YohannTPN/CrossyRoadAI
AI agent that learns to play Crossy Road using genetic algorithms and neural networks. 500 agents evolve over generations, discovering optimal strategies to navigate roads, rivers, and obstacles. Features real-time visualization, exponential fitness scaling, and anticipatory planning. Pure Java, no dependencies.
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Java
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Last pushed
Jan 18, 2026
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