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Data Science Simplified

Learning the Machine Learning, in a Human-friendly Way

Deep Learning

Start with Deep Learning Basics to learn about basic structure and concepts.
Then read Building a Deep Learning Model using Keras.
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  • ARIMA/SARIMA with Python: Understand with Real-life Example, Illustrations and Step-by-step Descriptions
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  • Logistic Regression: A Beginner's Visual Guide
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