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JOURNALS // Zapiski Nauchnykh Seminarov POMI // Archive

Zap. Nauchn. Sem. POMI, 2024 Volume 540, Pages 148–161 (Mi znsl7548)

Detecting and eliminating covariate shifts in data for a more robust HDD failure prediction

K. Lukyanovabc, M. Drobyshevskiyac, D. Turdakovac

a Ivannikov Institute for System Programming of the Russian Academy of Sciences, Moscow, Russia
b Moscow Institute of Physics and Technology (National Research University), Moscow, Russia
c ISP RAS Research Center for Trusted Artificial Intelligence, Moscow, Russia

Abstract: Prediction of HDD failures has garnered significant attention in research, yet the persistence of covariate shifts in data remains a practical challenge. In this work we introduce a novel approach to training covariate shift detection models without the need for additional real data or artificial shift modeling. Moreover, we propose a comprehensive methodology integrating shift detection, administrator alerts, shift elimination, and HDD failure prediction. Experimental results demonstrate the viability of our real-world implementation.

Key words and phrases: HDD failure prediction, detecting and eliminating covariate shift.

Received: 15.11.2024

Language: English



© Steklov Math. Inst. of RAS, 2025