9

Summary:

We have a golang application that submits Argo workflows to a kubernetes cluster upon requests. I'd like to pass a yaml file to one of the steps and I'm wondering what are the options for doing this.

Environment:

  • Argo: v2.4.2
  • K8s: 1.13.12-gke.25

Additional details:

Eventually, I would like to pass this file to the test step as shown in this example:

apiVersion: argoproj.io/v1alpha1
kind: Workflow
metadata:
  generateName: test-
spec:
  entrypoint: test
  templates:
  - name: test
    container:
      image: gcr.io/testproj/test:latest
      command: [bash]
      source: |
        python test.py --config_file_path=/path/to/config.yaml

The image used in this step would have a python script that receives the path to this file then accesses it.

To submit the Argo workflows with golang, we use the following dependencies:

Thank you.

2
  • In which step you want to pass the yaml, can you share the workflow template?
    – Crou
    Mar 19, 2020 at 14:43
  • @Crou thank you for the comment. I'm unable to share the code due to my employer's policy, but I'll post a basic example that could be representative enough.
    – Ash
    Mar 20, 2020 at 17:12

1 Answer 1

10

Option 1: pass the file as a parameter

Workflow parameters are usually small bits of text or numbers. But if your yaml file is reasonably small, you could string-encode it and pass it as a parameter.

apiVersion: argoproj.io/v1alpha1
kind: Workflow
metadata:
  generateName: test-
spec:
  entrypoint: test
  arguments:
    parameters:
    - name: yaml
      value: "string-encoded yaml"
  templates:
  - name: test
    container:
      image: gcr.io/testproj/test:latest
      command: [bash]
      source: |
        # In this case, the string-encoding should be BASH-compatible.
        python test.py --config_file_as_string="{{inputs.parameters.message}}"

Option 2: pass the file as an artifact

Argo supports multiple types of artifacts. Perhaps the simplest for your use case is the raw parameter type.

apiVersion: argoproj.io/v1alpha1
kind: Workflow
metadata:
  generateName: test-
spec:
  entrypoint: test
  templates:
  - name: test
    inputs:
      artifacts:
      - name: yaml
        path: /path/to/config.yaml
        raw:
          data: |
            this is
            the raw file
            contents
    container:
      image: gcr.io/testproj/test:latest
      command: [bash]
      source: |
        python test.py --config_file_path=/path/to/config.yaml

Besides raw, Argo supports "S3, Artifactory, HTTP, [and] Git" artifacts (among others, I think).

If, for example, you chose to use S3, you could upload the file from your golang app and then pass the S3 bucket and key as parameters.

Golang client

I'm not familiar with the golang client, but passing parameters is certainly supported, and I think passing in a raw parameter should be supported as well.

1
  • Thank you for your reply. I guess I'll go with the parameter option. The file contents we'd like to pass are relatively small in size.
    – Ash
    Mar 21, 2020 at 19:11

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.