gitlab-org--gitlab-foss/doc/topics/autodevops/index.md
2018-10-09 15:54:24 +03:00

45 KiB

Auto DevOps

Introduced in GitLab 10.0. Generally available on GitLab 11.0.

Auto DevOps automatically detects, builds, tests, deploys, and monitors your applications.

Overview

NOTE: Enabled by default: Starting with GitLab 11.3, the Auto DevOps pipeline will be enabled by default for all projects. If it's not explicitly enabled for the project, Auto DevOps will be automatically disabled on the first pipeline failure. Your project will continue to use an alternative CI/CD configuration file if one is found. A GitLab administrator can change this setting in the admin area.

With Auto DevOps, the software development process becomes easier to set up as every project can have a complete workflow from verification to monitoring without needing to configure anything. Just push your code and GitLab takes care of everything else. This makes it easier to start new projects and brings consistency to how applications are set up throughout a company.

Quick start

If you are using GitLab.com, see the quick start guide for using Auto DevOps with GitLab.com and a Kubernetes cluster on Google Kubernetes Engine.

Comparison to application platforms and PaaS

Auto DevOps provides functionality described by others as an application platform or as a Platform as a Service (PaaS). It takes inspiration from the innovative work done by Heroku and goes beyond it in a couple of ways:

  1. Auto DevOps works with any Kubernetes cluster, you're not limited to running on GitLab's infrastructure (note that many features also work without Kubernetes).
  2. There is no additional cost (no markup on the infrastructure costs), and you can use a self-hosted Kubernetes cluster or Containers as a Service on any public cloud (for example Google Kubernetes Engine).
  3. Auto DevOps has more features including security testing, performance testing, and code quality testing.
  4. It offers an incremental graduation path. If you need advanced customizations you can start modifying the templates without having to start over on a completely different platform.

Features

Comprised of a set of stages, Auto DevOps brings these best practices to your project in a simple and automatic way:

  1. Auto Build
  2. Auto Test
  3. Auto Code Quality [STARTER]
  4. Auto SAST (Static Application Security Testing) [ULTIMATE]
  5. Auto Dependency Scanning [ULTIMATE]
  6. Auto License Management [ULTIMATE]
  7. Auto Container Scanning
  8. Auto Review Apps
  9. Auto DAST (Dynamic Application Security Testing) [ULTIMATE]
  10. Auto Deploy
  11. Auto Browser Performance Testing [PREMIUM]
  12. Auto Monitoring

As Auto DevOps relies on many different components, it's good to have a basic knowledge of the following:

Auto DevOps provides great defaults for all the stages; you can, however, customize almost everything to your needs.

For an overview on the creation of Auto DevOps, read the blog post From 2/3 of the Self-Hosted Git Market, to the Next-Generation CI System, to Auto DevOps.

Requirements

To make full use of Auto DevOps, you will need:

  1. GitLab Runner (needed for all stages) - Your Runner needs to be configured to be able to run Docker. Generally this means using the Docker or Kubernetes executor, with privileged mode enabled. The Runners do not need to be installed in the Kubernetes cluster, but the Kubernetes executor is easy to use and is automatically autoscaling. Docker-based Runners can be configured to autoscale as well, using Docker Machine. Runners should be registered as shared Runners for the entire GitLab instance, or specific Runners that are assigned to specific projects.
  2. Base domain (needed for Auto Review Apps and Auto Deploy) - You will need a domain configured with wildcard DNS which is going to be used by all of your Auto DevOps applications. Read the specifics.
  3. Kubernetes (needed for Auto Review Apps, Auto Deploy, and Auto Monitoring) - To enable deployments, you will need Kubernetes 1.5+. You need a Kubernetes cluster for the project, or a Kubernetes default service template for the entire GitLab installation.
    1. A load balancer - You can use NGINX ingress by deploying it to your Kubernetes cluster using the nginx-ingress Helm chart.
  4. Prometheus (needed for Auto Monitoring) - To enable Auto Monitoring, you will need Prometheus installed somewhere (inside or outside your cluster) and configured to scrape your Kubernetes cluster. To get response metrics (in addition to system metrics), you need to configure Prometheus to monitor NGINX. The Prometheus service integration needs to be enabled for the project, or enabled as a default service template for the entire GitLab installation.

