Intro and Building a Machine Learning Framework
Offered By: Abhishek Thakur via YouTube
Course Description
Overview
Explore the first video in an applied machine learning series, focusing on building a reusable framework for tabular datasets. Learn about the channel's motivation, set up a web-based IDE, create an empty framework, and develop model training processes. Discover how to create code that is reusable, aesthetically pleasing, and adaptable to various problems with minimal modifications. Follow along as the instructor demonstrates setting up a code server, starting a new terminal, handling data distribution, creating documentation, defining variables, and saving the framework. Access the accompanying GitHub repository for hands-on practice and connect with the instructor through LinkedIn, Twitter, and Kaggle for further engagement and learning opportunities.
Syllabus
Intro
Downloading the code server
Opening the code server
Starting a new terminal
Get ignore
Commit
Empty files
Download data
Data distribution
Documentation
Training
Defining variables
Running the framework
Saving the framework
Taught by
Abhishek Thakur
Related Courses
Discrete Inference and Learning in Artificial VisionÉcole Centrale Paris via Coursera Teaching Literacy Through Film
The British Film Institute via FutureLearn Linear Regression and Modeling
Duke University via Coursera Probability and Statistics
Stanford University via Stanford OpenEdx Statistical Reasoning
Stanford University via Stanford OpenEdx