30167 Hannover
Research Interests
My research interests revolve around theoretical development and practical application of statistical and Machine Learning methods, particularly in the context of Green AutoML. It is a field dedicated to developing environmentally sustainable and energy-efficient automated machine learning algorithms. I aim to leverage these techniques within industrial contexts to drive innovation across a variety of applications.
Curriculum Vitae
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Working Experience
2023 - Present
Doctoral Researcher, Leibniz University Hannover2022 - 2023
Doctoral Researcher, Volkswagen AG, Wolfsburg.2022
Analytics Professional, Deloitte Consulding LLC, Dusseldorf.2021 - 2022
Master's degree candidate, Internship and Thesis, IAV GmbH, Gifhorn. -
Education
2023 - Present
Ph.D. Student at the Institute of Artificial Intelligence, Leibniz University Hannover2019 - 2022
M.Sc. , Financial Mathematics, Technische Universität Braunschweig. Thesis: "Novelty Detection via Kernel Mean Embeddings".2016 - 2019
B.Sc. , Financial Mathematics, Bielefeld University. Thesis: "Prediction of Customer Churn Using Machine Learning Algorithms".
Leveraging AutoML for Sustainable Deep Learning
A MultiObjective HPO Approach on Deep Shift Neural Networks
Abstract
Deep Learning (DL) has advanced various fields by extracting complex patterns from large datasets. However, the computational demands of DL models pose environmental and resource challenges. Deep Shift Neural Networks (DSNNs) present a solution by leveraging shift operations to reduce computational complexity at inference. Compared to common DNNs, DSNNs are still less well understood and less well optimized. By leveraging AutoML techniques, we provide valuable insights into the potential of DSNNs and how to design them in a better way. We focus on image classification, a core task in computer vision, especially in low-resource environments. Since we consider complementary objectives such as accuracy and energy consumption, we combine state-of-the-art multi-fidelity (MF) hyperparameter optimization (HPO) with multi-objective optimization to find a set of Pareto optimal trade-offs on how to design DSNNs. Our approach led to significantly better configurations of DSNNs regarding loss and emissions compared to default DSNNs. This includes simultaneously increasing performance by about 20% and reducing emissions, in some cases by more than 60%. Investigating the behavior of quantized networks in terms of both emissions and accuracy, our experiments reveal surprising model-specific trade-offs, yielding the greatest energy savings. For example, in contrast to common expectations, quantizing smaller portions of the network with low precision can be optimal with respect to energy consumption while retaining or improving performance. We corroborated these findings across multiple backbone architectures, highlighting important nuances in quantization strategies and offering an automated approach to balancing energy efficiency and model performance.
Details
- Organisationseinheit(en)
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Institut für Künstliche Intelligenz
Forschungszentrum L3S
- Typ
- Artikel
- Journal
- Transactions on Machine Learning Research
- Band
- 2025-July
- ISSN
- 2835-8856
- Publikationsdatum
- 2025
- Publikationsstatus
- Veröffentlicht
- Peer-reviewed
- Ja
- ASJC Scopus Sachgebiete
- Maschinelles Sehen und Mustererkennung, Artificial intelligence
- Ziele für nachhaltige Entwicklung
- SDG 7 - Erschwingliche und saubere Energie