Dec. 31, 2023, 3 a.m. | Tobias Macey

The Machine Learning Podcast www.themachinelearningpodcast.com

Summary


Building machine learning systems and other intelligent applications are a complex undertaking. This often requires retrieving data from a warehouse engine, adding an extra barrier to every workflow. The Relational AI engine was built as a co-processor for your data warehouse that adds a greater degree of flexibility in the representation and analysis of the underlying information, simplifying the work involved. In this episode CEO Molham Aref explains how Relational AI is designed, the capabilities that it adds to …

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