languages. Its modular design allows easy extension with new game environments or custom loss functions. Researchers can reproduce published studies, benchmark new algorithms, and probe compositionality and semantics of emergent agent languages.
    Emergent Communication in Agents Core Features
    • Implementations of referential and combination games
    • Configurable speaker-listener agent architectures
    • Customizable message channels (vocabulary, length)
    • Support for policy gradients and supervised learning
    • End-to-end training and evaluation scripts
    • Visualization tools for emergent languages
    • Modular design for adding new environments
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