Machine Learning Applications of Quantum Computing: A Review
Thien Nguyen, Tuomo Sipola, Jari Hautam\"aki

TL;DR
This review explores how quantum computing enhances machine learning capabilities, especially in cybersecurity, by analyzing recent advances, challenges, and future prospects in quantum machine learning applications.
Contribution
It provides a comprehensive categorization and analysis of 32 key studies, highlighting recent progress and future directions in quantum machine learning and its applications.
Findings
Quantum algorithms are increasingly applied in practical machine learning scenarios.
Quantum-enhanced methods show promise in improving cybersecurity measures.
The field faces challenges related to ethical and security concerns.
Abstract
At the intersection of quantum computing and machine learning, this review paper explores the transformative impact these technologies are having on the capabilities of data processing and analysis, far surpassing the bounds of traditional computational methods. Drawing upon an in-depth analysis of 32 seminal papers, this review delves into the interplay between quantum computing and machine learning, focusing on transcending the limitations of classical computing in advanced data processing and applications. This review emphasizes the potential of quantum-enhanced methods in enhancing cybersecurity, a critical sector that stands to benefit significantly from these advancements. The literature review, primarily leveraging Science Direct as an academic database, delves into the transformative effects of quantum technologies on machine learning, drawing insights from a diverse collection…
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Taxonomy
MethodsFocus
