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  • Unit tests are Python tests that do not require any additional integrations. Unit tests are available both in the Breeze environment and local virtualenv.
  • Integration tests are available in the Breeze development environment that is also used for Airflow CI tests. Integration tests are special tests that require additional services running, such as Postgres, MySQL, Kerberos, etc.
  • System tests are automatic tests that use external systems like Google Cloud. These tests are intended for an end-to-end DAG execution. The tests can be executed on both the current version of Apache Airflow and any older versions from 1.10.* series.

This document is about running Python tests. Before the tests are run, use static code checks that enable catching typical errors in the code.

All tests for Apache Airflow are run using pytest .

Follow the guidelines when writing unit tests:

  • For standard unit tests that do not require integrations with external systems, make sure to simulate all communications.
  • All Airflow tests are run with pytest. Make sure to set your IDE/runners (see below) to use pytest by default.
  • For new tests, use standard "asserts" of Python and pytest decorators/context managers for testing rather than unittest ones. See pytest docs for details.
  • Use a parameterized framework for tests that have variations in parameters.

NOTE: We plan to convert all unit tests to standard "asserts" semi-automatically, but this will be done later in Airflow 2.0 development phase. That will include setUp/tearDown/context managers and decorators.

To run unit tests from the IDE, create the local virtualenv, select it as the default project's environment, then configure your test runner:

Configuring test runner

and run unit tests as follows:

Running unit tests

NOTE: You can run the unit tests in the standalone local virtualenv (with no Breeze installed) if they do not have dependencies such as Postgres/MySQL/Hadoop/etc.

To run unit, integration, and system tests from the Breeze and your virtualenv, you can use the pytest framework.

Custom pytest plugin runs airflow db init and airflow db reset the first time you launch them. So, you can count on the database being initialized. Currently, when you run tests not supported in the local virtualenv, they may either fail or provide an error message.

There are many available options for selecting a specific test in pytest. Details can be found in the official documentation, but here are a few basic examples:

pytest tests/core -k "TestCore and not check"

This runs the TestCore class but skips tests of this class that include 'check' in their names. For better performance (due to a test collection), run:

pytest tests/core/test_core.py -k "TestCore and not bash"

This flag is useful when used to run a single test like this:

pytest tests/core/test_core.py -k "test_check_operators"

This can also be done by specifying a full path to the test:

pytest tests/core/test_core.py::TestCore::test_check_operators

To run the whole test class, enter:

pytest tests/core/test_core.py::TestCore

You can use all available pytest flags. For example, to increase a log level for debugging purposes, enter:

pytest --log-cli-level=DEBUG tests/core/test_core.py::TestCore

If you wish to only run tests and not to drop into the shell, apply the tests command. You can add extra targets and pytest flags after the -- command. Note that often you want to run the tests with a clean/reset db, so usually you want to add --db-reset flag to breeze.

./breeze tests tests/providers/http/hooks/test_http.py tests/core/test_core.py --db-reset -- --log-cli-level=DEBUG

You can run the whole test suite without adding the test target:

./breeze tests --db-reset

You can also specify individual tests or a group of tests:

./breeze tests --db-reset tests/core/test_core.py::TestCore

You can also run tests for a specific test type. For the stability and performance point of view, we separated tests into different test types to be run separately.

You can select the test type by adding --test-type TEST_TYPE before the test command. There are two kinds of test types:

  • Per-directories types are added to select subset of the tests based on sub-directories in tests folder. Example test types there - Core, Providers, CLI. The only action that happens when you choose the right test folders are pre-selected. It is only useful for those types of tests to choose the test type when you do not specify test to run.

    Runs all core tests:

    ./breeze --test-type Core  --db-reset tests

    Runs all provider tests:

    ./breeze --test-type Providers --db-reset tests
  • Special kinds of tests - Integration, Quarantined, Postgres, MySQL, which are marked with pytest marks and for those you need to select the type using test-type switch. If you want to run such tests using breeze, you need to pass appropriate --test-type otherwise the test will be skipped. Similarly to the per-directory tests if you do not specify the test or tests to run, all tests of a given type are run

    Run quarantined test_task_command.py test:

    ./breeze --test-type Quarantined tests tests/cli/commands/test_task_command.py --db-reset

    Run all Quarantined tests:

    ./breeze --test-type Quarantined tests --db-reset

On the Airflow Project, we have decided to stick with pythonic testing for our Helm chart. This makes our chart easier to test, easier to modify, and able to run with the same testing infrastructure. To add Helm unit tests go to the chart/tests directory and add your unit test by creating a class that extends unittest.TestCase

class TestBaseChartTest(unittest.TestCase):

To render the chart create a YAML string with the nested dictionary of options you wish to test. You can then use our render_chart function to render the object of interest into a testable Python dictionary. Once the chart has been rendered, you can use the render_k8s_object function to create a k8s model object. It simultaneously ensures that the object created properly conforms to the expected resource spec and allows you to use object values instead of nested dictionaries.

