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Engineering Data Mesh in Azure Cloud

Engineering Data Mesh in Azure Cloud

By : Deswandikar
4.5 (6)
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Engineering Data Mesh in Azure Cloud

Engineering Data Mesh in Azure Cloud

4.5 (6)
By: Deswandikar

Overview of this book

Decentralizing data and centralizing governance are practical, scalable, and modern approaches to data analytics. However, implementing a data mesh can feel like changing the engine of a moving car. Most organizations struggle to start and get caught up in the concept of data domains, spending months trying to organize domains. This is where Engineering Data Mesh in Azure Cloud can help. The book starts by assessing your existing framework before helping you architect a practical design. As you progress, you’ll focus on the Microsoft Cloud Adoption Framework for Azure and the cloud-scale analytics framework, which will help you quickly set up a landing zone for your data mesh in the cloud. The book also resolves common challenges related to the adoption and implementation of a data mesh faced by real customers. It touches on the concepts of data contracts and helps you build practical data contracts that work for your organization. The last part of the book covers some common architecture patterns used for modern analytics frameworks such as artificial intelligence (AI). By the end of this book, you’ll be able to transform existing analytics frameworks into a streamlined data mesh using Microsoft Azure, thereby navigating challenges and implementing advanced architecture patterns for modern analytics workloads.
Table of Contents (23 chapters)
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Free Chapter
1
Part 1: Rolling Out the Data Mesh in the Azure Cloud
9
Part 2: Practical Challenges of Implementing a Data Mesh
16
Part 3: Popular Data Product Architectures
17
Chapter 14: Advanced Analytics Using Azure Machine Learning, Databricks, and the Lakehouse Architecture
19
Chapter 16: Event-Driven Analytics Using Azure Event Hubs, Azure Stream Analytics, and Azure Machine Learning

Summary

We started with understanding the challenges of data sharing in a data mesh and what in-place sharing is, defined by the data mesh architecture as the best way to share data to reduce data movement. There are many ways of sharing data across the data mesh and beyond the data mesh. We saw four of the most popular topologies for this: in-place, data pipelines, data APIs, and data sharing. We looked at the pros and cons of each along with their ideal application. One important takeaway from this chapter is that there is no one preferred way to share data. You need to understand the pros and cons of each method and then form a best practice across the data mesh for data product teams to pick the right method for their requirements.

This ends the important topics of designing and implementing a data mesh. The next four chapters will cover some common data analytics workloads and the required architecture to implement these analytical solutions on Microsoft Azure. The first scenario...

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