Differential Optimization of Quantum Circuits Dominated by Clifford Gates
ORAL
Abstract
Finding a good initialization for variational quantum algorithms is believed to be crucial for successful training for near-term applications. However, the methodology for finding quality initializations is yet unclear. In this work, we propose to use the classical differential architecture search method to optimize quantum circuits dominated by Clifford gates, which we call the Clifford+kT ansatz. The optimal solution found within this ansatz can be viewed as a promising initialization for universal variational quantum circuits. In the regime of a small number of T-gates k, we numerically demonstrate that such optimization with differential architecture search is scalable. We illustrate the effectiveness of our methods for variational quantum eigensolver (VQE) using a molecular Hamiltonian of many qubits. We also compare differential architecture search with simulated annealing and numerically show the effect of adding T-gates to the ansatz. Last but not the least, we establish that our initialization strategy indeed helps with the training of variational algorithms on near-term quantum devices.
–
Presenters
-
Andi Gu
Harvard University
Authors
-
Andi Gu
Harvard University
-
Hong-Ye Hu
Harvard University, University of California, San Diego
-
Di Luo
Massachusetts Institute of Technology
-
Yi Tan
Harvard University
-
Taylor L Patti
NVIDIA, Harvard University
-
Nicholas C Rubin
Google
-
Ryan Babbush
Google
-
Susanne F Yelin
Harvard University