This folder holds notebooks with examples of using ML Containers from the AI Hub.
The notebooks show an example workflow of:
- create a dataset
- train an ML model
- monitor the training
- validate the trained model
- deploy the trained model for serving
- get online predictions
- interactively examine the model with the What-if Tool
Note that all of the ML containers generate an HTML report file (Run Report) that is embedded in the notebooks. GitHub renderers the notebooks in a way that doesn't show JavaScript plots from those reports.
For an example of using those ML Containers with Kubeflow pipelines, read this article.
By deploying or using this software you agree to comply with the AI Hub Terms of Service and the Google APIs Terms of Service. To the extent of a direct conflict of terms, the AI Hub Terms of Service will control.