Generic filters
Exact matches only
Search in title
Search in excerpt
Search in content
FS Logoi

Estimating the sustainability of AI models

Based on theoretical models and experimental data


Publikationsform: Fachartikel
Artikelnummer: 03654_2024_03_03
Zeitschrift: Estimating the sustainability of AI models
Erscheinungsdatum: 01.03.2024
Autor: Ralf Gitzel, Marie Platenius-Mohr, Andreas Burger,
Verlag: Vulkan-Verlag GmbH
Seiten: 9
Publikationsformat: PDF


As AI models become more and more common in process industry applications, it is important to understand their carbon footprint. Recent papers have shown that it can be quite big, i.e., the training of a single high-end model can result in emissions of more than 500t of CO2eq. In this paper we discuss the factors that influence the carbon footprint of AI models, explore what impact different decisions have, and show how the footprint can be reduced. We also evaluate different models to validate or challenge theoretical assumptions from the literature. Two experimental examples using process industry data show the impact on providers of industrial analytics in particular.

Preis: 4,90 €Zum Shop

Infos zum Autor/Verfasser/Herausgeber

Publikationen zum selben Thema