NOTE: Note: If you do not have Kubernetes or Prometheus installed, then Auto Review Apps, Auto Deploy, and Auto Monitoring will be silently skipped.

Auto DevOps base domain

The Auto DevOps base domain is required if you want to make use of Auto Review Apps and Auto Deploy. It can be defined in three places:

  • either under the project's CI/CD settings while enabling Auto DevOps
  • or in instance-wide settings in the admin area > Settings under the "Continuous Integration and Delivery" section
  • or at the project or group level as a variable: AUTO_DEVOPS_DOMAIN (required if you want to use multiple clusters)

A wildcard DNS A record matching the base domain(s) is required, for example, given a base domain of example.com, you'd need a DNS entry like:

*.example.com   3600     A     1.2.3.4

In this case, example.com is the domain name under which the deployed apps will be served, and 1.2.3.4 is the IP address of your load balancer; generally NGINX (see requirements). How to set up the DNS record is beyond the scope of this document; you should check with your DNS provider.

Alternatively you can use free public services like nip.io which provide automatic wildcard DNS without any configuration. Just set the Auto DevOps base domain to 1.2.3.4.nip.io.

Once set up, all requests will hit the load balancer, which in turn will route them to the Kubernetes pods that run your application(s).

Using multiple Kubernetes clusters [PREMIUM]

When using Auto DevOps, you may want to deploy different environments to different Kubernetes clusters. This is possible due to the 1:1 connection that exists between them.

In the Auto DevOps template (used behind the scenes by Auto DevOps), there are currently 3 defined environment names that you need to know:

  • review/ (every environment starting with review/)
  • staging
  • production

Those environments are tied to jobs that use Auto Deploy, so except for the environment scope, they would also need to have a different domain they would be deployed to. This is why you need to define a separate AUTO_DEVOPS_DOMAIN variable for all the above based on the environment.

The following table is an example of how the three different clusters would be configured.

Cluster name Cluster environment scope AUTO_DEVOPS_DOMAIN variable value Variable environment scope Notes
review review/* review.example.com review/* The review cluster which will run all Review Apps. * is a wildcard, which means it will be used by every environment name starting with review/.
staging staging staging.example.com staging (Optional) The staging cluster which will run the deployments of the staging environments. You need to enable it first.
production production example.com production The production cluster which will run the deployments of the production environment. You can use incremental rollouts.

To add a different cluster for each environment:

  1. Navigate to your project's Operations > Kubernetes and create the Kubernetes clusters with their respective environment scope as described from the table above.

    Auto DevOps multiple clusters

  2. After the clusters are created, navigate to each one and install Helm Tiller and Ingress.

  3. Make sure you have configured your DNS with the specified Auto DevOps domains.

  4. Navigate to your project's Settings > CI/CD > Variables and add the AUTO_DEVOPS_DOMAIN variables with their respective environment scope.

    Auto DevOps domain variables

Now that all is configured, you can test your setup by creating a merge request and verifying that your app is deployed as a review app in the Kubernetes cluster with the review/* environment scope. Similarly, you can check the other environments.

Enabling Auto DevOps

If you haven't done already, read the requirements to make full use of Auto DevOps. If this is your fist time, we recommend you follow the quick start guide.

To enable Auto DevOps to your project:

  1. Check that your project doesn't have a .gitlab-ci.yml, or remove it otherwise
  2. Go to your project's Settings > CI/CD > Auto DevOps
  3. Select "Enable Auto DevOps"
  4. Optionally, but recommended, add in the base domain that will be used by Kubernetes to deploy your application and choose the deployment strategy
  5. Hit Save changes for the changes to take effect

Once saved, an Auto DevOps pipeline will be triggered on the default branch.

