About the Course
This online course is suitable for you if you are not an absolute beginner in Matrix Analysis or Linear Algebra (for example, have studied it a long time ago, but now want to take the first steps in the direction of those aspects of Linear Algebra that are used in Machine Learning). Certainly, if you are highly motivated in study of Linear Algebra for Data Sciences this course could be suitable for you as well
Course Objectives
01
Learn basics of operations with matrices
02
Understand how to use operations with matrices to find solution for a system of linear algebraic equations (SLAE)
03
Apply rank to determine the number of linearly independent solutuions for a system of linear equations
Learning Outcomes
1. Understand the properties of a set of solutions for a system of linear equations
2. Explain Eucledian vector space and how to measure distances and angles in it
3. Understand the support vector machine (SVM) method
4. Analyze the data and make conclusions on the findings
Course Syllabus
Week 1. Systems of linear equations and linear classifier
Week 2. Full rank decomposition and systems of linear equations
Week 3. Euclidean spaces
Week 4. Final Project
Teachers
Департамент математики: профессор
Департамент больших данных и информационного поиска: Доцент
Learning Activities
Lectures
Online
Low-Stakes Assignments
Tests
High-Stakes Assignments
Final project
Cost and Conditions
17 000 ₽
Full access to the learning materials + Graduation document
More: публичная оферта