Reader small image

You're reading from  Engineering Data Mesh in Azure Cloud

Product typeBook
Published inMar 2024
PublisherPackt
ISBN-139781805120780
Edition1st Edition
Concepts
Right arrow
Author (1)
Aniruddha Deswandikar
Aniruddha Deswandikar
author image
Aniruddha Deswandikar

Aniruddha Deswandikar holds a Bachelor's degree in Computer Engineering and is a seasoned Solutions Architect with over 30 years of industry experience as a developer, architect and technology strategist. His experience spans from start-ups to dotcoms to large enterprises. He has spent 18 years at Microsoft helping Microsoft customers build their next generation Applications and Data Analytics platforms. His experience across Application, Data and AI has helped him provide holistic guidance to companies large and small. Currently he is helping global enterprises set up their Enterprise-scale Analytical system using the Data Mesh Architecture. He is a Subject Matter Expert on Data Mesh in Microsoft and is currently helping multiple Microsoft Global Customers implement the Data Mesh architecture.
Read more about Aniruddha Deswandikar

Right arrow

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...

lock icon
The rest of the page is locked
Previous PageNext Chapter
You have been reading a chapter from
Engineering Data Mesh in Azure Cloud
Published in: Mar 2024Publisher: PacktISBN-13: 9781805120780

Author (1)

author image
Aniruddha Deswandikar

Aniruddha Deswandikar holds a Bachelor's degree in Computer Engineering and is a seasoned Solutions Architect with over 30 years of industry experience as a developer, architect and technology strategist. His experience spans from start-ups to dotcoms to large enterprises. He has spent 18 years at Microsoft helping Microsoft customers build their next generation Applications and Data Analytics platforms. His experience across Application, Data and AI has helped him provide holistic guidance to companies large and small. Currently he is helping global enterprises set up their Enterprise-scale Analytical system using the Data Mesh Architecture. He is a Subject Matter Expert on Data Mesh in Microsoft and is currently helping multiple Microsoft Global Customers implement the Data Mesh architecture.
Read more about Aniruddha Deswandikar