NOTE: Note: For GitLab versions 10.0 - 10.2, when enabling Auto DevOps, a pipeline needs to be manually triggered either by pushing a new commit to the repository or by visiting https://example.gitlab.com/<username>/<project>/pipelines/new and creating a new pipeline for your default branch, generally master.

NOTE: Note: If you are a GitLab Administrator, you can enable/disable Auto DevOps instance-wide, and all projects that haven't explicitly set an option will have Auto DevOps enabled/disabled by default.

NOTE: Note: There is also a feature flag to enable Auto DevOps to a percentage of projects which can be enabled from the console with Feature.get(:force_autodevops_on_by_default).enable_percentage_of_actors(10).

Deployment strategy

Introduced in GitLab 11.0.

You can change the deployment strategy used by Auto DevOps by going to your project's Settings > CI/CD > Auto DevOps.

The available options are:

  • Continuous deployment to production: Enables Auto Deploy with master branch directly deployed to production.

  • Continuous deployment to production using timed incremental rollout: Sets the INCREMENTAL_ROLLOUT_MODE variable to timed, and production deployment will be executed with a 5 minute delay between each increment in rollout.

  • Automatic deployment to staging, manual deployment to production: Sets the STAGING_ENABLED and INCREMENTAL_ROLLOUT_MODE variables to 1 and manual. This means:

    • master branch is directly deployed to staging.
    • Manual actions are provided for incremental rollout to production.

Stages of Auto DevOps

The following sections describe the stages of Auto DevOps. Read them carefully to understand how each one works.

Auto Build

Auto Build creates a build of the application in one of two ways:

  • If there is a Dockerfile, it will use docker build to create a Docker image.
  • Otherwise, it will use Herokuish and Heroku buildpacks to automatically detect and build the application into a Docker image.

Either way, the resulting Docker image is automatically pushed to the Container Registry and tagged with the commit SHA.

CAUTION: Important: If you are also using Auto Review Apps and Auto Deploy and choose to provide your own Dockerfile, make sure you expose your application to port 5000 as this is the port assumed by the default Helm chart.

Auto Test

Auto Test automatically runs the appropriate tests for your application using Herokuish and Heroku buildpacks by analyzing your project to detect the language and framework. Several languages and frameworks are detected automatically, but if your language is not detected, you may succeed with a custom buildpack. Check the currently supported languages.

NOTE: Note: Auto Test uses tests you already have in your application. If there are no tests, it's up to you to add them.

Auto Code Quality [STARTER]

Auto Code Quality uses the Code Quality image to run static analysis and other code checks on the current code. The report is created, and is uploaded as an artifact which you can later download and check out.

In GitLab Starter, differences between the source and target branches are also shown in the merge request widget.

Auto SAST [ULTIMATE]

Introduced in GitLab Ultimate 10.3.

Static Application Security Testing (SAST) uses the SAST Docker image to run static analysis on the current code and checks for potential security issues. Once the report is created, it's uploaded as an artifact which you can later download and check out.

In GitLab Ultimate, any security warnings are also shown in the merge request widget.

Auto Dependency Scanning [ULTIMATE]

Introduced in GitLab Ultimate 10.7.

Dependency Scanning uses the Dependency Scanning Docker image to run analysis on the project dependencies and checks for potential security issues. Once the report is created, it's uploaded as an artifact which you can later download and check out.

Any security warnings are also shown in the merge request widget.

Auto License Management [ULTIMATE]

Introduced in GitLab Ultimate 11.0.

License Management uses the License Management Docker image to search the project dependencies for their license. Once the report is created, it's uploaded as an artifact which you can later download and check out.

Any licenses are also shown in the merge request widget.

Auto Container Scanning

Introduced in GitLab 10.4.

