https://github.com/cahya-wirawan/machine-learning-for-cyber-security
Curated list of tools and resources related to the use of machine learning for cyber security
https://github.com/cahya-wirawan/machine-learning-for-cyber-security
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Curated list of tools and resources related to the use of machine learning for cyber security
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Fork of wtsxDev/Machine-Learning-for-Cyber-Security
Created almost 9 years ago
· Last pushed almost 9 years ago
https://github.com/cahya-wirawan/Machine-Learning-for-Cyber-Security/blob/master/
# Machine Learning for Cyber Security [](http://kalitut.com) A curated list of amazingly awesome tools and resources related to the use of machine learning for cyber security. ## Table of Contents - [Datasets](#-datasets) - [Papers](#-papers) - [Books](#-books) - [Talks](#-talks) - [Tutorials](#-tutorials) - [Courses](#-courses) - [Miscellaneous](#-miscellaneous) ## [](#table-of-contents) Datasets * [Samples of Security Related Dats](http://www.secrepo.com/) * [DARPA Intrusion Detection Data Sets](https://www.ll.mit.edu/ideval/data/) * [Stratosphere IPS Data Sets](https://stratosphereips.org/category/dataset.html) * [Open Data Sets](http://csr.lanl.gov/data/) * [Data Capture from National Security Agency](http://www.westpoint.edu/crc/SitePages/DataSets.aspx) * [The ADFA Intrusion Detection Data Sets](https://www.unsw.adfa.edu.au/australian-centre-for-cyber-security/cybersecurity/ADFA-IDS-Datasets/) * [NSL-KDD Data Sets](https://github.com/defcom17/NSL_KDD) * [Malicious URLs Data Sets](http://sysnet.ucsd.edu/projects/url/) * [Multi-Source Cyber-Security Events](http://csr.lanl.gov/data/cyber1/) * [Malware Training Sets: A machine learning dataset for everyone](http://marcoramilli.blogspot.cz/2016/12/malware-training-sets-machine-learning.html) ## [](#table-of-contents) Papers * [Fast, Lean, and Accurate: Modeling Password Guessability Using Neural Networks](https://www.usenix.org/conference/usenixsecurity16/technical-sessions/presentation/melicher) * [Outside the Closed World: On Using Machine Learning for Network Intrusion Detection](http://ieeexplore.ieee.org/document/5504793/?reload=true) * [Anomalous Payload-Based Network Intrusion Detection](https://link.springer.com/chapter/10.1007/978-3-540-30143-1_11) * [Malicious PDF detection using metadata and structural features](http://dl.acm.org/citation.cfm?id=2420987) * [Adversarial support vector machine learning](https://dl.acm.org/citation.cfm?id=2339697) * [Exploiting machine learning to subvert your spam filter](https://dl.acm.org/citation.cfm?id=1387709.1387716) * [CAMP Content Agnostic Malware Protection](http://www.covert.io/research-papers/security/CAMP%20-%20Content%20Agnostic%20Malware%20Protection.pdf) * [Notos Building a Dynamic Reputation System for DNS](http://www.covert.io/research-papers/security/Notos%20-%20Building%20a%20dynamic%20reputation%20system%20for%20dns.pdf) * [Kopis Detecting malware domains at the upper dns hierarchy](http://www.covert.io/research-papers/security/Kopis%20-%20Detecting%20malware%20domains%20at%20the%20upper%20dns%20hierarchy.pdf) * [Pleiades From Throw-away Traffic To Bots Detecting The Rise Of DGA-based Malware](http://www.covert.io/research-papers/security/From%20throw-away%20traffic%20to%20bots%20-%20detecting%20the%20rise%20of%20dga-based%20malware.pdf) * [EXPOSURE Finding Malicious Domains Using Passive DNS Analysis](http://www.covert.io/research-papers/security/Exposure%20-%20Finding%20malicious%20domains%20using%20passive%20dns%20analysis.pdf) * [Polonium Tera-Scale Graph Mining for Malware Detection](http://www.covert.io/research-papers/security/Polonium%20-%20Tera-Scale%20Graph%20Mining%20for%20Malware%20Detection.pdf) * [Nazca Detecting Malware Distribution in Large-Scale Networks](http://www.covert.io/research-papers/security/Nazca%20-%20%20Detecting%20Malware%20Distribution%20in%20Large-Scale%20Networks.pdf) * [PAYL Anomalous Payload-based Network Intrusion Detection](http://www.covert.io/research-papers/security/PAYL%20-%20Anomalous%20Payload-based%20Network%20Intrusion%20Detection.pdf) * [Anagram A Content Anomaly Detector Resistant to Mimicry Attacks](http://www.covert.io/research-papers/security/Anagram%20-%20A%20Content%20Anomaly%20Detector%20Resistant%20to%20Mimicry%20Attack.pdf) * [Applications of Machine Learning in Cyber Security](https://www.researchgate.net/publication/283083699_Applications_of_Machine_Learning_in_Cyber_Security) ## [](#table-of-contents) Books * [Data Mining and Machine Learning in Cybersecurity](http://amzn.to/2iuWdYX) * [Machine Learning and Data Mining for Computer Security](http://amzn.to/2jnCHBs) * [Network Anomaly Detection: A Machine Learning Perspective](http://amzn.to/2jlPsgm) * [Machine