This document presents a data-driven prognostics method for estimating the remaining useful life (RUL) of bearings using support vector machines (SVM) and mixture of Gaussians hidden Markov models (MOG-HMM). The study highlights the advantages of using SVM over traditional approaches, demonstrating better performance on vibration monitoring data collected from bearings. It details the extraction of features from vibration signals and the application of these methods to improve the accuracy of bearing health assessments.