Example test here:

from .helm_template_generator import render_chart, render_k8s_object

git_sync_basic = """
dags:
  gitSync:
  enabled: true
"""


class TestGitSyncScheduler(unittest.TestCase):

    def test_basic(self):
        helm_settings = yaml.safe_load(git_sync_basic)
        res = render_chart('GIT-SYNC', helm_settings,
                           show_only=["templates/scheduler/scheduler-deployment.yaml"])
        dep: k8s.V1Deployment = render_k8s_object(res[0], k8s.V1Deployment)
        assert "dags" == dep.spec.template.spec.volumes[1].name

To run tests using breeze run the following command

./breeze --test-type Helm tests

Some of the tests in Airflow are integration tests. These tests require airflow Docker image and extra images with integrations (such as redis, mongodb, etc.).

Airflow integration tests cannot be run in the local virtualenv. They can only run in the Breeze environment with enabled integrations and in the CI. See CI.yml for details about Airflow CI.

When you are in the Breeze environment, by default, all integrations are disabled. This enables only true unit tests to be executed in Breeze. You can enable the integration by passing the --integration <INTEGRATION> switch when starting Breeze. You can specify multiple integrations by repeating the --integration switch or using the --integration all switch that enables all integrations.

NOTE: Every integration requires a separate container with the corresponding integration image. These containers take precious resources on your PC, mainly the memory. The started integrations are not stopped until you stop the Breeze environment with the stop command and restart it via restart command.

The following integrations are available:

Airflow Test Integrations
Integration Description
cassandra Integration required for Cassandra hooks
kerberos Integration that provides Kerberos authentication
mongo Integration required for MongoDB hooks
openldap Integration required for OpenLDAP hooks
pinot Integration required for Apache Pinot hooks
rabbitmq Integration required for Celery executor tests
redis Integration required for Celery executor tests
trino Integration required for Trino hooks

To start the mongo integration only, enter:

./breeze --integration mongo

To start mongo and cassandra integrations, enter:

./breeze --integration mongo --integration cassandra

To start all integrations, enter:

./breeze --integration all

In the CI environment, integrations can be enabled by specifying the ENABLED_INTEGRATIONS variable storing a space-separated list of integrations to start. Thanks to that, we can run integration and integration-less tests separately in different jobs, which is desired from the memory usage point of view.

Note that Kerberos is a special kind of integration. Some tests run differently when Kerberos integration is enabled (they retrieve and use a Kerberos authentication token) and differently when the Kerberos integration is disabled (they neither retrieve nor use the token). Therefore, one of the test jobs for the CI system should run all tests with the Kerberos integration enabled to test both scenarios.

All tests using an integration are marked with a custom pytest marker pytest.mark.integration. The marker has a single parameter - the name of integration.

Example of the redis integration test:

@pytest.mark.integration("redis")
def test_real_ping(self):
    hook = RedisHook(redis_conn_id='redis_default')
    redis = hook.get_conn()

    assert redis.ping(), 'Connection to Redis with PING works.'

The markers can be specified at the test level or the class level (then all tests in this class require an integration). You can add multiple markers with different integrations for tests that require more than one integration.

If such a marked test does not have a required integration enabled, it is skipped. The skip message clearly says what is needed to use the test.

To run all tests with a certain integration, use the custom pytest flag --integration. You can pass several integration flags if you want to enable several integrations at once.

NOTE: If an integration is not enabled in Breeze or CI, the affected test will be skipped.

To run only mongo integration tests:

pytest --integration mongo

To run integration tests for mongo and rabbitmq:

pytest --integration mongo --integration rabbitmq

Note that collecting all tests takes some time. So, if you know where your tests are located, you can speed up the test collection significantly by providing the folder where the tests are located.

Here is an example of the collection limited to the providers/apache directory:

pytest --integration cassandra tests/providers/apache/

Tests that are using a specific backend are marked with a custom pytest marker pytest.mark.backend. The marker has a single parameter - the name of a backend. It corresponds to the --backend switch of the Breeze environment (one of mysql, sqlite, or postgres). Backend-specific tests only run when the Breeze environment is running with the right backend. If you specify more than one backend in the marker, the test runs for all specified backends.

Example of the postgres only test:

@pytest.mark.backend("postgres")
def test_copy_expert(self):
    ...

Example of the postgres,mysql test (they are skipped with the sqlite backend):

@pytest.mark.backend("postgres", "mysql")
def test_celery_executor(self):
    ...

You can use the custom --backend switch in pytest to only run tests specific for that backend. Here is an example of running only postgres-specific backend tests:

pytest --backend postgres

Some of the tests rung for a long time. Such tests are marked with @pytest.mark.long_running annotation. Those tests are skipped by default. You can enable them with --include-long-running flag. You can also decide to only run tests with -m long-running flags to run only those tests.

