Integrate your charm with PostgreSQL¶
From Zero to Hero: Write your first Kubernetes charm > Integrate your charm with PostgreSQL
See previous: Make your charm configurable
Important
This document is part of a series, and we recommend you follow it in sequence. However, you can also jump straight in by checking out the code from the previous branches:
git clone https://github.com/canonical/juju-sdk-tutorial-k8s.git
cd juju-sdk-tutorial-k8s
git checkout 02_make_your_charm_configurable
git checkout -b 03_integrate_with_psql
A charm often requires or supports relations to other charms. For example, to make our application fully functional we need to connect it to the PostgreSQL database. In this chapter of the tutorial we will update our charm so that it can be integrated with the existing PostgreSQL charm.
Fetch the required database interface charm libraries¶
Navigate to your charm directory and fetch the data_interfaces charm library from Charmhub:
ubuntu@charm-dev:~/fastapi-demo$ charmcraft fetch-lib charms.data_platform_libs.v0.data_interfaces
Your charm directory should now contain the structure below:
lib
└── charms
└── data_platform_libs
└── v0
└── data_interfaces.py
Well done, you’ve got everything you need to set up a database relation!
Define the charm relation interface¶
Now, time to define the charm relation interface.
First, find out the name of the interface that PostgreSQL offers for other charms to connect to it. According to the documentation of the PostgreSQL charm, the interface is called postgresql_client
.
Next, open the charmcraft.yaml
file of your charm and, before the containers
section, define a relation endpoint using a requires
block, as below. This endpoint says that our charm is requesting a relation called database
over an interface called postgresql_client
with a maximum number of supported connections of 1. (Note: Here, database
is a custom relation name, though in general we recommend sticking to default recommended names for each charm.)
requires:
database:
interface: postgresql_client
limit: 1
That will tell juju
that our charm can be integrated with charms that provide the same postgresql_client
interface, for example, the official PostgreSQL charm.
Import the database interface libraries and define database event handlers
We now need to implement the logic that wires our application to a database. When a relation between our application and the data platform is formed, the provider side (that is: the data platform) will create a database for us and it will provide us with all the information we need to connect to it over the relation – for example, username, password, host, port, and so on. On our side, we nevertheless still need to set the relevant environment variables to point to the database and restart the service.
To do so, we need to update our charm src/charm.py
to do all of the following:
Import the
DataRequires
class from the interface library; this class represents the relation data exchanged in the client-server communication.Define the event handlers that will be called during the relation lifecycle.
Bind the event handlers to the observed relation events.
Import the database interface libraries¶
First, at the top of the file, import the database interfaces library:
# Import the 'data_interfaces' library.
# The import statement omits the top-level 'lib' directory
# because 'charmcraft pack' copies its contents to the project root.
from charms.data_platform_libs.v0.data_interfaces import DatabaseCreatedEvent
from charms.data_platform_libs.v0.data_interfaces import DatabaseRequires
Important
You might have noticed that despite the charm library being placed in the lib/charms/...
, we are importing it via:
from charms.data_platform_libs ...
and not
from lib.charms.data_platform_libs...
The former is not resolvable by default but everything works fine when the charm is deployed. Why? Because the dispatch
script in the packed charm sets the PYTHONPATH
environment variable to include the lib
directory when it executes your src/charm.py
code. This tells Python it can check the lib
directory when looking for modules and packages at import time.
If you’re experiencing issues with your IDE or just trying to run the charm.py
file on your own, make sure to set/update PYTHONPATH
to include lib
directory as well.
# from the charm project directory (~/fastapi-demo), set
export PYTHONPATH=lib
# or update
export PYTHONPATH=lib:$PYTHONPATH
Add relation event observers¶
Next, in the __init__
method, define a new instance of the ‘DatabaseRequires’ class. This is required to set the right permissions scope for the PostgreSQL charm. It will create a new user with a password and a database with the required name (below, names_db
), and limit the user permissions to only this particular database (that is, below, names_db
).
