101.722 AKANW Project Machine Learning: Theory and Applications
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, PR, 5.0h, 7.5EC

Properties

  • Semester hours: 5.0
  • Credits: 7.5
  • Type: PR Project

Learning outcomes

After successful completion of the course, students are able to understand the theory of certain methods in machine learning and to implement corresponding algorithms. Selected timely application problems are solved in this manner.

Subject of course

This time there will be a focus on reinforcement learning (RL) and timely applications such as:

  • deep RL,
  • RL with function approximation in scientific and medical applications,
  • autonomous driving,
  • algorithms for computer games (Atari 2600, ALE (arcade learning environment)),
  • algorithms for games such as Go,
  • etc.

Theory: convergence and complexity of various algorithms.

Teaching methods

Methods of reinforcement learning, supervised, and unsupervised learning.

Mode of examination

Written

Lecturers

Institute

Course dates

DayTimeDateLocationDescription
Tue12:00 - 13:0008.10.2019 Sem.R. DA grün 03CVorbesprechung Heitzinger
Wed14:30 - 16:0009.10.2019 - 29.01.2020 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Tue14:30 - 16:0015.10.2019 - 28.01.2020 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
AKANW Project Machine Learning: Theory and Applications - Single appointments
DayDateTimeLocationDescription
Tue08.10.201912:00 - 13:00 Sem.R. DA grün 03CVorbesprechung Heitzinger
Wed09.10.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Tue15.10.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Wed16.10.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Tue22.10.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Wed23.10.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Tue29.10.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Wed30.10.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Tue05.11.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Wed06.11.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Tue12.11.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Wed13.11.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Tue19.11.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Wed20.11.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Tue26.11.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Wed27.11.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Tue03.12.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Wed04.12.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Tue10.12.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen
Wed11.12.201914:30 - 16:00 Sem.R. DA 03 grün CProjektpraktikum Maschinelles Lernen

Examination modalities

Implementation and documentation.

Course registration

Not necessary

Curricula

Study CodeObligationSemesterPrecon.Info
860 GW Optional Courses - Technical Mathematics Not specified

Literature

No lecture notes are available.

Previous knowledge

Linear algebra, analysis.  Experience in programming languages such as Julia or Python.

Miscellaneous

Language

if required in English