Position: Tensor Networks are a Valuable Asset for Green AI

Journal Article (2024)
Author(s)

E.M. Memmel (TU Delft - Team Kim Batselier)

C.M. Menzen (TU Delft - Team Manon Kok)

Jetze Schuurmans (Xebia Data)

F. Wesel (TU Delft - Team Kim Batselier)

Kim Batselier (TU Delft - Team Kim Batselier)

Research Group
Team Kim Batselier
More Info
expand_more
Publication Year
2024
Language
English
Research Group
Team Kim Batselier
Volume number
235
Pages (from-to)
35340-35353
Reuse Rights

Other than for strictly personal use, it is not permitted to download, forward or distribute the text or part of it, without the consent of the author(s) and/or copyright holder(s), unless the work is under an open content license such as Creative Commons.

Abstract

For the first time, this position paper introduces a fundamental link between tensor networks (TNs) and Green AI, highlighting their synergistic potential to enhance both the inclusivity and sustainability of AI research. We argue that TNs are valuable for Green AI due to their strong mathematical backbone and inherent logarithmic compression potential. We undertake a comprehensive review of the ongoing discussions on Green AI, emphasizing the importance of sustainability and inclusivity in AI research to demonstrate the significance of establishing the link between Green AI and TNs. To support our position, we first provide a comprehensive overview of efficiency metrics proposed in Green AI literature and then evaluate examples of TNs in the fields of kernel machines and deep learning using the proposed efficiency metrics. This position paper aims to incentivize meaningful, constructive discussions by bridging fundamental principles of Green AI and TNs. We advocate for researchers to seriously evaluate the integration of TNs into their research projects, and in alignment with the link established in this paper, we support prior calls encouraging researchers to treat Green AI principles as a research priority.

Files

Memmel24a.pdf
(pdf | 1.15 Mb)
License info not available