Understanding the Scale Limitations of Graph Databases
In this article on eWeek, thatDot’s Rob Malnati discusses why it’d difficult or even impossible to analyze really large datasets using graph databases. The difficulty is compounded by the modern need to respond to everything in real time.
“Much has changed since the emergence of the most recent generation of graph databases from a decade ago. Enterprises are dealing with previously unimaginable volumes of data to potentially query. That data enters and streams through the enterprise in a variety of channels, and enterprises want action on that information in real time.”
To learn more, read “Understanding the Scale Limitations of Graph Databases” on eWeek.
Recent posts
-
Akka to Pekko Migration for thatDot and Quine
Discover how thatDot’s migration to Pekko from Akka not only ensured functionality and community support but also reduced maintenance burden, avoided extra expenses for SAAS products, and provided…
-
Release Announcement for thatDot Streaming Graph 1.6.1 with ClickHouse Persistor
View the latest release of thatDot Streaming Graph (v1.6.1), highlighting new features such as data persistence in ClickHouse, namespace management, robust Kafka integration, simplified queries, and error fixes…
-
Stop Querying Your Data
At the 2023 Knowledge Graph Conference in New York, Ryan Wright, CEO and Founder of thatDot, gave a presentation entitled: Streaming Graphs: Because We Cannot Afford to Query…
Want to read more news and other posts? Visit the resource center for all things thatDot.
Help Center
Streaming Graph Help
Novelty
View all