A tree-based neural network system for automatic deeper analysis of intrusions.
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Updated
Apr 9, 2017 - Python
A tree-based neural network system for automatic deeper analysis of intrusions.
Threat Detection System using Hybrid (Machine Learning + Lexical Analysis) learning Approach.
To classify toxic and abusive comments from huge bunch of text.
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A Python CLI utility for quickly converting a list or text file of MITRE ATT&CK technique IDs to a MITRE ATT&CK Navigator layer .JSON file.
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