Jack Lu

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I’m a third-year Computer Science Ph.D. student in the CILVR lab at NYU Courant, advised by Mengye Ren and collaborating with Greg Durrett and Seunghoon Hong. My research is supported by the NSERC PGS-D Scholarship. Prior to joining NYU, I received my bachelor’s degree in Computer Science and Mathematics from the University of Waterloo.

I’m currently interested in:

  • LLM Reasoning: understanding and improving how LLMs solve and verify problems that require complex reasoning.
  • Adaptive Models and Agents: efficiently adapting diffusion and language models to out-of-distribution tasks, new knowledge, and dynamic environments.

Previously, I did research and software engineering for autonomous driving and ML for health at NVIDIA, Waabi/Uber-ATG, IBM, and DarwinAI. I was fortunate to have worked with Raquel Urtasun, Sanja Fidler, and Alexander Wong.

I’m happy to discuss collaboration, mentorship, and research in general. You can email me for a virtual or in-person chat. My office is at 60 5th Ave, New York.

news

Jan 31, 2026 I will join NVIDIA as a research intern this summer to work on reasoning vision-language-action models :)
Jan 30, 2026 When Does Verification Pay Off? A Closer Look at LLMs as Solution Verifiers is featured by NYU Center of Data Science here.
Jan 28, 2026 SkillFactory: Self-Distillation For Learning Cognitive Behaviors is accepted by ICLR 2026.
Jul 07, 2025 Context Tuning for In-Context Optimization is accepted by the ICML 2025 Test-Time Adaptation Workshop.
Jul 01, 2024 ProCreate, Don’t Reproduce! Propulsive Energy Diffusion for Creative Generation is accepted by ECCV 2024.

selected publications

  1. ArXiv
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    When Does Verification Pay Off? A Closer Look at LLMs as Solution Verifiers
    Jack Lu*Ryan Teehan*Jinran Jin, and Mengye Ren
    Dec 2025
  2. ArXiv
    skillfactory.png
    SkillFactory: Self-Distillation For Learning Cognitive Behaviors
    Dec 2025
  3. ICML
    context-tuning.png
    Context Tuning for In-Context Optimization
    Jack LuRyan TeehanZhenbang Yang, and Mengye Ren
    ICML Test-Time Adaptation Workshop , Jul 2025
  4. ProCreate, Don’t Reproduce! Propulsive Energy Diffusion for Creative Generation
    Jack LuRyan Teehan, and Mengye Ren
    European Conference on Computer Vision (ECCV) , Oct 2024
  5. SceneControl: Diffusion for Controllable Traffic Scene Generation
    IEEE International Conference on Robotics and Automation (ICRA) , May 2024
  6. Fibrosis-Net: A Tailored Deep Convolutional Neural Network Design for Prediction of Pulmonary Fibrosis Progression From Chest CT Images
    Frontiers in Artificial Intelligence , Nov 2021