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MNIST_DL_Tutorial

Code for Beginner Deep Learning Tutorial | MNIST Digits Classification Neural Network in Python, Keras

https://youtu.be/BfCPxoYCgo0

There are two files, a .py (Python) one and a .ipynb (Notebook). You might need to make changes to the .py file to make it run properly. The easiest way to use the code is download the .ipynb file and upload it to Colab directly, so that you can see and edit the code.

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