Begin of page section:
Page sections:

  • Go to contents (Accesskey 1)
  • Go to position marker (Accesskey 2)
  • Go to main navigation (Accesskey 3)
  • Go to sub navigation (Accesskey 4)
  • Go to additional information (Accesskey 5)
  • Go to page settings (user/language) (Accesskey 8)
  • Go to search (Accesskey 9)

End of this page section. Go to overview of page sections

Begin of page section:
Page settings:

English en
Deutsch de
Search
Login

End of this page section. Go to overview of page sections

Begin of page section:
Search:

Search for details about Uni Graz
Close

End of this page section. Go to overview of page sections


Search

Begin of page section:
Main navigation:

Page navigation:

  • University

    University
    • About the University
    • Organisation
    • Faculties
    • Library
    • Working at University of Graz
    • Campus
    Developing solutions for the world of tomorrow - that is our mission. Our students and our researchers take on the great challenges of society and carry the knowledge out.
  • Research Profile

    Research Profile
    • Our Expertise
    • Research Questions
    • Research Portal
    • Promoting Research
    • Research Transfer
    • Ethics in Research
    Scientific excellence and the courage to break new ground. Research at the University of Graz creates the foundations for making the future worth living.
  • Studies

    Studies
    • Prospective Students
    • Registration for Study Programme (Winter semester 2024/25)
    • Students
  • Community

    Community
    • International
    • Location
    • Research and Business
    • Alumni
    The University of Graz is a hub for international research and brings together scientists and business experts. Moreover, it fosters the exchange and cooperation in study and teaching.
  • Spotlight
Topics
  • StudiGPT is here! Try it out!
  • Sustainable University
  • Researchers answer
  • Work for us
Close menu

End of this page section. Go to overview of page sections

Begin of page section:
You are here:

University of Graz IDea_Lab Specialist areas Machine Learning
  • Welcome
  • Specialist areas
  • Research projects
  • Learn. Apply. Connect.
  • Contact and team

End of this page section. Go to overview of page sections

Begin of page section:
Sub navigation:

  • Welcome
  • Specialist areas
  • Research projects
  • Learn. Apply. Connect.
  • Contact and team

End of this page section. Go to overview of page sections

Machine Learning Methods

Developing methods and mathematical foundations of machine learning

How do I learn physical models from data? Can I trust generative models in medical imaging? How to reconstruct magnetic resonance images from noisy, incomplete data?

Questions like these are addressed in our research group, which works at the interface of mathematics, computer science and interdisciplinary applications. In previous works, we have developed methods to predict error bound for generative models in imaging, to learn parts of physical models from data or to reconstruct dynamic magnetic resonance images of the beating heart. We have further worked on interdisciplinary applications in electron tomography, emergency care medicine or positron emission tomography.

Our current methodological research focuses on generative models in machine learning, inverse problems for partial differential equations with learned components and variational methods in imaging. The contributions of our work are both of mathematical nature, comprising mathematical analysis and novel machine learning methods, and strongly application-driven, comprising the implementation and publication of parallelized algorithms and software tools for dealing with real-world data. As part of our research, we are always interested in opening up new, interdisciplinary fields of application together with cooperation partners and in using machine learning methods to generate a positive impact on science, technology and society.

Further information and all publications of our group can be found on the website of the head of our research group.
 

Research projects

Structured model learning (part of a SFB project)

Team

Portraitfoto Martin Holler

Univ.-Prof. Mag. Dr.rer.nat.
Martin Holler

Head of Machine Learning
martin.holler(at)uni-graz.at

+43 316 380 - 1645
ORCID: 0000-0002-2895-2375

https://imsc.uni-graz.at/hollerm/
Hendrik in portrait

Dr.
Hendrik Kleikamp

University Assistant
hendrik.kleikamp(at)uni-graz.at

+43 316 380 - 1652
Portrait Erion Morina

Dipl.-Ing.
Erion Morina BSc

PhD student
erion.morina(at)uni-graz.at

+43 316 380 - 5064
Victor im Portrait

Viktor Lagerberg

HPC Admin
viktor.lagerberg(at)uni-graz.at

+43 316 380 - +43 (0)316 380 - 1649
hoefler im portrait

Dipl.-Ing
Matthias Höfler BSc

PhD student
matthias.hoefler(at)uni-graz.at

+43 316 380 - 1650
Portrait of Richard Huber
©FOTO MUR

Dipl.-Ing. Dr.rer.nat
Richard Huber BSc

SFB PostDoc
richard.huber(at)uni-graz.at

+43 316 380 - 1651
Stepan im portrait

Mgr.
Štěpán Zapadlo

SFB PhD student
stepan.zapadlo(at)uni-graz.at

+43 316 380 - 1653
Portrait Tanja Weiß

Tanja Weiß

Office Management
tanja.weiss(at)uni-graz.at

+43 316 380 - 1177

PhD supervision (external)

kornberger im portrait

Jan Kornberger MSc BSc

jan.kornberger(at)fh-joanneum.at

j.kornberger(at)edu.uni-graz.at
Bruno im Portrait

Mag. Dott.
Bruno Viti

PhD student
bruno.viti(at)uni-graz.at

+43 316 380 - 5731
Bruno is also part of the BioTechMed-Graz YRG Project "CICLOPS"

Student employees

Michael Kapp, michael.kapp(at)edu.uni-graz.at

Begin of page section:
Additional information:

University of Graz
Universitaetsplatz 3
8010 Graz
Austria
  • Contact
  • Web Editors
  • Moodle
  • UNIGRAZonline
  • Imprint
  • Data Protection Declaration
  • Accessibility Declaration
Weatherstation
Uni Graz

End of this page section. Go to overview of page sections

End of this page section. Go to overview of page sections

Begin of page section:

End of this page section. Go to overview of page sections