Reorganize and update notebooks with exercises and references#4
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Reorganize and update notebooks with exercises and references#4
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- Created features.txt containing inlet diameter, maximum capacity, maximum head, and minimum thickness data. - Created labels.txt with corresponding labels for the dataset, categorized as 'P', 'R', and 'F'.
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- Updated AdaGrad equations to use element-wise operations for gradient updates. - Clarified the explanation of the running sum of squared gradients in AdaGrad. - Revised RMSProp equations to reflect element-wise operations and added clarity to the explanation of the hyperparameter.
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Enhance the structure and content of various notebooks by aligning outputs with narratives, fixing errors, and refreshing exercises. Add new datasets for supervised learning models to improve learning resources.