Streaming Graphs, Because We Cannot Afford to Query Anymore
May 11 | KGC 2023
•
28m
Graphs help answer complex questions, but they have traditionally been far too slow to be used in high-volume streaming data applications. While graph _databases_ have served batch-processing use cases for decades, a new streaming architecture is showing profound results for modern high-volume data pipelines. Quine (https://quine.io) is a new open source "streaming graph" with a fundamentally new architectural design allowing the common property graph data model to easily scale beyond millions of events per second. This talk will explore the design and applications of the Quine streaming graph for modern high-volume data pipelines.
Up Next in May 11 | KGC 2023
-
Finding the Next Million-Dollar Datas...
Sourcing valuable data has become a competitive advantage for many market-leading companies in the past several years. But finding that data and putting it to use efficiently and effectively is an opaque and complicated process with innumerable steps and gatekeepers. Jordan Hauer has been an expe...
-
Business Impact KGs and Visualisation...
Business impact datasets from supply chains are modelled on KGs with emphasis on rich relationship context. KGs vary in scale from millions to billions of entities and require parallel processing techniques for building, traversing, and computation and are built on an in memory horizontally scala...
-
MatKG: The largest Knowledge Graph in...
In the work, we present MatKG, the largest knowledge graph in the field of material science. It contains over 80,000 unique entities and over 5 million statements covering several topical fields such as inorganic oxides, functional materials, battery materials, metals and alloys, polymers, cement...