Comprehensive Hyperparameter-Anpassung Tools for Every Need

Get access to Hyperparameter-Anpassung solutions that address multiple requirements. One-stop resources for streamlined workflows.

Hyperparameter-Anpassung

  • An RL framework offering PPO, DQN training and evaluation tools for developing competitive Pommerman game agents.
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    What is PommerLearn?
    PommerLearn enables researchers and developers to train multi-agent RL bots in the Pommerman game environment. It includes ready-to-use implementations of popular algorithms (PPO, DQN), flexible configuration files for hyperparameters, automatic logging and visualization of training metrics, model checkpointing, and evaluation scripts. Its modular architecture makes it easy to extend with new algorithms, customize environments, and integrate with standard ML libraries such as PyTorch.
  • Vanilla Agents provides ready-to-use implementations of DQN, PPO, and A2C RL agents with customizable training pipelines.
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    What is Vanilla Agents?
    Vanilla Agents is a lightweight PyTorch-based framework that delivers modular and extensible implementations of core reinforcement learning agents. It supports algorithms like DQN, Double DQN, PPO, and A2C, with pluggable environment wrappers compatible with OpenAI Gym. Users can configure hyperparameters, log training metrics, save checkpoints, and visualize learning curves. The codebase is organized for clarity, making it ideal for research prototyping, educational use, and benchmarking new ideas in RL.
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