Some of our tests are quarantined. This means that this test will be run in isolation and that it will be re-run several times. Also when quarantined tests fail, the whole test suite will not fail. The quarantined tests are usually flaky tests that need some attention and fix.

Those tests are marked with @pytest.mark.quarantined annotation. Those tests are skipped by default. You can enable them with --include-quarantined flag. You can also decide to only run tests with -m quarantined flag to run only those tests.

Airflow tests in the CI environment are split into several test types:

  • Always - those are tests that should be always executed (always folder)
  • Core - for the core Airflow functionality (core folder)
  • API - Tests for the Airflow API (api and api_connexion folders)
  • CLI - Tests for the Airflow CLI (cli folder)
  • WWW - Tests for the Airflow webserver (www folder)
  • Providers - Tests for all Providers of Airflow (providers folder)
  • Other - all other tests (all other folders that are not part of any of the above)

This is done for three reasons:

  1. in order to selectively run only subset of the test types for some PRs
  2. in order to allow parallel execution of the tests on Self-Hosted runners

For case 1. see Pull Request Workflow for details.

For case 2. We can utilise memory and CPUs available on both CI and local development machines to run test in parallel. This way we can decrease the time of running all tests in self-hosted runners from 60 minutes to ~15 minutes.

Note

We need to split tests manually into separate suites rather than utilise pytest-xdist or pytest-parallel which could be a simpler and much more "native" parallelization mechanism. Unfortunately, we cannot utilise those tools because our tests are not truly unit tests that can run in parallel. A lot of our tests rely on shared databases - and they update/reset/cleanup the databases while they are executing. They are also exercising features of the Database such as locking which further increases cross-dependency between tests. Until we make all our tests truly unit tests (and not touching the database or until we isolate all such tests to a separate test type, we cannot really rely on frameworks that run tests in parallel. In our solution each of the test types is run in parallel with its own database (!) so when we have 8 test types running in parallel, there are in fact 8 databases run behind the scenes to support them and each of the test types executes its own tests sequentially.

If you run ./scripts/ci/testing/ci_run_airflow_testing.sh tests run in parallel on your development machine - maxing out the number of parallel runs at the number of cores you have available in your Docker engine.

In case you do not have enough memory available to your Docker (~32 GB), the Integration test type is always run sequentially - after all tests are completed (docker cleanup is performed in-between).

This allows for massive speedup in full test execution. On 8 CPU machine with 16 cores and 64 GB memory and fast SSD disk, the whole suite of tests completes in about 5 minutes (!). Same suite of tests takes more than 30 minutes on the same machine when tests are run sequentially.

Note

On MacOS you might have less CPUs and less memory available to run the tests than you have in the host, simply because your Docker engine runs in a Linux Virtual Machine under-the-hood. If you want to make use of the paralllelism and memory usage for the CI tests you might want to increase the resources available to your docker engine. See the Resources chapter in the Docker for Mac documentation on how to do it.

You can also limit the parallelism by specifying the maximum number of parallel jobs via MAX_PARALLEL_TEST_JOBS variable. If you set it to "1", all the test types will be run sequentially.

MAX_PARALLEL_TEST_JOBS="1" ./scripts/ci/testing/ci_run_airflow_testing.sh

Note

In case you would like to cleanup after execution of such tests you might have to cleanup some of the docker containers running in case you use ctrl-c to stop execution. You can easily do it by running this command (it will kill all docker containers running so do not use it if you want to keep some docker containers running):

docker kill $(docker ps -q)

Airflow 2.0 introduced the concept of splitting the monolithic Airflow package into separate providers packages. The main "apache-airflow" package contains the bare Airflow implementation, and additionally we have 70+ providers that we can install additionally to get integrations with external services. Those providers live in the same monorepo as Airflow, but we build separate packages for them and the main "apache-airflow" package does not contain the providers.

Most of the development in Breeze happens by iterating on sources and when you run your tests during development, you usually do not want to build packages and install them separately. Therefore by default, when you enter Breeze airflow and all providers are available directly from sources rather than installed from packages. This is for example to test the "provider discovery" mechanism available that reads provider information from the package meta-data.

When Airflow is run from sources, the metadata is read from provider.yaml files, but when Airflow is installed from packages, it is read via the package entrypoint apache_airflow_provider.

By default, all packages are prepared in wheel format. To install Airflow from packages you need to run the following steps:

  1. Prepare provider packages
./breeze prepare-provider-packages [PACKAGE ...]

If you run this command without packages, you will prepare all packages. However, You can specify providers that you would like to build if you just want to build few provider packages. The packages are prepared in dist folder. Note that this command cleans up the dist folder before running, so you should run it before generating apache-airflow package.

  1. Prepare airflow packages
./breeze prepare-airflow-packages

This prepares airflow .whl package in the dist folder.

  1. Enter breeze installing both airflow and providers from the packages

This installs airflow and enters

./breeze --use-airflow-version wheel --use-packages-from-dist --skip-mounting-local-sources

Airflow has tests that are run against real Kubernetes cluster. We are using Kind to create and run the cluster. We integrated the tools to start/stop/ deploy and run the cluster tests in our repository and into Breeze development environment.

