Treffer: QDataSet, quantum datasets for machine learning.
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The availability of large-scale datasets on which to train, benchmark and test algorithms has been central to the rapid development of machine learning as a discipline. Despite considerable advancements, the field of quantum machine learning has thus far lacked a set of comprehensive large-scale datasets upon which to benchmark the development of algorithms for use in applied and theoretical quantum settings. In this paper, we introduce such a dataset, the QDataSet, a quantum dataset designed specifically to facilitate the training and development of quantum machine learning algorithms. The QDataSet comprises 52 high-quality publicly available datasets derived from simulations of one- and two-qubit systems evolving in the presence and/or absence of noise. The datasets are structured to provide a wealth of information to enable machine learning practitioners to use the QDataSet to solve problems in applied quantum computation, such as quantum control, quantum spectroscopy and tomography. Accompanying the datasets on the associated GitHub repository are a set of workbooks demonstrating the use of the QDataSet in a range of optimisation contexts. Measurement(s) Simulations of one- and two-qubit quantum systems evolving in the presence and absence of noise and distortion Technology Type(s) Simulated measurement using Python packages Sample Characteristic - Organism Simulated quantum systems Sample Characteristic - Environment Quantum systems in noisy and noiseless environments [ABSTRACT FROM AUTHOR]
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