# The 'relation_name' comes from the 'charmcraft.yaml file'.
# The 'database_name' is the name of the database that our application requires.
# See the application documentation in the GitHub repository.
self.database = DatabaseRequires(self, relation_name="database", database_name="names_db")
Now, add event observers for all the database events:
# See https://charmhub.io/data-platform-libs/libraries/data_interfaces
framework.observe(self.database.on.database_created, self._on_database_created)
framework.observe(self.database.on.endpoints_changed, self._on_database_created)
Fetch the database authentication data¶
Now we need to extract the database authentication data and endpoints information. We can do that by adding a fetch_postgres_relation_data
method to our charm class. Inside this method, we first retrieve relation data from the PostgreSQL using the fetch_relation_data
method of the database
object. We then log the retrieved data for debugging purposes. Next we process any non-empty data to extract endpoint information, the username, and the password and return this process data as a dictionary. Finally, we ensure that, if no data is retrieved, we return an empty dictionary, so that the caller knows that the database is not yet ready.
def fetch_postgres_relation_data(self) -> dict[str, str]:
"""Fetch postgres relation data.
This function retrieves relation data from a postgres database using
the `fetch_relation_data` method of the `database` object. The retrieved data is
then logged for debugging purposes, and any non-empty data is processed to extract
endpoint information, username, and password. This processed data is then returned as
a dictionary. If no data is retrieved, the unit is set to waiting status and
the program exits with a zero status code."""
relations = self.database.fetch_relation_data()
logger.debug('Got following database data: %s', relations)
for data in relations.values():
if not data:
continue
logger.info('New PSQL database endpoint is %s', data['endpoints'])
host, port = data['endpoints'].split(':')
db_data = {
'db_host': host,
'db_port': port,
'db_username': data['username'],
'db_password': data['password'],
}
return db_data
return {}
Update the unit status to reflect the relation state¶
Now that the charm is getting more complex, there are many more cases where the unit status needs to be set. It’s often convenient to do this in a more declarative fashion, which is where the collect-status event can be used.
Read more:
ops.CollectStatusEvent
In your charm’s __init__
add a new observer:
framework.observe(self.on.collect_unit_status, self._on_collect_status)
And define a method that does the various checks, adding appropriate statuses. The library will take care of selecting the ‘most significant’ status for you.
def _on_collect_status(self, event: ops.CollectStatusEvent) -> None:
port = self.config['server-port']
if port == 22:
event.add_status(ops.BlockedStatus('Invalid port number, 22 is reserved for SSH'))
if not self.model.get_relation('database'):
# We need the user to do 'juju integrate'.
event.add_status(ops.BlockedStatus('Waiting for database relation'))
elif not self.database.fetch_relation_data():
# We need the charms to finish integrating.
event.add_status(ops.WaitingStatus('Waiting for database relation'))
try:
status = self.container.get_service(self.pebble_service_name)
except (ops.pebble.APIError, ops.pebble.ConnectionError, ops.ModelError):
event.add_status(ops.MaintenanceStatus('Waiting for Pebble in workload container'))
else:
if not status.is_running():
event.add_status(ops.MaintenanceStatus('Waiting for the service to start up'))
# If nothing is wrong, then the status is active.
event.add_status(ops.ActiveStatus())
We also want to clean up the code to remove the places where we’re setting the status outside of this method, other than anywhere we’re wanting a status to show up during the event execution (such as MaintenanceStatus
). In _on_config_changed
, change the port 22 check to:
if port == 22:
# The collect-status handler will set the status to blocked.
logger.debug('Invalid port number: 22 is reserved for SSH')
And remove the self.unit.status = WaitingStatus
line from _update_layer_and_restart
(similarly replacing it with a logging line if you prefer).
Validate your charm¶
Time to check the results!
