McMullan, 2021 - Google Patents
Current Applicability of Quantum Machine Learning to Data AnalyticsMcMullan, 2021
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- 5835106297081530932
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- McMullan S
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In recent years, quantum computing and its application to machine learning have evolved to the point where the data analytics practitioner must ask whether the technology is ready to aid large scale data processing tasks. This research describes the state of the art along with …
- 238000010801 machine learning 0 title abstract description 23
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