Whitepaper One Data

Whitepaper
Data Products – Catalyst for Change

7 reasons data experts need to start thinking about data products

What you will find
in this whitepaper:

  • What are data products and why are they relevant?
  • Data as a Product within the Data Mesh approach
  • How to get started
  • Challenges solved through data products
  • Enablement within One Data

This whitepaper highlights the benefits of treating data as a product. It provides seven reasons why data experts should consider building them for their organization to leverage data in a more sustainable and scalable way. It’s a transformational approach that has endless benefits.

Download the whitepaper to find out how you can amplify organization productivity, save your data expert’s valuable time, ensure data quality, interoperability and much more.

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More Information
Whitepaper data products

With One Data, you can build, manage, and share such data products.
The Data Product Builder uses AI in every step of data product development, significantly reducing manual effort. This makes it fast and easy to generate new, measurable business value from data.

Learn more about data product building with One Data →

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