The Ultimate Beginners Guide to Machine Learning


Learn everything you need to know to start your studies in Machine Learning! Theory and practice!

What you will learn

Learn an initial theoretical basis on some machine learning algorithms

Implement simple projects using Orange tool for machine learning tasks such as classification, regression, clustering and association

Learn machine learning without knowing a single line of computer programming

Use Orange visual tool to create, analyze and test algorithms

Description

The area of Machine Learning is currently the most relevant field in Artificial Intelligence, being responsible for the use of intelligent algorithms that make computers learn through databases. The Machine Learning job market in various parts of the world is on the rise and the tendency is for this type of professional to be increasingly in demand! Some studies even indicate that knowledge in this area will soon be a prerequisite for Information Technology professionals!


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To take you to this area, in this quick, basic and free course you will have a theoretical and practical overview of some machine learning algorithms using the Orange visual tool, which is one of the easiest tools for those starting learning since no computer programming skills are needed! The course is divided into four parts, which present the main areas of machine learning:

  • Classification: NaΓ―ve Bayes, decision trees, rules, and support vector machines (SVM) algorithms
  • Regression: linear regression algorithm
  • Clustering: k-means algorithm
  • Association rules: – apriori algorithm

This course aims to serve as a basic reference on the main machine learning techniques, especially for beginners in the area who do not have much time to take a longer and more complete course! I will see you in class!

English
language

Content

Introduction

Course content
Course materials

Classification

What is classification?
NaΓ―ve Bayes
NaΓ―ve Bayes in Orange
Decision trees
Decision trees in Orange
Rule based learning
Rules in Orange
SVM (Support Vectors Machines)
SVM in Orange

Regression

What is regression?
Linear regression
Linear regression in Orange

Clustering

What is clustering?
k-means algorithm
k-means in Orange

Association

What are association rules?
Apriori algorithm
Apriori in Orange

Final remarks

Final remarks
BONUS