Modelling MNIST using Triplet Neural Networks
In this tutorial, I show you how you can leverage triplet loss to train a neural network to map MNIST digits to a vector space where classifying between digits is a trivial task. I hope you found this tutorial helpful — if you did, please make sure to leave a like, comment, and subscribe! It really does help out a lot! Contact: Email: [email protected] Twitter: @TajyMany

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