184.702 Machine Learning
This course is in all assigned curricula part of the STEOP.
This course is in at least 1 assigned curriculum part of the STEOP.

2019W, VU, 3.0h, 4.5EC
TUWEL

Properties

  • Semester hours: 3.0
  • Credits: 4.5
  • Type: VU Lecture and Exercise

Learning outcomes

After successful completion of the course, students are able to...

- Formulate problems as specific Machine Learning tasks

- Understand of a range of machine learning algorithms and their characteristics

- Select the fitting methods for a specific learning goal

- Explain data preprocessing techniques

- Evaluate the methods for their suitability

 

Subject of course

Principles of Supervised and Unsupervised Machine Learning, including pre-processing and Data Preparation, as well as Evaluation of Learning Systems. Machine Learning models discussed may include e.g. Decision Tree Learning, Model Selection, Bayesian Networks, Regression techniques, Support Vector Machines, Random Forests as well as ensemble methods.
 

Preliminary talk: 2.10. 2019

Teaching methods

The course contains classroom lectures and exercises. Exercises include the application of machine learning techniques for various data sets and implementation of machine learning algorithms. The exercises are prepared at home and are presented/discussed during the exercise classes. 

Mode of examination

Immanent

Additional information

This course will be held completely in TUWEL - all lecture materials and news about the lecture will be made available there, and all questions regarding the course should be asked in the TUWEL forum *only*, not via TISS.


To get access to the TUWEL course, just apply to the group in TISS, and then follow the TUWEL link above

 

ECTS Breakdown:

8 classes (including prepration): 22 h

4 classes for presentations/discussions (including preparation): 12

Assignments: 46.5 h

exam: 32 h

---------------

total: 112.5 h

 

Lecturers

Institute

Course dates

DayTimeDateLocationDescription
Wed16:00 - 18:0002.10.2019 - 29.01.2020EI 8 Pötzl HS - QUER Vorlesung
Mon13:00 - 16:0016.12.2019Seminarraum FAV 01 B (Seminarraum 187/2) Presentations Exercise 2
Tue10:00 - 12:3017.12.2019FAV Hörsaal 2 Presentations Exercise 2
Tue14:00 - 18:0017.12.2019Seminarraum FAV 01 C (Seminarraum 188/2) Presentations Exercise 2
Wed12:00 - 14:0018.12.2019FAV Hörsaal 2 Presentations Exercise 2
Thu11:00 - 16:0019.12.2019Seminarraum FAV 01 B (Seminarraum 187/2) Presentations Exercise 2
Thu12:00 - 17:0019.12.2019EI 8 Pötzl HS - QUER Presentations Exercise 2
Thu13:00 - 17:3030.01.2020FAV Hörsaal 2 Presentations Exercise 3
Fri13:30 - 17:0031.01.2020FAV Hörsaal 2 Presentations Exercise 3
Machine Learning - Single appointments
DayDateTimeLocationDescription
Wed02.10.201916:00 - 18:00EI 8 Pötzl HS - QUER Vorlesung
Wed09.10.201916:00 - 18:00EI 8 Pötzl HS - QUER Vorlesung
Wed16.10.201916:00 - 18:00EI 8 Pötzl HS - QUER Vorlesung
Wed23.10.201916:00 - 18:00EI 8 Pötzl HS - QUER Vorlesung
Wed30.10.201916:00 - 18:00EI 8 Pötzl HS - QUER Vorlesung
Wed06.11.201916:00 - 18:00EI 8 Pötzl HS - QUER Vorlesung
Wed13.11.201916:00 - 18:00EI 8 Pötzl HS - QUER Vorlesung
Wed20.11.201916:00 - 18:00EI 8 Pötzl HS - QUER Vorlesung
Wed27.11.201916:00 - 18:00EI 8 Pötzl HS - QUER Vorlesung
Wed04.12.201916:00 - 18:00EI 8 Pötzl HS - QUER Vorlesung
Wed11.12.201916:00 - 18:00EI 8 Pötzl HS - QUER Vorlesung
Mon16.12.201913:00 - 16:00Seminarraum FAV 01 B (Seminarraum 187/2) Presentations Exercise 2
Tue17.12.201910:00 - 12:30FAV Hörsaal 2 Presentations Exercise 2
Tue17.12.201914:00 - 18:00Seminarraum FAV 01 C (Seminarraum 188/2) Presentations Exercise 2
Wed18.12.201912:00 - 14:00FAV Hörsaal 2 Presentations Exercise 2
Wed18.12.201916:00 - 18:00EI 8 Pötzl HS - QUER Vorlesung
Thu19.12.201911:00 - 16:00Seminarraum FAV 01 B (Seminarraum 187/2) Presentations Exercise 2
Thu19.12.201912:00 - 17:00EI 8 Pötzl HS - QUER Presentations Exercise 2
Wed08.01.202016:00 - 18:00EI 8 Pötzl HS - QUER Vorlesung
Wed15.01.202016:00 - 18:00EI 8 Pötzl HS - QUER Vorlesung

Examination modalities

- Solving of exercises regarding experiments in machine learning, using a software toolkit of the student's choice (e.g. Python scikit-learn, Matlab, R, WEKA, ...)

- Written exam at the end of the semester

Exams

DayTimeDateRoomMode of examinationApplication timeApplication modeExam
Tue15:00 - 17:0030.04.2024Informatikhörsaal - ARCH-INF assessed29.03.2024 23:00 - 25.04.2024 23:59TISSExam (WS2023 2nd & final re-take)
Wed15:00 - 17:0026.06.2024GM 1 Audi. Max.- ARCH-INF written27.05.2024 00:00 - 23.06.2024 23:59TISSExam (2024 main date)

Course registration

Begin End Deregistration end
31.07.2019 00:00 16.10.2019 23:59 16.10.2019 23:59

Registration modalities

Acceptance to the course will be by the lecturers. Priority is given to

1.) Students that have this course as a compulsory or elective course (i.e. most computer science studies)

2.) ERASMUS students that have Machine Learning in their learning agreement.

3.) PhD students from the Faculty of Informatics

4.) Students that are currently in a bachelor programme of any of the studies mentioned in 1.), and are finishing their studies in the current semester. You will need to contact the lectureres and state your expected graduation, and which master programme you will continue

5.) If there are still free places afterwards, they will be assigned to master and PhD students from other faculties, and finally to all other students from other faculties. You need to contact the lecturers and state why the course is important for your studies.

Curricula

Literature

No lecture notes are available.

Previous knowledge

Self-Organising Systems (188.413) offers complementary topics in unsupervised data analysis. Information Retrieval (188.412) applies principles from Data Mining, Machine Learning

Problem Solving and Search in Artificial Intelligence (181.190) teaches some problem solving techniques that can be used in machine learning 

 

Accompanying courses

Continuative courses

Language

English