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Python Penetration Testing Cookbook. Practical recipes on implementing information gathering, network security, intrusion detection, and post-exploitation Rejah Rehim

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Python Penetration Testing Cookbook. Practical recipes on implementing information gathering, network security, intrusion detection, and post-exploitation Rejah Rehim - okladka książki

Python Penetration Testing Cookbook. Practical recipes on implementing information gathering, network security, intrusion detection, and post-exploitation Rejah Rehim - okladka książki

Autor:
Rejah Rehim
Ocena:
Bądź pierwszym, który oceni tę książkę
Stron:
226
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Penetration testing is the use of tools and code to attack a system in order to assess its vulnerabilities to external threats. Python allows pen testers to create their own tools. Since Python is a highly valued pen-testing language, there are many native libraries and Python bindings available specifically for pen-testing tasks.

Python Penetration Testing Cookbook begins by teaching you how to extract information from web pages. You will learn how to build an intrusion detection system using network sniffing techniques. Next, you will find out how to scan your networks to ensure performance and quality, and how to carry out wireless pen testing on your network to avoid cyber attacks. After that, we’ll discuss the different kinds of network attack. Next, you’ll get to grips with designing your own torrent detection program. We’ll take you through common vulnerability scenarios and then cover buffer overflow exploitation so you can detect insecure coding. Finally, you’ll master PE code injection methods to safeguard your network.

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O autorze książki

Rejah Rehim is currently the Director and CEO of Beagle Security. Previously holding the title of Security Architect at FAYA India, he is a long-time preacher of Open Source. He is a steady contributor to the Mozilla Foundation and has been featured in the San Francisco Firefox Monument. A member of the Mozilla Add-On review board, he has contributed to the development of several node modules. He has to his credit the creation of nine Mozilla Add-Ons including the very popular Clear Console Add-On which was selected as one of the best Mozilla Add-Ons of 2013. With a user base of more than 44,000, it has been more than 8,00,000 downloads to date. He has successfully created the world's first security testing browser bundle, PenQ, an Open Source Linux-based penetration testing browser bundle pre-configured with tools for spidering, advanced web searching, fingerprinting, etc.

Rejah is also an active member of OWASP and the chapter leader of OWASP Kerala. He is also an active
speaker at FAYA:80, a tech community-based in Kerala, with the mission of Free Knowledge Sharing. Besides
being a part of the Cyber Security division of FAYA, Rejah is also a student of Process Automation and has
implemented it in FAYA.

Additionally, Rejah also holds the title of Commander at Cyberdome, an initiative of the Kerala Police Department.

Technical Skills - Cybersecurity, DevOps, DevSecOps, Kubernetes, Python, Microservices, Cloud Architecting

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