Building More Expressive Next-Gen Knowledge Resources
KGC 2025
•
33m
Mike Dillinger, hypergraf, Chief Scientist
The need for structured knowledge -- in the form of taxonomies, ontologies, and knowledge graphs -- has never been more urgent. It is crucial for evolving gen AI to next-gen AI.
But one of the blockers for deeper investment and broader deployment is the diversity of concepts and options that we have developed.
This talk describes how we alleviate this problem by showing that each kind of structured knowledge makes a unique contribution to the expressivity of next-gen knowledge representations. In our view, the usual options are neither complete in themselves nor mutually exclusive but form a cumulative scale of increasing expressivity. We draw on examples from LinkedIn to show how greater expressivity leads to more applications.
Up Next in KGC 2025
-
Describing it All: Lessons Learned fr...
Mara Inglezakis Owens, Independent, Portfolio Architect
You know you need a knowledge graph to represent information relevant to your organization. You know it’s on trend. And you got’ve some money for a proof of concept or a project team.
It’s time to make a business impact. This presentation... -
Time Is Ticking: Accelerating Organiz...
Tony Seale, The Knowledge Graph Guys, Founder
As tech giants build whale-sized supercomputers to train AI models, organisations must focus on mastering their most valuable asset: data. Yet most organisational data remains fragmented, unstructured, and disconnected. This session explores how the ...
-
The Hidden Cost of Ignoring Semantics
Juan Sequeda, data.world, Head of AI Lab
What do enterprises lose by not investing in semantics and knowledge? The ability to reuse data effectively, wasting millions in inefficiencies and missed opportunities. Without a shared understanding of data, even the most advanced AI models struggle to ...