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https://github.com/13o-bbr-bbq/machine_learning_security

Source code about machine learning and security.
https://github.com/13o-bbr-bbq/machine_learning_security

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Source code about machine learning and security.

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# Machine Learning and Security
Source codes about machine learning and security.

## Line up.
* [Cyber security and Machine Learning course](https://github.com/13o-bbr-bbq/machine_learning_security/tree/master/Security_and_MachineLearning)
The elementary training course of Machine learning for security engineer.
* [Vulnerabilties of Machine Learning](https://github.com/13o-bbr-bbq/machine_learning_security/blob/master/Vulnerabilities_of_ML/)
Summary of Machine Learning vulnerability.
* [Analytics](https://github.com/13o-bbr-bbq/machine_learning_security/tree/master/Analytics)
Analyzing packet capture data using k-means.
* [CNN_test](https://github.com/13o-bbr-bbq/machine_learning_security/tree/master/CNN_test)
Generate adversarial example against CNN.
* [Deep Exploit](https://github.com/13o-bbr-bbq/machine_learning_security/tree/master/DeepExploit)
Fully automatic penetration test tool using Machine Learning.
Deep Exploit was presented at **[Black Hat USA 2018 Arsenal](https://www.blackhat.com/us-18/arsenal/schedule/index.html#deep-exploit-11908)** , **[Black Hat EURO 2018 Arsenal](https://www.blackhat.com/eu-18/arsenal/schedule/index.html#deep-exploit-fully-automatic-penetration-test-tool-using-machine-learning-13320)** and **[DEF CON 26! AI Village](https://aivillage.org/posts/accepted-talks/)**.
* [GyoiThon](https://github.com/gyoisamurai/GyoiThon)
Next generation penetration test tool.
GyoiThon was presented at **[Black Hat ASIA 2018 Arsenal](https://www.blackhat.com/asia-18/arsenal/schedule/index.html#gyoithon-9651)** , **[Black Hat ASIA 2019 Arsenal](https://www.blackhat.com/asia-19/arsenal/schedule/index.html#gyoithon-penetration-testing-using-machine-learning-14359)** and **[DEF CON 26! Demo Labs](https://www.defcon.org/html/defcon-26/dc-26-demolabs.html)**.
* [DeepGenerator](https://github.com/13o-bbr-bbq/machine_learning_security/tree/master/Generator)
Fully automatically generate numerous injection codes for web application assessment using Genetic Algorithm and Generative Adversarial Networks.
* [Recommender](https://github.com/13o-bbr-bbq/machine_learning_security/tree/master/Recommender)
Recommend optimal injection code for detecting web app vulnerabilities.
* [SAIVS (Spider Artificial Intelligence Vulnerability Scanner)](https://github.com/13o-bbr-bbq/machine_learning_security/tree/master/Saivs)
SAIVS is an artificial intelligence to find vulnerabilities in Web applications.
SAIVS was presented at **[Black Hat ASIA 2016 Arsenal](http://www.blackhat.com/asia-16/arsenal.html#saivs-spider-artificial-intelligence-vulnerability-scanner)**.

## Contact us

Isao Takaesu
[email protected]
[https://twitter.com/bbr_bbq](https://twitter.com/bbr_bbq)