How to calculate a timeseries applying Multi-ply Section Perceptron in Keras

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Practice makes perfect. Please practise this recipe on your own IDE to speed up your learning in the field of Applied Data Science.

What should I learn from this recipe?

You will learn:

How to code a keras and tensorflow model in Python.
How to create training and testing dataset using scikit-learn.
How to train a tensorflow and keras model.
How to predict a time series using Multi Layer Perceptron in Keras.

Download code at SETScholars:

How to predict a time series using Multi Layer Perceptron in Keras

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