Automating the Modern Data Warehouse

A Comprehensive Guide for Optimal Data Management


Automating the Modern Data Warehouse
Automating the Modern Data Warehouse
Compliments of Oracle

Book Details

Author Steve Swoyer
Publisher O'Reilly Media
Published 2021
Edition 1st
Paperback 66 pages
Language English
ISBN-13 9781098102845, 9781098102838
ISBN-10 1098102843, 1098102835
License Compliments of Oracle

Book Description

The opportunity to modernize and improve the enterprise data warehouse is one of the best reasons for moving your application to the cloud. A data warehouse can access a greater diversity of use cases and practices than is possible in an existing environment. In this report, researcher and analyst Stephen Swoyer offers a comprehensive overview of the benefits and challenges of implementing a cloud-based data warehouse.

Senior IT decision makers, chief data officers, and data professionals will learn about the shifts and new trends in the data management landscape. Explore ways to improve data management, build a data warehouse strategy, and learn how to modernize a data warehouse effectively.

- Understand how AI, machine learning, self-service data integration, and built-in developer-oriented services have transformed the data warehouse role
- Use data warehouses to work with cloud-based data lakes for end-to-end data management and data governance
- Explore how data warehouse platforms as a service (PaaS) pave the way to automation
- Migrate, manage, and secure a data warehouse in a hybrid or multicloud environment


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*"


Python Data Science Handbook

Python Pandas

For many researchers, Python is a first-class tool mainly because of its libraries for storing, manipulating, and gaining insight from data. Several resources exist for individual pieces of this data science stack, but only with the Python Data Science Handbook do you get them all - IPython, NumPy, Pandas, Matplotlib, Scikit-Learn, and other relate

Programming Persistent Memory

C / C++ JavaScript

Beginning and experienced programmers will use this comprehensive guide to persistent memory programming. You will understand how persistent memory brings together several new software/hardware requirements, and offers great promise for better performance and faster application startup times - a huge leap forward in byte-addressable capacity compar

Delta Lake: The Definitive Guide

Ready to simplify the process of building data lakehouses and data pipelines at scale? In this practical guide, learn how Delta Lake is helping data engineers, data scientists, and data analysts overcome key data reliability challenges with modern data engineering and management techniques. Authors Denny Lee, Tristen Wentling, Scott Haines, and Pra

Managing Cloud Native Data on Kubernetes

Kubernetes Cloud

Is Kubernetes ready for stateful workloads? This open source system has become the primary platform for deploying and managing cloud native applications. But because it was originally designed for stateless workloads, working with data on Kubernetes has been challenging. If you want to avoid the inefficiencies and duplicative costs of having separa

Automating Data Transformations

Analytics

The modern data stack has evolved rapidly in the past decade. Yet, as enterprises migrate vast amounts of data from on-premises platforms to the cloud, data teams continue to face limitations executing data transformation at scale. Data transformation is an integral part of the analytics workflow-but it's also the most time-consuming, expensive, an

Data Science at the Command Line, 2nd Edition

Unix

This thoroughly revised guide demonstrates how the flexibility of the command line can help you become a more efficient and productive data scientist. You'll learn how to combine small yet powerful command-line tools to quickly obtain, scrub, explore, and model your data. To get you started, author Jeroen Janssens provides a Docker image packed wit