RenatoMignone/attack-tactic-recognition-nlp
Natural Language Processing (NLP) approach for cybersecurity command analysis. Classifies Bash command sessions into MITRE ATT&CK tactics (e.g., Discovery, Execution, Persistence). Implements text processing and classification pipelines to understand attacker intent from command-line history, bridging the gap between NLP and security operations.
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Feb 12, 2026
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