Skip to main content
SHARE
Publication

QAOAKit: A Toolkit for Reproducible Study, Application, and Verification of the QAOA...

by Ruslan Shaydulin, Kunal Marwaha, Jonathan Wurtz, Phillip C Lotshaw
Publication Type
Conference Paper
Journal Name
2021 IEEE/ACM Second International Workshop on Quantum Computing Software (QCS)
Book Title
2021 IEEE/ACM Second International Workshop on Quantum Computing Software (QCS)
Publication Date
Page Numbers
64 to 71
Conference Name
SC21: Second International Workshop on Quantum Computing Software (QCS)
Conference Location
St. Louis, Missouri, United States of America
Conference Sponsor
ACM, Sighpc, IEEE Comptuer Society, TCHPC
Conference Date
-

Understanding the best known parameters, performance, and systematic behavior of the Quantum Approximate Optimization Algorithm (QAOA) remain open research questions, even as the algorithm gains popularity. We introduce QAOAKit, a Python toolkit for the QAOA built for exploratory research. QAOAKit is a unified repository of preoptimized QAOA parameters and circuit generators for common quantum simulation frameworks. We combine, standardize, and cross-validate previously known parameters for the MaxCut problem, and incorporate this into QAOAKit. We also build conversion tools to use these parameters as inputs in several quantum simulation frameworks that can be used to reproduce, compare, and extend known results from various sources in the literature. We describe QAOAKit and provide examples of how it can be used to reproduce research results and tackle open problems in quantum optimization.