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Studies
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The Institute
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Math205

Linear Algebra 2

Online
Jan 11, 2021 - Jan 29, 2021
This course prepares students to understand and learn more advanced topics such as Machine Learning, Optimization Theory, Theory of Control and other.
Online
Jan 11, 2021 - Jan 29, 2021
Mikhail Romanov

Faculty

Mikhail Romanov

Senior Machine Learning Engineer, Yandex, Expert

Course length

3 weeks

Duration

3 hours
per day

Total hours

45 hours

Credits

4 ECTS

Language

English

Course type

Online

Fee for single course

€1500

Fee for degree students

€750

Skills you’ll learn

Linear AlgebraMatrix FactorizationsApplications of Linear AlgebraTensors and Operations with TensorsDerivatives of Matrix Expressions
OverviewCourse outlineCourse materialsPrerequisitesMethod & grading

Overview

Linear Algebra is one of the core mathematical fields. Since the beginning of the 20th Century, the demand in this area has grown tremendously with the rise of Quantum Mechanics. Since then, it has found applications in the majority of the Natural Sciences (Physics, Chemistry, Electronics, etc.) as well as in some more advanced areas of mathematics (such as Optimization Theory, Control Theory, Machine Learning, Computer Vision, Signal Processing, etc.).

This course is a successor of a Linear Algebra 1 course.

This course is a must-know for areas such as Machine Learning, Optimization Theory, Theory of Control (these are the courses that may demand this course as a prerequisite).

Learning highlights

  • Our main goal is to develop a good understanding of what linear transforms do.
  • Based on this understanding, we will learn to analyze the matrix properties such as determinants, eigen values and vectors, SVD decomposition and other matrix factorizations.
  • Furthermore, we will touch on advanced topics that emerge from classical Linear Algebra, such as tensors, Hilbert Spaces and Fourier Series.

Course outline

15 classes

Dive into the details of the course and get a sense of what each class will cover.
Monday
Tuesday
Wednesday
Thursday
Friday
Monday
1

Class 1

Rehearsal. Linear transforms and the geometric meaning of linear transforms.

Tuesday
2

Class 2

Determinants. Properties of Determinants. Permutations and Cofactors

Wednesday
3

Class 3

Cramer’s rule, Inverse Matrix. Determinant as volume.

Thursday
4

Class 4

Eigenvalues and Eigenvectors. Equation for Eigenvectors. Matrix diagonalization

Friday
5

Class 5

Symmetric matrices. Positive and negative definite matrices.

Monday
6

Class 6

Covariance Matrix. Singular Value Decomposition. Properties.

Tuesday
7

Class 7

Linear Transformation. Matrix of a linear transformation. Rotation Matrix. Change of Basis.

Wednesday
8

Class 8

Diagonalization and Pseudoinverse. Least Squares solution. Matrix derivatives.

Thursday
9

Class 9

Tensors and operations with Tensors. Einstein’s rule. Vectors and co-vectors. Differentiation with tensors.

Friday
10

Class 10

Applications of Linear Algebra in Science. Data Fitting. Tomography. Optimization theory.

Monday
11

Class 11

Hilbert spaces. Generalization of Scalar Product. Fourier Series.

Tuesday
12

Class 12

Inverse Problems. Truncated SVD. Regularization.

Wednesday
13

Class 13

Complex Vectors and Matrices. Hermitian and Unary Matrices.

Thursday
14

Class 14

Matrix Factorizations.

Friday
15

Class 15

Final exam

Prerequisites

Linear Algebra 1, Calculus (derivatives), Python programming (cycles and if-statements, functions, classes)

Methodology

Our sessions consist of two parts: a lecture session with slides and theoretical materials and a seminar session with problem solving. The seminar sessions will include both math problems and programming tasks.

Grading

The final grade will be composed of the following criteria:
70% - Homework and lab projects
30% - Final Exam
The knowledge is the amount of problems that you have solved. Thus, I will be marking your homework assignments and practical tasks. Class activity will be rewarded with extra points.
Mikhail Romanov

Faculty

Mikhail Romanov

Senior Machine Learning Engineer, Yandex, Expert

Mikhail Romanov, PhD, is a deep learning researcher and engineer. His experience includes deep learning for production, scientific computing and research, accompanied by teaching mathematics and machine learning in general.

His academic experience includes teaching courses at MIPT, HSE, Harbour Space Universities and online platforms. As a researcher, he has conducted research at the Technical University of Denmark, Mail.ru, Samsung Research, Quantori, and Yandex. In his research, his main areas of interest are depth estimation, optical flow, optimisation of neural networks, multi-task learning, self-supervised learning, LLMs and diffusion models. He has published papers on tomography, deep learning, scientific computing, computer vision, generative AI, and diffusion models.

See full profile

Apply for this course

Snap up your chance to enroll before all spaces fill up.

Linear Algebra 2

by Mikhail Romanov

Total hours

45 Hours

Dates

Jan 11 - Jan 29, 2021

Fee for single course

€1500

Fee for degree students

€750

How to secure your spot

Complete the form below to kickstart your application

Schedule your Harbour.Space interview

If successful, get ready to join us on campus

FAQ

Will I receive a certificate after completion?

Yes. Upon completion of the course, you will receive a certificate signed by the director of the program your course belonged to.

Do I need a visa?

This depends on your case. Please check with the Spanish or Thai consulate in your country of residence about visa requirements. We will do our part to provide you with the necessary documents, such as the Certificate of Enrollment.

Can I get a discount?

Yes. The easiest way to enroll in a course at a discounted price is to register for multiple courses. Registering for multiple courses will reduce the cost per individual course. Please ask the Admissions Office for more information about the other kinds of discounts we offer and what you can do to receive one.