Docker integration tests for pytest
Project description
pytest-docker-tools
You have written a software application (in any language) and have packaged it as a Docker image. Now you want to smoke test the built image or do some integration testing with other containers before releasing it. You:
- want to reason about your environment in a similar way to a docker-compose.yml`
- want the environment to be automatically created and destroyed as tests run
- want the option to reuse previously created resources (e.g. containers) when executing tests in high frequency
- don't want to have to write loads of boilerplate code for creating the test environment
- want to be able to run the tests in parallel
- want the tests to be reliable
pytest-docker-tools
is a set of opinionated helpers for creating py.test
fixtures for your smoke testing and integration testing. It strives to keep your environment definition declarative, like a docker-compose.yml. It embraces py.test fixture overloading. It tries not to be too magical. It ended up kind of magical, but no more so that py.test
itself.
The main interface provided by this library is a set of 'fixture factories'. It provides a 'best in class' implementation of a fixture, and then allows you to treat it as a template - injecting your own configuration declaratively. You can define your fixtures in your conftest.py
and access them from all your tests, and you can override them as needed in individual test modules.
The API is straightforward and implicitly captures the dependencies between fixtures in the specification. For example, here is how it might look if you were building out a microservice and wanted to point its DNS and a mock DNS server:
# conftest.py
from http.client import HTTPConnection
import pytest
from pytest_docker_tools import build, container
fakedns_image = build(
path='examples/resolver-service/dns',
)
fakedns = container(
image='{fakedns_image.id}',
environment={
'DNS_EXAMPLE_COM__A': '127.0.0.1',
}
)
apiserver_image = build(
path='examples/resolver-service/api',
)
apiserver = container(
image='{apiserver_image.id}',
ports={
'8080/tcp': None,
},
dns=['{fakedns.ips.primary}']
)
@pytest.fixture
def apiclient(apiserver):
port = apiserver.ports['8080/tcp'][0]
return HTTPConnection(f'localhost:{port}')
You can now create a test that exercises your microservice:
# test_smoketest.py
import socket
def test_my_frobulator(apiserver):
sock = socket.socket()
sock.connect(('127.0.0.1', apiserver.ports['8080/tcp'][0]))
def test_my_frobulator_works_after_restart(apiserver):
apiserver.restart()
sock = socket.socket()
sock.connect(('127.0.0.1', apiserver.ports['8080/tcp'][0]))
In this example all the dependencies will be resolved in order and once per session:
- The latest
redis:latest
will be fetched - A container image will be build from the
Dockerfile
in thedb
folder.
Then once per test:
- A new volume will be created
- A new 'backend' container will be created from
redis:latest
. It will be attached to the new volume. - A new 'frontend' container will be created from the freshly built container. It will be given the IP if the backend via an environment variable. Port 3679 in the container will be exposed as an ephemeral port on the host.
The test can then run and access the container via its ephemeral high port. At the end of the test the environment will be thrown away.
If the test fails the docker logs
output from each container will be captured and added to the test output.
In the example you'll notice we defined an apiclient
fixture. Of course if you use that it will implicitly pull in both of the server fixtures and 'just work':
# test_smoketest.py
import json
def test_api_server(apiclient):
apiclient.request('GET', '/')
response = apiclient.getresponse()
assert response.status == 200
assert json.loads(response.read()) == {'result': '127.0.0.1'}
Scope
All of the fixture factories take the scope
keyword. Fixtures created with these factories will behave like any py.test fixture with that scope.
In this example we create a memcache that is session
scoped and another that is module
scoped.
# conftest.py
from pytest_docker_tools import container, fetch
memcache_image = fetch(repository='memcached:latest')
memcache_session = container(
image='{memcache_image.id}',
scope='session',
ports={
'11211/tcp': None,
},
)
memcache_module = container(
image='{memcache_image.id}',
scope='module',
ports={
'11211/tcp': None,
},
)
When test_scope_1.py
runs neither container is running so a new instance of each is started. Their scope is longer than a single function
so they are kept alive for the next test that needs them.
