Machine learning search for quantum algorithms

ORAL

Abstract

Quantum algorithm design lies in the hallmark of applications of quantum computation and quantum simulation. Recent theoretical progress has established complexity-equivalence of circuit and adiabatic quantum algorithms. Here we utilize deep reinforcement learning methods to search for optimal Hamiltonian path in the framework of quantum adiabatic algorithm. We benchmark our approach in Grover search and 3-SAT problems, and find that the adiabatic algorithm obtained by our reinforcement learning approach leads to improved performance in the final state fidelity and significant computational speedups for both moderate and large number of qubits compared to conventional algorithms. Our approach offers a recipe to design quantum algorithms for generic problems through a systematic search. This approach paves a novel way to automated quantum algorithm design by artificial intelligence.

*National Program on Key Basic Research Project of China under Grant No. 2017YFA0304204
National Natural Science Foundation of China under Grants No.117740067
Thousand-Youth-Talent Program of China

Presenters

  • Jian Lin

    • Department of Physics, Fudan University

Authors

  • Jian Lin

    • Department of Physics, Fudan University
  • Zhong Yuan Lai

    • Department of Physics, Fudan University
  • Xiaopeng Li

    • Department of Physics, Fudan University