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Learning Non-Markovian Quantum Noise from Moir\'{e}-Enhanced Swap Spectroscopy with Deep Evolutionary Algorithm

Authors :
Niu, Murphy Yuezhen
Smelyanskyi, Vadim
Klimov, Paul
Boixo, Sergio
Barends, Rami
Kelly, Julian
Chen, Yu
Arya, Kunal
Burkett, Brian
Bacon, Dave
Chen, Zijun
Chiaro, Ben
Collins, Roberto
Dunsworth, Andrew
Foxen, Brooks
Fowler, Austin
Gidney, Craig
Giustina, Marissa
Graff, Rob
Huang, Trent
Jeffrey, Evan
Landhuis, David
Lucero, Erik
Megrant, Anthony
Mutus, Josh
Mi, Xiao
Naaman, Ofer
Neeley, Matthew
Neill, Charles
Quintana, Chris
Roushan, Pedram
Martinis, John M.
Neven, Hartmut
Publication Year :
2019

Abstract

Two-level-system (TLS) defects in amorphous dielectrics are a major source of noise and decoherence in solid-state qubits. Gate-dependent non-Markovian errors caused by TLS-qubit coupling are detrimental to fault-tolerant quantum computation and have not been rigorously treated in the existing literature. In this work, we derive the non-Markovian dynamics between TLS and qubits during a SWAP-like two-qubit gate and the associated average gate fidelity for frequency-tunable Transmon qubits. This gate dependent error model facilitates using qubits as sensors to simultaneously learn practical imperfections in both the qubit's environment and control waveforms. We combine the-state-of-art machine learning algorithm with Moir\'{e}-enhanced swap spectroscopy to achieve robust learning using noisy experimental data. Deep neural networks are used to represent the functional map from experimental data to TLS parameters and are trained through an evolutionary algorithm. Our method achieves the highest learning efficiency and robustness against experimental imperfections to-date, representing an important step towards in-situ quantum control optimization over environmental and control defects.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1912.04368
Document Type :
Working Paper