Vulnerability Static Analysis for containers uses Clair to run static analysis on a Docker image and checks for potential security issues. Once the report is created, it's uploaded as an artifact which you can later download and check out.

In GitLab Ultimate, any security warnings are also shown in the merge request widget.

Auto Review Apps

NOTE: Note: This is an optional step, since many projects do not have a Kubernetes cluster available. If the requirements are not met, the job will silently be skipped.

CAUTION: Caution: Your apps should not be manipulated outside of Helm (using Kubernetes directly.) This can cause confusion with Helm not detecting the change, and subsequent deploys with Auto DevOps can undo your changes. Also, if you change something and want to undo it by deploying again, Helm may not detect that anything changed in the first place, and thus not realize that it needs to re-apply the old config.

Review Apps are temporary application environments based on the branch's code so developers, designers, QA, product managers, and other reviewers can actually see and interact with code changes as part of the review process. Auto Review Apps create a Review App for each branch.

The Review App will have a unique URL based on the project name, the branch name, and a unique number, combined with the Auto DevOps base domain. For example, user-project-branch-1234.example.com. A link to the Review App shows up in the merge request widget for easy discovery. When the branch is deleted, for example after the merge request is merged, the Review App will automatically be deleted.

Auto DAST [ULTIMATE]

Introduced in GitLab Ultimate 10.4.

Dynamic Application Security Testing (DAST) uses the popular open source tool OWASP ZAProxy to perform an analysis on the current code and checks for potential security issues. Once the report is created, it's uploaded as an artifact which you can later download and check out.

In GitLab Ultimate, any security warnings are also shown in the merge request widget.

Auto Browser Performance Testing [PREMIUM]

Introduced in GitLab Premium 10.4.

Auto Browser Performance Testing utilizes the Sitespeed.io container to measure the performance of a web page. A JSON report is created and uploaded as an artifact, which includes the overall performance score for each page. By default, the root page of Review and Production environments will be tested. If you would like to add additional URL's to test, simply add the paths to a file named .gitlab-urls.txt in the root directory, one per line. For example:

/
/features
/direction

In GitLab Premium, performance differences between the source and target branches are shown in the merge request widget.

Auto Deploy

NOTE: Note: This is an optional step, since many projects do not have a Kubernetes cluster available. If the requirements are not met, the job will silently be skipped.

CAUTION: Caution: Your apps should not be manipulated outside of Helm (using Kubernetes directly.) This can cause confusion with Helm not detecting the change, and subsequent deploys with Auto DevOps can undo your changes. Also, if you change something and want to undo it by deploying again, Helm may not detect that anything changed in the first place, and thus not realize that it needs to re-apply the old config.

After a branch or merge request is merged into the project's default branch (usually master), Auto Deploy deploys the application to a production environment in the Kubernetes cluster, with a namespace based on the project name and unique project ID, for example project-4321.

Auto Deploy doesn't include deployments to staging or canary by default, but the Auto DevOps template contains job definitions for these tasks if you want to enable them.

You can make use of environment variables to automatically scale your pod replicas.

It's important to note that when a project is deployed to a Kubernetes cluster, it relies on a Docker image that has been pushed to the GitLab Container Registry. Kubernetes fetches this image and uses it to run the application. If the project is public, the image can be accessed by Kubernetes without any authentication, allowing us to have deployments more usable. If the project is private/internal, the Registry requires credentials to pull the image. Currently, this is addressed by providing CI_JOB_TOKEN as the password that can be used, but this token will no longer be valid as soon as the deployment job finishes. This means that Kubernetes can run the application, but in case it should be restarted or executed somewhere else, it cannot be accessed again.

Introduced in GitLab 11.4

Database initialization and migrations for PostgreSQL can be configured to run within the application pod by setting the project variables DB_INITIALIZE and DB_MIGRATE respectively.

