H2O AI Cloud architecture
We will not dive deep into H2O AI Cloud Architecture but will review three important architecture points:
- Components are modular and open: The platform's modular architecture allows enterprises or groups to use the components they need and to hide and ignore the ones they do not. H2O AI Cloud is also open – its components can coexist and interact with the larger enterprise ecosystem, including non-H2O AI/ML components. The MLOps component, for example, can host non-H2O models, such as scikit-learn models, and the AI application Wave SDK can integrate non-H2O APIs with its own.
- Cloud-native architecture: H2O AI Cloud is built on a modern Kubernetes architecture that achieves efficient resource consumption among cloud servers. In addition, H2O workloads on the AI Cloud are ephemeral – they spin up when needed, spin down when not in use, and retain state when spinning up again. The H2O AI Cloud also leverages the cloud service providers...