Mike Tung | Automated Knowledge Graphs For Market Intelligence
KGC 2021
•
22m
Nearly every business is constantly trying to identify, analyze, and grow their market. Yet, traditional processes for data management inevitably lead to a database that contains missing, outdated, invalid, or inconsistent data. Automated knowledge graph construction techniques are a scalable way to maintain and enforce the quality of data in real-world business databases and knowledge graphs offer an ideal representation for modeling the complex relationships between business entities and for validating properties and constraints. In this presentation, we will cover lessons learned building a commercial system that maintains 250M business entities and automatically updates over 100M new facts each month as the external world changes.
Up Next in KGC 2021
-
Laura Ham | Introduction To Weaviate ...
This talk is an introduction to the vector search engine Weaviate. You will learn how storing data using vectors enables semantic search and automatic data classification. Topics like the underlying vector storage mechanism and how the pre-trained language vectorization model enables this are tou...
-
Stefan Plantikow | The Upcoming GQL S...
Following the GQL Manifesto, the ISO working group that develops the SQL standard voted to initiate a project for a new database language: GQL (Graph Query Language). This talk presents an overview of the goals of GQL and the progress so far, key aspects of the language design such as the basic d...
-
Luke Feeney | Why A Knowledge Graph I...
There has been an explosion of tools - especially in the machine learning space - describing themselves as ‘git for data’. This talk will review the main open source players and link the interest to data mesh architectures. Not to jump to outcomes without first conducting the review, but it will ...