Practical Machine Learning with Scikit-Learn
Offered By: Udemy
Course Description
Overview
Learn the most powerful machine learning algorithms in under an hour
What you'll learn:
What you'll learn:
- How to implement regression, classification and boosting algorithms
- Which algorithms work best for a given dataset
- Data preprocessing
Machine learning is a rapidly growing field. However, a lot of courses on the internet today do not go over some of it's most powerful algorithms. In this course, we will learn multiple machine learning algorithms, along with data preprocessing, all in under an hour. We will go over regression, classification, component analysis and boosting all in scikit-learn, one of the most popular machine learning libraries for python.
Algorithms we'll go over (in order):
Linear Regression
Polynomial Regression
Multiple Linear Regression
Logistic Regression
Support Vector Machines
Decision Trees
Random Forest
Principle Component Analysis
Gradient Boosting
XGBoost
Taught by
Adam Eubanks
Related Courses
Statistical Learning with RStanford University via edX The Analytics Edge
Massachusetts Institute of Technology via edX Machine Learning 1—Supervised Learning
Brown University via Udacity The Caltech-JPL Summer School on Big Data Analytics
California Institute of Technology via Coursera 機器學習技法 (Machine Learning Techniques)
National Taiwan University via Coursera