Zhiyang He, Anand Natarajan, et al.
APS March Meeting 2023
Real-time quantum Krylov diagonalization algorithms provide a low-cost alternative to standard quantum phase estimation algorithms for ground and excited-state energy estimation. While deterministic Trotter-Suzuki methods are typically used to compile the time evolution operator in such algorithms, the necessary gate depths are prohibitively large for the simulation of large-scale systems on near-term devices. In this talk, I will discuss our recent work which introduces a new class of randomized quantum Krylov diagonalization (rQKD) algorithms which uses a combination of stochastic compilations strategies inspired by qDRIFT as well as low-rank double factorized Hamiltonian encoding strategies resulting in circuit depths with modest quantum resource requirements. To demonstrate the potential of the proposed rQKD algorithms, we provide numerical benchmarks for a variety of molecular systems with circuit-based statevector simulators achieving ground state energy errors of less than 1 kcal/mol with circuit depths orders of magnitude shallower than those required for deterministic Trotter-Suzuki decompositions.
Zhiyang He, Anand Natarajan, et al.
APS March Meeting 2023
Pauline J. Ollitrault, Abhinav Kandala, et al.
PRResearch
Max Rossmannek, Fabijan Pavošević, et al.
ACS Fall 2023
Nathaniel Park
APS March Meeting 2023