# test_scope_1.py
import socket
def test_session_1(memcache_session):
sock = socket.socket()
sock.connect(('127.0.0.1', memcache_session.ports['11211/tcp'][0]))
sock.sendall(b'set mykey 0 600 4\r\ndata\r\n')
sock.sendall(b'get mykey\r\n')
assert sock.recv(1024) == b'STORED\r\nVALUE mykey 0 4\r\ndata\r\nEND\r\n'
sock.close()
def test_session_2(memcache_session):
sock = socket.socket()
sock.connect(('127.0.0.1', memcache_session.ports['11211/tcp'][0]))
sock.sendall(b'set mykey 0 600 4\r\ndata\r\n')
sock.sendall(b'get mykey\r\n')
assert sock.recv(1024) == b'STORED\r\nVALUE mykey 0 4\r\ndata\r\nEND\r\n'
sock.close()
def test_module_1(memcache_module):
sock = socket.socket()
sock.connect(('127.0.0.1', memcache_module.ports['11211/tcp'][0]))
sock.sendall(b'set mykey 0 600 4\r\ndata\r\n')
sock.sendall(b'get mykey\r\n')
assert sock.recv(1024) == b'STORED\r\nVALUE mykey 0 4\r\ndata\r\nEND\r\n'
sock.close()
def test_module_2(memcache_module):
sock = socket.socket()
sock.connect(('127.0.0.1', memcache_module.ports['11211/tcp'][0]))
sock.sendall(b'set mykey 0 600 4\r\ndata\r\n')
sock.sendall(b'get mykey\r\n')
assert sock.recv(1024) == b'STORED\r\nVALUE mykey 0 4\r\ndata\r\nEND\r\n'
sock.close()
When test_scope_2.py
runs the session
scoped container is still running, so it will be reused. But we are now in a new module now so the module
scoped container will have been destroyed. A new empty instance will be created.
# test_scope_2.py
import socket
def test_session_3(memcache_session):
sock = socket.socket()
sock.connect(('127.0.0.1', memcache_session.ports['11211/tcp'][0]))
sock.sendall(b'get mykey\r\n')
assert sock.recv(1024).endswith(b'END\r\n')
sock.close()
def test_module_3(memcache_module):
sock = socket.socket()
sock.connect(('127.0.0.1', memcache_module.ports['11211/tcp'][0]))
sock.sendall(b'get mykey\r\n')
assert sock.recv(1024) == b'END\r\n'
sock.close()
Parallelism
Integration and smoke tests are often slow, but a lot of time is spent waiting. So running tests in parallel is a great way to speed them up. pytest-docker-tools
avoids creating resource names that could collide. It also makes it easy to not care what port your service is bound to. This means its a great fit for use with pytest-xdist
.
Here is a bare minimum example that just tests creating and destroying 100 instances of a redis fixture that runs under xdist. Create a test_xdist.py
plugin:
import pytest
from pytest_docker_tools import container, fetch
my_redis_image = fetch(repository='redis:latest')
my_redis = container(
image='{my_redis_image.id}',
)
@pytest.mark.parametrize("i", list(range(100)))
def test_xdist(i, my_redis):
assert my_redis.status == "running"
And invoke it with:
pytest test_xdist.py -n auto
It will create a worker per core and run the tests in parallel:
===================================== test session starts ======================================
platform darwin -- Python 3.6.5, pytest-3.6.3, py-1.5.4, pluggy-0.6.0
rootdir: ~/pytest-docker-tools, inifile:
plugins: xdist-1.22.2, forked-0.2, docker-tools-0.0.2
gw0 [100] / gw1 [100] / gw2 [100] / gw3 [100] / gw4 [100] / gw5 [100] / gw6 [100] / gw7 [100]
scheduling tests via LoadScheduling
......................................................................................... [ 82%]
........... [100%]
================================= 100 passed in 70.08 seconds ==================================
Factories Reference
Containers
To create a container in your tests use the container
fixture factory.
from pytest_docker_tools import container
my_microservice_backend = container(image='redis:latest')
The default scope for this factory is function
. This means a new container will be created for each test.
The container
fixture factory supports all parameters that can be passed to the docker-py run
method. See here for them all.
Any string variables are interpolated against other defined fixtures. This means that a fixture can depend on other fixtures, and they will be built and run in order.
