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智能遊戲策略

  • Open-source Python toolkit offering random, rule-based pattern recognition, and reinforcement learning agents for Rock-Paper-Scissors.
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    What is AI Agents for Rock Paper Scissors?
    AI Agents for Rock Paper Scissors is an open-source Python project that demonstrates how to build, train, and evaluate different AI strategies—random play, rule-based pattern recognition, and reinforcement learning (Q-learning)—in the classic Rock-Paper-Scissors game. It provides modular agent classes, a configurable game runner, performance logging, and visualization utilities. Users can easily swap agents, adjust learning parameters, and explore AI behavior in competitive scenarios.
    AI Agents for Rock Paper Scissors Core Features
    • Random play agent
    • Rule-based pattern recognition agent
    • Q-learning reinforcement learning agent
    • Configurable game runner
    • Performance logging and visualization
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