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Studies
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The Institute
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Studies
Admissions
The Institute
Resources

DS212BKK

Intro to Deep Learning

Bangkok Campus
May 08, 2023 - May 26, 2023
This course will introduce you to Neural Networks (sometimes called AI), which is the most attractive area of Machine Learning.
Bangkok Campus
May 08, 2023 - May 26, 2023
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

Offline

Fee for single course

€1500

Fee for degree students

€750

Skills you’ll learn

Neural NetworksDesigning Neural Network InterfacesOptimising Neural NetworksSolving Computer Vision ProblemsSolving Natural Language Processing Problems
OverviewCourse outlinePrerequisitesMethod & grading

Overview

Neural Networks (sometimes called AI) is the most attractive area of Machine Learning since 2012. Due to significant progress, machines can solve visual problems, perform accurate translations, and play Chess better than humans. Although the area has grown tremendously in recent years, still many of the areas require significant work. Meanwhile, the companies’ need for specialists in this area grows with years.

This area is not only interesting and filled with science, programming and mathematical riddles but also is one of the best-paid areas of contemporary Computer Science. Moreover, it has numerous applications in other areas such as engineering, commerce, astrophysics, biology and many others.

Learning highlights

  • In this course, there are two main objectives. The first objective is to learn how to build and train neural networks from a practical point of view. The second objective is to deeply understand the processes that take place in an artificial neural network. In addition, it’s crucial for debugging neural networks and training scripts, designing novel neural networks, and reusing the already pre-trained networks for other tasks (so-called transfer learning).

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

Session 1

Neuron and Neural Network.

Tuesday
2

Session 2

Training a Neural Network

Wednesday
3

Session 3

Designing interfaces and loss functions for Neural Network

Thursday
4

Session 4

Optimisers for Neural Networks

Friday
5

Session 5

Maximum Likelihood and Regularization

Monday
6

Session 6

Gradient Vanishing and Batch Normalization

Tuesday
7

Session 7

Convolutional Neural Networks

Wednesday
8

Session 8

Convolutional Neural Networks Architectures

Thursday
9

Session 9

Efficient Architectures of Convolutional Neural Networks

Friday
10

Session 10

Segmentation

Monday
11

Session 11

Detection

Tuesday
12

Session 12

Optical Flow and Depth Estimation

Wednesday
13

Session 13

Final Project

Thursday
14

Session 14

Final Project

Friday
15

Session 15

Final Project

Prerequisites

Calculus

Linear Algebra

Statistics and Probability

Python programming

Methodology

Grading

The final grade will be composed of the following criteria:
70% - Homework and lab projects
30% - Final project
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.

Intro to Deep Learning

by Mikhail Romanov

Total hours

45 Hours

Dates

May 08 - May 26, 2023

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.