Skip to content

vaisakhnambiar/isme-bangalore-Oct-Nov-2019

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

19 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Foundations to Machine Learning (Oct Nov 2019)

Basic Info

  • Where: ISME-Bangalore
  • When: Oct/Nov 2019
  • Who: Anush Sankaran

My Blog

ML 1 - https://medium.com/@vaishakh.nambiar10/machine-learning-bcc5060e504c

ML 2 - https://medium.com/@vaishakh.nambiar10/linear-regression-vs-logistic-regression-6703f570bac7

Coding Done.

ML 3 - https://medium.com/@vaishakh.nambiar10/neural-network-900ea28eff48

ML Assignment - https://github.com/vaisakhnambiar/ISME-Machine-Learning

ML 4 - https://medium.com/@vaishakh.nambiar10/kernel-trick-svm-1f1f01f89fd

ML 5 - https://medium.com/@vaishakh.nambiar10/decision-trees-random-forest-7efc8f212536

ML End-Term Project - https://github.com/vaisakhnambiar/ISME-Machine-Learning

Course Overview

Date Topic Slides Notes
11th October, 2019 Intro to ML, Discovering ML Use Cases & ML in Business slides
18th October, 2019 Python- Hands On, Supervised Learning & Regression slides Code Ex 1
Code Ex 2
Neural Network - 1, Neural Network -2 & Hands ON slides Code Ex 3
Code Ex 4
Kernel Learning & SVM, Practical Advice for ML projects. slides
Boosting, Decision Trees, Random Forest, & xgBoost slides
Unsupervised Learning, Clustering & Dimensionality Reduction slides
Time Series Data Analysis, Imputation & Prediction Systems slides
ML Use Cases from Products & Research slides

Acknowledgement

Multiple references are borrowed from different sources of internet and different other courses, and they have better slides! With huge respects to their slides, hard work, and efforts, I acknowledge them and only makes sense to reuse some part of their slides!

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 100.0%