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Advancements in Quantum Machine Learning and Quantum Deep Learning: A Comprehensive Review of Algorithms, Challenges, and Future Directions

G. Priyanka, M. Venkatesan, P. Prabhavathy

202312 citationsDOI

Abstract

At the nexus of quantum computing and machine learning, quantum machine learning (QML) and quantum deep learning (QDL) have emerged as promising fields. By enhancing computational capabilities and addressing challenging data analysis problems, these approaches have the potential to revolutionise a number of domains by leveraging the special properties of quantum systems, such as superposition and entanglement. In this article, we give a thorough analysis of QML and QDL algorithms, discussing their underlying ideas, benefits over conventional models, and potential uses. We talk about the difficulties these algorithms face, such as noisy quantum hardware, constrained qubit resources, training and optimisation issues, input representation and data encoding problems, and limited interpretability. Additionally, we look at current developments and lines of inquiry that aim to address these issues, including hybrid classical-quantum methods, error-mitigating techniques, better data representation techniques, quantum transfer learning, and resource optimisation.

Topics & Concepts

Quantum machine learningInterpretabilityComputer scienceQuantum computerQuantum entanglementQuantumQubitArtificial intelligenceQuantum algorithmRepresentation (politics)Deep learningAlgorithmTheoretical computer scienceMachine learningPhysicsQuantum mechanicsPolitical scienceLawPoliticsQuantum Computing Algorithms and ArchitectureQuantum Information and CryptographyMachine Learning in Materials Science