AboNady/Simple_Linear_Regression_From_Scratch
I have applied the fundamental idea of Linear Regression with Single Variable input. I implemented the Gradian Descent algorithm simply from scratch with no libraries such as Scikit-Learn. I just used NumPy.
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Python
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MIT
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Sep 13, 2022
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