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Haohan Chi

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2 papers
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2

NeurIPS Conference 2025 Conference Paper

Impromptu VLA: Open Weights and Open Data for Driving Vision-Language-Action Models

  • Haohan Chi
  • Huan-ang Gao
  • Ziming Liu
  • Jianing Liu
  • Chenyu Liu
  • Jinwei Li
  • Kaisen Yang
  • Yangcheng Yu

Vision-Language-Action (VLA) models for autonomous driving show promise but falter in unstructured corner case scenarios, largely due to a scarcity of targeted benchmarks. To address this, we introduce Impromptu VLA. Our core contribution is the Impromptu VLA Dataset: over 80, 000 meticulously curated video clips, distilled from over 2M source clips sourced from 8 open-source large-scale datasets. This dataset is built upon our novel taxonomy of four challenging unstructured categories and features rich, planning-oriented question-answering annotations and action trajectories. Crucially, experiments demonstrate that VLAs trained with our dataset achieve substantial performance gains on established benchmarks—improving closed-loop NeuroNCAP scores and collision rates, and reaching near state-of-the-art L2 accuracy in open-loop nuScenes trajectory prediction. Furthermore, our Q&A suite serves as an effective diagnostic, revealing clear VLM improvements in perception, prediction, and planning. Our code, data and models are available at https: //github. com/ahydchh/Impromptu-VLA

NeurIPS Conference 2025 Conference Paper

Straight-Line Diffusion Model for Efficient 3D Molecular Generation

  • Yuyan Ni
  • Shikun Feng
  • Haohan Chi
  • Bowen Zheng
  • Huan-ang Gao
  • Wei-Ying Ma
  • Zhi-Ming Ma
  • Yanyan Lan

Diffusion-based models have shown great promise in molecular generation but often require a large number of sampling steps to generate valid samples. In this paper, we introduce a novel Straight-Line Diffusion Model (SLDM) to tackle this problem, by formulating the diffusion process to follow a linear trajectory. The proposed process aligns well with the noise sensitivity characteristic of molecular structures and uniformly distributes reconstruction effort across the generative process, thus enhancing learning efficiency and efficacy. Consequently, SLDM achieves state-of-the-art performance on 3D molecule generation benchmarks, delivering a 100-fold improvement in sampling efficiency.