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  • The Journal of Chemical Physics
  • Path Integral Quantum Mechanics in the Era of Machine Learning

Path Integral Quantum Mechanics in the Era of Machine Learning

Submission Deadline: January 31, 2027Contribute to this Special Topic
Decorative ImageMachine-learning models now enable near ab initio simulations of complex molecular and condensed-phase systems. At the same time, accurately describing systems containing light atoms often requires the inclusion of nuclear quantum effects (NQEs), motivating the growing integration of machine learning with path-integral methods. This Special Topic highlights advances in path-integral methods enabled by machine-learned models. We welcome contributions based on path-integral methods for NQEs, including applications, methodological developments, algorithms, and software contributions, combined with machine-learning. We will also consider contributions based on semiclassical approaches and nuclear-electronic orbital theory, provided they combine a component of machine-learning. Submissions on condensed-phase, interfacial, and gas-phase systems are encouraged.

Topics covered include, but are not limited to:

  • Machine Learning Potentials
  • Nuclear Quantum Effects (NQEs)
  • Path Integral Molecular Dynamics (PIMD)
  • Scientific Machine Learning
  • Quantum Dynamics
  • Semiclassical Methods
  • Nuclear-Electronic Orbital Theory
  • Condensed-Phase Simulations
  • Interfacial Systems
  • Ab Initio Molecular Simulation

Guest Editors

Mariana Rossi, Cambridge University UK

Nandini Ananth, Professor, Department of Chemistry and Chemical Biology, Cornell University

Venkat Kapil, Assistant Professor, Department of Physics & Astronomy, University College London (UCL)

Yair Litman, Group Leader, STREAM Group, Max Planck Institute for Polymer Research (MPI-P), Mainz, Germany

Wei Fang, Youth Researcher (Independent PI), Department of Chemistry, Fudan University, Shanghai, China

Barak Hirshberg, Tel Aviv University, Israel


Submission Deadline: January 31, 2027Contribute to this Special Topic
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