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:notebook: Making predictions from the MNIST dataset using TensorFlow and Keras

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mnist mnist-linear mnist-dataset keras neural-network keras-tutorials machine-learning ml-tutorial tensorflow tensorflow-tutorials tensorflow-examples

mnist-tutorial-keras-tf's Introduction

MNIST Tutorial Using Tensorflow and Keras

A tutorial for making predictions from the MNIST dataset using a linear model. A beginning step which gives us 90%+ accuracy, follow the iPython Notebook for explanations.

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