docs: improve assets (#2777)

* add assets

* add libero results pifast:

* update

* update

* update size

* update naems:
:

* update training tokenizer
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Jade Choghari
2026-01-12 13:33:28 +01:00
committed by GitHub
parent 91ff9c4975
commit 473f1bd0e0
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@@ -8,6 +8,12 @@ X Square Robots WALL-OSS is now integrated into Hugging Faces LeRobot ecos
The WALL-OSS team is building the embodied foundation model to capture and compress the world's most valuable data: the continuous, high-fidelity stream of physical interaction. By creating a direct feedback loop between the model's decisions and the body's lived experience, the emergence of a truly generalizable intelligence is enabled—one that understands not just how the world works, but how to act effectively within it.
<img
src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/lerobot/walloss-lerobot-paper.png"
alt="An overview of WALL-OSS"
width="85%"
/>
Technically, WALL-OSS introduces a tightly coupled multimodal architecture (tightly-coupled MoE structure) that integrates both discrete and continuous action modeling strategies. Through a two-stage training pipeline (Inspiration → Integration), the model gradually unifies semantic reasoning and high-frequency action generation. Its core innovations include:
- **Embodied perceptionenhanced multimodal pretraining**: Large-scale training on unified visionlanguageaction data to strengthen spatial, causal, and manipulation understanding.