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Intro_to_the_Math_of_intelligence

This is the code for "Intro - The Math of Intelligence" by Siraj Raval on Youtube

Coding Challenge -- Due Date, Thursday June 22nd, 2017

This week's coding challenge is to implement gradient descent to find the line of best fit that predicts the relationship between 2 variables of your choice from a kaggle dataset. Bonus points for detailed documentation. Good luck! Post your github link in the youtube comments section

Overview

This is the code for this video on Youtube by Siraj Raval. The dataset represents distance cycled vs calories burned. We'll create the line of best fit (linear regression) via gradient descent to predict the mapping. yes, I left out talking about the learning rate in the video, we're not ready to talk about that yet.

Here are some helpful links:

Gradient descent visualization

https://raw.githubusercontent.com/mattnedrich/GradientDescentExample/master/gradient_descent_example.gif

Sum of squared distances formula (to calculate our error)

https://spin.atomicobject.com/wp-content/uploads/linear_regression_error1.png

Partial derivative with respect to b and m (to perform gradient descent)

https://spin.atomicobject.com/wp-content/uploads/linear_regression_gradient1.png

Dependencies

  • numpy

Python 2 and 3 both work for this. Use pip to install any dependencies.

Usage

Just run python3 demo.py to see the results:

Starting gradient descent at b = 0, m = 0, error = 5565.107834483211
Running...
After 1000 iterations b = 0.08893651993741346, m = 1.4777440851894448, error = 112.61481011613473

Credits

Credits for this code go to mattnedrich. I've merely created a wrapper to get people started.

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This is the code for "Intro - The Math of Intelligence" by Siraj Raval on Youtube

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