Inhalt

[ 993MLPEDN2V19 ] VL Deep Learning and Neural Nets II

Versionsauswahl
Es ist eine neuere Version 2021W dieser LV im Curriculum Master's programme Mechatronics 2023W vorhanden.
Workload Education level Study areas Responsible person Hours per week Coordinating university
3 ECTS M1 - Master's programme 1. year Computer Science Günter Klambauer 2 hpw Johannes Kepler University Linz
Detailed information
Original study plan Master's programme Artificial Intelligence 2019W
Objectives Deep learning is a machine learning technique based on artificial neural networks. In this lecture, students will see more advanced insights, extensions and applications of deep learning, as well as discuss unsupervised deep learning techniques and open research questions. It is expected that students visiting this class already have a solid understanding of machine learning.
Subject
  • Energy-based models (RBMs & Deep Boltzmann machines)
  • Unsupervised Deep Learning (VAEs, GANs, Flows)
  • Bayesian Deep Learning (Gaussian Processes, Evidence Framework & modern bayesian approaches)
  • Interpretability in Deep Learning (Saliency methods, deep dream, visualizing CNNs, …)
  • Error Surfaces (Flat minima, effects of deepness, issues in generalization)
Criteria for evaluation Exam at the end of the semester
Methods Slide presentations, discussions, and code examples
Language English
Changing subject? No
On-site course
Maximum number of participants -
Assignment procedure Direct assignment