CYAILGJul 25, 2025

Towards Sustainability Model Cards

arXiv:2507.19559v11 citationsh-index: 3
Originality Synthesis-oriented
AI Analysis

This addresses sustainability concerns in AI for researchers and practitioners, but it is incremental as it builds on existing initiatives like Model Cards and Green AI.

The paper tackles the problem of increasing energy costs in machine learning by proposing a Domain-Specific Language to define sustainability aspects of ML models, enabling extended Model Cards for automatic analysis and comparison.

The growth of machine learning (ML) models and associated datasets triggers a consequent dramatic increase in energy costs for the use and training of these models. In the current context of environmental awareness and global sustainability concerns involving ICT, Green AI is becoming an important research topic. Initiatives like the AI Energy Score Ratings are a good example. Nevertheless, these benchmarking attempts are still to be integrated with existing work on Quality Models and Service-Level Agreements common in other, more mature, ICT subfields. This limits the (automatic) analysis of this model energy descriptions and their use in (semi)automatic model comparison, selection, and certification processes. We aim to leverage the concept of quality models and merge it with existing ML model reporting initiatives and Green/Frugal AI proposals to formalize a Sustainable Quality Model for AI/ML models. As a first step, we propose a new Domain-Specific Language to precisely define the sustainability aspects of an ML model (including the energy costs for its different tasks). This information can then be exported as an extended version of the well-known Model Cards initiative while, at the same time, being formal enough to be input of any other model description automatic process.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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