DevOps

Track where your code is deployed with toolchains

Share this post:

Have you ever wanted to track where your code is deployed? With toolchains in IBM® Bluemix® Continuous Delivery, you can now track code deployments through tags, labels, and comments in your Git repository (repo).

For example, take a toolchain that includes Delivery Pipeline and uses a Git repo from the IBM hosted Git Repos and Issue Tracking service as an input. After the pipeline builds and deploys your app to your staging environment, the toolchain adds the deploy:staging label to your issues. You can then filter by that label to find out which fixes are in staging.

Each deployment creates a tag in your Git repo. You can find out which commits are deployed in an environment by selecting the tag.

Comments that include references to the environment and the automated build system are also added to the issue. You can easily navigate to the deployed app or to the job that deployed the app from your issue-tracking system (Issues) or from your source-code management system (Git).

In addition, if your toolchain contains IBM Cloud DevOps Insights, DevOps Insights can apply analytics to your tags and labels to provide insights into your project.

Track your code changes in issues

After the toolchain deploys your commit, any issues that are referenced in the commit’s comment are automatically updated with a comment and label.

issue

 

The comment that is added to the issue contains the deployments details and links to the related components, including the toolchain, delivery pipeline, commit, and the deployed app on Bluemix.

comment

 

You can create custom issue queries that are based on labels to track the issues that are deployed to an environment.

query

 

Track your code changes with tags

Tags in the Git Repos and Issue Tracking service

Each time a commit is deployed, a tag is created that shows all of the commits that are included in the deployment.

commits

 

Tags in the Web IDE

In the Web IDE, you can see the tags in the Git commit history.

orion

 

Get started tracking your code changes

You can try this new feature in two ways.

Create a toolchain that includes code deployment and issue tracking

Create a simple Cloud Foundry toolchain from a template by clicking the Create Toolchain button. In the toolchain, the code deployment and issue-tracking feature is enabled by default.

 

Create Toolchain

 

If you’d prefer to create a toolchain from another template, go to the Create a Toolchain page. In the following toolchains, the code deployment and issue tracking feature is enabled:

  • The Simple Cloud Foundry toolchain (v2) template

simpleCFv2

  • The Microservices toolchain with DevOps Insights (v2) template

microv2

 

Enable code deployment and issue tracking for a toolchain

If you already have a toolchain, you can enable code deployment and issue tracking for the toolchain:

  1. On the Toolchains page, select your toolchain.
  2. Right-click the Git repo card and click Configure.
  3. Make sure that the repository type is Existing, and select the Track deployment of code changes check box.

configure

Resources

Working with toolchains
Working with Git Repos and Issue Tracking

Eric Jodet

More DevOps stories
May 1, 2019

Two Tutorials: Plan, Create, and Update Deployment Environments with Terraform

Multiple environments are pretty common in a project when building a solution. They support the different phases of the development cycle and the slight differences between the environments, like capacity, networking, credentials, and log verbosity. These two tutorials will show you how to manage the environments with Terraform.

Continue reading

April 30, 2019

Introducing IBM Analytics Engine v1.2 and Announcing the Deprecation of IBM Analytics Engine v1.0

We are excited to inform you about the new version of IBM Analytics Engine v1.2 that will be available starting May 15, 2019. Along with this release, Analytics Engine v1.0 will be retired.

Continue reading

April 29, 2019

Transforming Customer Experiences with AI Services (Part 1)

This is an experience from a recent customer engagement on transcribing customer conversations using IBM Watson AI services.

Continue reading