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An Introduction to Quantum Machine Learning for Engineers

Osvaldo Simeone

2022Foundations and Trends® in Signal Processing34 citationsDOIOpen Access PDF

Abstract

In the current noisy intermediate-scale quantum (NISQ)era, quantum machine learning is emerging as a dominant paradigm to program gate-based quantum computers. In quantum machine learning, the gates of a quantum circuit are parameterized, and the parameters are tuned via classical optimization based on data and on measurements of the outputs of the circuit. Parameterized quantum circuits (PQCs) can efficiently address combinatorial optimization problems, implement probabilistic generative models, and carry out inference (classification and regression). This monograph provides a self-contained introduction to quantum machine learning for an audience of engineers with a back groundin probability and linear algebra. It first describes the necessary background, concepts, and tools necessary to describe quantum operations and measurements. Then,it covers parameterized quantum circuits, the variation alquantum eigensolver, as well as unsupervised and supervised quantum machine learning formulations.

Topics & Concepts

Computer scienceEngineering physicsEngineeringQuantum Computing Algorithms and ArchitectureFault Detection and Control Systems
An Introduction to Quantum Machine Learning for Engineers | Litcius