Quantum Machine Learning: Exploring the Intersection of Quantum Computing and AI
Abstract
Quantum computing has the potential to accelerate machine learning algorithms, offering exponential speed-ups for specific tasks. This paper introduces the field of quantum machine learning (QML), exploring algorithms such as quantum support vector machines and quantum neural networks. We discuss current advancements and the challenges of developing practical QML applications.
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