Configuration for the cluster is kept in ./build/.kube/config file in your Airflow source repository, and our scripts set the KUBECONFIG variable to it. If you want to interact with the Kind cluster created you can do it from outside of the scripts by exporting this variable and point it to this file.

For your testing, you manage Kind cluster with kind-cluster breeze command:

./breeze kind-cluster [ start | stop | recreate | status | deploy | test | shell | k9s ]

The command allows you to start/stop/recreate/status Kind Kubernetes cluster, deploy Airflow via Helm chart as well as interact with the cluster (via test and shell commands).

Setting up the Kind Kubernetes cluster takes some time, so once you started it, the cluster continues running until it is stopped with the kind-cluster stop command or until kind-cluster recreate command is used (it will stop and recreate the cluster image).

The cluster name follows the pattern airflow-python-X.Y-vA.B.C where X.Y is a Python version and A.B.C is a Kubernetes version. This way you can have multiple clusters set up and running at the same time for different Python versions and different Kubernetes versions.

Deploying Airflow to the Kubernetes cluster created is also done via kind-cluster deploy breeze command:

./breeze kind-cluster deploy

The deploy command performs those steps:

  1. It rebuilds the latest apache/airflow:master-pythonX.Y production images using the latest sources using local caching. It also adds example DAGs to the image, so that they do not have to be mounted inside.
  2. Loads the image to the Kind Cluster using the kind load command.
  3. Starts airflow in the cluster using the official helm chart (in airflow namespace)
  4. Forwards Local 8080 port to the webserver running in the cluster
  5. Applies the volumes.yaml to get the volumes deployed to default namespace - this is where KubernetesExecutor starts its pods.

You can also specify a different executor by providing the --executor optional argument:

./breeze kind-cluster deploy --executor CeleryExecutor

Note that when you specify the --executor option, it becomes the default. Therefore, every other operations on ./breeze kind-cluster will default to using this executor. To change that, use the --executor option on the subsequent commands too.

You can either run all tests or you can select which tests to run. You can also enter interactive virtualenv to run the tests manually one by one.

Running Kubernetes tests via shell:

./scripts/ci/kubernetes/ci_run_kubernetes_tests.sh                      - runs all kubernetes tests
./scripts/ci/kubernetes/ci_run_kubernetes_tests.sh TEST [TEST ...]      - runs selected kubernetes tests (from kubernetes_tests folder)

Running Kubernetes tests via breeze:

./breeze kind-cluster test
./breeze kind-cluster test -- TEST TEST [TEST ...]

Optionally add --executor:

./breeze kind-cluster test --executor CeleryExecutor
./breeze kind-cluster test -- TEST TEST [TEST ...] --executor CeleryExecutor

This shell is prepared to run Kubernetes tests interactively. It has kubectl and kind cli tools available in the path, it has also activated virtualenv environment that allows you to run tests via pytest.

The binaries are available in ./.build/kubernetes-bin/KUBERNETES_VERSION path. The virtualenv is available in ./.build/.kubernetes_venv/KIND_CLUSTER_NAME``_host_python_``HOST_PYTHON_VERSION

Where KIND_CLUSTER_NAME is the name of the cluster and HOST_PYTHON_VERSION is the version of python in the host.

You can enter the shell via those scripts

./scripts/ci/kubernetes/ci_run_kubernetes_tests.sh [-i|--interactive] - Activates virtual environment ready to run tests and drops you in ./scripts/ci/kubernetes/ci_run_kubernetes_tests.sh [--help] - Prints this help message
./breeze kind-cluster shell

Optionally add --executor:

./breeze kind-cluster shell --executor CeleryExecutor

Breeze has built-in integration with fantastic k9s CLI tool, that allows you to debug the Kubernetes installation effortlessly and in style. K9S provides terminal (but windowed) CLI that helps you to:

  • easily observe what's going on in the Kubernetes cluster
  • observe the resources defined (pods, secrets, custom resource definitions)
  • enter shell for the Pods/Containers running,
  • see the log files and more.

You can read more about k9s at https://k9scli.io/

Here is the screenshot of k9s tools in operation:

K9S tool

You can enter the k9s tool via breeze (after you deployed Airflow):

./breeze kind-cluster k9s

You can exit k9s by pressing Ctrl-C.

The typical session for tests with Kubernetes looks like follows:

  1. Start the Kind cluster:
./breeze kind-cluster start

Starts Kind Kubernetes cluster

   Use CI image.

   Branch name:             master
   Docker image:            apache/airflow:master-python3.7-ci

   Airflow source version:  2.0.0.dev0
   Python version:          3.7
   DockerHub user:          apache
   DockerHub repo:          airflow
   Backend:                 postgres 9.6

No kind clusters found.