If present, DB_INITIALIZE will be run as a shell command within an application pod as a helm post-install hook. Note that this means that if any deploy succeeds, DB_INITIALIZE will not be processed thereafter.

If present, DB_MIGRATE will be run as a shell command within an application pod as a helm pre-upgrade hook.

For example, in a Rails application:

  • DB_INITIALIZE can be set to cd /app && RAILS_ENV=production bin/setup
  • DB_MIGRATE can be set to cd /app && RAILS_ENV=production bin/update

NOTE: Note: The /app path is the directory of your project inside the docker image as configured by Herokuish

Introduced in GitLab 11.0.

For internal and private projects a GitLab Deploy Token will be automatically created, when Auto DevOps is enabled and the Auto DevOps settings are saved. This Deploy Token can be used for permanent access to the registry.

Note: Note When the GitLab Deploy Token has been manually revoked, it won't be automatically created.

Auto Monitoring

NOTE: Note: Check the requirements for Auto Monitoring to make this stage work.

Once your application is deployed, Auto Monitoring makes it possible to monitor your application's server and response metrics right out of the box. Auto Monitoring uses Prometheus to get system metrics such as CPU and memory usage directly from Kubernetes, and response metrics such as HTTP error rates, latency, and throughput from the NGINX server.

The metrics include:

  • Response Metrics: latency, throughput, error rate
  • System Metrics: CPU utilization, memory utilization

In order to make use of monitoring you need to:

  1. Deploy Prometheus into your Kubernetes cluster
  2. If you would like response metrics, ensure you are running at least version 0.9.0 of NGINX Ingress and enable Prometheus metrics.
  3. Finally, annotate the NGINX Ingress deployment to be scraped by Prometheus using prometheus.io/scrape: "true" and prometheus.io/port: "10254".

To view the metrics, open the Monitoring dashboard for a deployed environment.

Auto Metrics

Customizing

While Auto DevOps provides great defaults to get you started, you can customize almost everything to fit your needs; from custom buildpacks, to Dockerfiles, Helm charts, or even copying the complete CI/CD configuration into your project to enable staging and canary deployments, and more.

Custom buildpacks

If the automatic buildpack detection fails for your project, or if you want to use a custom buildpack, you can override the buildpack(s) using a project variable or a .buildpacks file in your project:

  • Project variable - Create a project variable BUILDPACK_URL with the URL of the buildpack to use.
  • .buildpacks file - Add a file in your project's repo called .buildpacks and add the URL of the buildpack to use on a line in the file. If you want to use multiple buildpacks, you can enter them in, one on each line.

CAUTION: Caution: Using multiple buildpacks isn't yet supported by Auto DevOps.

Custom Dockerfile

If your project has a Dockerfile in the root of the project repo, Auto DevOps will build a Docker image based on the Dockerfile rather than using buildpacks. This can be much faster and result in smaller images, especially if your Dockerfile is based on Alpine.

Custom Helm Chart

Auto DevOps uses Helm to deploy your application to Kubernetes. You can override the Helm chart used by bundling up a chart into your project repo or by specifying a project variable:

  • Bundled chart - If your project has a ./chart directory with a Chart.yaml file in it, Auto DevOps will detect the chart and use it instead of the default one. This can be a great way to control exactly how your application is deployed.
  • Project variable - Create a project variable AUTO_DEVOPS_CHART with the URL of a custom chart to use.

Customizing .gitlab-ci.yml

If you want to modify the CI/CD pipeline used by Auto DevOps, you can copy the Auto DevOps template into your project's repo and edit as you see fit.

Assuming that your project is new or it doesn't have a .gitlab-ci.yml file present:

  1. From your project home page, either click on the "Set up CI/CD" button, or click on the plus button and (+), then "New file"
  2. Pick .gitlab-ci.yml as the template type
  3. Select "Auto-DevOps" from the template dropdown
  4. Edit the template or add any jobs needed
  5. Give an appropriate commit message and hit "Commit changes"

TIP: Tip: The Auto DevOps template includes useful comments to help you customize it. For example, if you want deployments to go to a staging environment instead of directly to a production one, you can enable the staging job by renaming .staging to staging. Then make sure to uncomment the when key of the production job to turn it into a manual action instead of deploying automatically.

