Data Governance with AWS
Balancing Data Access and Control by Working Backwards from Your Business Initiatives
Book Details
| Authors | Kevin Lewis, Jason Berkowitz, Ina Felsheim, Joseph D. Stec |
| Publisher | O'Reilly Media |
| Published | 2024 |
| Edition | 1st |
| Paperback | 53 pages |
| Language | English |
| ISBN-13 | 9781098157562, 9781098157555 |
| ISBN-10 | 1098157567, 1098157559 |
| License | Compliments of AWS |
Book Description
How can you ensure that your data is in optimal condition to support your specific business initiatives and operations? With this report from AWS, C-suite executives, including CDOs, CAOs, CISOs, and CSOs, will gain insights on how a targeted approach to data governance can enhance data curation, discovery, protection, and sharing capabilities. Our goal is to empower you to curate your data at scale and share it - without compromising compliance and security measures.
You'll understand the significance of data governance and how it fosters rapid innovation by optimizing your data resources. And you'll learn how protecting and securely sharing your data with control and clarity will help deliver better business intelligence insights. Data engineers, data architects, and data analysts will also get practical guidance on specific areas such as data integration and metadata cataloging.
With this mini-book, you'll explore:
- Why data governance is so challenging
- How working backward from business initiatives can help
- The three pillars of good data governance and the capabilities they require
- The technical support needed to deploy a good data governance strategy
- What AWS data governance tools are available, and how they might fit into your strategy
This book is published as open-access, which means it is freely available to read, download, and share without restrictions.
If you enjoyed the book and would like to support the author, you can purchase a printed copy (hardcover or paperback) from official retailers.
Download and Read Links
Share this Book
[localhost]# find . -name "*Similar_Books*"
Introduction to Data Science
Introduction to Data Science: Data Analysis and Prediction Algorithms with R introduces concepts and skills that can help you tackle real-world data analysis challenges. It covers concepts from probability, statistical inference, linear regression, and machine learning. It also helps you develop skills such as R programming, data wrangling, data vi
Security as Code
DevOps engineers, developers, and security engineers have ever-changing roles to play in today's cloud native world. In order to build secure and resilient applications, you have to be equipped with security knowledge. Enter security as code. In this book, authors BK Sarthak Das and Virginia Chu demonstrate how to use this methodology to secure any
Data Science with Microsoft SQL Server 2016
R is one of the most popular, powerful data analytics languages and environments in use by data scientists. Actionable business data is often stored in Relational Database Management Systems (RDBMS), and one of the most widely used RDBMS is Microsoft SQL Server. Much more than a database server, it's a rich ecostructure with advanced analytic capab
Intel Galileo and Intel Galileo Gen 2
Intel Galileo and Intel Galileo Gen 2: API Features and Arduino Projects for Linux Programmers provides detailed information about Intel Galileo and Intel Galileo Gen 2 boards for all software developers interested in Arduino and the Linux platform. The book covers the new Arduino APIs and is an introduction for developers on natively using Linux.
The Big Data Agenda
This book highlights that the capacity for gathering, analysing, and utilising vast amounts of digital (user) data raises significant ethical issues. Annika Richterich provides a systematic contemporary overview of the field of critical data studies that reflects on practices of digital data collection and analysis. The book assesses in detail one
R for Data Science
Learn how to use R to turn raw data into insight, knowledge, and understanding. This book introduces you to R, RStudio, and the tidyverse, a collection of R packages designed to work together to make data science fast, fluent, and fun. Suitable for readers with no previous programming experience, R for Data Science is designed to get you doing data