LLM Reasoning 相关度: 8/10

SEALing the Gap: A Reference Framework for LLM Inference Carbon Estimation via Multi-Benchmark Driven Embodiment

Priyavanshi Pathania, Rohit Mehra, Vibhu Saujanya Sharma, Vikrant Kaulgud, Tiffani Nevels, Sanjay Podder, Adam P. Burden
arXiv: 2603.02949v1 发布: 2026-03-03 更新: 2026-03-03

AI 摘要

论文提出SEAL框架,通过多基准测试驱动的方式,用于评估LLM推理过程中的碳排放量。

主要贡献

  • 提出了LLM推理碳排放评估的参考框架的设计原则
  • 构建了SEAL,一个基于多基准测试的初步实现
  • 验证了SEAL在LLM生态系统中的碳排放评估潜力

方法论

提出了参考框架,并基于多基准测试驱动的方式,通过SEAL来评估每个提示的碳排放量,并进行了初步验证。

原文摘要

Large Language Models are rapidly gaining traction in software engineering, yet their growing carbon footprint raises pressing sustainability concerns. While training emissions are substantial, inference quickly surpasses them due to the sheer volume of prompts processed. This shift underscores the urgent need for accurate, prompt-level carbon measurement during inference to enable informed, sustainability-focused decision-making. To address the limitations of existing approaches, in this paper, we outline the guiding principles for a novel reference framework for LLM inference carbon estimation that can guide the design of future tools and provide a systematic foundation for advancing sustainability research in this domain. We also introduce SEAL, an early embodiment of these principles that leverages a multi-benchmark-driven approach for per-prompt carbon estimation. Its initial validation shows promising results, positioning SEAL as a foundation for standardized sustainability assessment across the LLM ecosystem.

标签

LLM 碳排放 可持续性

arXiv 分类

cs.SE cs.AI