Skip to content

Latest commit

 

History

History
23 lines (17 loc) · 1.02 KB

README.md

File metadata and controls

23 lines (17 loc) · 1.02 KB

Binder

ML Notes

This repository contains My daily notes and study material for the ML,

  • Python Basics
  • Numpy Basics & Some intro to Classes and Objects
  • Linked List
  • Binary Tree and assignment
  • Probability basics, and assignment Binomial Distribution Formula
  • Books folder contains pages text, for important readings
  • Added Notebook for distribution until now normal and binomial is covered
  • Maximum Likelihood estimation - how it works and how you can use the log likelihood function to find the param and distribution
  • PCA
  • Devnagiri Digits recoginition (Still requires more regurazation than PCA)
  • MNIST Digit Recoginition
  • Shark Tank deal prediction using nltk (TFIDF missing will be adding soon)
  • Naive Bayes Mushroom classification (Got involved very deep but got very good accuracy)

NOTE:- If you want to run the code on the fly without downloading just hit the binder icon, starting image in the readme.