Quantum Machine-Learning algorithm for Complex Chemical Systems
ORAL · Invited
Abstract
In this talk, I will give a brief overview of developing quantum algorithms for electronic structure calculations and open quantum dynamics of chemical systems on quantum devices. Then focus on quantum machine learning, particularly the Restricted Boltzmann Machine (RBM), as it emerged to be a promising alternative approach leveraging the power of quantum computers. To demonstrate its efficacy, we show its performance on calculating electronic structure of small molecular systems like LiH, H2O and also computation of band structures in 2D materials like graphene, h-BN and monolayer transition-metal di-chalcogenides which are hitherto unexplored in quantum simulations. We also discuss extending the approach to treat complex open quantum dynamical processes. We thus expect our protocol to provide a new alternative in exploring electronic structure and dynamics of complex chemical systems.
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Publication: Quantum Machine Learning for Electronic Structure Calculations"<br>Xia, Rongxin; Kais, Sabre, Nature Comm. 9, 4195 DOI:10.1038/s41467-018-06598-z (2018)<br>"Implementation of Quantum Machine Learning for Electronic Structure Calculations of Periodic Systems on Quantum Computing Devices", Sureshbabu, Shree Hari; Sajjan, Manas; Oh, Sangchul; Kais, Sabre, J. Chem. Inf. 61, 2667-2674 (2021)<br>"Quantum Machine-Learning for Eigenstate Filtration in Two-Dimensional Materials", Manas Sajjan, Shree Hari Sureshbabu, Sabre Kais, arXiv:2105.09488 (to appear in JACS 2021).<br>"Entanglement Classifier in Chemical Reactions", Li, Junxu; Kais, Sabre, Science Advances 5: 5283 (2019)