<td>π― <strong>Mission</strong></td>
<td>Advance <em>robotic motion control & planning</em> via reinforcement learning</td>
<td>π <strong>Focus</strong></td>
<td>Bridge <em>AI algorithms</em> with <em>real-world robotic systems</em></td>
<td>π± <strong>Vision</strong></td>
<td>Build adaptive, efficient, and robust robotic motion solutions</td>
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π€ Robotic Motion Control
Optimize real-time responsiveness and stability for legged/arm robots
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π§ Reinforcement Learning (RL)
Develop RL algorithms tailored for dynamic robotic environments
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π Motion Planning
Integrate RL with path planning for complex, unstructured scenarios
Weβre eager to partner with researchers, engineers, and teams passionate about robotics & RL:
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π‘ Open to joint research projects on robotic motion control or RL algorithm design
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π€ Welcome contributions to our open-source repositories (check project READMEs for guidelines)
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π€ Interested in sharing insights? Reach out for guest talks or workshop collaborations
Join us to build the next generation of robotic motion technology:
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RL Research Intern (focus on algorithm optimization for robotics)
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Robotics Engineer Intern (focus on hardware-software integration)
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Motion Planning Intern (full-time, for experienced candidates)
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π Organization Website: renforcedynamics.github.io
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π§ Official Email: [email protected]
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π¬ GitHub Discussions: Comment on our projects or start a new thread
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π’ Updates: Follow this repo for team news & project releases
π¬ Letβs shape the future of robotic motion together! π
