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eISSN: 2581-9615 || CODEN (USA): WJARAI || Impact Factor: 8.2 || ISSN Approved Journal

Quantum Machine Learning (QML): Variational Classifiers, Quantum Kernels and Hybrid Architectures

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  • Quantum Machine Learning (QML): Variational Classifiers, Quantum Kernels and Hybrid Architectures

Sunish Vengathattil *

College of Business & Information Systems, Dakota State University, Madison, SD 57042 USA.

Review Article

World Journal of Advanced Research and Reviews, 2025, 28(01), 255-265

Article DOI: 10.30574/wjarr.2025.28.1.3416

DOI url: https://doi.org/10.30574/wjarr.2025.28.1.3416

Received on 27 August 2025; revised on 01 October 2025; accepted on 04 October 2025

Quantum machine learning (QML) is an emerging interdisciplinary field which incorporates some features of quantum computing with machine learning. Quantum hardware development has sparked research interest for AI scientists because it gives capabilities in high-dimensional data processing and simultaneous operation execution. The investigation within this paper traces the main features of QML by reviewing variational quantum classifiers (VQCs) as well as quantum kernels and hybrid quantum-classical models. VQCs serve as quantum parameterized circuits whose optimization process with classical feedback achieves quantum superiority for classification applications. Quantum kernels expand Hilbert space features to improve traditional kernel methods, thus proving their functionality in quantum feature space. Hybrid approaches unite NISQ hardware with classical systems, which makes QML applicable to real-world applications right now. (Rietsche et al., 2022; Tychola et al., 2023) An analysis explores separate functions and combined effects of these components, which enhance model performance, extend generalization, and boost computational efficiency. The paper discusses necessary knowledge first, along with existing applications, before analyzing them against traditional methods. The paper reviews current QML tools while exploring their operational readiness as well as practical issues and deployment barriers for broader adoption. The paper conducts an in-depth investigation of significant limitations that include hardware noise alongside questions regarding scalability and interpretability. This paper shows how QML will transform machine learning applications through its review of obstacles that must be resolved to achieve its complete potential development. The study presents researchers and practitioners with an extensive comprehension of QML developments and emerging paths for this revolutionary field.

Quantum Computing; Machine Learning; Quantum Machine Learning; Variational Quantum Classifiers; Hybrid Quantum-Classical Models

https://journalwjarr.com/sites/default/files/fulltext_pdf/WJARR-2025-3416.pdf

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Sunish Vengathattil. Quantum Machine Learning (QML): Variational Classifiers, Quantum Kernels and Hybrid Architectures. World Journal of Advanced Research and Reviews, 2025, 28(01), 255-265. Article DOI: https://doi.org/10.30574/wjarr.2025.28.1.3416.

Copyright © 2025 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0

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