Data-enhanced variational Monte Carlo for Rydberg atom arrays
APA
Czischek, S. (2022). Data-enhanced variational Monte Carlo for Rydberg atom arrays. Perimeter Institute. https://pirsa.org/22050042
MLA
Czischek, Stefanie. Data-enhanced variational Monte Carlo for Rydberg atom arrays. Perimeter Institute, May. 18, 2022, https://pirsa.org/22050042
BibTex
@misc{ pirsa_PIRSA:22050042, doi = {10.48660/22050042}, url = {https://pirsa.org/22050042}, author = {Czischek, Stefanie}, keywords = {Condensed Matter}, language = {en}, title = {Data-enhanced variational Monte Carlo for Rydberg atom arrays}, publisher = {Perimeter Institute}, year = {2022}, month = {may}, note = {PIRSA:22050042 see, \url{https://pirsa.org}} }
University of Ottawa
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Talk Type
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Abstract
Rydberg atom arrays are programmable quantum simulators capable of preparing interacting qubit systems in a variety of quantum states. However, long experimental state preparation times limit the amount of measurement data that can be generated at reasonable timescales, posing a challenge for the reconstruction and characterization of quantum states. Over the last years, neural networks have been explored as a powerful and systematically tuneable ansatz to represent quantum wavefunctions. These models can be efficiently trained from projective measurement data or through Hamiltonian-guided variational Monte Carlo. In this talk, I will compare the data-driven and Hamiltonian-driven training procedures to reconstruct ground states of two-dimensional Rydberg atom arrays. I will discuss the limitations of both approaches and demonstrate how pretraining on a small amount of measurement data can significantly reduce the convergence time for a subsequent variational optimization of the wavefunction.