EXPLORING QUANTUM MACHINE LEARNING: BRIDGING QUANTUM COMPUTING AND ARTIFICIAL INTELLIGENCE
Keywords:
Quantum Machine Learning, Quantum Computing, Artificial Intelligence, Quantum Algorithms, Machine Learning, Quantum Speedup, Neural NetworksAbstract
This paper investigates the emerging field of Quantum Machine Learning (QML), which integrates quantum computing with machine learning to exploit the computational power of quantum systems. As classical machine learning approaches face limitations with data complexity and resource constraints, QML presents opportunities for enhanced computational efficiency, improved learning algorithms, and potential breakthroughs in various fields. This paper explores the key concepts behind QML, its current applications, challenges, and future potential as quantum computing technologies continue to advance.
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