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Time-Aware Prior Fitted Networks for Zero-Shot Forecasting with Exogenous Variables

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In many time series forecasting settings, the target time series is accompanied by exogenous covariates, such as promotions and prices in retail demand; temperature in energy load; calendar and holiday indicators for traffic or sales; and grid load or fuel costs in electricity pricing. Ignoring these exogenous signals can substantially degrade forecasting accuracy, particularly when they drive spikes, discontinuities, or regime and phase changes in the target series. Most current time series foundation models (e.g., Chronos, Sundial, TimesFM, TimeMoE, TimeLLM, and LagLlama) ignore exogenous covariates and make forecasts solely from the numerical time series history, thereby limiting their performance. In this paper, we develop ApolloPFN, a prior-data fitted network (PFN) that is time-aware (unlike prior PFNs) and that natively incorporates exogenous covariates (unlike prior univariate forecasters). Our design introduces two major advances: (i) a synthetic data generation procedure tailored to resolve the failure modes that arise when tabular (non-temporal) PFNs are applied to time series; and (ii) time-aware architectural modifications that embed inductive biases needed to exploit the time series context. We demonstrate that ApolloPFN achieves state-of-the-art results across benchmarks, such as M5 and electric price forecasting, that contain exogenous information.

Andres Potapczynski, Ravi Kiran Selvam, Tatiana Konstantinova, Shankar Ramasubramanian, Malcolm Wolff, Kin G. Olivares, Ruijun Ma, Mengfei Cao, Michael W. Mahoney, Andrew Gordon Wilson, Boris N. Oreshkin, Dmitry Efimov• 2026

Related benchmarks

TaskDatasetResultRank
Electricity Price ForecastingElectricity Price Forecasting NP horizon 24 (test)
sCRPS0.038
5
Electricity Price ForecastingElectricity Price Forecasting (FR) - horizon 24 (test)
sCRPS0.04
5
Electricity Price ForecastingElectricity Price Forecasting BE horizon 24 (test)
sCRPS0.042
5
Electricity Price ForecastingElectricity Price Forecasting PJM horizon 24 (test)
sCRPS0.04
5
Electricity Price ForecastingElectricity Price Forecasting (DE) horizon 48 (test)
sCRPS0.056
5
Electricity Price ForecastingElectricity Price Forecasting (NP) horizon 48 (test)
sCRPS0.053
5
Electricity Price ForecastingElectricity Price Forecasting BE horizon 48 (test)
sCRPS0.058
5
Electricity Price ForecastingPJM horizon 48 (test)
sCRPS0.057
5
Time Series ForecastingM5 Competition State Level
M5 Daily (Basic) RMSSE0.58
5
Univariate Time Series ForecastingM3 M-competition
sCRPS0.034
5
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