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Taking a Walk in the OpenAI Gym: Using Decision Transformer to Power Reinforcement Learning
Latest   Machine Learning

Taking a Walk in the OpenAI Gym: Using Decision Transformer to Power Reinforcement Learning

Last Updated on April 1, 2023 by Editorial Team

Author(s): Brent Larzalere

 

Originally published on Towards AI.

Perform Deep Reinforcement Learning using the Decision Transformer


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This article will describe how to use a decision transformer model to perform deep reinforcement learning in the OpenAI gym. PyTorch will be used as the deep learning computational framework.

Reinforcement learning is a subset of machine learning that exists alongside supervised and unsupervised learning. The goal of reinforcement learning is to develop agents (or bots) that learn to take action in such a manner as to maximize the expected cumulative reward of the selected task. For example, a bot learning to play a video game or a finance agent working to maximize the firm’s expected cumulative returns.

The agent learns through… Read the full blog for free on Medium.

 

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