All Projects → LahiruTjay → Machine-Learning-With-Python

LahiruTjay / Machine-Learning-With-Python

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This repositories contain various Machine Learning examples done with Python.

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Jupyter Notebook
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Machine-Learning-With-Python (Hands On Practice)

GET YOUR HANDS DIRTY BY Practicing lots of examples on important techniques used in Ml.

This repository contains machine learning related projects. These mini projects are done using Jupyter notebook. This covers several publically available datasets.

Includes:

  • Data preprocessing
  • Data cleaning
  • Data analysis
  • Model selection
  • Model evaluation techniques.

To be implemented:

  • Techniques for clustering
  • Scikit Learn pipeline implementation
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