[Resource Topic] 2025/1968: TAPAS: Datasets for Learning the Learning with Errors Problem

Welcome to the resource topic for 2025/1968

Title:
TAPAS: Datasets for Learning the Learning with Errors Problem

Authors: Eshika Saxena, Alberto Alfarano, François Charton, Emily Wenger, Kristin Lauter

Abstract:

AI-powered attacks on Learning with Errors (LWE), an important hard math problem in post-quantum cryptography, rival or outperform “classical” attacks on LWE under certain parameter settings. Despite the promise of this approach, a dearth of accessible data limits AI practitioners’ ability to study and improve these attacks. Creating LWE data for AI model training is time- and compute-intensive and requires significant domain expertise. To fill this gap and accelerate AI research on LWE attacks, we propose the TAPAS datasets, a Toolkit for Analysis of Post-quantum cryptography using AI Systems. These datasets cover several LWE settings and can be used off-the-shelf by AI practitioners to prototype new approaches to cracking LWE. This work documents TAPAS dataset creation, establishes attack performance baselines, and lays out directions for future work.

ePrint: https://eprint.iacr.org/2025/1968

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