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CarbonX: An Open-Source Tool for Computational Decarbonization Using Time Series Foundation Models

Main:10 Pages
6 Figures
Bibliography:1 Pages
14 Tables
Appendix:2 Pages
Abstract

Computational decarbonization aims to reduce carbon emissions in computing and societal systems such as data centers, transportation, and built environments. This requires accurate, fine-grained carbon intensity forecasts, yet existing tools have several key limitations: (i) they require grid-specific electricity mix data, restricting use where such information is unavailable; (ii) they depend on separate grid-specific models that make it challenging to provide global coverage; and (iii) they provide forecasts without uncertainty estimates, limiting reliability for downstream carbon-aware applications.

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