News

Data-hungry AI applications are fed complex information, and that's where graph databases and knowledge graphs play a crucial role.
Key-value, document-oriented, column family, graph, relational… Today we seem to have as many kinds of databases as there are kinds of data. While this may make choosing a database harder, it ...
You can think of a graph database as a set of interconnected circles (nodes) and each node represents a person, a product, a place or ‘thing’ that we want to build into our data universe.
Graph databases are the fastest growing category in all of data management, according to DB-Engines.com, a database consultancy. Since seeing early adoption by companies including Twitter, Facebook ...
Graph databases are increasingly popular. In fact, according to DB-Engines graphs are the fastest growing of any database category since 2013. This growth is fueled in part because many organizations ...
Graph databases and relational databases have big differences when it comes to how connections work, among other things ...
Emerging graph database benchmarks are already helping to overcome performance, scalability and reliability issues.
Graph databases have been around in one form or another since the early oughts, but they were generally slower, more complex to work with, and more limited in terms of their applicability than ...
Imagine your database of choice blown out of the water by a startup emerging from stealth. TigerGraph may have done just that for graph databases.
TigerGraph Inc. is bringing its graph database to the cloud in announcement being made today at Amazon Web Services Inc.’s re:Invent conference. The company, which launched a little over a year ...
The addition of vectors provides context to the graph database for enhanced search and supports generative AI and large language models.
The graph database has been in beta with Aerospike customers for several months. The largest deployment so far involved a financial transaction processing company that had a graph with billions of ...