Challenges and opportunities in quantum machine learning

被引:0
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作者
M. Cerezo
Guillaume Verdon
Hsin-Yuan Huang
Lukasz Cincio
Patrick J. Coles
机构
[1] Los Alamos National Laboratory,Information Sciences
[2] Los Alamos National Laboratory,Center for Nonlinear Studies
[3] Quantum Science Center,Institute for Quantum Computing
[4] X,Department of Applied Mathematics
[5] University of Waterloo,Institute for Quantum Information and Matter
[6] University of Waterloo,Department of Computing and Mathematical Sciences
[7] California Institute of Technology,Theoretical Division
[8] California Institute of Technology,undefined
[9] Los Alamos National Laboratory,undefined
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摘要
At the intersection of machine learning and quantum computing, quantum machine learning has the potential of accelerating data analysis, especially for quantum data, with applications for quantum materials, biochemistry and high-energy physics. Nevertheless, challenges remain regarding the trainability of quantum machine learning models. Here we review current methods and applications for quantum machine learning. We highlight differences between quantum and classical machine learning, with a focus on quantum neural networks and quantum deep learning. Finally, we discuss opportunities for quantum advantage with quantum machine learning.
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页码:567 / 576
页数:9
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