Hugo Math

Externer Doktorand
Chair for Machine Learning & Computer Vision
Phone: +49 (821) 598 4386
Email:
Room: 1025 (N)
Address: Universitätsstraße 6a, 86159 Augsburg

CV

Lebenslauf:

  • 2023 - Now: PhD candidate in Deep learning at University of Augsburg and BMW Promotion program
  • 2022 - 2023: Master of Business Administration at IAE Dijon
  • 2018 - 2023: Master of Science in Engineering at Polytech Dijon (University of Burgundy)
 
Areas of interest:
  • Deep Learning applied to machine generated data
  • Self-supervised learning
  • Sequence classification
 
 
About me:
I am currently a PhD candidate at the University of Augsburg and part of the BMW promotion program. My main research area focuses on how to leverage machine generated data from cars with deep learning methods to automize defects detection. This involves NLP based models, sequence classification and unsupervised learning in a big data environment.
 

Publications

2025

2025

Hugo Math, Rainer Lienhart and Robin Schön. 2025. Harnessing event sensory data for error pattern prediction in vehicles: a language model approach. DOI: 10.1609/aaai.v39i18.34138
PDF | BibTeX | RIS | DOI

Hugo Math, Robin Schön and Rainer Lienhart. 2025. One-shot multi-label causal discovery in high-dimensional event sequences.
PDF | BibTeX | RIS | URL

Hugo Math and Rainer Lienhart. 2025. Towards practical multi-label causal discovery in high-dimensional event sequences via one-shot graph aggregation. DOI: 10.48550/arXiv.2509.19112
PDF | BibTeX | RIS | DOI

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