Allow me to begin with a brief anecdote. A few years ago, while explaining Tekton to one of my colleagues, I came to a realization. The concept of information flow plays a crucial role in the CI/CD process. However, grasping this concept can be challenging for newcomers entering the world of Tekton and continuous integration. Over time, I’ve had numerous conversations with colleagues within and outside my organization, and my belief in the necessity of simplifying the explanation of information flow within a pipeline has been reaffirmed.
In today’s dynamic and competitive business environment, the need to efficiently streamline and optimize your software delivery processes has become paramount. Tekton, a powerful open source framework, empowers teams to automate their workflows effectively. However, one particular challenge that often arises is understanding how information can seamlessly pass from one task to another within Tekton Pipelines. This article will demystify this concept, highlighting its significant business value.
The importance of information flow
In a Tekton pipeline, efficient information flow is essential for orchestrating complex tasks and ensuring a smooth development process.
When team members can easily transfer data between tasks, it leads to the following:
- Increased productivity: Streamlined information flow reduces manual intervention and accelerates pipeline execution, allowing your team to focus on more critical tasks.
- Consistency: Ensuring that the right data is available at each step of the pipeline guarantees consistent and reliable results.
- Error reduction: Minimizing data-handling errors reduces downtime and potential issues in production.
Simplifying the process
To make the concept of information flow in Tekton Pipelines more accessible, let’s break it down into manageable steps. Here’s a straightforward guide to passing information between tasks:
1. Project and Persistent Volume Creation (PVC):
- Begin by creating a project and the necessary persistent volumes to store data.
2. Task and Pipeline Creation:
- Define your tasks, specifying inputs and outputs.
- Construct your pipeline, orchestrating the tasks in the desired order.
3. Task Runs and Pipeline Execution:
- Create task run YAML files, indicating how data should flow from one task to another.
- Execute the pipeline, witnessing the seamless information transfer in action.
Real-world Tekton Pipeline implementation
To further assist you in grasping this concept, let's look at a test use case that demonstrates a simple way of passing information within a Tekton pipeline. You’ll find detailed YAML files for each step of the process, from setting up the project and volumes to executing the pipeline. This example serves as a foundation that you can extend and adapt to your specific use cases, enhancing your development efficiency.
This example is tested with Red Hat OpenShift Pipelines version 1.70 and higher, running on Red Hat OpenShift Container Platform 4.10 and higher. Be sure to install OpenShift Pipelines and Tekton. On the OpenShift Container Platform you can install OpenShift Pipelines operator (1).
Create a test project
kind: Project
apiVersion: project.openshift.io/v1
metadata:
name: test
Before you create tasks and pipeline, ensure that you have a PVC associated with the project where you are creating tasks and pipeline. You need to know your storage class. Check with your storage provider or your company’s Storage admin.
Create a PVC named test:
kind: PersistentVolumeClaim
apiVersion: v1
metadata:
name: test
namespace: test
spec:
accessModes:
- ReadWriteOnce
resources:
requests:
storage: 5Gi
storageClassName: gp2
volumeMode: Filesystem
In the first task, add a workspace like this in spec. First, have a workspace named source
in this case and use that in the second task. Capture what you need to pass in data as results and redirect that information to a file, for example, ee_data.json
, which you call in the second task.
apiVersion: tekton.dev/v1beta1
kind: Task
metadata:
name: task1
spec:
description: >-
Add execution environment to automation controller
workspaces:
- name: source
results:
- name: data
description: ID to be passed to next task
steps:
- name: task1
image: quay.io/rshah/jq
workingDir: $(workspaces.source.path)
resources: {}
script: |
#!/usr/bin/env bash
data="This is the output from task 1"
printf "%s" "${data}" > ee_data.json
AC_EE_ID=$(cat ee_data.json)
printf "%s" ${AC_EE_ID}
In the next task, task 2, you can reference ee_data.json
as shown below:
apiVersion: tekton.dev/v1beta1
kind: Task
metadata:
name: task2
spec:
workspaces:
- name: source
steps:
- name: task2
image: quay.io/rshah/jq
workingDir: $(workspaces.source.path)
resources: {}
script: |
#!/usr/bin/env bash
AC_EE_ID=$(cat ee_data.json)
printf "%s" ${AC_EE_ID}
When you run task1
and task2
in a pipeline, both should print the same output from the tasks.
Create a pipeline
Create a YAML file of task pipeline and execute it in your OpenShift or Kubernetes environment.
apiVersion: tekton.dev/v1beta1
kind: Pipeline
metadata:
name: "value_pass_pipeline"
spec:
workspaces:
- name: source
params:
- description: Verify the TLS on the registry endpoint (for push/pull to a non-TLS registry)
name: TLSVERIFY
type: string
default: "false"
- description: Dummy parameter for task1
name: task1
type: string
default: "task1"
- description: Dummy parameter for task2
name: task2
type: string
default: "task2"
tasks:
- name: task1
taskRef:
kind: Task
name: task1
params:
workspaces:
- name: source
workspace: source
- name: task2
taskRef:
kind: Task
name: task2
params:
runAfter:
- task1
workspaces:
- name: source
workspace: source
When you run the pipeline, both tasks will show the same output as shown below. This shows that information from task 1 is picked up by task 2:
|
Task runs and pipeline run
A pipeline in execution is a PipelineRun. A PipelineRun will execute individual tasks creating TaskRun.
apiVersion: tekton.dev/v1beta1
kind: TaskRun
metadata:
name: test-0ij91k-task1
namespace: test
spec:
resources: {}
serviceAccountName: pipeline
taskRef:
kind: Task
name: task1
timeout: 59m59.989014151s
workspaces:
- name: source
persistentVolumeClaim:
claimName: test
---
apiVersion: tekton.dev/v1beta1
kind: TaskRun
metadata:
name: test-0ij91k-task2
namespace: test
spec:
resources: {}
serviceAccountName: pipeline
taskRef:
kind: Task
name: task2
timeout: 59m59.989014151s
workspaces:
- name: source
persistentVolumeClaim:
claimName: test
---
apiVersion: tekton.dev/v1beta1
kind: PipelineRun
metadata:
name: test-0ij91k
namespace: test
spec:
pipelineRef:
name: test
serviceAccountName: pipeline
timeout: 1h0m0s
workspaces:
- name: source
persistentVolumeClaim:
claimName: test
This simple example explained how you can pass information from one task to another.
Summary
Mastering the art of information flow within Tekton Pipelines can significantly benefit your organization. It empowers your team to work more efficiently, reduce errors, and deliver software faster. By following the steps outlined in this article, you’ll be well on your way to harnessing the full potential of Tekton for your business needs.
Don’t let the complexity of information transfer hold your development pipeline back. Embrace Tekton’s capabilities and unlock a world of possibilities for your software delivery processes.
Last updated: November 9, 2023