Creating cluster

Creating cluster "airflow-python-3.7-v1.17.0" ...
 ✓ Ensuring node image (kindest/node:v1.17.0) 🖼
 ✓ Preparing nodes 📦 📦
 ✓ Writing configuration 📜
 ✓ Starting control-plane 🕹️
 ✓ Installing CNI 🔌
Could not read storage manifest, falling back on old k8s.io/host-path default ...
 ✓ Installing StorageClass 💾
 ✓ Joining worker nodes 🚜
Set kubectl context to "kind-airflow-python-3.7-v1.17.0"
You can now use your cluster with:

kubectl cluster-info --context kind-airflow-python-3.7-v1.17.0

Have a question, bug, or feature request? Let us know! https://kind.sigs.k8s.io/#community 🙂

Created cluster airflow-python-3.7-v1.17.0
  1. Check the status of the cluster
./breeze kind-cluster status

Checks status of Kind Kubernetes cluster

   Use CI image.

   Branch name:             master
   Docker image:            apache/airflow:master-python3.7-ci

   Airflow source version:  2.0.0.dev0
   Python version:          3.7
   DockerHub user:          apache
   DockerHub repo:          airflow
   Backend:                 postgres 9.6

airflow-python-3.7-v1.17.0-control-plane
airflow-python-3.7-v1.17.0-worker
  1. Deploy Airflow to the cluster
./breeze kind-cluster deploy
  1. Run Kubernetes tests

Note that the tests are executed in production container not in the CI container. There is no need for the tests to run inside the Airflow CI container image as they only communicate with the Kubernetes-run Airflow deployed via the production image. Those Kubernetes tests require virtualenv to be created locally with airflow installed. The virtualenv required will be created automatically when the scripts are run.

4a) You can run all the tests

./breeze kind-cluster test

4b) You can enter an interactive shell to run tests one-by-one

This prepares and enters the virtualenv in .build/.kubernetes_venv_<YOUR_CURRENT_PYTHON_VERSION> folder:

./breeze kind-cluster shell

Once you enter the environment, you receive this information:

Activating the virtual environment for kubernetes testing

You can run kubernetes testing via 'pytest kubernetes_tests/....'
You can add -s to see the output of your tests on screen

The webserver is available at http://localhost:8080/

User/password: admin/admin

You are entering the virtualenv now. Type exit to exit back to the original shell

In a separate terminal you can open the k9s CLI:

./breeze kind-cluster k9s

Use it to observe what's going on in your cluster.

  1. Debugging in IntelliJ/PyCharm

It is very easy to running/debug Kubernetes tests with IntelliJ/PyCharm. Unlike the regular tests they are in kubernetes_tests folder and if you followed the previous steps and entered the shell using ./breeze kind-cluster shell command, you can setup your IDE very easy to run (and debug) your tests using the standard IntelliJ Run/Debug feature. You just need a few steps:

  1. Add the virtualenv as interpreter for the project:

Kubernetes testing virtualenv

The virtualenv is created in your "Airflow" source directory in the .build/.kubernetes_venv_<YOUR_CURRENT_PYTHON_VERSION> folder and you have to find python binary and choose it when selecting interpreter.

  1. Choose pytest as test runner:

Pytest runner

  1. Run/Debug tests using standard "Run/Debug" feature of IntelliJ

Run/Debug tests

NOTE! The first time you run it, it will likely fail with kubernetes.config.config_exception.ConfigException: Invalid kube-config file. Expected key current-context in kube-config. You need to add KUBECONFIG environment variable copying it from the result of "./breeze kind-cluster test":

echo ${KUBECONFIG}

/home/jarek/code/airflow/.build/.kube/config

Run/Debug tests

The configuration for Kubernetes is stored in your "Airflow" source directory in ".build/.kube/config" file and this is where KUBECONFIG env should point to.

You can iterate with tests while you are in the virtualenv. All the tests requiring Kubernetes cluster are in "kubernetes_tests" folder. You can add extra pytest parameters then (for example -s will print output generated test logs and print statements to the terminal immediately.

pytest kubernetes_tests/test_kubernetes_executor.py::TestKubernetesExecutor::test_integration_run_dag_with_scheduler_failure -s

You can modify the tests or KubernetesPodOperator and re-run them without re-deploying Airflow to KinD cluster.

Sometimes there are side effects from running tests. You can run redeploy_airflow.sh without recreating the whole cluster. This will delete the whole namespace, including the database data and start a new Airflow deployment in the cluster.

./scripts/ci/redeploy_airflow.sh

If needed you can also delete the cluster manually:

kind get clusters
kind delete clusters <NAME_OF_THE_CLUSTER>

Kind has also useful commands to inspect your running cluster:

kind --help

However, when you change Kubernetes executor implementation, you need to redeploy Airflow to the cluster.

