Skip to main content

Advanced Topics in Deep Learning (Master)

(in German: Advanced Topics in Deep Learning (Master) )

Module-ID: FIN-INF-120496
Link: LSF
Responsibility: Sebastian Stober
Lecturer: Sebastian Stober
Classes: Advanced Topics in Deep Learning  
Applicability in curriculum: - M.Sc. INF: Informatik
- M.Sc. INGINF: Informatik
- M.Sc. WIF: Informatik
- M.Sc. DKE: Learning Methods and Models for Data Science
- M.Sc. DE: Methoden der Informatik
- M.Sc. VC: Computer Science

Abbreviation

ATDL

Credit Points

6

Semester

jedes

Term

ab 1.

Duration

1 Semester

Language

english

Level

Master

Intended learning outcomes:
Students ...

  • can read and analyze current research papers
  • apply deep learning to an application domain
  • gain in-depth knowledge In the application domain
  • learn to work efficiently in a team on scientific problems
  • learn to work on a server infrastructure
  • present scientific results in a written and oral form

Content:

  • Current topics from deep learning research
  • Create domain-specific deep learning pipelines
  • The application domain will be announced
    beforehand

Workload:

  • 30h in person
  • 150h self-study

Pre-examination requirements: Type of examination: Teaching method / lecture hours per week (SWS):

  • Hausarbeit
  • Mündliche Prüfung

Vorlesung/Seminar (2 SWS)

Prerequisites according to examination regulations: Recommended prerequisites:

none

Introduction to Deep Learning

Media: Literature:


Comments: