Self-Improving Embodied Foundation Models
–Neural Information Processing Systems
Foundation models trained on web-scale data have revolutionized robotics, but their application to low-level control remains largely limited to behavioral cloning. Drawing inspiration from the success of the reinforcement learning stage in finetuning large language models, we propose a two-stage post-training approach for robotics.
Neural Information Processing Systems
Jun-21-2026, 03:01:30 GMT
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- Machine Learning
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- Information Technology > Artificial Intelligence