RiseUpp Logo
RiseUpp Logo
Mathematics for Machine Learning: PCA
Educator Logo

Powered by

Provider Logo

Completion

CERTIFICATE

Mathematics for Machine Learning: PCA

This course is part of Mathematics for Machine Learning.

Course Cost

Free course

Intermediate

Skill Level

18 Hours

Self-paced lessons

This course cannot be purchased separately - to access the complete learning experience, graded assignments, and earn certificates, you'll need to enroll in the full Mathematics for Machine Learning Specialization program. You can audit this specific course for free to explore the content, which includes access to course materials and lectures. This allows you to learn at your own pace without any financial commitment.

4

90,890 Enrolled

English

Powered by

Provider Logo

4

90,890 Enrolled

English

What you'll learn

  • Implement PCA from mathematical foundations

  • Master orthogonal projections and inner products

  • Apply dimensionality reduction to real data

  • Understand geometric interpretations of PCA

  • Develop practical Python implementations

Skills you'll gain

Principal Component Analysis
Linear Algebra
Dimensionality Reduction
Python Programming
Vector Spaces
Inner Products
Orthogonal Projections
Statistical Analysis
Mathematical Optimization
Data Transformation

This course includes:

2.3 Hours PreRecorded video

11 assignments

Access on Mobile, Tablet, Desktop

FullTime access

Shareable certificate

Get a Completion Certificate

Share your certificate with prospective employers and your professional network on LinkedIn.

CREATED BY

Educator Logo

PROVIDED BY

Provider Logo
Certificate
Certificate

Get a Completion Certificate

Share your certificate with prospective employers and your professional network on LinkedIn.

CREATED BY

Educator Logo

PROVIDED BY

Provider Logo

Top companies offer this course to their employees

Top companies provide this course to enhance their employees' skills, ensuring they excel in handling complex projects and drive organizational success.

icon-0icon-1icon-2icon-3icon-4

There are 4 modules in this course

This rigorous course provides a deep mathematical understanding of Principal Component Analysis (PCA), a fundamental dimensionality reduction technique. Students learn essential concepts including dataset statistics, inner products, orthogonal projections, and their geometric interpretations. The curriculum combines theoretical foundations with practical implementation in Python, featuring hands-on programming assignments and real-world applications.

Statistics of Datasets

Module 1 · 4 Hours to complete

Inner Products

Module 2 · 5 Hours to complete

Orthogonal Projections

Module 3 · 3 Hours to complete

Principal Component Analysis

Module 4 · 6 Hours to complete

Fee Structure

Individual course purchase is not available - to enroll in this course with a certificate, you need to purchase the complete Professional Certificate Course. For enrollment and detailed fee structure, visit the following: Mathematics for Machine Learning

Reviews

Testimonials and success stories are a testament to the quality of this program and its impact on your career and learning journey. Be the first to help others make an informed decision by sharing your review of the course.

Faculties

These are the expert instructors who will be teaching you throughout the course. With a wealth of knowledge and real-world experience, they're here to guide, inspire, and support you every step of the way. Get to know the people who will help you reach your learning goals and make the most of your journey.

Mathematics for Machine Learning: PCA

Intermediate

Skill Level

18 Hours

Self-paced lessons

Course Cost

Free course

Completion

CERTIFICATE

Frequently asked Questions

Below are some of the most commonly asked questions about this course. We aim to provide clear and concise answers to help you better understand the course content, structure, and any other relevant information. If you have any additional questions or if your question is not listed here, please don't hesitate to reach out to our support team for further assistance.