PostgreSQL database support

In order to support applications that require a database, PostgreSQL is provisioned by default. The credentials to access the database are preconfigured, but can be customized by setting the associated variables. These credentials can be used for defining a DATABASE_URL of the format:

postgres://user:password@postgres-host:postgres-port/postgres-database

Environment variables

The following variables can be used for setting up the Auto DevOps domain, providing a custom Helm chart, or scaling your application. PostgreSQL can also be customized, and you can easily use a custom buildpack.

Variable Description
AUTO_DEVOPS_DOMAIN The Auto DevOps domain; by default set automatically by the Auto DevOps setting.
AUTO_DEVOPS_CHART The Helm Chart used to deploy your apps; defaults to the one provided by GitLab.
REPLICAS The number of replicas to deploy; defaults to 1.
PRODUCTION_REPLICAS The number of replicas to deploy in the production environment. This takes precedence over REPLICAS; defaults to 1.
CANARY_REPLICAS The number of canary replicas to deploy for Canary Deployments; defaults to 1
CANARY_PRODUCTION_REPLICAS The number of canary replicas to deploy for Canary Deployments in the production environment. This takes precedence over CANARY_REPLICAS; defaults to 1
POSTGRES_ENABLED Whether PostgreSQL is enabled; defaults to "true". Set to false to disable the automatic deployment of PostgreSQL.
POSTGRES_USER The PostgreSQL user; defaults to user. Set it to use a custom username.
POSTGRES_PASSWORD The PostgreSQL password; defaults to testing-password. Set it to use a custom password.
POSTGRES_DB The PostgreSQL database name; defaults to the value of $CI_ENVIRONMENT_SLUG. Set it to use a custom database name.
BUILDPACK_URL The buildpack's full URL. It can point to either Git repositories or a tarball URL. For Git repositories, it is possible to point to a specific ref, for example https://github.com/heroku/heroku-buildpack-ruby.git#v142
SAST_CONFIDENCE_LEVEL The minimum confidence level of security issues you want to be reported; 1 for Low, 2 for Medium, 3 for High; defaults to 3.
DEP_SCAN_DISABLE_REMOTE_CHECKS Whether remote Dependency Scanning checks are disabled; defaults to "false". Set to "true" to disable checks that send data to GitLab central servers. Read more about remote checks.
DB_INITIALIZE From GitLab 11.4, this variable can be used to specify the command to run to initialize the application's PostgreSQL database. It runs inside the application pod.
DB_MIGRATE From GitLab 11.4, this variable can be used to specify the command to run to migrate the application's PostgreSQL database. It runs inside the application pod.
STAGING_ENABLED From GitLab 10.8, this variable can be used to define a deploy policy for staging and production environments.
CANARY_ENABLED From GitLab 11.0, this variable can be used to define a deploy policy for canary environments.
INCREMENTAL_ROLLOUT_MODE From GitLab 11.4, this variable, if present, can be used to enable an incremental rollout of your application for the production environment.
Set to:
  • manual, for manual deployment jobs.
  • timed, for automatic rollout deployments with a 5 minute delay each one.
TEST_DISABLED From GitLab 11.0, this variable can be used to disable the test job. If the variable is present, the job will not be created.
CODE_QUALITY_DISABLED From GitLab 11.0, this variable can be used to disable the codequality job. If the variable is present, the job will not be created.
SAST_DISABLED From GitLab 11.0, this variable can be used to disable the sast job. If the variable is present, the job will not be created.
DEPENDENCY_SCANNING_DISABLED From GitLab 11.0, this variable can be used to disable the dependency_scanning job. If the variable is present, the job will not be created.
CONTAINER_SCANNING_DISABLED From GitLab 11.0, this variable can be used to disable the sast:container job. If the variable is present, the job will not be created.
REVIEW_DISABLED From GitLab 11.0, this variable can be used to disable the review and the manual review:stop job. If the variable is present, these jobs will not be created.
DAST_DISABLED From GitLab 11.0, this variable can be used to disable the dast job. If the variable is present, the job will not be created.
PERFORMANCE_DISABLED From GitLab 11.0, this variable can be used to disable the performance job. If the variable is present, the job will not be created.

