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Predictive Maintenance using Machine learning (LSTM python) | by Junaid Rana | Medium
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PDF) Leveraging Machine Learning and Big Data for Smart Buildings: A Comprehensive Survey
Dynamic and explainable machine learning prediction of mortality in patients in the intensive care unit: a retrospective study of high-frequency data in electronic patient records - The Lancet Digital Health