Content pfp
Content
@
0 reply
0 recast
0 reaction

𝚐π”ͺ𝟾𝚑𝚑𝟾 pfp
𝚐π”ͺ𝟾𝚑𝚑𝟾
@gm8xx8
The Ο€β‚€ release introduces a VLA generalist model for dexterous tasks like laundry folding and table bussing. Ο€β‚€ uses a transformer with flow matching, combining VLM pre-training benefits and continuous action chunks at 50Hz, and is pre-trained on a broad dataset. With distinct pre-training and post-training stages, it supports zero-shot and fine-tuned task adaptation, demonstrating robustness to external interventions, as seen in an uncut video of Ο€β‚€ folding laundry with a single model. Ο€β‚€ and its smaller, non-VLM version are evaluated against: - Octo and OpenVLA for zero-shot VLA tasks - ACT and Diffusion Policy for single tasks Ο€β‚€ surpasses in zero-shot accuracy, fine-tuning for new tasks, and language-following. Compute-parity ablations highlight trade-offs between VLA backbone gains and pre-training costs. Hierarchical methods like RT-H aid complex tasks needing low-level control and high-level planning, though Pi_0’s robust architecture largely drives its performance. (link below)
2 replies
2 recasts
148 reactions

𝚐π”ͺ𝟾𝚑𝚑𝟾 pfp
𝚐π”ͺ𝟾𝚑𝚑𝟾
@gm8xx8
☺︎ https://www.physicalintelligence.company/blog/pi0
0 reply
2 recasts
6 reactions