QiML Algorithm Architecture R&D - New Utilities and Higher Accuracies
Offered By: ChemicalQDevice via YouTube
Course Description
Overview
Explore the latest developments in Quantum-inspired Machine Learning (QiML) algorithm architecture research and development in this hour-long presentation. Delve into the evolution of quantum computer simulators based on circuit models of quantum computation, and discover how more specific quantum algorithm architectures can integrate quantum physics with datasets to enhance model performance. Learn about the potential of gate-less quantum circuit architectures in increasing QiML adoption rates and their impact on utility. Compare the performance of general-use gate-based architectures with traditional approaches, and gain insights into the various quantum circuit simulators available for processing quantum algorithms on classical hardware. Examine the growth of quantum computer simulators and their significance in advancing QiML research, while understanding the potential for achieving higher accuracies and developing new utilities in the field.
Syllabus
QiML Algorithm Architecture R&D; New Utilities, Higher Accuracies
Taught by
ChemicalQDevice
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