DSLGSep 30, 2025

Signal-Aware Workload Shifting Algorithms with Uncertainty-Quantified Predictors

arXiv:2509.26511v1h-index: 14
Originality Incremental advance
AI Analysis

This work addresses the challenge of real-time energy consumption alignment with external signals for grid operators, representing an incremental improvement by leveraging advanced forecasting methods.

The paper tackles the problem of online workload shifting for energy sustainability by integrating uncertainty-quantified (UQ) predictors into decision-making, resulting in an algorithm that consistently outperforms baselines in trace-driven experiments on carbon intensity and electricity price data.

A wide range of sustainability and grid-integration strategies depend on workload shifting, which aligns the timing of energy consumption with external signals such as grid curtailment events, carbon intensity, or time-of-use electricity prices. The main challenge lies in the online nature of the problem: operators must make real-time decisions (e.g., whether to consume energy now) without knowledge of the future. While forecasts of signal values are typically available, prior work on learning-augmented online algorithms has relied almost exclusively on simple point forecasts. In parallel, the forecasting research has made significant progress in uncertainty quantification (UQ), which provides richer and more fine-grained predictive information. In this paper, we study how online workload shifting can leverage UQ predictors to improve decision-making. We introduce $\texttt{UQ-Advice}$, a learning-augmented algorithm that systematically integrates UQ forecasts through a $\textit{decision uncertainty score}$ that measures how forecast uncertainty affects optimal future decisions. By introducing $\textit{UQ-robustness}$, a new metric that characterizes how performance degrades with forecast uncertainty, we establish theoretical performance guarantees for $\texttt{UQ-Advice}$. Finally, using trace-driven experiments on carbon intensity and electricity price data, we demonstrate that $\texttt{UQ-Advice}$ consistently outperforms robust baselines and existing learning-augmented methods that ignore uncertainty.

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