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This is project introducing basics of Machine Learning while covering Important useful libraries like Numpy, Pandas, and Matplotlib . Then we learned about implementing linear regression using scratcch as well as linear regression by using sklearn then compared it. Then we learned about implementing impoortant machine learnings alogrithms.

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Reesources :-

Week 0

Installation Guides

Python 3

Anaconda

$~$

Week 1

Git and GitHub

Markdown

Jupyter Notebooks

Python and its libraries

$~$

Week 2

What is ML

Linear Regression

Data Preprocessing

Getting it all together & Summary

$~$

Week 3

Classification

Logistic Regression

Overfitting and Regularisation

Performance Metrics in ML

K-Nearest Neighbor Algorithm

$~$

Week 4

Decision Trees

Ensemble Learning


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This is project introducing basics of Machine Learning while covering Important useful libraries like Numpy, Pandas, and Matplotlib . Then we learned about implementing linear regression using scratcch as well as linear regression by using sklearn then compared it. Then we learned about implementing impoortant machine learnings alogrithms.

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  • Jupyter Notebook 100.0%