A quick recap of H2O AI Cloud
The goal of this chapter is to explore how H2O at scale, the focus of this book, picks up new capabilities when used as part of the H2O AI Cloud platform. Let's first have a quick review of H2O AI Cloud by revisiting the following diagram, which we encountered in the previous chapter:
As a quick summary, we see that H2O AI Cloud has four specialized model-building engines. H2O Core (H2O-3, H2O Sparkling Water) represents H2O DistributedML for horizontally scaling model building on massive datasets. H2O Enterprise Steam, in this context, represents a more generalized tool to manage and provision the model-building engines.
We see that the H2O MOJO, exported from H2O Core model building, can be deployed directly to the H2O MLOps model deployment, monitoring, and management platform (though, as seen in Chapter 10, H2O Model Deployment Patterns, the MOJO can be...