In this notebook, we will see how to implement an Artificial Neural Network using Tensorflow 2.0. We will be using Fashion MNIST dataset directly importing it from Tensorflow datasets

In this notebook, we will see how to implement an Artificial Neural Network using Tensorflow 2.0. We will be using Fashion MNIST dataset directly importing it from Tensorflow datasets

```
import numpy as np
import datetime
import tensorflow as tf
from tensorflow.keras.datasets import fashion_mnist
tf.__version__
'2.3.0'
```

deep-learning tensorflow artificial-neural-network keras fashion-mnist

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