./breeze kind-cluster deploy
  1. Stop KinD cluster when you are done
./breeze kind-cluster stop

System tests need to communicate with external services/systems that are available if you have appropriate credentials configured for your tests. The system tests derive from the tests.test_utils.system_test_class.SystemTests class. They should also be marked with @pytest.marker.system(SYSTEM) where system designates the system to be tested (for example, google.cloud). These tests are skipped by default.

You can execute the system tests by providing the --system SYSTEM flag to pytest. You can specify several --system flags if you want to execute tests for several systems.

The system tests execute a specified example DAG file that runs the DAG end-to-end.

See more details about adding new system tests below.

Prerequisites: You may need to set some variables to run system tests. If you need to add some initialization of environment variables to Breeze, you can add a variables.env file in the files/airflow-breeze-config/variables.env file. It will be automatically sourced when entering the Breeze environment. You can also add some additional initialization commands in this file if you want to execute something always at the time of entering Breeze.

There are several typical operations you might want to perform such as:

  • generating a file with the random value used across the whole Breeze session (this is useful if you want to use this random number in names of resources that you create in your service
  • generate variables that will be used as the name of your resources
  • decrypt any variables and resources you keep as encrypted in your configuration files
  • install additional packages that are needed in case you are doing tests with 1.10.* Airflow series (see below)

Example variables.env file is shown here (this is part of the variables.env file that is used to run Google Cloud system tests.

# Build variables. This file is sourced by Breeze.
# Also it is sourced during continuous integration build in Cloud Build

# Auto-export all variables
set -a

echo
echo "Reading variables"
echo

# Generate random number that will be used across your session
RANDOM_FILE="/random.txt"

if [[ ! -f "${RANDOM_FILE}" ]]; then
    echo "${RANDOM}" > "${RANDOM_FILE}"
fi

RANDOM_POSTFIX=$(cat "${RANDOM_FILE}")

To execute system tests, specify the --system SYSTEM flag where SYSTEM is a system to run the system tests for. It can be repeated.

For system tests, you can also forward authentication from the host to your Breeze container. You can specify the --forward-credentials flag when starting Breeze. Then, it will also forward the most commonly used credentials stored in your home directory. Use this feature with care as it makes your personal credentials visible to anything that you have installed inside the Docker container.

Currently forwarded credentials are:
  • credentials stored in ${HOME}/.aws for aws - Amazon Web Services client
  • credentials stored in ${HOME}/.azure for az - Microsoft Azure client
  • credentials stored in ${HOME}/.config for gcloud - Google Cloud client (among others)
  • credentials stored in ${HOME}/.docker for docker client

We are working on automating system tests execution (AIP-4) but for now, system tests are skipped when tests are run in our CI system. But to enable the test automation, we encourage you to add system tests whenever an operator/hook/sensor is added/modified in a given system.

  • To add your own system tests, derive them from the tests.test_utils.system_tests_class.SystemTest class and mark with the @pytest.mark.system(SYSTEM_NAME) marker. The system name should follow the path defined in the providers package (for example, the system tests from tests.providers.google.cloud package should be marked with @pytest.mark.system("google.cloud").
  • If your system tests need some credential files to be available for an authentication with external systems, make sure to keep these credentials in the files/airflow-breeze-config/keys directory. Mark your tests with @pytest.mark.credential_file(<FILE>) so that they are skipped if such a credential file is not there. The tests should read the right credentials and authenticate them on their own. The credentials are read in Breeze from the /files directory. The local "files" folder is mounted to the "/files" folder in Breeze.
  • If your system tests are long-running ones (i.e., require more than 20-30 minutes to complete), mark them with the `@pytest.markers.long_running marker. Such tests are skipped by default unless you specify the --long-running flag to pytest.
  • The system test itself (python class) does not have any logic. Such a test runs the DAG specified by its ID. This DAG should contain the actual DAG logic to execute. Make sure to define the DAG in providers/<SYSTEM_NAME>/example_dags. These example DAGs are also used to take some snippets of code out of them when documentation is generated. So, having these DAGs runnable is a great way to make sure the documentation is describing a working example. Inside your test class/test method, simply use self.run_dag(<DAG_ID>,<DAG_FOLDER>) to run the DAG. Then, the system class will take care about running the DAG. Note that the DAG_FOLDER should be a subdirectory of the tests.test_utils.AIRFLOW_MAIN_FOLDER + providers/<SYSTEM_NAME>/example_dags.

A simple example of a system test is available in:

tests/providers/google/cloud/operators/test_compute_system.py.

It runs two DAGs defined in airflow.providers.google.cloud.example_dags.example_compute.py and airflow.providers.google.cloud.example_dags.example_compute_igm.py.

To run system tests with the older Airflow version, you need to prepare provider packages. This can be done by running ./breeze prepare-provider-packages <PACKAGES TO BUILD>. For example, the below command will build google, postgres and mysql wheel packages:

./breeze prepare-provider-packages -- google postgres mysql

Those packages will be prepared in ./dist folder. This folder is mapped to /dist folder when you enter Breeze, so it is easy to automate installing those packages for testing.

