This directory provides an example of using Feast, Kubeflow, and TFX Tensorflow Datavalidation.
Use the notebook feast-taxi-job.ipynb.
- Download
kfctlCLI (v0.5.1) from kubeflow release - Run the following command to deploy Kubeflow:
# Init using HEAD of v0.5-branch.
# This is needed because v0.5.1 doesn't include this fix:
# https://github.com/kubeflow/kubeflow/pull/3238
kfctl init {APP_NAME} --platform gcp --project {PROJECT} -V --version v0.5-branch
cd {APP_DIR}
kfctl generate all -V
kfctl apply all -V- Follow instructions on setting up notebook with UI: link
- upload
Linear_Model.ipynb/deploy_with_fairing.py/LabelPrediction.pyto notebook.
BASE_IMAGEis built withfairing_job/.Dockerfilein this folder has minimum required dependencies for fairing service.