TIP: Tip: Set up the replica variables using a project variable and scale your application by just redeploying it!

CAUTION: Caution: You should not scale your application using Kubernetes directly. This can cause confusion with Helm not detecting the change, and subsequent deploys with Auto DevOps can undo your changes.

Advanced replica variables setup

Apart from the two replica-related variables for production mentioned above, you can also use others for different environments.

There's a very specific mapping between Kubernetes' label named track, GitLab CI/CD environment names, and the replicas environment variable. The general rule is: TRACK_ENV_REPLICAS. Where:

  • TRACK: The capitalized value of the track Kubernetes label in the Helm Chart app definition. If not set, it will not be taken into account to the variable name.
  • ENV: The capitalized environment name of the deploy job that is set in .gitlab-ci.yml.

That way, you can define your own TRACK_ENV_REPLICAS variables with which you will be able to scale the pod's replicas easily.

In the example below, the environment's name is qa and it deploys the track foo which would result in looking for the FOO_QA_REPLICAS environment variable:

QA testing:
  stage: deploy
  environment:
    name: qa
  script:
  - deploy foo

The track foo being referenced would also need to be defined in the application's Helm chart, like:

replicaCount: 1
image:
  repository: gitlab.example.com/group/project
  tag: stable
  pullPolicy: Always
  secrets:
    - name: gitlab-registry
application:
  track: foo
  tier: web
service:
  enabled: true
  name: web
  type: ClusterIP
  url: http://my.host.com/
  externalPort: 5000
  internalPort: 5000

Deploy policy for staging and production environments

Introduced in GitLab 10.8.

TIP: Tip: You can also set this inside your project's settings.

The normal behavior of Auto DevOps is to use Continuous Deployment, pushing automatically to the production environment every time a new pipeline is run on the default branch. However, there are cases where you might want to use a staging environment and deploy to production manually. For this scenario, the STAGING_ENABLED environment variable was introduced.

If STAGING_ENABLED is defined in your project (e.g., set STAGING_ENABLED to 1 as a secret variable), then the application will be automatically deployed to a staging environment, and a production_manual job will be created for you when you're ready to manually deploy to production.

Deploy policy for canary environments [PREMIUM]

Introduced in GitLab 11.0.

A canary environment can be used before any changes are deployed to production.

If CANARY_ENABLED is defined in your project (e.g., set CANARY_ENABLED to 1 as a secret variable) then two manual jobs will be created:

  • canary which will deploy the application to the canary environment
  • production_manual which is to be used by you when you're ready to manually deploy to production.

Incremental rollout to production [PREMIUM]

Introduced in GitLab 10.8.

TIP: Tip: You can also set this inside your project's settings.

When you have a new version of your app to deploy in production, you may want to use an incremental rollout to replace just a few pods with the latest code. This will allow you to first check how the app is behaving, and later manually increasing the rollout up to 100%.

If INCREMENTAL_ROLLOUT_MODE is set to manual in your project, then instead of the standard production job, 4 different manual jobs will be created:

  1. rollout 10%
  2. rollout 25%
  3. rollout 50%
  4. rollout 100%

The percentage is based on the REPLICAS variable and defines the number of pods you want to have for your deployment. If you say 10, and then you run the 10% rollout job, there will be 1 new pod + 9 old ones.