First, repack and refresh your charm:
charmcraft pack
juju refresh \
--path="./demo-api-charm_ubuntu-22.04-amd64.charm" \
demo-api-charm --force-units --resource \
demo-server-image=ghcr.io/canonical/api_demo_server:1.0.1
Next, deploy the postgresql-k8s
charm:
juju deploy postgresql-k8s --channel=14/stable --trust
Now, integrate our charm with the newly deployed postgresql-k8s
charm:
juju integrate postgresql-k8s demo-api-charm
Read more: Juju | Relation (integration),
juju integrate
Finally, run:
juju status --relations --watch 1s
You should see both applications get to the active
status, and also that the postgresql-k8s
charm has a relation to the demo-api-charm
over the postgresql_client
interface, as below:
Model Controller Cloud/Region Version SLA Timestamp
charm-model tutorial-controller microk8s/localhost 3.0.0 unsupported 13:50:39+01:00
App Version Status Scale Charm Channel Rev Address Exposed Message
demo-api-charm 0.0.9 active 1 demo-api-charm 1 10.152.183.233 no
postgresql-k8s active 1 postgresql-k8s 14/stable 29 10.152.183.195 no Primary
Unit Workload Agent Address Ports Message
demo-api-charm/0* active idle 10.1.157.90
postgresql-k8s/0* active idle 10.1.157.92 Primary
Relation provider Requirer Interface Type Message
postgresql-k8s:database demo-api-charm:database postgresql_client regular
postgresql-k8s:database-peers postgresql-k8s:database-peers postgresql_peers peer
postgresql-k8s:restart postgresql-k8s:restart rolling_op peer
The relation appears to be up and running, but we should also test that it’s working as intended. First, let’s try to write something to the database by posting some name to the database via API using curl
as below – where 10.1.157.90
is a pod IP and 8000
is our app port. You can repeat the command for multiple names.
curl -X 'POST' \
'http://10.1.157.90:8000/addname/' \
-H 'accept: application/json' \
-H 'Content-Type: application/x-www-form-urlencoded' \
-d 'name=maksim'
Important
If you changed the server-port
config value in the previous section, don’t forget to change it back to 8000 before doing this!
Second, let’s try to read something from the database by running:
curl 10.1.157.90:8000/names
This should produce something similar to the output below (of course, with the names that you decided to use):
{"names":{"1":"maksim","2":"simon"}}
Congratulations, your relation with PostgreSQL is functional!
Write unit tests¶
Now that our charm uses fetch_postgres_relation_data
to extract database authentication data and endpoint information from the relation data, we should write a test for the feature. Here, we’re not testing the fetch_postgres_relation_data
function directly, but rather, we’re checking that the response to a Juju event is what it should be:
def test_relation_data():
ctx = testing.Context(FastAPIDemoCharm)
relation = testing.Relation(
endpoint="database",
interface="postgresql_client",
remote_app_name="postgresql-k8s",
remote_app_data={
"endpoints": "example.com:5432",
"username": "foo",
"password": "bar",
},
)
container = testing.Container(name="demo-server", can_connect=True)
state_in = testing.State(
containers={container},
relations={relation},
leader=True,
)
ctx.run(ctx.on.relation_changed(relation), state_in)
assert container.layers["fastapi_demo"].services["fastapi-service"].environment == {
"DEMO_SERVER_DB_HOST": "example.com",
"DEMO_SERVER_DB_PORT": "5432",
"DEMO_SERVER_DB_USER": "foo",
"DEMO_SERVER_DB_PASSWORD": "bar",
}
In this chapter, we also defined a new method _on_collect_status
that checks various things, including whether the required database relation exists. If the relation doesn’t exist, we wait and set the unit status to blocked
. We can also add a test to cover this behaviour:
def test_no_database_blocked():
ctx = testing.Context(FastAPIDemoCharm)
container = testing.Container(name="demo-server", can_connect=True)
state_in = testing.State(
containers={container},
leader=True,
) # We've omitted relation data from the input state.
state_out = ctx.run(ctx.on.collect_unit_status(), state_in)
assert state_out.unit_status == testing.BlockedStatus("Waiting for database relation")
Run tox -e unit
to make sure all test cases pass.
