官术网_书友最值得收藏!

  • Mastering Python Forensics
  • Dr. Michael Spreitzenbarth Dr. Johann Uhrmann
  • 201字
  • 2021-07-09 21:11:14

Preface

Today, information technology is a part of almost everything that surrounds us. These are the systems that we wear and that support us in building and running cities, companies, our personal online shopping tours, and our friendships. These systems are attractive to use—and abuse. Consequently, all criminal fields such as theft, fraud, blackmailing, and so on expanded to the IT. Nowadays, this is a multi-billion, criminal, global shadow industry.

Can a single person spot traces of criminal or suspicious activity conducted by a multi-billion, criminal, global shadow industry? Well, sometimes you can. To analyze the modern crime, you do not need magnifying glasses and lifting fingerprints off wine bottles. Instead, we will see how to apply your Python skills to get a close look at the most promising spots on a file system and take digital fingerprints from the traces left behind by hackers.

As authors, we believe in the strength of examples over dusty theory. This is why we provide samples for forensic tooling and scripts, which are short enough to be understood by the average Python programmer, yet usable tools and building blocks for real-world IT forensics.

Are you ready to turn suspicion into hard facts?

主站蜘蛛池模板: 类乌齐县| 云龙县| 德江县| 永昌县| 冕宁县| 宜城市| 全州县| 来安县| 海晏县| 罗平县| 磴口县| 育儿| 云霄县| 莒南县| 海原县| 玛多县| 珲春市| 安多县| 密云县| 吉木萨尔县| 平邑县| 栖霞市| 贵港市| 玉林市| 台北市| 南投县| 和田县| 周至县| 北海市| 章丘市| 汝阳县| 屏南县| 平顺县| 治多县| 永登县| 赤水市| 龙口市| 通道| 万盛区| 上虞市| 定西市|