Hamiltonian simulation with optimal sample complexity
Lin, Cedric Yen-Yu
Low, Guang Hao
Yoder, Theodore J.
npj Quantum Information (2017) 3:13; doi:10.1038/s41534-017-0013-7
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We investigate the sample complexity of Hamiltonian simulation: how many copies of an unknown quantum state are required to simulate a Hamiltonian encoded by the density matrix of that state? We show that the procedure proposed by Lloyd, Mohseni, and Rebentrost [Nat. Phys., 10(9):631–633, 2014] is optimal for this task. We further extend their method to the case of multiple input states, showing how to simulate any Hermitian polynomial of the states provided. As applications, we derive optimal algorithms for commutator simulation and orthogonality testing, and we give a protocol for creating a coherent superposition of pure states, when given sample access to those states. We also show that this sample-based Hamiltonian simulation can be used as the basis of a universal model of quantum computation that requires only partial swap operations and simple single-qubit states.
Funding for Open Access provided by the UMD Libraries Open Access Publishing Fund.