Homepage ParrentName Architecture
Architecture

Architecting a Modern Data Warehouse for Large Enterprises: Build Multi-cloud Modern Distributed Data Warehouses with Azure and AWS

PDF Version
(0 reviews)
$5

1 people are viewing this right now

Useable discount codes:

25% Off
APPLY
  • ISBN:

    9798868800283

  • Author/Authors:

    ,,

  • Publisher:

    Apress

  • Categories:

    Architecture

  • Description
  • Customer Reviews
  • Return Policies
Architecting a Modern Data Warehouse for Large Enterprises: Build Multi-cloud Modern Distributed Data Warehouses with Azure and AWS

Design and architect new generation cloud-based data warehouses using Azure and AWS. This book provides an in-depth understanding of how to build modern cloud-native data warehouses, as well as their history and evolution. The book starts by covering foundational data warehouse concepts, and introduces modern features such as distributed processing, big data storage, data streaming, and processing data on the cloud. You will gain an understanding of the synergy, relevance, and usage data warehousing standard practices in the modern world of distributed data processing. The authors walk you through the essential concepts of Data Mesh, Data Lake, Lakehouse, and Delta Lake. And they demonstrate the services and offerings available on Azure and AWS that deal with data orchestration, data democratization, data governance, data security, and business intelligence. After completing this book, you will be ready to design and architect enterprise-grade, cloud-based modern data warehouses using industry best practices and guidelines. What You Will Learn Understand the core concepts underlying modern data warehouses Design and build cloud-native data warehouses Gain a practical approach to architecting and building data warehouses on Azure and AWS Implement modern data warehousing components such as Data Mesh, Data Lake, Delta Lake, and Lakehouse Process data through pandas and evaluate your model’s performance using metrics such as F1-score, precision, and recall Apply deep learning to supervised, semi-supervised, and unsupervised anomaly detection tasks for tabular datasets and time series applications Who This Book Is For Experienced developers, cloud architects, and technology enthusiasts looking to build cloud-based modern data warehouses using Azure and AWS

Looking for a high-quality, original digital edition of Architecting a Modern Data Warehouse for Large Enterprises: Build Multi-cloud Modern Distributed Data Warehouses with Azure and AWS ? This official electronic version is published by Apress and offers a seamless reading experience, perfect for professionals, students, and enthusiasts in Architecture.
Unlike EPUB files, this is the authentic digital edition with complete formatting, images, and original content as intended by the author ,,.
Enjoy the convenience of digital reading without compromising on quality. Order Architecting a Modern Data Warehouse for Large Enterprises: Build Multi-cloud Modern Distributed Data Warehouses with Azure and AWS today and get instant access to this essential book!

0 Comments

Review Title
Review
Return Policies

By purchasing from our platform, you agree to the following terms and conditions regarding refunds, returns, and wallet credit.

Refund & Return Policy
  • Due to the digital nature of our products, all sales are final, and refunds are generally not available after purchase.
  • If you experience any technical issues with your digital book that prevent access, please contact our support team for assistance or replacement.
  • Refund requests will be reviewed on a case-by-case basis, and if approved, the refund will be credited to your wallet instead of the original payment method.
Wallet Credit & Bonus Rewards
  • As part of our loyalty program, 20% of your purchase amount will be credited to your wallet for future purchases.
  • Wallet credit is non-transferable and can only be used within our platform.
  • The credited amount will be applied automatically to your next eligible purchase.

By completing your purchase, you acknowledge and accept these policies. For any inquiries, feel free to contact our support team.

Categories