News
A data warehouse is defined as a central repository that allows enterprises to store and consolidate business data extracted from multiple source systems for the task of historical and trend ...
Harmonize data lake and data warehouse architecture to drive efficiency and optimization. Apply Gartner’s decision framework to map use cases to data storage options.
Most enterprises build hybrid data warehouse architectures that borrow elements from four different approaches.
Data lakehouse architecture combines the best of cloud data lake and warehousing architectures to give teams the most recent data.
More then ever before, organizations need up-to-date, comprehensive, and easily accessible data. Business Intelligence had long been a key method for making this available, and in recent years became ...
They discussed the evolution of data architectures, and the differences between a data lakehouse, a data lake and a data warehouse. (* Disclosure below.) Dremio democratizes data access ...
Architecture Data Vault 2.0 Architecture is based on three-tier data warehouse architecture. The tiers are commonly identified as staging or landing zone, data warehouse, and information delivery ...
Running on Yellowbrick’s Andromeda optimized instance for private clouds, Yellowbrick Data Warehouse queries run 3x faster than on the company’s first-generation architecture.
Nearly every data warehouse ecosystem has attempted to manage master data within its data warehouse architecture, but has focused on mastering data after transactions occur. This approach does little ...
As Yellowbrick readies its cloud SaaS service, it is pulling up the covers to reveal the underlying technology that is key to its high performance.
Some results have been hidden because they may be inaccessible to you
Show inaccessible results