 |
Detailinformationen |
Quellcurriculum |
Masterstudium Artificial Intelligence 2019W |
Ziele |
(*)This course introduces how static and interactive visualization can be facilitated to analyze and better understand AI processes and black-box algorithms during all three phases: model building, model training, and model usage.
|
Lehrinhalte |
(*)- Visualization Techniques and Tools for AI
- Visualization Support in Deep Learning
- Supporting Interpretability & Explainability through Visualization
- Debugging & Improving Models Using Visualization
- Comparing & Selecting Models Using Visualization
- Visualizing Network Architectures, Learned Model Parameters (Edge Weights, Convolutional Filters), Computational Units (Activations, Gradients for Error Measurement), Neurons, Aggregated Information
- Case Studies and Selected Research
|
Beurteilungskriterien |
(*)Written exam (oral exam in exceptional cases) combined with practical exercises.
|
Lehrmethoden |
(*)Slide presentation with case studies, tutorials, in-class exercises, and practical project activities.
|
Abhaltungssprache |
Englisch |
Lehrinhalte wechselnd? |
Nein |
|