Basic theory of deep networks
Probabilistic deep learning
Types of learning in deep learning
Deep learning with imperfect labels
Reliable deep learning
FDD3610 Deep Learning, advanced course 7.5 credits

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Course syllabus as PDF
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Course syllabus FDD3610 (Autumn 2025–)Content and learning outcomes
Course contents
Intended learning outcomes
On completion of the course, the student should be able to
explain and justify the subareas of deep learning
account for the theoretical background for advanced deep-learning techniques
identify needs of additional research in the area
implement several deep-learning methods based on new research
analyse advanced research in the area and critically evaluate the methods' weaknesses and strengths in order to:
be prepared for a degree projects/postgraduate studies in deep learning
better be able to meet the industrv's need for cutting-edge competence in the area.
Literature and preparations
Specific prerequisites
Literature
Examination and completion
Grading scale
Examination
- LAB1 - Laboratory work, 4.5 credits, grading scale: P, F
- PRO1 - Project, 3.0 credits, grading scale: P, F
Other requirements for final grade
The final grade will be based on the project grade
Examiner
Ethical approach
- All members of a group are responsible for the group's work.
- In any assessment, every student shall honestly disclose any help received and sources used.
- In an oral assessment, every student shall be able to present and answer questions about the entire assignment and solution.