For example:
from pytest_docker_tools import container, fetch
redis_image = fetch(repository='redis:latest')
redis = container(image='{redis_image.id}')
def test_container_starts(redis):
assert redis.status == "running"
This will fetch the latest redis:latest
first, and then run a container from the exact image that was pulled. Note that if you don't use build
or fetch
to prepare a Docker image then the tag or hash that you specify must already exist on the host where you are running the tests. There is no implicit fetching of Docker images.
The container will be ready when the test is started, and will be automatically deleted after the test has finished.
If for some reason it's not ready in the timeout period (30 seconds by default) the test will fail.
timeout
can be passed to the container
factory:
from pytest_docker_tools import container, fetch
redis_image = fetch(repository='redis:latest')
redis = container(image='{redis_image.id}', timeout=30)
def test_container_starts(redis):
assert redis.status == "running"
To create a container defining its Dockerfile
in code:
import io
from pytest_docker_tools import build, container
dockerfile = io.BytesIO(b"""
FROM alpine:3.12
RUN apk --no-cache add python3
CMD ["tail", "-f", "/dev/null"]
""")
image = build(fileobj=dockerfile)
container = container(image='{image.id}')
def test_container_starts(container):
assert container.status == "running"
Ip Addresses
If your container is only attached to a single network you can get its Ip address through a helper property. Given this environment:
# conftest.py
from pytest_docker_tools import container, fetch, network
redis_image = fetch(repository='redis:latest')
backend_network = network()
redis = container(
image='{redis_image.id}',
network='{backend_network.name}',
)
You can access the IP via the container helper:
import ipaddress
def test_get_service_ip(redis):
# This will raise a ValueError if not a valid ip
ipaddress.ip_address(redis.ips.primary)
If you want to look up its ip address by network you can also access it more specifically:
import ipaddress
def test_get_service_ip(backend_network, redis):
ipaddress.ip_address(redis.ips[backend_network])
Ports
The factory takes the same port arguments as the official Python Docker API. We recommend using the ephemeral high ports syntax:
# conftest.py
from pytest_docker_tools import container
apiserver = container(
image='{apiserver_image.id}',
ports={'8080/tcp': None}
)
Docker will map port 8080 in the container to a random port on your host. In order to access it from your tests you can get the bound port from the container instance:
def test_connect_my_service(apiserver):
assert apiserver.ports['8080/tcp'][0] != 8080
Logs
You can inspect the logs of your container with the logs method:
from pytest_docker_tools import container, fetch
redis_image = fetch(repository='redis:latest')
redis = container(
image='{redis_image.id}',
ports={'6379/tcp': None},
)
def test_logs(redis):
assert 'oO0OoO0OoO0Oo Redis is starting oO0OoO0OoO0Oo' in redis.logs()
Images
To pull an image from your default repository use the fetch
fixture factory. To build an image from local source use the build
fixture factory. If you are smoke testing an artifact already built locally you can use the image
fixture factory to reference it.
from pytest_docker_tools import build, image, fetch
my_image = fetch(repository='redis:latest')
my_image_2 = build(
path='db'
)
The build
fixture factory supports all parameters that can be passed to the docker-py build
method. See here for them all. The fetch
fixture factory supports all parameters that can be passed to the docker-py pull
method. See here for them all.
The default scope for this factory is session
. This means the fixture will only build or fetch once per py.test invocation. The fixture will not be triggered until a test (or other fixture) tries to use it. This means you won't waste time building an image if you aren't running the test that uses it.
Caching
By default images are kept between invocations. This speeds things up a lot. But when doing incremental development of an image it can leave you with lots of orphaned layers. Running docker image prune
will throw away these layers, but as that is all untagged images it will include ones that are still valid for you current project. For large images this can really slow down your test cycle.
To avoid this you need to tag your images as docker image prune
won't throw away tagged images by default. But for this to be effective for multi-stage images, you need to tag your stages as well. To support this, pytest-docker-tools takes a stages
parameter. For example:
from pytest_docker_tools import build, image, fetch
my_image = build(
path='db',
tag='localhost/myproject:latest',
stages={
'builder': 'localhost/myproject:builder'
}
)
Under the hood this will make pytest-docker-tools first build (and tag) the builder
stage. This is like running:
docker build --target builder --tag localhost/myproject:builder .
