Arka Daw

Distinguished Staff Fellow @ Oak Ridge National Lab (ORNL)

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Hi there! I am a Distinguished Staff Fellow at Oak Ridge National Laboratory (ORNL), and a member of the Center for AI Security Research (CAISER). My research spans several key areas in deep learning, including AI safety, multimodal foundation models, generative AI, and applications of AI for real-world scientific problems. I did my Ph.D. from Virginia Tech on uncertainty quantification for Physics-informed Machine Learning, where I was advised by Anuj Karpatne.

Generally, I am passionate about everything related to deep learning and artificial intelligence. My current research focusses on enhancing the generalizability, robustness and reliability of deep learning models to ensure their safety and trustworthiness. I am also working on developing large-scale foundational models tailored for ecological systems (such as lakes and streams) and geospatial applications (including satellite imagery).

I have also experience working in the industry as a research intern at IBM Research (2022) and Amazon Web Services (AWS) (2021). In 2023, I was honored with the Kafura Graduate Fellowship from the Department of Computer Science at Virginia Tech. Before pursuing my Ph.D., I earned a bachelor’s degree in Electronics Engineering from Jadavpur University.

Recent News

Dec 10, 2024 Three papers accepted at NeurIPS 2024 (One full paper, and two workshop papers):
  1. VLM4Bio (D&B Track): A benchmark to evaluate zero-shot effectiveness of VLMs in organismal biology.
  2. HiPS Attack (Adversarial Frontiers Workshop): A adversarial attack that can selectively conceal target object(s), as if it was absent from the scene.
  3. MissTSM (TSALM Workshop): An imputation free and lightweight time-series modeling framework can that can directly learn from partially observed time-series.
Dec 01, 2024 Four new papers on Arxiv:
  1. ImageDetechBench: A benchmark to compare the effectiveness, robustness and efficiency of passive and watermark based detectors for text-to-image models.
  2. HComp-Net: An explainability tool for discovering evolutionary traits as hierarchical prototypes.
  3. FishVista: A benchmark dataset for identifying biological traits from images.
  4. GFI for Seismic Imaging: A generalized framework for forward and inverse problems in seismic imaging that achieves SOTA performance.
Jul 26, 2024 Co-organized the Summer Tutorial on KGML at Oak Ridge National Laboratory (ORNL).
Jul 15, 2024 Our work PhyloDiffusion got accepted at ECCV 2024.
May 20, 2024 Paper on Lifting Product Fourier Neural Operator (LPFNO) accepted at the AI for Science Workshop at ICML 2024.
Feb 22, 2024 Paper on Modular Compositional Learning (MCL) published at the Journal of Advances in Modeling Earth Systems (JAMES).
Feb 21, 2024 Co-organized the First Bridge Program on KGML at AAAI 2024.
Feb 15, 2024 Paper on MEMTrack published at the Journal of Advanced Intelligent Systems.

Selected Publications

  1. NeurIPS 2024
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    VLM4Bio: A Benchmark Dataset to Evaluate Pretrained Vision-Language Models for Trait Discovery from Biological Images
    M Maruf, Arka Daw, Kazi Sajeed Mehrab, and 8 more authors
    in proceedings of Neural Information Processing Systems (NeurIPS), 2024
  2. ECCV 2024
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    Hierarchical Conditioning of Diffusion Models Using Tree-of-Life for Studying Species Evolution
    Mridul Khurana, Arka Daw, M Maruf, and 8 more authors
    in proceedings of European Conference on Computer Vision (ECCV), 2024
  3. ICML 2023
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    Mitigating propagation failures in physics-informed neural networks using retain-resample-release (r3) sampling
    Arka Daw, Jie Bu, Sifan Wang, and 2 more authors
    In Proceedings of the 40th International Conference on Machine Learning, Honolulu, Hawaii, USA, 2023
  4. KGML Book
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    Physics-guided neural networks (pgnn): An application in lake temperature modeling
    Arka Daw, Anuj Karpatne, William D Watkins, and 2 more authors
    In Knowledge Guided Machine Learning, 2022
  5. NeurIPS 2021
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    Learning compact representations of neural networks using discriminative masking (DAM)
    Jie Bu*Arka Daw*, M Maruf*, and 1 more author
    Advances in Neural Information Processing Systems, 2021
  6. KDD 2021
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    PID-GAN: A GAN Framework based on a Physics-informed Discriminator for Uncertainty Quantification with Physics
    Arka Daw, M. Maruf, and Anuj Karpatne
    In Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery & Data Mining, Virtual Event, Singapore, 2021
  7. SDM 2020
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    Physics-guided architecture (pga) of neural networks for quantifying uncertainty in lake temperature modeling
    Arka Daw, R Quinn Thomas, Cayelan C Carey, and 3 more authors
    In Proceedings of the 2020 siam international conference on data mining, 2020