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Fully differentiable reinforcement learning environments, written in Ivy.

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What is Ivy Gym?

Ivy Gym opens the door for intersectional research between supervised learning (SL), reinforcement learning (RL), and trajectory optimization (TO), by implementing RL environments in a fully differentiable manner.

Specifically, Ivy gym provides differentiable implementations of the classic control tasks from OpenAI Gym, as well
as a new Swimmer task, which illustrates the simplicity of creating new tasks using Ivy. The differentiable nature
of the environments means that the cumulative reward can be directly optimized for in a supervised manner, without
need for reinforcement learning, which is the de facto approach for optimizing cumulative rewards. Ivy currently
supports Jax, TensorFlow, PyTorch, MXNet and Numpy. Check out the [docs](https://ivy-dl.org/gym) for more info!

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