Cookie Notice
This site uses cookies for performance, analytics, personalization and advertising purposes.
For more information about how we use cookies please see our Cookie Policy.
Manage Consent Preferences
These cookies are essential in order to enable you to move around the website and use its features, such as accessing secure areas of the website.
These are analytics cookies that allow us to collect information about how visitors use a website, for instance which pages visitors go to most often, and if they get error messages from web pages. This helps us to improve the way the website works and allows us to test different ideas on the site.
These cookies allow our website to properly function and in particular will allow you to use its more personal features.
These cookies are used by third parties to build a profile of your interests and show you relevant adverts on other sites. You should check the relevant third party website for more information and how to opt out, as described below.
Announcing Dell Data Lakehouse Analytics Engine powered by StarburstRead the announcement >
Fully managed in the cloud
Self-managed anywhere
We’ve compiled exclusive Data Mesh content, including on-demand talks, panel discussions featuring Zhamak Dehghani, Founder of Data Mesh, and more!
Data Mesh – an approach founded by Zhamak Dehghani – refers to a decentralized, distributed approach to enterprise data management. It is a holistic concept that sees different datasets as distributed products, orientated around domains. The idea is that each domain-specific dataset has its own embedded engineers and product owners to manage that data and its availability to other teams, driving a level of data ownership and responsibility, which is often lacking in the current data platforms that are largely centralised, monolithic, and often built around complex pipelines.
– Zhamak Dehghani, Founder of Data Mesh
In this introduction to Data Mesh, Zhamak Dehghani gives a high-level overview of the concept, which is a paradigm shift that draws from modern distributed architecture considering domains as the first-class concern, applying platform thinking to create self-serve data infrastructure, and treating data as a product.
In this session, Zhamak Dehghani gives an in-depth explanation of how to apply Data Mesh to your current architecture, following four principles: domain-oriented decentralized data ownership and architecture, data as a product, self-serve data infrastructure as a platform, and federated computational governance.
What does data mesh actually mean for data analysts? In this panel discussion moderated by moderated by Sean Zinsmeister, VP Product Marketing at ThoughtSpot, panelists Zhamak Dehghani, founder of the term Data Mesh, Daniel Abadi, Darnell-Kanal Professor of Computer Science at University of Maryland, College Park, and Gareth Stevenson, Director, Senior Quantitative Analyst, Bank of America share an interesting mix of perspectives.
This blog describes why an externalized query service, like Starburst, and a data access control tool, like Immuta provide the perfect framework to enable data mesh.
Computer Science Professor Daniel Abadi shares his perspective on the Data Mesh and it’s effectiveness and application in relation to the Data Warehouse architecture.
Check out Data Mesh in practice in this talk from the Databricks AI Summit 2020 which follows our customer Zalando’s journey from a centralized Data Lake to a distributed Data Mesh architecture backed by Spark and built on Delta Lake.
© Starburst Data, Inc. Starburst and Starburst Data are registered trademarks of Starburst Data, Inc. All rights reserved. Presto®, the Presto logo, Delta Lake, and the Delta Lake logo are trademarks of LF Projects, LLC
Up to $500 in usage credits included