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AbdulBasit KABIR
AbdulBasit KABIR

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Understanding Continuous Integration

#ci

Continuous Integration (CI) is a phase in the software development cycle where code from different team members or different features are integrated together. This usually involves merging code (integration), building the application and carrying out basic tests all within an ephemeral environment.

In the past, code was integrated at an “integration phase of the software development life-cycle. This phase came after different teams would have spent weeks, months or even years working in separately, dedicated to different (parts of) application or services. You can guess how painful the integration phase of the project would have been. It was not uncommon to spend weeks or even months in this phase. This was during the waterfall era.

With Extreme Programming (XP) and agile, integration became frequent with developers integrating as often as possible usually soon after a unit is complete. This is done on the shared source code repository. The frequent integration became automated and continuous which prompted the need for some kind of checks before the new code is integrated. Thus, Continuous Integration.

CI workflows vary a lot depending on tools, programming language, project and many other factors but a common flow has these steps.
• Pushing to the code repository
• Static analysis
• Pre-deployment testing
• Packaging and deployment to the test environment
• Post-deployment testing

Let’s take a look at how this flow would work on a java project with gradle as the build tool

Code repository

Typically there would have a code repository and some kind of workflow for contributing new code. Depending on the workflow, committing code kicks off the CI pipeline which often starts with static code analysis. You could refer to this post to help choose an appropriate workflow.

Static analysis

Static (code) analysis is done on the code base of the application without the need to run the software. The goal here is to ensure the code doesn’t have possible bugs and conforms to standard formatting and styling.

Let's add FindBugs to check for possible errors and Checkstyle to ensure the project conforms with coding standard (we’ll use the Google Java Style).
The Gradle build script would be something like this:

apply plugin: 'java'
apply plugin: 'findbugs'
apply plugin: 'checkstyle'


repositories {
    mavenCentral()
}

dependencies {
  ...
}

tasks.withType(FindBugs) {
  reports {
    xml.enabled false
    html.enabled true
  }
}

tasks.withType(Checkstyle) {
  reports {
    xml.enabled false
    html.enabled true
  }
}

To complete the Checkstyle configuration, we’ll need to add Checkstyle configuration file to the project path config/checkstyle/checkstyle.xml. There’s a sample config file on GitHub based on the Google Java style. With FindBugs and Checkstyle configured, static analysis can now be run:

$ gradle check

Pre-deployment testing

At this phase, any test that could be run without deploying to a server should be. This will include unit tests and various other types of tests (maybe functional or integration). This phase is used to ensure that the change set doesn’t break functionalities and works well with other parts of the code since the test are run on the whole codebase not just the new changes (as the author might have done on the dev env).

Once this phase of the ci pipeline passes successfully, the new changes are good to be accepted and ready to be deployed for further test (automated and user testing if needed). However, code review by other team members between this phase and the next would also improve the overall quality of the code as they would be able to spot a misunderstood requirement.

Packaging and deployment to the test/staging environment

Depending on the kind of project, the application is built, packaged, sent to a test or staging environment (that mimics production). This ensures that the integrated changes build well with other parts and can be deployed for functional test can to be carried out. It’s at this phase that we also verify that the new changes are compatible with other libraries and the deployment environment. This is phase should also automated.

Post-deployment testing

For tests that need the application to be deployed, this phase of the CI pipeline is where they’re run. The tests vary depending on tools, frameworks and language of the application but they’re usually functional integration and performance tests. Successful execution of this phase ends the CI pipeline for the changeset signalling it’s good enough for users.

Once the CI pipeline completes successfully, the deployed application could undergo manual test by a “user or the QA team to ensure that it fits the client’s requirements. The packages or artifacts generated by the CI pipeline can now be taken/deployed to production. This can also be automated with a successful implementation of Continuous Delivery (CD) pipeline.

A successful implementation of a CI/CD pipeline helps ensure quality and improves speed and take us a step closer to continuous delivery. Most source code management tools (like Github, Bitbucket, Gitlab) either have a CI pipeline add-on or can easily be integrated with other CI/build tools (like Jenkins, Travis CI, CircleCI). My personal preference is to integrate with Jenkins.
Hope you find this useful. look forward to seeing how this is implemented for different projects.

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