Challenges and Opportunities in Quantum Machine Learning
- URL: http://arxiv.org/abs/2303.09491v1
- Date: Thu, 16 Mar 2023 17:10:39 GMT
- Title: Challenges and Opportunities in Quantum Machine Learning
- Authors: M. Cerezo, Guillaume Verdon, Hsin-Yuan Huang, Lukasz Cincio, Patrick
J. Coles
- Abstract summary: Quantum Machine Learning (QML) has the potential of accelerating data analysis, especially for quantum data.
Here we review current methods and applications for QML.
We highlight differences between quantum and classical machine learning, with a focus on quantum neural networks and quantum deep learning.
- Score: 2.5671549335906367
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: At the intersection of machine learning and quantum computing, Quantum
Machine Learning (QML) 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 QML models. Here we review current methods and
applications for QML. 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 QML.
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