Computer ScienceNature Communications
Power of data in quantum machine learning
H. Huang, M. Broughton, et al.
This groundbreaking research by Hsin-Yuan Huang and colleagues from Google Quantum AI explores the prospects of quantum advantage in machine learning. It reveals how classical models can effectively tackle classically hard problems, even those posed by quantum tasks, showcasing a significant prediction boost over traditional methods.
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