Learning for Hackers: Case Studies and Algorithms to Get You Started](http://amzn.to/2jyBZPo) ## [](#table-of-contents) Talks * [Using Machine Learning to Support Information Security](https://www.youtube.com/watch?v=tukidI5vuBs) * [Defending Networks with Incomplete Information](https://www.youtube.com/watch?v=36IT9VgGr0g) * [Applying Machine Learning to Network Security Monitoring](https://www.youtube.com/watch?v=vy-jpFpm1AU) * [Measuring the IQ of your Threat Intelligence Feeds](https://www.youtube.com/watch?v=yG6QlHOAWiE) * [Data-Driven Threat Intelligence: Metrics On Indicator Dissemination And Sharing](https://www.youtube.com/watch?v=6JMEKnes-w0) * [Applied Machine Learning for Data Exfil and Other Fun Topics](https://www.youtube.com/watch?v=dGwH7m4N8DE) * [Secure Because Math: A Deep-Dive on ML-Based Monitoring](https://www.youtube.com/watch?v=TYVCVzEJhhQ) * [Machine Duping 101: Pwning Deep Learning Systems](https://www.youtube.com/watch?v=JAGDpJFFM2A) * [Delta Zero, KingPhish3r Weaponizing Data Science for Social Engineering](https://www.youtube.com/watch?v=l7U0pDcsKLg) * [Defeating Machine Learning What Your Security Vendor Is Not Telling You](https://www.youtube.com/watch?v=oiuS1DyFNd8) * [CrowdSource: Crowd Trained Machine Learning Model for Malware Capability Det](https://www.youtube.com/watch?v=u6a7afsD39A) * [Defeating Machine Learning: Systemic Deficiencies for Detecting Malware](https://www.youtube.com/watch?v=sPtbDUJjhbk) * [Packet Capture Village Theodora Titonis How Machine Learning Finds Malware](https://www.youtube.com/watch?v=2cQRSPFSY-s) * [Build an Antivirus in 5 Min Fresh Machine Learning #7. A fun video to watch](https://www.youtube.com/watch?v=iLNHVwSu9EA&t=245s) * [Hunting for Malware with Machine Learning](https://www.youtube.com/watch?v=zT-4zdtvR30) * [Machine Learning for Threat Detection](https://www.youtube.com/watch?v=qVwktOa-F34) * [Machine Learning and the Cloud: Disrupting Threat Detection and Prevention](https://www.youtube.com/watch?v=fRklX97iGIw) * [Fraud detection using machine learning & deep learning](https://www.youtube.com/watch?v=gHtN4jU69W0) * [The Applications Of Deep Learning On Traffic Identification](https://www.youtube.com/watch?v=B7OKgC3AJVM) * [Defending Networks With Incomplete Information: A Machine Learning Approach](https://www.youtube.com/watch?v=_0CRSF6yPB4) * [Machine Learning & Data Science](https://vimeo.com/112702666) ## [](#table-of-contents) Tutorials * [Click Security Data Hacking Project](http://clicksecurity.github.io/data_hacking/) * [Using Neural Networks to generate human readable passwords](http://fsecurify.com/using-neural-networks-to-generate-human-readable-passwords/) * [Machine Learning based Password Strength Classification](http://fsecurify.com/machine-learning-based-password-strength-checking/) * [Using Machine Learning to Detect Malicious URLs](http://fsecurify.com/using-machine-learning-detect-malicious-urls/) * [Big Data and Data Science for Security and Fraud Detection](http://www.kdnuggets.com/2015/12/big-data-science-security-fraud-detection.html) * [Using deep learning to break a Captcha system](https://deepmlblog.wordpress.com/2016/01/03/how-to-break-a-captcha-system/) * [Data mining for network security and intrusion detection](https://www.r-bloggers.com/data-mining-for-network-security-and-intrusion-detection/) * [An Introduction to Machine Learning for Cybersecurity and Threat Hunting](http://blog.sqrrl.com/an-introduction-to-machine-learning-for-cybersecurity-and-threat-hunting) ## [](#table-of-contents) Courses * [Data Mining for Cyber Security by Stanford](http://web.stanford.edu/class/cs259d/) ## [](#table-of-contents) Miscellaneous * [System predicts 85 percent of cyber-attacks using input from human experts](http://news.mit.edu/2016/ai-system-predicts-85-percent-cyber-attacks-using-input-human-experts-0418) * [A list of open source projects in cyber security using machine learning](http://www.mlsecproject.org/#open-source-projects) Please have a look at * [Best Hacking Books](http://www.kalitut.com/2016/12/best-ethical-hacking-books.html) * [Best Reverse Engineering Books](http://www.kalitut.com/2017/01/Best-reverse-engineering-books.html) * [Best Machine learning Books](http://www.kalitut.com/2017/01/machine-learning-book.html) * [Best 5 books Programming Books](http://www.kalitut.com/2017/01/Top-Programming-Books.html) * [Best Java Books](http://www.kalitut.com/2017/01/Best-Java-Programming-Books.html)
Owner
- Name: Cahya Wirawan
- Login: cahya-wirawan
- Kind: user
- Location: Vienna, Austria
- Website: https://www.linkedin.com/in/cahyawirawan/
- Twitter: CahyaWr
- Repositories: 171
- Profile: https://github.com/cahya-wirawan
System engineer, currently working on NLP, CV and Speech Recognition for fun and curiosity