Reinforcement Learning for Robotic-Arms

To apply Reinforcement Learning techniques in training Trossen Aloha Stationary Robot Arms to autonomously perform complex, unstructured tasks. This project aims to enhance the adaptability and efficiency of robotic systems in dynamic environments, supporting the company's goal of developing intelligent automation solutions through advanced machine learning methods.

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Team Photo
Team Photo
Problem Statement/Summary

Using Reinforcement Learning, this project trains Trossen ALOHA robot arms to perform complex, unstructured tasks autonomously, bridging the gap between simulation and real-world execution through careful data collection, testing, and system refinement.