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Nova · Professor Researcher · re-ranking top 20…
Sinan Keten

Sinan Keten

· Molecular modeling, adhesive and structural proteins, bioinspired materialsVerified

Northwestern University · Interdisciplinary Biological Sciences

Active 2007–2024

h-index48
Citations8.4k
Papers23268 last 5y
Funding$763k1 active
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Research topics

  • Computer Science
  • Machine Learning
  • Engineering
  • Physics
  • Artificial Intelligence
  • Biochemical engineering
  • Thermodynamics
  • Chemistry
  • Nanotechnology
  • Chemical engineering
  • Algorithm
  • Chemical physics
  • Materials science
  • Environmental engineering
  • Mathematics

Selected publications

  • Forces are not Enough: Benchmark and Critical Evaluation for Machine Learning Force Fields with Molecular Simulations

    arXiv (Cornell University) · 2022 · 162 citations

    • Computer Science
    • Computer Science
    • Machine Learning

    Molecular dynamics (MD) simulation techniques are widely used for various natural science applications. Increasingly, machine learning (ML) force field (FF) models begin to replace ab-initio simulations by predicting forces directly from atomic structures. Despite significant progress in this area, such techniques are primarily benchmarked by their force/energy prediction errors, even though the practical use case would be to produce realistic MD trajectories. We aim to fill this gap by introducing a novel benchmark suite for learned MD simulation. We curate representative MD systems, including water, organic molecules, a peptide, and materials, and design evaluation metrics corresponding to the scientific objectives of respective systems. We benchmark a collection of state-of-the-art (SOTA) ML FF models and illustrate, in particular, how the commonly benchmarked force accuracy is not well aligned with relevant simulation metrics. We demonstrate when and how selected SOTA methods fail, along with offering directions for further improvement. Specifically, we identify stability as a key metric for ML models to improve. Our benchmark suite comes with a comprehensive open-source codebase for training and simulation with ML FFs to facilitate future work.

  • Hierarchically structured bioinspired nanocomposites

    Nature Materials · 2022 · 537 citations

    • Computer Science
    • Nanotechnology
    • Computer Science
  • Mesoscopic and multiscale modelling in materials

    Nature Materials · 2021 · 370 citations

    Senior authorCorresponding
    • Computer Science
    • Computer Science
    • Algorithm
  • Molecular insights into charged nanofiltration membranes: Structure, water transport, and water diffusion

    Journal of Membrane Science · 2021 · 50 citations

    • Chemistry
    • Chemical engineering
    • Chemical physics

Recent grants

Frequent coauthors

  • Wenjie Xia

    Iowa State University

    41 shared
  • Markus J. Buehler

    37 shared
  • Jan Carmeliet

    28 shared
  • Dominique Derome

    26 shared
  • Zhaoxu Meng

    Clemson University

    22 shared
  • Karol Kulasinski

    Lawrence Berkeley National Laboratory

    21 shared
  • Robert Sinko

    Northern Illinois University

    20 shared
  • Mingyang Chen

    Chengdu University of Technology

    19 shared
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