Comprehensive teste de algoritmos Tools for Every Need

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teste de algoritmos

  • Gym-Recsys provides customizable OpenAI Gym environments for scalable training and evaluation of reinforcement learning recommendation agents
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    What is Gym-Recsys?
    Gym-Recsys is a toolbox that wraps recommendation tasks into OpenAI Gym environments, allowing reinforcement learning algorithms to interact with simulated user-item matrices step by step. It provides synthetic user behavior generators, supports loading popular datasets, and delivers standard recommendation metrics like Precision@K and NDCG. Users can customize reward functions, user models, and item pools to experiment with different RL-based recommendation strategies in a reproducible manner.
  • Gomoku Battle is a Python framework enabling developers to build, test, and pit AI agents in Gomoku games.
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    What is Gomoku Battle?
    At its core, Gomoku Battle provides a robust simulation environment where AI agents adhere to a JSON-based protocol to receive board state updates and submit move decisions. Developers can integrate custom strategies by implementing simple Python interfaces, leveraging provided sample bots for reference. The built-in tournament manager automates scheduling of round-robin and elimination matches, while detailed logs capture metrics like win rates, move times, and game histories. Outputs can be exported as CSV or JSON for further statistical analysis. The framework supports parallel execution to accelerate large-scale experiments and can be extended to include custom rule variations or training pipelines, making it ideal for research, education, and competitive AI development.
  • Generate meaningful text-based data for AI and machine learning models.
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    What is Mockaroni AI?
    Mockaroni is a platform designed to generate custom synthetic text data that looks and feels similar to real-world data. The generated data can be used for various applications such as training AI and machine learning models, testing algorithms, and more. With customizable templates and advanced generation algorithms, Mockaroni ensures your models are well-prepared for real-world data scenarios, enhancing their efficiency and effectiveness.
  • ANAC-agents provides pre-built automated negotiation agents for bilateral multi-issue negotiations under the ANAC competition framework.
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    What is ANAC-agents?
    ANAC-agents is a Python-based framework that centralizes multiple negotiation agent implementations for the Automated Negotiating Agents Competition (ANAC). Each agent within the repository embodies distinct strategies for utility modeling, proposal generation, concession tactics, and acceptance criteria, facilitating comparative studies and rapid prototyping. Users can define negotiation domains with custom issues and preference profiles, then simulate bilateral negotiations or tournament-style competitions across agents. The toolkit includes configuration scripts, evaluation metrics, and logging utilities to analyze negotiation dynamics. Researchers and developers can extend existing agents, test novel algorithms, or integrate external learning modules, accelerating innovation in automated bargaining and strategic decision-making under incomplete information.
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