Artificial Intelligence & Data Science
Star icon
Most Popular
Trending Arrow Icon
Trending
Hands on Training icon
Hands On Training
Star icon
Trending Arrow Icon
Hands on Training icon

Mathematics for Machine Learning Specialization

Course Cover
compare button icon

Course Features

icon

Duration

4 months

icon

Delivery Method

Online

icon

Available on

Limited Access

icon

Accessibility

Desktop, Laptop

icon

Language

English

icon

Subtitles

English

icon

Level

Beginner

icon

Effort

4 hours per week

icon

Teaching Type

Self Paced

Course Description

For many advanced courses in Machine Learning and Data Science, you will need to refresh yourself in math. This is because although you may have studied math in high school or university, it might not have been taught in an intuitive way that makes it easy to understand the concepts in Computer Science. This specialization bridges the gap by getting you up to speed in the underlying mathematics, and building an intuitive understanding. Linear algebra's first course focuses on linear algebra, and how it relates to data. Next we will examine vectors and matrixes, and how they can be used. The second course is Multivariate Calculus. This course builds on the previous one and focuses on optimizing fitting functions to ensure good data fits. It begins with an introduction to calculus and then uses the matrices and vectors from the previous course for data fitting. The third course is Dimensionality Reduction with Principal Component Analysis. This course uses the mathematics of the previous courses to reduce high-dimensional data. This course requires Python and numpy knowledge. This specialization will provide you with the mathematical knowledge required to continue your journey in machine-learning and enable you to take advanced courses.

Course Overview

projects-img

International Faculty

projects-img

Case Based Learning

projects-img

Post Course Interactions

projects-img

Case Studies,Hands-On Training,Instructor-Moderated Discussions

Skills You Will Gain

What You Will Learn

Implement mathematical concepts using real-world data

Derive PCA from a projection perspective

Understand how orthogonal projections work

Master PCA

Course Instructors

David Dye

Professor of Metallurgy

David Dye is a Professor of Metallurgy in the Department of Materials. He develops alloys for jet engines, nuclear and caloric materials so as to reduce fuel burn and avoid in-service failure. This i...

Samuel J. Cooper

Associate Professor

Dr Sam Cooper is an Associate Professor in energy science and materials design in the Dyson School of Design Engineering at Imperial College London. His PhD was on the characterisation and optimisati...

A. Freddie Page

Strategic Teaching Fellow

Dr Freddie Page is the Strategic Teaching Fellow in the Dyson School of Design Engineering, Imperial College London. He graduated with a MPhys from the University of Oxford in 2011 and got his PhD in...

Marc Peter Deisenroth

Lecturer in Statistical Machine Learning

Marc Deisenroth is a Lecturer (equivalent to an Assistant Professor in the US) in Statistical Machine Learning at the Department of Computing, Imperial College London. Marc was Program Chair of EWRL ...
Course Cover