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Learning the Language of NVMe Streams for Ransomware Detection

Authors :
Bringoltz, Barak
Halperin, Elisha
Feraru, Ran
Blaichman, Evgeny
Berman, Amit
Publication Year :
2025

Abstract

We apply language modeling techniques to detect ransomware activity in NVMe command sequences. We design and train two types of transformer-based models: the Command-Level Transformer (CLT) performs in-context token classification to determine whether individual commands are initiated by ransomware, and the Patch-Level Transformer (PLT) predicts the volume of data accessed by ransomware within a patch of commands. We present both model designs and the corresponding tokenization and embedding schemes and show that they improve over state-of-the-art tabular methods by up to 24% in missed-detection rate, 66% in data loss prevention, and 84% in identifying data accessed by ransomware.<br />Comment: 25 pages, 8 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2502.05011
Document Type :
Working Paper