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Contains all the basics of Machine Learning. Code in Python

Jupyter Notebook 95.77% Python 4.23%
machine-learning python

machine-learning-with-python's Introduction

< Hello world, I'm Vishruth ๐Ÿ‘‹ />

const Vishruth = {
  Languages: [JavaScript, HTML, CSS, C++, C, Python, Typescript],
  Technologies: [ReactJS,NextJS, Node.js, Express, Git, Bootstrap],
  Databases : [SQL, MongoDB]
}

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machine-learning-with-python's Issues

Add documentation for Part5_Association Rule Learning

Currently, there is no explanation for concepts of Association Rule Learning in ML (part5)
It would be nice if the 2 types can be briefly explained (similar to part1 and part2 concepts).

Add your explanation in a file named readme.md inside the respective folders.

Add documentation for Concepts of Classification in ML

Currently, there is no explanation for concepts of Part-3 Classification
It would be nice if all types of classification can be briefly explained (similar to part2 concepts).

Add them in a readme.md file inside each folder.
You can work on the whole thing or also take up a single type from the many given there and work on that. In that case, please reply here stating which one you can take up.

Add documentation for Part3_Classification

Currently, there is no explanation for concepts of classification in ML.
It would be nice if all types of classification can be briefly explained (similar to part1 and part2 concepts)

Add documentation for Part4_Clustering

Currently, there is no explanation for concepts of clustering in ML (part4)
It would be nice if the 2 types of clustering can be briefly explained (similar to part1 and part2 concepts).

Add your explanation in a file named readme.md inside the respective folders.

Add documentation for Part6_Natural Language Processing

Currently, there is no explanation for concepts of Natural Language Processing in ML (part6)
It would be nice if it can be briefly explained (similar to part1 and part2 concepts).

Add your explanation in a file named readme.md

Add documentation for Artificial Neural Networks

It would be great if the concepts of Artificial Neural Networks can be briefly explained.

Add your explanation in a file named readme.md inside Part7 Deep Learning/Artificial Neural Networks

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