You can generate optimized C, C++, and CUDA ® code to deploy trained policies on microcontrollers and GPUs. Through the ONNX™ model format, existing policies can be imported from deep learning frameworks such as TensorFlow™ Keras and PyTorch (with Deep Learning Toolbox). To improve training performance, simulations can be run in parallel on multiple CPUs, GPUs, computer clusters, and the cloud (with Parallel Computing Toolbox and MATLAB Parallel Server). You can experiment with hyperparameter settings, monitor training progress, and simulate trained agents either interactively through the app or programmatically. You can evaluate the single- or multi-agent reinforcement learning algorithms provided in the toolbox or develop your own. The toolbox lets you represent policies and value functions using deep neural networks or look-up tables and train them through interactions with environments modeled in MATLAB or Simulink. You can use these policies to implement controllers and decision-making algorithms for complex applications such as resource allocation, robotics, and autonomous systems. Reinforcement Learning Toolbox provides an app, functions, and a Simulink block for training policies using reinforcement learning algorithms, including DQN, PPO, SAC, and DDPG.
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