QUANT-PHAIApr 29, 2024

Machine Learning for Quantum Computing Specialists

arXiv:2404.18555v13 citationsh-index: 2
Originality Synthesis-oriented
AI Analysis

This is an incremental review article aimed at quantum computing specialists seeking to bridge knowledge gaps for QML.

The article addresses the need for quantum computing specialists to learn classical machine learning basics to study quantum machine learning, summarizing progress in QML applications like medical image classification and toxicity screening, though it notes current limitations in scale for commercial use.

Quantum machine learning (QML) is a promising early use case for quantum computing. There has been progress in the last five years from theoretical studies and numerical simulations to proof of concepts. Use cases demonstrated on contemporary quantum devices include classifying medical images and items from the Iris dataset, classifying and generating handwritten images, toxicity screening, and learning a probability distribution. Potential benefits of QML include faster training and identification of feature maps not found classically. Although, these examples lack the scale for commercial exploitation, and it may be several years before QML algorithms replace the classical solutions, QML is an exciting area. This article is written for those who already have a sound knowledge of quantum computing and now wish to gain a basic overview of the terminology and some applications of classical machine learning ready to study quantum machine learning. The reader will already understand the relevant relevant linear algebra, including Hilbert spaces, a vector space with an inner product.

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