Google Colab notebooks and sample datasets for the intensive Crash Course in Deep Learning, at Kaunas University of Applied Sciences, Lithuania
This section offers 3 tutorials to familiarize with some basic libraries in Python:
In this notebook you will be tasked to solve a churn prediction problem using an artificial neural network classifier. The purpose of this study is to showcase how to:
- interrogate your data and apply basic data preprocessing methods for optimizing your tables;
- create a custom neural network classifier using Keras;
- train and deploy the ANN
- evaluate the model performance
- optimize/fine-tune the model
The code is available in artificial_neural_networks.ipynb.
shortly
In this notebook you will be tasked to solve a stock price prediction problem using recurrent neural networks. The purpose of this study is to showcase how to:
- obtain finacial data (stock prices),
- import it into dataframes and organize the later by filtering our redundant columns,
- transform the input data into meaningful feature vectors,
- create a custom reccurent neural network regressor using Keras,
- train and deploy the RNN,
- evaluate the model performance,
- optimize/fine-tune the model.
The code is available in recurrent_neural_networks.ipynb
Enjoy
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