Data integration challenges faced by academic publishers
Academic journal publishers face a lot of challenges when integrating data from multiple sources. Here's a breakdown on data integration challenges.
Data engineering, knowledge discovery, semantic AI, and more.
Academic journal publishers face a lot of challenges when integrating data from multiple sources. Here's a breakdown on data integration challenges.
Data management is an old practice, and that's what makes it prone to sluggish performance. Here's how to change that with agile data management.
Data mining has a long history in IT, but pure text mining is also growing. Here are the differences between the two practices: Text mining vs data mining.
A semantic data layer provides a contextual view of your data to help you extract meaning from it. Here's how it can benefit you.
Semantic data models help you discover valuable real-world relationships. Here are 3 examples of how you can use these models.
Agile has been around for a while, but it doesn't apply only to software. Here's an article on agile data governance framework!
The data discovery process makes data meaningful by finding hidden patterns and trends. Here is a 5-step guide on how it works.
Data discovery and classification are pivotal to formulating your organization's business strategy. Let's understand how.
Data discovery reveals patterns and trends which are hard to find otherwise. Here are 3 benefits of leveraging a data discovery service.