Select Page
MICDE Fellow

Vaibhav Khanna

2025-2026 MICDE fellow

Home Program
Department of Chemistry

Portrait of Vaibhav Khanna

Background

Vaibhav’s research advances electronic structure theory by improving density functional theory (DFT), a widely used framework for modeling molecules and materials. While DFT is valued for its balance of accuracy and efficiency, its reliability depends on approximations that describe electron–electron interactions. To address these limitations, Vaibhav combines highly accurate quantum-mechanical (wavefunction) data with machine learning techniques to develop next-generation functionals that enhance the accuracy, interpretability, and applicability of DFT in computational chemistry and beyond.

Mentor


Paul Zimmerman

Research Areas

AI; ML and Statistical Inference
Algorithms and Codes
Computer Architecture; Optimization; Control and HPC
Materials: Calculations; Simulations and Modeling
Physics: Theory; Methods and Application
Quantum Science
Simulations

APPLY NOW for the $4,500 MICDE Graduate Student Fellowship

X