LGOct 1, 2025

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

arXiv:2510.01521v21 citationsh-index: 10Has Code
Originality Incremental advance
AI Analysis

This provides a practical tool for global-scale decarbonization in computing and societal systems, though it is incremental as it builds on existing foundation model approaches.

The paper tackles the problem of accurate, fine-grained carbon intensity forecasting for computational decarbonization by introducing CarbonX, an open-source tool that uses Time Series Foundation Models to achieve a zero-shot forecasting MAPE of 15.82% across 214 grids worldwide and competitive performance on benchmarks.

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. In this paper, we present CarbonX, an open-source tool that leverages Time Series Foundation Models (TSFMs) for a range of decarbonization tasks. CarbonX utilizes the versatility of TSFMs to provide strong performance across multiple tasks, such as carbon intensity forecasting and imputation, and across diverse grids. Using only historical carbon intensity data and a single general model, our tool achieves a zero-shot forecasting Mean Absolute Percentage Error (MAPE) of 15.82% across 214 grids worldwide. Across 13 benchmark grids, CarbonX performance is comparable with the current state-of-the-art, with an average MAPE of 9.59% and tail forecasting MAPE of 16.54%, while also providing prediction intervals with 95% coverage. CarbonX can provide forecasts for up to 21 days with minimal accuracy degradation. Further, when fully fine-tuned, CarbonX outperforms the statistical baselines by 1.2--3.9X on the imputation task. Overall, these results demonstrate that CarbonX can be used easily on any grid with limited data and still deliver strong performance, making it a practical tool for global-scale decarbonization.

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