×

Get Access

First Name
Last Name
Company
Job Title
Country
No. I do NOT want Snowflake to e-mail me about products and events that it thinks may interest me.
Yes. I do want Snowflake to send e-mail me about products and events that it thinks may interest me.
By clicking the button below, you understand Snowflake will process your personal information in accordance with our Privacy Notice.
Thank You!
Error - something went wrong!
   

5 Best Practices for Data Warehouse Development

July 16, 2019

Whether your organization is creating a new data warehouse from scratch or re-engineering a legacy warehouse system to take advantage of new capabilities, a handful of guidelines and best practices will help ensure your project’s success. These best practices for data warehouse development will increase the chance that all business stakeholders will derive greater value from the data warehouse you create, as well as lay the groundwork for a data warehouse that can grow and adapt as your business needs change. 

In this ebook, we discuss five best practices for data warehouse development, including:

  • Creating a highly effective data model 
  • Applying the agile approach to data warehouse development
  • Adopting a data warehouse automation tool, and more
Previous Flipbook
Data Modeling in the Age of JSON
Data Modeling in the Age of JSON

Next Flipbook
Modernizing Government for the 21st Century with Snowflake
Modernizing Government for the 21st Century with Snowflake