Then when that is tagged it will run the default target as before, which is like running:
docker build --tag localhost/myproject:latest .
This will reuse the layers generated in the previous build (where applicable).
Now when you run docker image prune
both the latest image build and the latest versions of the stages it depends on are left alone.
Networks
By default any containers you create with the container()
fixture factory will run on your default docker network. You can create a dedicated network for your test with the network()
fixture factory.
from pytest_docker_tools import container, fetch, network
frontend_network = network()
redis_image = fetch(repository='redis:latest')
redis = container(
image='{redis_image.id}',
network='{frontend_network.name}',
)
The network
fixture factory supports all parameters that can be passed to the docker-py network create
method. See here for them all.
The default scope for this factory is function
. This means a new network will be created for each test that is executed.
The network will be removed after the test using it has finished.
Volumes
In the ideal case a Docker container instance is read only. No data inside the container is written to, if it is its to a volume. If you are testing that your service can run read only you might want to mount a rw volume. You can use the volume()
fixture factory to create a Docker volume with a lifecycle tied to your tests.
from pytest_docker_tools import volume
backend_storage = volume()
The volume
fixture factory supports all parameters that can be passed to the docker-py volume create
method. See here for them all.
In addition you can specify a initial_content
dictionary. This allows you to seed a volume with a small set of initial state. In the following example we'll preseed a minio service with 2 buckets and 1 object in 1 of those buckets.
from pytest_docker_tools import container, fetch, volume
minio_image = fetch(repository='minio/minio:latest')
minio_volume = volume(
initial_content={
'bucket-1': None,
'bucket-2/example.txt': b'Test file 1',
}
)
minio = container(
image='{minio_image.id}',
command=['server', '/data'],
volumes={
'{minio_volume.name}': {'bind': '/data'},
},
environment={
'MINIO_ACCESS_KEY': 'minio',
'MINIO_SECRET_KEY': 'minio123',
},
)
def test_volume_is_seeded(minio):
files = minio.get_files('/data')
assert files['data/bucket-2/example.txt'] == b'Test file 1'
assert files['data/bucket-1'] == None
The minio_volume
container will be created with an empty folder (bucket-1
) and a text file called example.txt
in a seperate folder called bucket-2
.
The default scope for this factory is function
. This means a new volume will be created for each test that is executed. The volume will be removed after the test using it has finished.
Fixtures
docker_client
The docker_client
fixture returns an instance of the official docker client.
def test_container_created(docker_client, fakedns):
for c in docker_client.containers.list(ignore_removed=True):
if c.id == fakedns.id:
# Looks like we managed to start one!
break
else:
assert False, 'Looks like we failed to start a container'
Take care when using the docker_client
directly:
- Obviously resources created imperatively via the API won't be removed at the end of the test automatically
- It's easy to break xdist compatibility
- Always use
ignore_removed
withdocker_client.containers.list()
- it is racy without - It's easy to find other instances of the resources you are working with (created in other workers). Be mindful of this!
- Always use
- Don't take destructive action - someone could be running tests on a machine with other (non-test) containers running, collateral damage is easy and should be avoided.
This is the fixture used by our fixture factories. This means if you define a docker_client
fixture of your own then the tests will use that instead.
Tips and tricks
Testing build artifacts
We often find ourselves using a set of tests against a container we've built at test time (with build()
) but then wanting to use the same tests with an artifact generated on our CI platform (with image()
). This ended up looking like this:
if not os.environ.get('IMAGE_ID', ''):
image = build(path='examples/resolver-service/dns')
else:
image = image(name=os.environ['IMAGE_ID'])
But now you can just do:
from pytest_docker_tools import image_or_build
image = image_or_build(
environ_key='IMAGE_ID',
path='examples/resolver-service/dns',
)
def test_image(image):
assert image.attrs['Os'] == 'linux'
Network differences between dev env and CI
Another common difference between your dev environment and your CI environment might be that your tests end up running in Docker on your CI. If you bind-mount your docker.sock
then your tests might end up running on the same container network as the containers you are testing, and unable to access any port you are mapping to the host box. In otherwords:
- On your dev machine your tests might access locahost:8000 to access your test instance (ports mapped to host)
- On your CI machine they might need to access 172.16.0.5:8000 to access your test instance
The container object has a get_addr
helper which will return the right thing depending on the environment it is in.
