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Studies
Admissions
The Institute
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Studies
Admissions
The Institute
Resources

DS406

Master's Machine Learning

Barcelona Campus
Jan 31, 2024 - Feb 16, 2024
In the Master's Machine Learning course, students will cover the main theoretical foundations of Machine and Deep Learning, while using Python 3 and PyTorch for assignments.
Barcelona Campus
Jan 31, 2024 - Feb 16, 2024

Faculty Profiles

Radoslav Neychev

Radoslav Neychev

Harbour.Space AI Track Director, Girafe-ai founder

Alina Samokhina

Alina Samokhina

Senior Data Analyst at Avito

Course length

3 weeks

Duration

3 hours
per day

Total hours

39 hours

Credits

6 ECTS

Language

English

Course type

Offline

Fee for single course

€1500

Fee for degree students

€750

Skills you’ll learn

Machine LearningLinear modelsBasic regularizationEnsembling methodsDeep Learning basicsProblem Statement in Data ScienceML Model Quality EstimationModel Selection Basic Framework
OverviewCourse outlineCourse materialsPrerequisitesMethod & grading

Overview

This course aims to introduce students to the contemporary state of Machine Learning and Artificial Intelligence. It combines theoretical foundations of Machine Learning algorithms with comprehensive practical assignments. The course covers materials from classical algorithms to Deep Learning approaches and recent achievements in the field of Artificial Intelligence. This course is accompanied by Deep Learning in Applications course (Module 12), which brings the most recent achievements in the field and their applications.

Programming assignments will be implemented in Python 3. PyTorch framework will be used for Deep Learning practice.

Special acknowledgements to Nikolay Karpachev and Ivan Provilkov for contributions into the course materials and structure.

Learning highlights

  • Learn the main theoretical foundations of Machine Learning and Deep Learning
  • Get familiar with various approaches to supervised and unsupervised problems
  • Gain essential experience in data preprocessing, model development, fitting and validation
  • Develop skills required in product development and applied research

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

Snow Summit

-

Tuesday
2

Snow Summit

-

Wednesday
3

Introduction, overview and metric algorithms

Machine Learning general overview.

Supervised and Unsupervised learning problem statements. Metrics. kNN. Maximum Likelihood estimation. Naive Bayesian Classification.

Thursday
4

Linear regression

Gauss-Markov theorem. L1 and L2 regularization. Matrix differentiation.

Friday
5

Linear classification

Margin. Logistic regression. Multiclass classification strategies.

Monday
6

Linear classification & dimensionality reduction

SVM, kernel trick. Linear algebra recap: eigendecomposition of a matrix, SVD. PCA

Tuesday
7

Model construction and validation

Bias-Variance decomposition.

Train-Validation-Test framework. Hyperparameters tuning.

Wednesday
8

Decision trees & ensembling methods

Construction procedure. Bootstrap recap.

Bagging. Random Subspace Method. Random Forest. Out of Bag error.

Thursday
9

Ensembling methods

Stacking. Blending. Gradient boosting.

Friday
10

Midterm

Feature engineering and missing values.

Feature importance estimation.

Monday
11

Intro to Deep Learning

Motivation & timeline. Intuition, forward pass.

NN specific terminologyBackpropagation mechanism.

Activation functions.

Tuesday
12

Optimization & regularization in Deep Learning

SGD refinements. Weights initialization. NN overfitting and regularization methods.

Wednesday
13

Deep learning for structured data

Recurrent neural networks, sequence modeling. Vanishing gradient problem.

Thursday
14

Deep Learning for structured data

Convolutional layers. Upconvolutions. Pooling. Most influential architectures overview.

Friday
15

Unsupervised learning

Manifold learning. Dimensionality reduction. Clustering algorithms.

Attention mechanism outro.

Final test.

Prerequisites

Basic knowledge of Python. You do not need to be a developer, but you need to be able to write without googling every line. A good example of what you should be able to do: https://gitlab.erc.monash.edu.au/andrease/Python4Maths/tree/master

Basic knowledge of linear algebra / probability theory / statistics. You can use the chapters of the Deep Learning book as a cool minimal tutorial: * Linear algebra: http://www.deeplearningbook.org/contents/linear_algebra.html * Probability and Information Theory: http://www.deeplearningbook.org/contents/prob.html * Numerical Computation: http://www.deeplearningbook.org/contents/numerical.html

Methodology

The course will be organised in three-hour sessions and self-study practical assignments. Sessions will contain both theoretical and practical parts with different ratios depending on the materials.

Grading

The final grade will be composed of the following criteria:
60% - Homework assignments
10% - Theoretical tests
30% - Final exam
Radoslav Neychev

Faculty

Radoslav Neychev

Harbour.Space AI Track Director, Girafe-ai founder

Radoslav Neychev is a data scientist with focus on Deep Learning and Reinforcement Learning techniques. He has worked on variety of research (CERN LHCb, MIPT Machine Intelligence Lab, CC RAS) and industrial projects (Yandex, RaiffeisenBank) in different domains vary from particle identification problem to fraudulent transactions detection.

Radoslav graduated from Moscow Institute of Physics and Technology, majoring in Applied Mathematics and Machine Learning. Radoslav is reading lectures and organising practical classes at Russian top-tier universities, tech companies and summer schools.

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Alina Samokhina

Faculty

Alina Samokhina

Senior Data Analyst at Avito

Alina graduated from Moscow Institute of Physics and Technology, majoring in Applied Mathematics and Physics. Currently, she is pursuing her PhD in Machine Learning and Artificial Intelligence, with a primary focus on time series analysis related to brain signals and neurointerfaces.

Throughout her career, Alina has gained extensive experience working with diverse datasets in various companies. She has contributed to the development of neural networks for a startup specializing in VR games with neurocontrol (Neiry), as well as made valuable contributions to fraud detection efforts in a major industrial company (Avito).

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Apply for this course

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

Master's Machine Learning

by Radoslav Neychev, Alina Samokhina

Total hours

39 Hours

Dates

Jan 31 - Feb 16, 2024

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.