News
In data warehousing, the logical model is often an afterthought or merely a carbon copy of the physical sans platform-specific properties. That limits the visibility and the use of the model to a ...
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 ...
Current enterprise data architectures include NoSQL databases co-existing with RDBMS. In this article, author discusses a solution for managing NoSQL & relational data using unified data modeling.
Data warehouse designs are the foundation of business intelligence projects. Find out 5 mistakes you need to avoid now.
Although difficult, flawless data warehouse design is a must for a successful BI system. Avoid these six mistakes to make your data warehouse perfect.
As companies implement identity resolution solutions, many are left with the challenge of needing to merge offline customer ...
Data lakes and data warehouses are achieving a measure of success in modern data architectures, but the emergence of the data lakehouse offers new challenges and opportunities for database ...
Data analytics have either been centralized or decentralized. Data mesh tried to fix that. The hub-and-spoke model goes further.
(Image via CrunchBase) Think about the term “data warehouse”: it conjures up images of days long gone by when IT organizations were primarily concerned with packing up all their digital stuff ...
Oracle Data Warehouse and Amazon Redshift are two popular data warehousing solutions, but which one has your organization's ideal features and capabilities? Read this comparison to find out.
Results that may be inaccessible to you are currently showing.
Hide inaccessible results