Inhalt

[ 993MLPEDATV25 ] VL (*)Deep Learning: Architectures and Generative Techniques

Versionsauswahl
(*) Leider ist diese Information in Deutsch nicht verfügbar.
Workload Ausbildungslevel Studienfachbereich VerantwortlicheR Semesterstunden Anbietende Uni
3 ECTS M1 - Master 1. Jahr Artificial Intelligence Günter Klambauer 2 SSt Johannes Kepler Universität Linz
Detailinformationen
Quellcurriculum Masterstudium Artificial Intelligence 2025W
Lernergebnisse
Kompetenzen
(*)Students have an advanced understanding of deep learning techniques, focusing on generative and unsupervised learning methods as well as deep learning theory. They are able to design, implement, and optimize complex deep learning models, such as variational autoencoders, generative adversarial networks, and Bayesian models, while exploring state-of-the-art applications in classification, segmentation, and object detection.
Fertigkeiten Kenntnisse
(*)
  • Designing and Implementing Advanced CNN Architectures (k5)

Students can build convolutional neural networks (CNNs) for advanced tasks such as image classification, semantic segmentation, and object detection, applying deep learning models to real-world problems.

  • Applying Generative and Unsupervised Learning Techniques (k5)

Students are able to implement unsupervised deep learning methods, including autoencoders and generative models, to discover latent structures in data and generate realistic samples.

  • Working with Variational Autoencoders and Generative Adversarial Networks (k5)

Students can design and train variational autoencoders (VAEs) and generative adversarial networks (GANs) to perform tasks such as data generation, unsupervised learning, and anomaly detection. Utilizing Bayesian Deep Learning and Energy-Based Models (k5) Students are capable of applying Bayesian deep learning techniques for uncertainty estimation and working with energy-based models to model data distributions and perform probabilistic inference.

  • Exploring Deep Learning Theory and Open Research Questions (k5)

Students can critically analyze deep learning theory, understanding current challenges, limitations, and open research questions in the field, and apply theoretical insights to improve model performance.

(*)Students have in-depth knowledge of advanced deep learning models, focusing on generative models like variational autoencoders, GANs, and Bayesian methods, as well as unsupervised learning techniques. They understand the theory behind deep learning, covering advanced CNN applications and energy-based models, and are familiar with ongoing research challenges in the field.
Beurteilungskriterien (*)Exam at the end of the semester
Lehrmethoden (*)Slide presentations, discussions, and code examples
Abhaltungssprache Englisch
Lehrinhalte wechselnd? Nein
Frühere Varianten Decken ebenfalls die Anforderungen des Curriculums ab (von - bis)
993MLPEDN2V19: VL Deep Learning and Neural Nets II (2019W-2025S)
Präsenzlehrveranstaltung
Teilungsziffer -
Zuteilungsverfahren Direktzuteilung