Applications of Automatic Differentiation to Materials Design

ORAL

Abstract


Developments in automatic differentiation (AD) have opened the door to an array of new possibilities throughout the physical sciences. However, AD in materials design has largely been out of reach. Simulations of novel materials were far too computationally intensive for a tool that requires running hundreds of thousands of simulations. Recent work has begun to integrate molecular dynamics simulations with AD, bringing the developments in AD to a new and exciting domain. We demonstrate the power of AD in materials design by building on a seminal paper by Torquato. The prior work begins with a specific model pair potential, and varies four parameters to achieve a honeycomb lattice. Through AD, we are able to start from an entirely arbitrary pair potential, optimize that potential, and ultimately reach a honeycomb lattice with fewer defects.

*Harvard Materials Research Science and Engineering Center Grant DMR-1420570 and ONR Grant N00014-17-1-3029

Presenters

  • Ella King

    • Harvard University

Authors

  • Ella King

    • Harvard University
  • Carl Goodrich

    • Harvard University
  • Sam Schoenholz

    • Google
    • Google Inc.
    • Google Brain
  • Ekin Dogus Cubuk

    • Google
    • Google Inc.
    • Google Inc
    • Google Brain
  • Michael Phillip Brenner

    • Harvard University