Mining usage of cryptographic primitives from executables – Bc. Tomáš Šlancar
Bc. Tomáš Šlancar
Master's thesis
Mining usage of cryptographic primitives from executables
Mining usage of cryptographic primitives from executables
Abstract:
Magisterská práce “Mining usage of cryptographic primitives from executables” se pokouší identifikovat kryptografická primitiva uvnitř binárních souborů za pomoci umělé inteligence. Práce se zabývá možností zapojit umělou inteligineci do statické analýzy tak, aby jejím výstupem byl seznam kryptografických primitiv obsažených v binárním souboru. Práce se i zaměřuje na výběr vhodného modelu a reprezentaci …moreAbstract:
The Master's thesis "Mining usage of cryptographic primitives from executables" aims to identify cryptographic primitives within binary files using artificial intelligence. The thesis explores the possibility of incorporating artificial intelligence into static analysis to output a list of cryptographic primitives with a binary file. The thesis also focuses on selecting a suitable model and data representation …more
Language used: English
Date on which the thesis was submitted / produced: 16. 5. 2023
Identifier:
https://is.muni.cz/th/htqcd/
Thesis defence
- Date of defence: 20. 6. 2023
- Supervisor: RNDr. Adam Janovský
- Reader: PhD Lukasz Michal Chmielewski
Citation record
Full text of thesis
Contents of on-line thesis archive
Published in Theses:- světu
Other ways of accessing the text
Institution archiving the thesis and making it accessible: Masarykova univerzita, Fakulta informatikyMasaryk University
Faculty of InformaticsMaster programme / field:
Computer systems, communication and security / Information security
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