English

RLDX-1 Technical Report

Robotics 2026-05-07 v2 Artificial Intelligence Machine Learning

Abstract

While Vision-Language-Action models (VLAs) have shown remarkable progress toward human-like generalist robotic policies through the versatile intelligence (i.e. broad scene understanding and language-conditioned generalization) inherited from pre-trained Vision-Language Models, they still struggle with complex real-world tasks requiring broader functional capabilities (e.g. motion awareness, long-term memory, and physical sensing). To address this, we introduce RLDX-1, a general-purpose robotic policy for dexterous manipulation built on the Multi-Stream Action Transformer (MSAT), an architecture that unifies these capabilities by integrating heterogeneous modalities through modality-specific streams with cross-modal joint self-attention. RLDX-1 further combines this architecture with system-level design choices, including data synthesis for rare manipulation scenarios, learning procedures specialized for human-like manipulation, and inference optimizations for real-time deployment. Through empirical evaluation, we show that RLDX-1 consistently outperforms recent frontier VLAs (e.g. π0.5\pi_{0.5} and GR00T N1.6) across both simulation benchmarks and real-world tasks that require broad functional capabilities beyond general versatility. In particular, RLDX-1 shows superiority in ALLEX humanoid tasks by achieving success rates of 86.8% while π0.5\pi_{0.5} and GR00T N1.6 achieve around 40%, highlighting the ability of RLDX-1 to control a high-DoF humanoid robot under diverse functional demands. Together, these results position RLDX-1 as a promising step toward reliable VLAs for complex, contact-rich, and dynamic real-world dexterous manipulation.

Keywords

Cite

@article{arxiv.2605.03269,
  title  = {RLDX-1 Technical Report},
  author = {Dongyoung Kim and Huiwon Jang and Myungkyu Koo and Suhyeok Jang and Taeyoung Kim and Beomjun Kim and Byungjun Yoon and Changsung Jang and Daewon Choi and Dongsu Han and Donguk Lee and Heeseung Kwon and Hojin Jeon and Jaehyun Kang and Jaekyoung Bae and Jihyuk Lee and Jimin Lee and John Won and Joonwoo Ahn and Junhyeong Park and Junyoung Sung and Kyungmin Lee and Minseong Han and Minsung Yoon and Sejune Joo and Seonil Son and Seungcheol Park and Seunggeun Cho and Seungjun Moon and Seungku Kim and Yonghoon Dong and Yongjin Cho and Youngchan Kim and Chang Hwan Kim and Dohyeon Kim and Heecheol Kim and Heewon Lee and Hensen Ahn and Hyungkyu Ryu and Hyunsoo Choi and Hyunsoo Shin and Jaeheon Jung and Jaewoo Kim and Jinwook Kim and Joochul Chang and Joonsoo Kim and Junghun Park and Jungwoo Park and Junho Cho and Junhyeok Park and Junwon Lee and Kangwook Lee and Kwanghoon Kim and Kyoungwhan Choe and Manoj Bhadu and Nayoung Oh and Sangjun Kim and Sangwoo Kim and Seunghoon Shim and Seunghyun Kim and Seungjun Lee and Seungyup Ka and Sungryol Yang and Wook Jung and Yashu Shukla and Yeonjae Lee and Yeonwoo Bae and Jinwoo Shin},
  journal= {arXiv preprint arXiv:2605.03269},
  year   = {2026}
}

Comments

Project page: https://rlwrld.ai/rldx-1

R2 v1 2026-07-01T12:49:41.213Z