Here is the typical session that you need to do to run system tests:

  1. Enter breeze
./breeze --python 3.6 --db-reset --forward-credentials restart

This will:

  • restarts the whole environment (i.e. recreates metadata database from the scratch)
  • run Breeze with python 3.6 version
  • reset the Airflow database
  • forward your local credentials to Breeze
  1. Run the tests:
pytest -o faulthandler_timeout=2400 \
   --system=google tests/providers/google/cloud/operators/test_compute_system.py

When you want to iterate on system tests, you might want to create slow resources first.

If you need to set up some external resources for your tests (for example compute instances in Google Cloud) you should set them up and teardown in the setUp/tearDown methods of your tests. Since those resources might be slow to create, you might want to add some helpers that set them up and tear them down separately via manual operations. This way you can iterate on the tests without waiting for setUp and tearDown with every test.

In this case, you should build in a mechanism to skip setUp and tearDown in case you manually created the resources. A somewhat complex example of that can be found in tests.providers.google.cloud.operators.test_cloud_sql_system.py and the helper is available in tests.providers.google.cloud.operators.test_cloud_sql_system_helper.py.

When the helper is run with --action create to create cloud sql instances which are very slow to create and set-up so that you can iterate on running the system tests without losing the time for creating theme every time. A temporary file is created to prevent from setting up and tearing down the instances when running the test.

This example also shows how you can use the random number generated at the entry of Breeze if you have it in your variables.env (see the previous chapter). In the case of Cloud SQL, you cannot reuse the same instance name for a week so we generate a random number that is used across the whole session and store it in /random.txt file so that the names are unique during tests.

!!!!!!!!!!!!!!!!!!!!!!!!!!!!!! Important !!!!!!!!!!!!!!!!!!!!!!!!!!!!

Do not forget to delete manually created resources before leaving the Breeze session. They are usually expensive to run.

!!!!!!!!!!!!!!!!!!!!!!!!!!!!!! Important !!!!!!!!!!!!!!!!!!!!!!!!!!!!

  1. Enter breeze
./breeze --python 3.6 --db-reset --forward-credentials restart
  1. Run create action in helper (to create slowly created resources):
python tests/providers/google/cloud/operators/test_cloud_sql_system_helper.py --action create
  1. Run the tests:
pytest -o faulthandler_timeout=2400 \
   --system=google tests/providers/google/cloud/operators/test_compute_system.py
  1. Run delete action in helper:
python tests/providers/google/cloud/operators/test_cloud_sql_system_helper.py --action delete

One of the great benefits of using the local virtualenv and Breeze is an option to run local debugging in your IDE graphical interface.

When you run example DAGs, even if you run them using unit tests within IDE, they are run in a separate container. This makes it a little harder to use with IDE built-in debuggers. Fortunately, IntelliJ/PyCharm provides an effective remote debugging feature (but only in paid versions). See additional details on remote debugging.

You can set up your remote debugging session as follows:

Setup remote debugging

Note that on macOS, you have to use a real IP address of your host rather than the default localhost because on macOS the container runs in a virtual machine with a different IP address.

Make sure to configure source code mapping in the remote debugging configuration to map your local sources to the /opt/airflow location of the sources within the container:

Source code mapping

Below are the steps you need to take to set up your virtual machine in the Google Cloud.

  1. The next steps will assume that you have configured environment variables with the name of the network and a virtual machine, project ID and the zone where the virtual machine will be created

    PROJECT_ID="<PROJECT_ID>"
    GCP_ZONE="europe-west3-a"
    GCP_NETWORK_NAME="airflow-debugging"
    GCP_INSTANCE_NAME="airflow-debugging-ci"
  2. It is necessary to configure the network and firewall for your machine. The firewall must have unblocked access to port 22 for SSH traffic and any other port for the debugger. In the example for the debugger, we will use port 5555.

    gcloud compute --project="${PROJECT_ID}" networks create "${GCP_NETWORK_NAME}" \
      --subnet-mode=auto
    
    gcloud compute --project="${PROJECT_ID}" firewall-rules create "${GCP_NETWORK_NAME}-allow-ssh" \
      --network "${GCP_NETWORK_NAME}" \
      --allow tcp:22 \
      --source-ranges 0.0.0.0/0
    
    gcloud compute --project="${PROJECT_ID}" firewall-rules create "${GCP_NETWORK_NAME}-allow-debugger" \
      --network "${GCP_NETWORK_NAME}" \
      --allow tcp:5555 \
      --source-ranges 0.0.0.0/0
  3. If you have a network, you can create a virtual machine. To save costs, you can create a Preemptible virtual machine <https://cloud.google.com/preemptible-vms> that is automatically deleted for up to 24 hours.

    gcloud beta compute --project="${PROJECT_ID}" instances create "${GCP_INSTANCE_NAME}" \
      --zone="${GCP_ZONE}" \
      --machine-type=f1-micro \
      --subnet="${GCP_NETWORK_NAME}" \
      --image=debian-10-buster-v20200210 \
      --image-project=debian-cloud \
      --preemptible

