Mohammed Aaser | Future Of Enterprise Data Management
KGC | The Complete Collection
•
24m
Many organizations have initiated data and analytics transformations with some success, however are beginning to face challenges in scaling efforts beyond a handful of applications/use cases. One of the major barriers remains around data management, including challenges with data transparency, integration, quality, and accessibility. Data products represent the next wave of progress for the enterprise – defining explicit shared meaning around data; designed with scale and value capture in mind. In the talk, we walk through the challenges faced today and propose an approach to develop and maintain data products - including the team, funding model and use of knowledge graphs.
Up Next in KGC | The Complete Collection
-
Neda Abolhassani & Teresa Tung | Acce...
A data supply chain is industry-specific, but many data prep tools are industry agnostic. As part doing this work, data engineers and domain experts apply their deep knowledge of how to transform raw data to a form that can address specific problems. In this way, the data supply chain is a doma...
-
Olaf Hartig | RDF Star: Metadata For ...
The lack of a convenient way to capture annotations and statements about individual RDF triples has been a long standing issue for RDF. Such annotations are a native feature in other contemporary graph data models (e.g., edge properties in the Property Graph model). In recent years, the RDF* app...
-
Paco Nathan | Graph Based Data Science
Python offers excellent libraries for working with graphs: semantic technologies, graph queries, interactive visualizations, graph algorithms, probabilistic graph inference, as well as embedding and other integrations with deep learning. However, most of these approaches share little common groun...