Variational Quantum Factoring

ORAL

Abstract

Integer factorization has been one of the cornerstone applications of the field of quantum com- puting since the discovery of an efficient algorithm for factoring by Peter Shor. Unfortunately, factoring via Shor’s algorithm is well beyond the capabilities of today’s noisy intermediate-scale quantum (NISQ) devices. In this work, we revisit the problem of factoring, developing an alternative to Shor’s algorithm, which employs established techniques to map the factoring problem to the ground state of an Ising Hamiltonian. The proposed variational quantum factoring (VQF) algorithm starts by simplifying equations over Boolean variables in a preprocessing step to reduce the number of qubits needed for the Hamiltonian. Then, it seeks an approximate ground state of the resulting Ising Hamiltonian by training variational circuits using the quantum approximate optimization algorithm (QAOA). We benchmark the VQF algorithm on various instances of factoring and present numerical results on its performance.

Presenters

  • Yudong Cao

    Zapata Computing, Zapata Computing, Inc.

Authors

  • Eric Anschuetz

    Zapata Computing

  • Jonathan Olson

    Zapata Computing

  • Alan Aspuru-Guzik

    Zapata Computing, Chemistry and Computer Science, University of Toronto, University of Toronto, Department of Chemistry, and Computer Science, Department of Chemistry and Department of Computer Science, University of Toronto; Vector Institute for Artificial Intelligence, Toronto; Canadian Institute for Advanced Rese, University of Toronto

  • Yudong Cao

    Zapata Computing, Zapata Computing, Inc.