from pytest_docker_tools import container
apiserver = container(
image='{apiserver_image.id}',
ports={'8080/tcp': None}
)
def test_connect_my_service(apiserver):
ip, port = apiserver.get_addr('8080/tcp')
# ... connect to ip:port ...
Dynamic scope
The pytest fixture decorator now lets you specify a callback to determine the scope of a fixture This is called dynamic scope. You can use this to make it a runtime option whether to have a container instance per test or per test run. For example:
# conftest.py
from pytest_docker_tools import container, fetch
def determine_scope(fixture_name, config):
if config.getoption("--keep-containers", None):
return "session"
return "function"
memcache_image = fetch(repository='memcached:latest')
memcache = container(
image='{memcache_image.id}',
scope=determine_scope,
ports={
'11211/tcp': None,
},
)
Your tests can look exactly the same as before:
def test_connect_my_service(memcache):
ip, port = memcache.get_addr('11211/tcp')
# ... connect to ip:port ...
Client fixtures
You will probably want to create an API client for the service you are testing. Although we've already done this in the README, its worth calling it out. You can define a client fixture, have it depend on your docker containers, and then only have to reference the client from your tests.
# conftest.py
from http.client import HTTPConnection
import pytest
from pytest_docker_tools import build, container
fakedns_image = build(
path='examples/resolver-service/dns',
)
fakedns = container(
image='{fakedns_image.id}',
environment={
'DNS_EXAMPLE_COM__A': '127.0.0.1',
}
)
apiserver_image = build(
path='examples/resolver-service/api',
)
apiserver = container(
image='{apiserver_image.id}',
ports={
'8080/tcp': None,
},
dns=['{fakedns.ips.primary}']
)
@pytest.fixture
def apiclient(apiserver):
port = apiserver.ports['8080/tcp'][0]
return HTTPConnection(f'localhost:{port}')
And then reference it from your tests:
# test_the_test_client.py
import json
def test_api_server(apiclient):
apiclient.request('GET', '/')
response = apiclient.getresponse()
assert response.status == 200
result = json.loads(response.read())
assert result['result'] == '127.0.0.1'
In this example, any test that uses the hpfeeds_client
fixture will get a properly configure client connected to a broker running in a Docker container on an ephemeral high port. When the test finishes the client will cleanly disconnect, and the docker container will be thrown away.
Fixture overloading
Complicated environments can be defined with fixture factories. They form a directed acyclic graph. By using fixture overloading it is possible to (in the context of a single test module) replace a node in that dependency graph without having to redefine the entire environment.
Replacing a container fixture without having to redefine its dependents
You can define a fixture in your conftest.py
:
# conftest.py
from http.client import HTTPConnection
import pytest
from pytest_docker_tools import build, container
fakedns_image = build(
path='examples/resolver-service/dns',
)
fakedns = container(
image='{fakedns_image.id}',
environment={
'DNS_EXAMPLE_COM__A': '127.0.0.1',
}
)
apiserver_image = build(
path='examples/resolver-service/api',
)
apiserver = container(
image='{apiserver_image.id}',
ports={
'8080/tcp': None,
},
dns=['{fakedns.ips.primary}']
)
@pytest.fixture
def apiclient(apiserver):
port = apiserver.ports['8080/tcp'][0]
return HTTPConnection(f'localhost:{port}')
You can then overload these fixtures in your test modules. For example, if redis had a magic replication feature and you want to test for an edge case with your API you could in your test_smoketest_alternate.py
:
# test_smoketest_alternate.py
import json
from pytest_docker_tools import container
fakedns = container(
image='{fakedns_image.id}',
environment={
'DNS_EXAMPLE_COM__A': '192.168.192.168',
}
)
def test_api_server(apiclient):
apiclient.request('GET', '/')
response = apiclient.getresponse()
assert response.status == 200
result = json.loads(response.read())
assert result['result'] == '192.168.192.168'
Here we have redefined the fakedns container locally in test_smoketest_alternate
. It is able to use the fakedns_image
fixture we defined in conftest.py
. More crucially though, in test_smoketest_alternate.py
when we use the core apiclient
fixture it actually pulls in the local definition of fakedns
and not the one from conftest.py
! You don't have to redefine anything else. It just works.