    To check the public IP address of the machine, you can run the command

    gcloud compute --project="${PROJECT_ID}" instances describe "${GCP_INSTANCE_NAME}" \
      --zone="${GCP_ZONE}" \
      --format='value(networkInterfaces[].accessConfigs[0].natIP.notnull().list())'
  4. The SSH Daemon's default configuration does not allow traffic forwarding to public addresses. To change it, modify the GatewayPorts options in the /etc/ssh/sshd_config file to Yes and restart the SSH daemon.

    gcloud beta compute --project="${PROJECT_ID}" ssh "${GCP_INSTANCE_NAME}" \
      --zone="${GCP_ZONE}" -- \
      sudo sed -i "s/#\?\s*GatewayPorts no/GatewayPorts Yes/" /etc/ssh/sshd_config
    
    gcloud beta compute --project="${PROJECT_ID}" ssh "${GCP_INSTANCE_NAME}" \
      --zone="${GCP_ZONE}" -- \
      sudo service sshd restart
  5. To start port forwarding, run the following command:

    gcloud beta compute --project="${PROJECT_ID}" ssh "${GCP_INSTANCE_NAME}" \
      --zone="${GCP_ZONE}" -- \
      -N \
      -R 0.0.0.0:5555:localhost:5555 \
      -v

If you have finished using the virtual machine, remember to delete it.

gcloud beta compute --project="${PROJECT_ID}" instances delete "${GCP_INSTANCE_NAME}" \
  --zone="${GCP_ZONE}"

You can use the GCP service for free if you use the Free Tier.

To ease and speed up the process of developing DAGs, you can use py:class:~airflow.executors.debug_executor.DebugExecutor, which is a single process executor for debugging purposes. Using this executor, you can run and debug DAGs from your IDE.

To set up the IDE:

1. Add main block at the end of your DAG file to make it runnable. It will run a backfill job:

if __name__ == '__main__':
  from airflow.utils.state import State
  dag.clear(dag_run_state=State.NONE)
  dag.run()
  1. Set up AIRFLOW__CORE__EXECUTOR=DebugExecutor in the run configuration of your IDE. Make sure to also set up all environment variables required by your DAG.
  2. Run and debug the DAG file.

Additionally, DebugExecutor can be used in a fail-fast mode that will make all other running or scheduled tasks fail immediately. To enable this option, set AIRFLOW__DEBUG__FAIL_FAST=True or adjust fail_fast option in your airflow.cfg.

Also, with the Airflow CLI command airflow dags test, you can execute one complete run of a DAG:

# airflow dags test [dag_id] [execution_date]
airflow dags test example_branch_operator 2018-01-01

By default /files/dags folder is mounted from your local <AIRFLOW_SOURCES>/files/dags and this is the directory used by airflow scheduler and webserver to scan dags for. You can place your dags there to test them.

The DAGs can be run in the master version of Airflow but they also work with older versions.

To run the tests for Airflow 1.10.* series, you need to run Breeze with --use-airflow-pypi-version=<VERSION> to re-install a different version of Airflow.

You should also consider running it with restart command when you change the installed version. This will clean-up the database so that you start with a clean DB and not DB installed in a previous version. So typically you'd run it like breeze --use-airflow-pypi-version=1.10.9 restart.

You can run tests with SQL statements tracking. To do this, use the --trace-sql option and pass the columns to be displayed as an argument. Each query will be displayed on a separate line. Supported values:

  • num - displays the query number;
  • time - displays the query execution time;
  • trace - displays the simplified (one-line) stack trace;
  • sql - displays the SQL statements;
  • parameters - display SQL statement parameters.

If you only provide num, then only the final number of queries will be displayed.

By default, pytest does not display output for successful tests, if you still want to see them, you must pass the --capture=no option.

If you run the following command:

pytest --trace-sql=num,sql,parameters --capture=no \
  tests/jobs/test_scheduler_job.py -k test_process_dags_queries_count_05

On the screen you will see database queries for the given test.

SQL query tracking does not work properly if your test runs subprocesses. Only queries from the main process are tracked.

We have started adding tests to cover Bash scripts we have in our codebase. The tests are placed in the tests\bats folder. They require BAT CLI to be installed if you want to run them on your host or via a Docker image.

You can find an installation guide as well as information on how to write the bash tests in BATS Installation.

To run all tests:

bats -r tests/bats/

To run a single test:

bats tests/bats/your_test_file.bats

To run all tests:

docker run -it --workdir /airflow -v $(pwd):/airflow  bats/bats:latest -r /airflow/tests/bats

To run a single test:

docker run -it --workdir /airflow -v $(pwd):/airflow  bats/bats:latest /airflow/tests/bats/your_test_file.bats

You can read more about using BATS CLI and writing tests in BATS Usage.