Quantum (Feb 2020)

Approximating Hamiltonian dynamics with the Nyström method

  • Alessandro Rudi,
  • Leonard Wossnig,
  • Carlo Ciliberto,
  • Andrea Rocchetto,
  • Massimiliano Pontil,
  • Simone Severini

DOI
https://doi.org/10.22331/q-2020-02-20-234
Journal volume & issue
Vol. 4
p. 234

Abstract

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Simulating the time-evolution of quantum mechanical systems is BQP-hard and expected to be one of the foremost applications of quantum computers. We consider classical algorithms for the approximation of Hamiltonian dynamics using subsampling methods from randomized numerical linear algebra. We derive a simulation technique whose runtime scales polynomially in the number of qubits and the Frobenius norm of the Hamiltonian. As an immediate application, we show that sample based quantum simulation, a type of evolution where the Hamiltonian is a density matrix, can be efficiently classically simulated under specific structural conditions. Our main technical contribution is a randomized algorithm for approximating Hermitian matrix exponentials. The proof leverages a low-rank, symmetric approximation via the Nyström method. Our results suggest that under strong sampling assumptions there exist classical poly-logarithmic time simulations of quantum computations.