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BSCS2008 - Machine Learning Practice

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FieldValue
Course CodeBSCS2008
LevelDiploma Level Course
Credits4
TypeData Science
Pre-requisitesBSCS2004 - Β Machine Learning Foundations
VideosYouTube Playlist

πŸ“– Description

This companion course to the ML Theory course introduces the student to scikit-learn, a popular Python machine learning module, to provide hands-on problem solving experience for all the methods and models learnt in the Theory course.

πŸ—“οΈ Weekly Syllabus

WeekTopic
Week 1End-to-end machine learning project on scikit-learn
Week 2Graph Theory(VOL 3)
Week 3Regression on scikit-learn - Linear regression
Gradient descent - batch and stochastic.
Week 4Polynomial regression, Regularized models
Week 5Logistic regression
Week 6Classification on scikit-learn - Binary classifier
Week 7Classification on scikit-learn - Multiclass classifier
Week 8Support Vector Machines using scikit-learn
Week 9Decision Trees, Ensemble Learning and Random Forests
Week 10Decision Trees, Ensemble Learning and Random Forests (Continued)
Week 11Neural networks models in scikit-learn
Week 12Unsupervised learning

πŸ“ About the Instructors

Ashish Tendulkar
Research Software Engineer,
Google AI,
Google
Dr. Ashish Tendulkar is a researcher with Google Research Bangalore. He holds Masters and PhD from IIT Bombay. Before his current position, he was an Assistant Professor at IIT Madras and Head of data sciences at Persistent Systems Pune. Ashish is passionate about teaching ML and writing AI related contents in Indian languages.
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