Injecting fixture configuration through fixtures
You can pull in normal py.test fixtures from your fixture factory too. This means we can use fixture overloading and pass in config. In your conftest.py
:
# conftest.py
from http.client import HTTPConnection
import pytest
from pytest_docker_tools import build, container
fakedns_image = build(
path='examples/resolver-service/dns',
)
fakedns = container(
image='{fakedns_image.id}',
environment={
'DNS_EXAMPLE_COM__A': '{example_com_a}',
}
)
apiserver_image = build(
path='examples/resolver-service/api',
)
apiserver = container(
image='{apiserver_image.id}',
ports={
'8080/tcp': None,
},
dns=['{fakedns.ips.primary}']
)
@pytest.fixture
def apiclient(apiserver):
port = apiserver.ports['8080/tcp'][0]
return HTTPConnection(f'localhost:{port}')
@pytest.fixture
def example_com_a():
return '127.0.0.1'
When a test uses the apiclient fixture now they will get the fakedns container configured as normal. However you can redefine the fixture in your test module - and the other fixtures will still respect it. For example:
# test_smoketest_alternate.py
import json
import pytest
@pytest.fixture
def example_com_a():
return '192.168.192.168'
def test_api_server(apiclient):
apiclient.request('GET', '/')
response = apiclient.getresponse()
assert response.status == 200
result = json.loads(response.read())
assert result['result'] == '192.168.192.168'
Your api_server
container (and its redis
backend) will be built as normal, only in this one test module it will use its sqlite backend.
Fixture parameterisation
You can create parameterisation fixtures. Perhaps you wan to run all your api_server
tests against both of your authentication backends. Perhaps you have a fake that you want to test multiple configurations of.
In your conftest.py
:
# conftest.py
from http.client import HTTPConnection
import pytest
from pytest_docker_tools import build, container
fakedns_image = build(
path='examples/resolver-service/dns',
)
fakedns_localhost = container(
image='{fakedns_image.id}',
environment={
'DNS_EXAMPLE_COM__A': '127.0.0.1',
}
)
fakedns_alternate = container(
image='{fakedns_image.id}',
environment={
'DNS_EXAMPLE_COM__A': '192.168.192.168',
}
)
@pytest.fixture(scope='function', params=['fakedns_localhost', 'fakedns_alternate'])
def fakedns(request):
return request.getfixturevalue(request.param)
apiserver_image = build(
path='examples/resolver-service/api',
)
apiserver = container(
image='{apiserver_image.id}',
ports={
'8080/tcp': None,
},
dns=['{fakedns.ips.primary}']
)
@pytest.fixture
def apiclient(apiserver):
port = apiserver.ports['8080/tcp'][0]
return HTTPConnection(f'localhost:{port}')
The test is the same as the first example, only now it will be tested against 2 different fake configurations.
# test_smoketest.py
import ipaddress
import json
def test_api_server(apiclient):
apiclient.request('GET', '/')
response = apiclient.getresponse()
assert response.status == 200
result = json.loads(response.read())
ipaddress.ip_address(result['result'])
This test will be invoked twice - once against the memory backend, and once against the sqlite backend.
Fixture wrappers
You can wrap your fixtures with a wrapper_class
. This allows you to add helper methods to fixtures for use in your tests. In the case of the container
fixture factory you can also implement ready()
to add additional container readyness checks.
In previous tests we've created an entire test client fixture. With wrapper_class
we could hang this convenience method off the fixture itself instead:
# test_fixture_wrappers.py
import ipaddress
import json
import random
from http.client import HTTPConnection
import pytest
from pytest_docker_tools import build, container
from pytest_docker_tools import wrappers
class Container(wrappers.Container):
def ready(self):
