Quantum Machine Learning
machine learning would rely on the existence of a quantum computer and is a so called, benchmarking problem. Such advantages could include improved classi - cation accuracy and sampling of classically inaccessible systems. Accordingly, quantum speedups in machine learning are currently characterized using idealized
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