Follow
Helena Kotthaus
Helena Kotthaus
Verified email at tu-dortmund.de
Title
Cited by
Year
Explainability-aware one point attack for point cloud neural networks
H Tan, H Kotthaus
Proceedings of the IEEE/CVF Winter Conference on Applications of Computer …, 2023
82023
6.4 Optimization of ML on Modern Multicore Systems
H Kotthaus, P Marwedel
Also of interest, 285, 2022
2022
7.1 Efficient Memory Footprint Reduction
H Kotthaus, P Marwedel
Also of interest, 306, 2022
2022
Memory Awareness
H Kotthaus, P Marwedel, M Yayla, S Buschjäger, H Amrouch, KH Chen
Machine Learning under Resource Constraints: Fundamentals, 305-358, 2022
2022
Yes we care!-Certification for machine learning methods through the care label framework
KJ Morik, H Kotthaus, R Fischer, S Mücke, M Jakobs, N Piatkowski, ...
Frontiers in Artificial Intelligence 5, 975029, 2022
82022
SancScreen: Towards a Real-world Dataset for Evaluating Explainability Methods.
M Jakobs, H Kotthaus, I Röder, M Baritz
LWDA, 33-44, 2022
12022
Surrogate model-based explainability methods for point cloud nns
H Tan, H Kotthaus
Proceedings of the IEEE/CVF Winter Conference on Applications of Computer …, 2022
192022
Self-Supervised Source Code Annotation from Related Research Papers
P Haritz, L Pfahler, T Liebig, H Kotthaus
2021 International Conference on Data Mining Workshops (ICDMW), 1083-1084, 2021
2021
The care label concept: a certification suite for trustworthy and resource-aware machine learning
K Morik, H Kotthaus, L Heppe, D Heinrich, R Fischer, A Pauly, ...
arXiv preprint arXiv:2106.00512, 2021
72021
Can Flexible Multi-Core Scheduling Help to Execute Machine Learning Algorithms Resource-Efficiently?
H Kotthaus, L Schönberger, A Lang, JJ Chen, P Marwedel
Proceedings of the 22nd International Workshop on Software and Compilers for …, 2019
72019
Scheduling data-intensive tasks on heterogeneous many cores
P Tözün, H Kotthaus
{IEEE} Data Engineering Bulletin 42 (1), 61-72, 2019
82019
Methods for efficient resource utilization in statistical machine learning algorithms
H Kotthaus
82018
RAMBO on Homogeneous Systems and Heterogeneous Embedded Systems
H Kotthaus
Technical report for Collaborative Research Center SFB 876 Providing …, 2017
2017
R goes Mobile: Efficient Scheduling for Parallel R Programs on Heterogeneous Embedded Systems
H Kotthaus, A Lang, O Neugebauer, P Marwedel
The R User Conference, useR! 2017 July 4-7 2017 Brussels, Belgium, 74, 2017
22017
RAMBO: Resource-aware model-based optimization with scheduling for heterogeneous runtimes and a comparison with asynchronous model-based optimization
H Kotthaus, J Richter, A Lang, J Thomas, B Bischl, P Marwedel, ...
Learning and Intelligent Optimization: 11th International Conference, LION …, 2017
162017
Resource-Aware Scheduling Strategies for Parallel Model-Based Optimization
H Kotthaus
Technical report for Collaborative Research Center SFB 876 Providing …, 2016
2016
mmapcopy: efficient memory footprint reduction using application knowledge
I Korb, H Kotthaus, P Marwedel
Proceedings of the 31st Annual ACM Symposium on Applied Computing, 1832-1837, 2016
42016
Faster model-based optimization through resource-aware scheduling strategies
J Richter, H Kotthaus, B Bischl, P Marwedel, J Rahnenführer, M Lang
Learning and Intelligent Optimization: 10th International Conference, LION …, 2016
202016
Ressource-Efficient Parallel Machine Learning Applications
H Kotthaus
Technical report for Collaborative Research Center SFB 876 Providing …, 2015
2015
Performance analysis for parallel R programs: towards efficient resource utilization
H Kotthaus, I Korb, P Marwedel
Abstract Booklet of the International R User Conference (UseR, 66, 2015
62015
The system can't perform the operation now. Try again later.
Articles 1–20