# This is called until it returns True - its a great hook for e.g.
# waiting until a log message appears or a pid file is created etc
if super().ready():
return random.choice([True, False])
return False
def client(self):
port = self.ports['8080/tcp'][0]
return HTTPConnection(f'localhost:{port}')
fakedns_image = build(
path='examples/resolver-service/dns',
)
fakedns = container(
image='{fakedns_image.id}',
environment={
'DNS_EXAMPLE_COM__A': '127.0.0.1',
}
)
apiserver_image = build(
path='examples/resolver-service/api',
)
apiserver = container(
image='{apiserver_image.id}',
ports={
'8080/tcp': None,
},
dns=['{fakedns.ips.primary}'],
wrapper_class=Container,
)
def test_container_wrapper_class(apiserver):
client = apiserver.client()
client.request('GET', '/')
response = client.getresponse()
assert response.status == 200
result = json.loads(response.read())
ipaddress.ip_address(result['result'])
Referencing Non-String Returning Fixtures
You can define resources by calling the provided factories with parameters:
from pytest_docker_tools import container
cache = container(
name='my_cache_container',
image='1838567e84867e8498695403067879',
environment={
'foo': 'bar',
'mode': 'prod'
}
)
As given in previous examples it's possible to resolve factory arguments dynamically by referencing fixtures in a string templates like manner ('{<fixture_name>}'):
from pytest_docker_tools import container, fetch
cache_image = fetch(repository='memcached:latest')
cache = container(
name='my_cache_container',
image='{cache_image.id}',
environment={
'foo': 'bar',
'mode': 'prod'
}
)
In this example the image id will be obtained from the image wrapper object that is provided by fetch()
. However this only allows to retrieve values that are string like. E.g. it's not possible to dynamically obtain a dictionary object for the envinronment
argument by using the string template like syntax. Doing so would only result in a stringified dictionary.
To obtain non string return value from a fixture there are two options. First you can define another fixture in the same file or import the fixture. Afterwards you need to reference it as follows:
import pytest
from pytest_docker_tools import container, fetch, fxtr
cache_image = fetch(repository='memcached:latest')
@pytest.fixture()
def memcached_env():
yield {'foo': 'bar',
'mode': 'prod'}
cache = container(
name='my_cache_container',
image='{cache_image.id}',
environment=memcached_env
)
However normally working with fixtures in pytest does not require importing them in the first place. This is where the fxtr
helper function can be used:
import pytest
from pytest_docker_tools import container, fetch, fxtr
cache_image = fetch(repository='memcached:latest')
@pytest.fixture()
def memcached_env():
yield {'foo': 'bar',
'mode': 'prod'}
cache = container(
name='my_cache_container',
image='{cache_image.id}',
environment=fxtr('memcached_env')
)
In both examples a proper dict object is handed over to the container function. For container resources this is useful to dynamically set environments or volumes based on fixtures.
Reusable Containers
By default, the container fixture factory of pytest-docker-tools will create every defined container when pytest is invoked, and clean them up before the session ends. This ensures that your test environment is clean and your tests aren't passing because of some tate left in the containers previously.
Sometimes this behavior might not be what you want. When you are developing iteratively and running the tests over and over again the speed of your "test cycle" (how long it takes to fix a typo and re-run the tests) becomes important. When using the --reuse-containers
command line argument pytest-docker-tools won't automatically remove containers it has created. It will try to reuse them between pytest invocations. pytest-docker-tools will also keep track of if a container, volume or network has become stale (for example, if you change an image version) and automatically replace it.
Attention: When using --reuse-containers
you must set the name
attribute on all your pytest-docker-tools fixtures. If you don't use --reuse-containers
setting the name
attribute is not required.
Notes on using Reusable Containers
- Resources created using the
--reuse-containers
argument (containers, networks, volumes) will not have a finalizer, so scopes will may not behave like they normally would. It is up to the test author to make sure there are no collisions where 2 different fixtures share a name. - When reusing resources you are responsible to clean them up (e.g. databases, volume data) as data written during tests will not be deleted when they are finished.
- Each Resource Container created by pytest-docker-tools will get the following label:
creator: pytest-docker-tools
. When required, this can be used to search for left over resources. For example containers can be manually cleaned up by executingdocker ps -aq --filter "label=creator=pytest-docker-tools" | xargs docker rm -f
Hacking
This project usings poetry. You need a working poetry and python 3 environment before setting up a development environment for pytest-docker-tools
. When you do you can just:
poetry install
To run all the linters and tests run ./scripts/test.sh
within poetry:
poetry run ./scripts/tests.sh
This will run pyupgrade
, isort
and black
which will modify your changes in place to match the code style we use.
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