QUANTUM MACHINE LEARNING: REVOLUTIONIZING NEXT-GENERATION INTELLIGENT COMPUTING SYSTEMS
- Abstract
- Keywords
- How to Cite This Article
- Corresponding Author
Quantum computing has emerged as one of the most promising technologies capable of solving computational problems beyond the capabilities of classical computers. When integrated with Artificial Intelligence (AI), Quantum Machine Learning (QML) offers new possibilities for accelerating data processing, optimizing complex models, and improving predictive performance. Unlike conventional machine learning algorithms that rely solely on classical computation, QML leverages quantum phenomena such as superposition, entanglement, and quantum interference to perform computations more efficiently. This paper presents a comprehensive review of Quantum Machine Learning, discussing its architecture, core algorithms, applications, benefits, limitations, and future research directions. The study highlights the potential of QML in healthcare, cybersecurity, financial analytics, scientific research, and optimization problems. Additionally, the paper examines the challenges associated with quantum hardware, scalability, error correction, and algorithm development. The findings suggest that although Quantum Machine Learning remains in its early stages, it represents a transformative technology that may redefine intelligent computing over the coming decades.
Isabella N. Carter et,al (2026); QUANTUM MACHINE LEARNING: REVOLUTIONIZING NEXT-GENERATION INTELLIGENT COMPUTING SYSTEMS, Jana Nexus: Journal of Computer Science, 2 (02), 20-23, ISSN (O): 3108-1916. DOI URL: https://dx.doi.org/10.21474/JNCS01/119
India






