Securing Hadoop


Securing Hadoop Implement robust end-to-end security for your Hadoop ecosystem
by 作者: Sudheesh Narayanan
ISBN-10 书号: 1783285257
ISBN-13 书号: 9781783285259
Publisher Finelybook 出版日期: November 22,2013
Pages: 116


Book Description
Security of Big Data is one of the biggest concerns for enterprises today. How do we protect the sensitive information in a Hadoop ecosystem? How can we integrate Hadoop security with existing enterprise security systems? What are the challenges in securing Hadoop and its ecosystem? These are the questions which need to be answered in order to ensure effective management of Big Data. Hadoop,along with Kerberos,provides security features which enable Big Data management and which keep data secure.
This book is a practitioner’s guide for securing a Hadoop-based Big Data platform. This book provides you with a step-by-step approach to implementing end-to-end security along with a solid foundation of knowledge of the Hadoop and Kerberos security models.
This practical,hands-on guide looks at the security challenges involved in securing sensitive data in a Hadoop-based Big Data platform and also covers the Security Reference Architecture for securing Big Data. It will take you through the internals of the Hadoop and Kerberos security models and will provide detailed implementation steps for securing Hadoop. You will also learn how the internals of the Hadoop security model are implemented,how to integrate Enterprise Security Systems with Hadoop security,and how you can manage and control user access to a Hadoop ecosystem seamlessly. You will also get acquainted with implementing audit logging and security incident monitoring within a Big Data platform.
Contents
1: HADOOP SECURITY OVERVIEW
2: HADOOP SECURITY DESIGN
3: SETTING UP A SECURED HADOOP CLUSTER
4: SECURING THE HADOOP ECOSYSTEM
5: INTEGRATING HADOOP WITH ENTERPRISE SECURITY SYSTEMS
6: SECURING SENSITIVE DATA IN HADOOP
7: SECURITY EVENT AND AUDIT LOGGING IN HADOOP

What you will learn
Understand the challenges of securing Hadoop and Big Data and master the reference architecture for Big Data security
Demystify Kerberos and the Hadoop security model
Learn the steps to secure a Hadoop platform with Kerberos
Integrate Enterprise Security Systems with Hadoop security and build an integrated security model
Get detailed insights into securing sensitive data in a Hadoop Big Data platform
Implement audit logging and a security event monitoring system for your Big Data platform
Discover the various industry tools and vendors that can be used to build a secured Hadoop platform
Recognize how the various Hadoop components interact with each other and what protocols and security they implement
Design a secure Hadoop infrastructure and implement the various security controls within the enterprise
Authors
Sudheesh Narayanan
Sudheesh Narayanan is a Technology Strategist and Big Data Practitioner with expertise in technology consulting and implementing Big Data solutions. With over 15 years of IT experience in Information Management,Business Intelligence,Big Data & Analytics,and Cloud & J2EE application development,he provided his expertise in architecting,designing,and developing Big Data products,Cloud management platforms,and highly scalable platform services. His expertise in Big Data includes Hadoop and its ecosystem components,NoSQL databases (MongoDB,Cassandra,and HBase),Text Analytics (GATE and OpenNLP),Machine Learning (Mahout,Weka,and R),and Complex Event Processing. Sudheesh is currently working with Genpact as the Assistant Vice President and Chief Architect – Big Data,with focus on driving innovation and building Intellectual Property assets,frameworks,and solutions. Prior to Genpact,he was the co-inventor and Chief Architect of the Infosys BigDataEdge product.

下载地址:

Securing Hadoop 9781783285259.epub

下载地址:

Securing Hadoop 9781783285259.mobi

下载地址:

Securing Hadoop 9781783285259.pdf

打赏
未经允许不得转载:finelybook » Securing Hadoop

相关推荐

  • 暂无文章

评论 抢沙发

  • 昵称 (必填)
  • 邮箱 (必填)
  • 网址

觉得文章有用就打赏一下

您的打赏,我们将继续给力更多优质内容

支付宝扫一扫打赏

微信扫一扫打赏