mirror of https://github.com/kubeflow/examples.git
* Setup continuous building of Docker images and testing for GH Issue Summarization Example.
* This is the first step in setting up a continuously running CI test.
* Add support for building the Docker images using GCB; we will use GCB
to trigger the builds from our CI system.
* Make the Makefile top level (at root of GIS example) so that we can
easily access all the different resources.
* Add a .gitignore file to avoid checking in the build directory used by
the Makefile.
* Define an Argo workflow to use as the E2E test.
Related to #92: E2E test & CI for github issue summarization
* Trigger the test on pre & post submit
* Dockerfile.estimator don't install the data_download.sh script
* It doesn't look like we are currently using data_download.sh in the
DockerImage
* It looks like it only gets used vias the ksonnet job which mounts the
script via a config map
* Copying data_download.sh to the Docker image is currently weird
given the organization of the Dockerfile and context.
* Copy the test_data to the Docker images so that we can run the test
inside the images.
* Invoke the python unittest for training from our CI system.
* In a follow on PR we will update the test to emit a JUnit XML file to
report results to prow.
* Fix image build.
|
||
|---|---|---|
| .. | ||
| flask_web | ||
| Dockerfile | ||