To start a job, click on the play icon next to the job's name. You are not required to go from 10% to 100%, you can jump to whatever job you want. You can also scale down by running a lower percentage job, just before hitting 100%. Once you get to 100%, you cannot scale down, and you'd have to roll back by redeploying the old version using the rollback button in the environment page.

Below, you can see how the pipeline will look if the rollout or staging variables are defined.

Without INCREMENTAL_ROLLOUT_MODE and without STAGING_ENABLED:

Staging and rollout disabled

Without INCREMENTAL_ROLLOUT_MODE and with STAGING_ENABLED:

Staging enabled

With INCREMENTAL_ROLLOUT_MODE set to manual and without STAGING_ENABLED:

Rollout enabled

With INCREMENTAL_ROLLOUT_MODE set to manual and with STAGING_ENABLED

Rollout and staging enabled

CAUTION: Caution: Before GitLab 11.4 this feature was enabled by the presence of the INCREMENTAL_ROLLOUT_ENABLED environment variable. This configuration is deprecated and will be removed in the future.

Timed incremental rollout to production [PREMIUM]

Introduced in GitLab 11.4.

TIP: Tip: You can also set this inside your project's settings.

This configuration based on incremental rollout to production.

Everything behaves the same way, except:

  • It's enabled by setting the INCREMENTAL_ROLLOUT_MODE variable to timed.
  • Instead of the standard production job, the following jobs with a 5 minute delay between each are created:
    1. timed rollout 10%
    2. timed rollout 25%
    3. timed rollout 50%
    4. timed rollout 100%

Currently supported languages

NOTE: Note: Not all buildpacks support Auto Test yet, as it's a relatively new enhancement. All of Heroku's officially supported languages support it, and some third-party buildpacks as well e.g., Go, Node, Java, PHP, Python, Ruby, Gradle, Scala, and Elixir all support Auto Test, but notably the multi-buildpack does not.

As of GitLab 10.0, the supported buildpacks are:

- heroku-buildpack-multi     v1.0.0
- heroku-buildpack-ruby      v168
- heroku-buildpack-nodejs    v99
- heroku-buildpack-clojure   v77
- heroku-buildpack-python    v99
- heroku-buildpack-java      v53
- heroku-buildpack-gradle    v23
- heroku-buildpack-scala     v78
- heroku-buildpack-play      v26
- heroku-buildpack-php       v122
- heroku-buildpack-go        v72
- heroku-buildpack-erlang    fa17af9
- buildpack-nginx            v8

Limitations

The following restrictions apply.

Private project support

CAUTION: Caution: Private project support in Auto DevOps is experimental.

When a project has been marked as private, GitLab's Container Registry requires authentication when downloading containers. Auto DevOps will automatically provide the required authentication information to Kubernetes, allowing temporary access to the registry. Authentication credentials will be valid while the pipeline is running, allowing for a successful initial deployment.

After the pipeline completes, Kubernetes will no longer be able to access the Container Registry. Restarting a pod, scaling a service, or other actions which require on-going access to the registry may fail. On-going secure access is planned for a subsequent release.

Troubleshooting

  • Auto Build and Auto Test may fail in detecting your language/framework. There may be no buildpack for your application, or your application may be missing the key files the buildpack is looking for. For example, for ruby apps, you must have a Gemfile to be properly detected, even though it is possible to write a Ruby app without a Gemfile. Try specifying a custom buildpack.
  • Auto Test may fail because of a mismatch between testing frameworks. In this case, you may need to customize your .gitlab-ci.yml with your test commands.

Disable the banner instance wide

If an administrator would like to disable the banners on an instance level, this feature can be disabled either through the console:

sudo gitlab-rails console

Then run:

Feature.get(:auto_devops_banner_disabled).enable

Or through the HTTP API with an admin access token:

curl --data "value=true" --header "PRIVATE-TOKEN: personal_access_token" https://gitlab.example.com/api/v4/features/auto_devops_banner_disabled