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Laxmikant V. Kale

Laxmikant V. Kale

· Research Professor & Paul and Cynthia Saylor Professor EmeritusVerified

University of Illinois Urbana-Champaign · Computer Science

Active 1984–2024

h-index55
Citations33.6k
Papers90731 last 5y
Funding$5.2M
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Research topics

  • Computer Science
  • Chemistry
  • Parallel computing
  • Operating system
  • Computational science
  • Physics
  • Computational chemistry

Selected publications

  • Scalable molecular dynamics on CPU and GPU architectures with NAMD

    The Journal of Chemical Physics · 2020 · 3184 citations

    • Computer Science
    • Computer Science
    • Parallel computing

    NAMDis a molecular dynamics program designed for high-performance simulations of very large biological objects on CPU- and GPU-based architectures. NAMD offers scalable performance on petascale parallel supercomputers consisting of hundreds of thousands of cores, as well as on inexpensive commodity clusters commonly found in academic environments. It is written in C++ and leans on Charm++ parallel objects for optimal performance on low-latency architectures. NAMD is a versatile, multipurpose code that gathers state-of-the-art algorithms to carry out simulations in apt thermodynamic ensembles, using the widely popular CHARMM, AMBER, OPLS, and GROMOS biomolecular force fields. Here, we review the main features of NAMD that allow both equilibrium and enhanced-sampling molecular dynamics simulations with numerical efficiency. We describe the underlying concepts utilized by NAMD and their implementation, most notably for handling long-range electrostatics; controlling the temperature, pressure, and pH; applying external potentials on tailored grids; leveraging massively parallel resources in multiple-copy simulations; and hybrid quantum-mechanical/molecular-mechanical descriptions. We detail the variety of options offered by NAMD for enhanced-sampling simulations aimed at determining free-energy differences of either alchemical or geometrical transformations and outline their applicability to specific problems. Last, we discuss the roadmap for the development of NAMD and our current efforts toward achieving optimal performance on GPU-based architectures, for pushing back the limitations that have prevented biologically realistic billion-atom objects to be fruitfully simulated, and for making large-scale simulations less expensive and easier to set up, run, and analyze. NAMD is distributed free of charge with its source code at www.ks.uiuc.edu.

Recent grants

Frequent coauthors

Education

  • Ph.D., Computer Science

    Stony Brook University

    1985

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