Загрузка видео...

Не удалось загрузить видео

На главную

Introducing OFT—an Optimized Fine-Tuning recipe for VLAs! Fine-tuning OpenVLA w/ OFT, we see: -25-50x faster inference ⚡️ -SOTA 97.1% avg SR in LIBERO 💪 -high-freq control w/ 7B model on real bimanual robot -outperforms π₀, RDT-1B, DiT Policy, MDT, Diffusion Policy, ACT 🧵👇

84,206 просмотров • 1 год назад •via X (Twitter)

Комментарии: 11

Фото профиля Moo Jin Kim
Moo Jin Kim1 год назад

We study key design decisions when fine-tuning VLAs to novel robots/tasks, exploring different: -action decoding schemes (autoregressive vs parallel) -action representations (discrete vs continuous) -learning objectives (next-token prediction vs L1 regression vs diffusion) 2/9

Фото профиля Moo Jin Kim
Moo Jin Kim1 год назад

OpenVLA originally uses autoregressive decoding, discrete actions, & next-token prediction for learning. We find that fine-tuning OpenVLA w/ OFT—parallel decoding w/ action chunking, continuous actions, and L1 regression—dramatically boosts inference speed + success rate! 3/9

Фото профиля Moo Jin Kim
Moo Jin Kim1 год назад

In the LIBERO sim benchmark, OFT improves OpenVLA’s action generation throughput by 26x and avg success from 76.5% to 97.1% (SOTA). 🦾 Shows that just plain old imitation learning w/ a strong base VLA + well-designed fine-tuning recipe can go quite far! 4/9

Фото профиля Moo Jin Kim
Moo Jin Kim1 год назад

In real ALOHA robot tasks, we add FiLM for better language grounding & call the augmented recipe "OFT+". OFT+ speeds up OpenVLA inference by 43x, helps it outperform fine-tuned VLAs (RDT-1B + pi0) and from-scratch policies (ACT + Diff Policy), & enhances language following. 5/9

Фото профиля Moo Jin Kim
Moo Jin Kim1 год назад

The large gains in inference efficiency give us headroom to process additional model inputs. Now with OFT+, OpenVLA can generate 14-D dual-arm robot actions at 78 Hz, even w/ 3 input images (768 total visual patches)! (See the OpenVLA-OFT+ figure for architecture details.) 6/9

Фото профиля Moo Jin Kim
Moo Jin Kim1 год назад

We discovered surprising things in this project & hope you learn from it, too! We open-source our project so that anyone can use the OFT recipe & fine-tuned VLAs. Hope the resources are useful to the community! 🤗 Paper, code, & models below: 👉 👈 7/9

Фото профиля Moo Jin Kim
Moo Jin Kim1 год назад

Very grateful to @chelseabfinn and @percyliang who provided super helpful advice all throughout this project. Thank you! 🙏 Also, thank you to everyone who used OpenVLA in their own works. We hope that our new fine-tuning recipe is also useful to robot learning folks! 8/9

Фото профиля Moo Jin Kim
Moo Jin Kim1 год назад

Bonus video: Here's OpenVLA-OFT+ completing tasks and resetting the environment by itself—fully autonomously, via imitation learning only. It executes the forward task (scoop X into bowl) & backward task (pour X into container) in 6 consecutive episodes. (15x video speed) 9/9

Фото профиля AssemblyAI
AssemblyAI1 год назад

Our speech-to-text models are the most accurate on the market with top rankings across industry benchmarks. - The highest accuracy rates—up to 95% - Up to 30% fewer hallucinations than other leaders - Low latency—63 minutes converts in 35 seconds Try via API for free today 👇

Фото профиля Ruihan Yang
Ruihan Yang1 год назад

Great Work, btw, the link on the website seems still pointing to the OpenVLA

Фото профиля Moo Jin Kim
Moo Jin Kim1 год назад

@RchalYang Thank you! Fixed.

Похожие видео