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Shellcode_IA32: A Dataset for Automatic Shellcode Generation
by
Natella, Roberto
, Shaikh, Samira
, Al-Hossami, Erfan
, Liguori, Pietro
, Cukic, Bojan
, Cotroneo, Domenico
in
Datasets
/ Machine translation
/ Natural language
/ Software reliability
2022
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Shellcode_IA32: A Dataset for Automatic Shellcode Generation
by
Natella, Roberto
, Shaikh, Samira
, Al-Hossami, Erfan
, Liguori, Pietro
, Cukic, Bojan
, Cotroneo, Domenico
in
Datasets
/ Machine translation
/ Natural language
/ Software reliability
2022
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Shellcode_IA32: A Dataset for Automatic Shellcode Generation
Paper
Shellcode_IA32: A Dataset for Automatic Shellcode Generation
2022
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Overview
We take the first step to address the task of automatically generating shellcodes, i.e., small pieces of code used as a payload in the exploitation of a software vulnerability, starting from natural language comments. We assemble and release a novel dataset (Shellcode_IA32), consisting of challenging but common assembly instructions with their natural language descriptions. We experiment with standard methods in neural machine translation (NMT) to establish baseline performance levels on this task.
Publisher
Cornell University Library, arXiv.org
Subject
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