Write an integration test¶
Now that our charm integrates with the PostgreSQL database, if there’s not a database relation, the app will be in blocked
status instead of active
. Let’s tweak our existing integration test test_build_and_deploy
accordingly, setting the expected status as blocked
in ops_test.model.wait_for_idle
:
async def test_build_and_deploy(ops_test: OpsTest):
"""Build the charm-under-test and deploy it together with related charms.
Assert on the unit status before any relations/configurations take place.
"""
# Build and deploy charm from local source folder
charm = await ops_test.build_charm(".")
resources = {
"demo-server-image": METADATA["resources"]["demo-server-image"]["upstream-source"]
}
# Deploy the charm and wait for blocked/idle status
# The app will not be in active status as this requires a database relation
await asyncio.gather(
ops_test.model.deploy(charm, resources=resources, application_name=APP_NAME),
ops_test.model.wait_for_idle(
apps=[APP_NAME], status="blocked", raise_on_blocked=False, timeout=300
),
)
Then, let’s add another test case to check the integration is successful. For that, we need to deploy a database to the test cluster and integrate both applications. If everything works as intended, the charm should report an active status.
In your tests/integration/test_charm.py
file add the following test case:
@pytest.mark.abort_on_fail
async def test_database_integration(ops_test: OpsTest):
"""Verify that the charm integrates with the database.
Assert that the charm is active if the integration is established.
"""
await ops_test.model.deploy(
application_name="postgresql-k8s",
entity_url="postgresql-k8s",
channel="14/stable",
)
await ops_test.model.integrate(f"{APP_NAME}", "postgresql-k8s")
await ops_test.model.wait_for_idle(
apps=[APP_NAME], status="active", raise_on_blocked=False, timeout=300
)
Important
If you run one test and then the other as separate pytest ...
invocations, then two separate models will be created unless you pass --model=some-existing-model
to inform pytest-operator to use a model you provide.
In your Multipass Ubuntu VM, run the test again:
ubuntu@charm-dev:~/fastapi-demo$ tox -e integration
The test may again take some time to run.
Tip
To make things faster, use the --model=<existing model name>
to inform pytest-operator
to use the model it has created for the first test. Otherwise, charmers often have a way to cache their pack or deploy results.
When it’s done, the output should show two passing tests:
...
demo-api-charm/0 [idle] waiting: Waiting for database relation
INFO juju.model:model.py:2759 Waiting for model:
demo-api-charm/0 [idle] active:
PASSED
-------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- live log teardown --------------------------------------------------------------------------------------------------------------------------------------------------------------------------------
INFO pytest_operator.plugin:plugin.py:783 Model status:
Model Controller Cloud/Region Version SLA Timestamp
test-charm-2ara main-controller microk8s/localhost 3.1.5 unsupported 09:45:56+02:00
App Version Status Scale Charm Channel Rev Address Exposed Message
demo-api-charm 1.0.1 active 1 demo-api-charm 0 10.152.183.99 no
postgresql-k8s 14.7 active 1 postgresql-k8s 14/stable 73 10.152.183.50 no
Unit Workload Agent Address Ports Message
demo-api-charm/0* active idle 10.1.208.77
postgresql-k8s/0* active idle 10.1.208.107
INFO pytest_operator.plugin:plugin.py:789 Juju error logs:
INFO pytest_operator.plugin:plugin.py:877 Resetting model test-charm-2ara...
INFO pytest_operator.plugin:plugin.py:866 Destroying applications demo-api-charm
INFO pytest_operator.plugin:plugin.py:866 Destroying applications postgresql-k8s
INFO pytest_operator.plugin:plugin.py:882 Not waiting on reset to complete.
INFO pytest_operator.plugin:plugin.py:855 Forgetting main...
========================================================================================================================================================================== 2 passed in 290.23s (0:04:50) ==========================================================================================================================================================================
integration: OK (291.01=setup[0.04]+cmd[290.97] seconds)
congratulations :) (291.05 seconds)
Congratulations, with this integration test you have verified that your charms relation to PostgreSQL works as well!
Review the final code¶
For the full code see: 03_integrate_with_psql
For a comparative view of the code before and after this doc see: Comparison