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  2. 2025/26 spring
  3. Project-Based Introduction to Machine Learning (Online) (LTAT.02.040)
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Project-Based Introduction to Machine Learning (Online) 2025/26 spring

  • Pealeht
  • Loengud
  • Kodutööd
  • Kaggle võistlus
  • Projekti ja plakati konkurss

Lectures

Week # 01 - 09 Feb - Introduction to Machine Learning

Lecture 1- Part 1
Lecture 1- Part 2
Lecture 1- Part 3
Lecture 1- Part 4
Lecture 1- Part 5
Lecture 1- Part 6
Lecture 1- Part 7
Lecture 1- Part 8
Lecture 1- Part 9

Week # 02 - 16 Feb - Data Preprocessing + Homework 1: Python Basics

Lecture 2- Part 1
Lecture 2- Part 2
Lecture 2- Part 3
Lecture 2- Part 4

Week # 03 - 23 Feb - Feature Selection and Engineering + Homework 2: Data Preprocessing

Lecture 3- Part 1
Lecture 3- Part 2

Week # 04 - 02 Mar - Classification

Classification Lecture 4- Part 1
Classification Lecture 4- Part 2
Classification Lecture 4- Part 3
No Code Classification Lecture 4- Part 4
No Code Classification Lecture 4- Part 5
No Code Classification Lecture 4- Part 6
Low Code Classification Lecture 4- Part 7
Low Code Classification Lecture 4- Part 8
Low Code Classification Lecture 4- Part 9
Low Code Classification Lecture 4- Part 10

Week # 05 - 09 Mar - Regression + Homework 3: Classification

Regression Lecture 5- Part 1
No Code Regression Lecture 5- Part 2
No Code Regression Lecture 5- Part 3
No Code Regression Lecture 5- Part 4
Low Code Regression Lecture 5- Part 5
Low Code Regression Lecture 5- Part 6
Low Code Regression Lecture 5- Part 7
Low Code Regression Lecture 5- Part 8
Low Code Regression Lecture 5- Part 9
Advanced Concepts in Linear Regression Lecture 5- Part 10

Week # 06 - 16 Mar - Time Series Forecasting + Homework 4: Regression

Lecture 6- Part 1
Lecture 6- Part 2
Lecture 6- Part 3
Lecture 6- Part 4

Week # 07 - 23 Mar - Clustering + Homework 5: Time Series Forecosting

Lecture 7- Part 1
Lecture 7- Part 2
Lecture 7- Part 3
Lecture 7- Part 4
Lecture 7- Part 5
Lecture 7- Part 6

Week # 08 - 30 Mar - AutoML & Computer vision + Homework 6: Clustering

AutoML Lecture 8- Part 1
Computer vision Lecture 8- Part 1
Computer vision Lecture 8- Part 2
Computer vision Lecture 8- Part 3
Computer vision Lecture 8- Part 4
Computer vision Lecture 8- Part 5
Computer vision Lecture 8- Part 6
Computer vision Lecture 8- Part 7
Computer vision Lecture 8- Part 8

Week # 09 - 06 Apr - Model Explainability & Large Language Model + Homework 7: AutoML + START PREPARING FOR PROJECT PROPOSAL

Lecture 9 - Part 1
Lecture 9- Part 2
Lecture 9- Part 3
Lecture 9- Part 4
Lecture 9- Part 5
Lecture 9- Part 6
Lecture 9- Part 7
Lecture 9- Part 8
Lecture 9 - Part 9

Week # 10 - 13 Apr - Neural Network + Homework 8: Computer Vision

Lecture 10- Part 1
Lecture 10- Part 2
Lecture 10- Part 3
Lecture 10- Part 4
Lecture 10- Part 5
Lecture 10- Part 6
Lecture 10- Part 7
Lecture 10- Part 8

Week # 11 - 20 Apr - Interpretability SUBMIT PROJECT PROPOSAL

Lecture 11 - Part 1
Lecture 11 - Part 2
Lecture 11 - Part 3
Lecture 11 - Part 4

Week # 12 - 27 Apr - Specialized Topics

Tutorial on Random Forest
Tutorial in LightGBM including hyperparameter tuning
Introduction to XGBoost Algorithm
Simple and multivariate linear regression
No Code
Low code I – Model creation
Low code II – Model evaluation
Random Forest
LightGBM

Week # 13 - 04 May - Kaggle Competition

will be informed soon.

Week # 14 - 11 May - PROJECT SUBMISSION

Week 15 - 18 May - START PREPARING FOR POSTER

Week 16 - 25 May - POSTER SUBMISSION

Week 17 - 1 jun - POSTER PRESENTATION

  • Institute of Computer Science
  • Faculty of Science and Technology
  • University of Tartu
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