- Big Data Forensics:Learning Hadoop Investigations
- Joe Sremack
- 231字
- 2021-07-16 20:38:27
What this book covers
Chapter 1, Starting Out with Forensic Investigations and Big Data, is an overview of both forensics and Big Data. This chapter covers why Big Data is important, how it is being used, and how forensics of Big Data is different from traditional forensics.
Chapter 2, Understanding Hadoop Internals and Architecture, is a detailed explanation of Hadoop's internals and how data is stored within a Hadoop environment.
Chapter 3, Identifying Big Data Evidence, covers the process for identifying relevant data within Hadoop using techniques such as interviews, data sampling, and system reviews.
Chapter 4, Collecting Hadoop Distributed File System Data, details how to collect forensic evidence from the Hadoop Distributed File System (HDFS) using physical and logical collection methods.
Chapter 5, Collecting Hadoop Application Data, examines the processes for collecting evidence from Hadoop applications using logical- and query-based methods. HBase, Hive, and Pig are covered in this chapter.
Chapter 6, Performing Hadoop Distributed File System Analysis, details how to conduct a forensic analysis of HDFS evidence, utilizing techniques such as file carving and keyword analysis.
Chapter 7, Analyzing Hadoop Application Data, covers how to conduct a forensic analysis of Hadoop application data using databases and statistical analysis techniques. Topics such as Benford's law and clustering are discussed in this chapter.
Chapter 8, Presenting Forensic Findings, shows to how to present forensic findings for internal investigations or legal proceedings.
- Mobile Application Development:JavaScript Frameworks
- Android和PHP開發最佳實踐(第2版)
- Hands-On Machine Learning with scikit:learn and Scientific Python Toolkits
- Arduino by Example
- HTML5游戲開發案例教程
- Windows Presentation Foundation Development Cookbook
- Spring Boot企業級項目開發實戰
- The DevOps 2.5 Toolkit
- Node.js全程實例
- CoffeeScript Application Development Cookbook
- 詳解MATLAB圖形繪制技術
- SQL Server 2016 從入門到實戰(視頻教學版)
- AI自動化測試:技術原理、平臺搭建與工程實踐
- 原型設計:打造成功產品的實用方法及實踐
- Docker on Windows