ccdeba3254
PR-URL: https://github.com/hasura/graphql-engine-mono/pull/8657 GitOrigin-RevId: 7cffbf5104a9cdff3655168ed93c418f5a8c3966 |
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.. | ||
docker | ||
fixtures | ||
pgdump | ||
queries | ||
remote_schemas/nodejs | ||
test_tests | ||
webhook/insecure | ||
.devsh_version | ||
.envrc | ||
.gitignore | ||
.prettierignore | ||
auth_webhook_server.py | ||
conftest.py | ||
context.py | ||
docker-compose.yml | ||
graphql_server.py | ||
jwk_server.py | ||
package-lock.json | ||
package.json | ||
ports.py | ||
PortToHaskell.py | ||
pytest.ini | ||
README.md | ||
remote_server.py | ||
requirements-top-level.txt | ||
requirements.txt | ||
run.sh | ||
super_classes.py | ||
tempCodeRunnerFile.py | ||
test_actions.py | ||
test_allowlist_queries.py | ||
test_apis_disabled.py | ||
test_apollo_federation.py | ||
test_auth_webhook_cookie.py | ||
test_compat.py | ||
test_compression.py | ||
test_config_api.py | ||
test_cors.py | ||
test_dev_endpoints.py | ||
test_endpoints.py | ||
test_events.py | ||
test_graphql_introspection.py | ||
test_graphql_mutations.py | ||
test_graphql_queries.py | ||
test_graphql_read_only_source.py | ||
test_heterogeneous.py | ||
test_inconsistent_meta.py | ||
test_jwk.py | ||
test_jwt_claims_map.py | ||
test_jwt.py | ||
test_logging.py | ||
test_metadata.py | ||
test_naming_conventions.py | ||
test_openapi.py | ||
test_pg_dump.py | ||
test_query_cache.py | ||
test_remote_relationships.py | ||
test_remote_schema_permissions.py | ||
test_roles_inheritance.py | ||
test_scheduled_triggers.py | ||
test_schema_duplication.py | ||
test_schema_stitching.py | ||
test_subscriptions.py | ||
test_tests.py | ||
test_v1_queries.py | ||
test_v1alpha1_endpoint.py | ||
test_v2_queries.py | ||
test_validation.py | ||
test_version.py | ||
test_webhook_insecure.py | ||
test_webhook_request_context.py | ||
test_webhook.py | ||
test_websocket_init_cookie.py | ||
utils.py | ||
validate.py | ||
webhook.py | ||
webserver.py |
Python Integration Test Suite
This document describes the Python integration test suite. Please consult
the server/CONTRIBUTING
document for general information on the overall
test setup and other testing suites.
This document describes running and writing tests, as well as some information on how to update test dependencies.
Running tests
Tests can be run using run.sh
, dev.sh
or directly using pytest
.
Please note that running the BigQuery
tests requires a few manual steps.
Run and test via run.sh
The run.sh
scripts are an active work in progress, and will eventually replace the dev.sh
option below.
The easiest way to run the test suite is to:
Run the Python integration tests with ./server/tests-py/run.sh
.
Filter on specific test files with ./server/tests-py/run.sh -- create_async_action_with_nested_output_and_relation.py
If you have any issues with run.sh
, please create a GitHub issue and run and test via dev.sh
instead.
Running tests via dev.sh
scripts/dev.sh test --integration
NOTE: this only runs the tests for Postgres. If you want to run tests for a different backend, use:
scripts/dev.sh test --integration --backend mssql
Available options are documented in scripts/parse-pytest-backend
:
- postgres (default)
- bigquery (see section below)
- citus
- mssql
Filtering tests
You can filter tests by using -k <name>
. Note that <name>
is case-
insensitive.
scripts/dev.sh test --integration --backend mssql -k MSSQL
Note that you can also use expressions here, for example:
scripts/dev.sh test --integration --backend mssql -k "MSSQL and not Permission"
See pytest docs for more details.
Failures
If you want to stop after the first test failure you can pass -x
:
scripts/dev.sh test --integration --backend mssql -k MSSQL -x
Verbosity
You can increase or decrease the log verbosity by adding -v
or -q
to the command.
Running tests directly
WARNING: running tests manually will force skipping of some tests. dev.sh
deals with setting up some environment variables which decide how and if
some of the tests are executed.
-
To run the Python tests, you’ll need to install the necessary Python dependencies first. It is recommended that you do this in a self-contained Python venv, which is supported by Python 3.3+ out of the box. To create one, run:
python3 -m venv .python-venv
(The second argument names a directory where the venv sandbox will be created; it can be anything you like, but
.python-venv
is.gitignore
d.)With the venv created, you can enter into it in your current shell session by running:
source .python-venv/bin/activate
(Source
.python-venv/bin/activate.fish
instead if you are usingfish
as your shell.) -
Install the necessary Python dependencies into the sandbox:
pip3 install -r tests-py/requirements.txt
-
Install the dependencies for the Node server used by the remote schema tests:
(cd tests-py/remote_schemas/nodejs && npm ci)
-
Start an instance of
graphql-engine
for the test suite to use:env EVENT_WEBHOOK_HEADER=MyEnvValue \ EVENT_WEBHOOK_HANDLER=http://localhost:5592 \ SCHEDULED_TRIGGERS_WEBHOOK_DOMAIN=http://127.0.0.1:5594 \ cabal new-run -- exe:graphql-engine \ --database-url='postgres://<user>:<password>@<host>:<port>/<dbname>' \ serve --stringify-numeric-types
Optionally, replace the
--database-url
parameter with--metadata-database-url
to enable testing against multiple sources.The environment variables are needed for a couple of tests, and the
--stringify-numeric-types
option is used to avoid the need to do floating-point comparisons. -
Optionally, add more sources to test against:
If the tests include more sources (e.g., by using
-k MSSQL
), then you can use the following commands to add sources to your running graphql instance:# Add a Postgres source curl "$METADATA_URL" \ --data-raw '{"type":"pg_add_source","args":{"name":"default","configuration":{"connection_info":{"database_url":"'"$POSTGRES_DB_URL"'","pool_settings":{}}}}}' # Add a SQL Server source curl "$METADATA_URL" \ --data-raw '{"type":"mssql_add_source","args":{"name":"mssql","configuration":{"connection_info":{"connection_string":"'"$MSSQL_DB_URL"'","pool_settings":{}}}}}' # Optionally verify sources have been added curl "$METADATA_URL" --data-raw '{"type":"export_metadata","args":{}}'
-
With the server running, run the test suite:
cd tests-py pytest --hge-urls http://localhost:8080 \ --pg-urls 'postgres://<user>:<password>@<host>:<port>/<dbname>'
This will run all the tests, which can take a couple minutes (especially since some of the tests are slow). You can configure pytest
to run only a subset of the tests; see the pytest
documentation for more details.
Some other useful points of note:
-
It is recommended to use a separate Postgres database for testing, since the tests will drop and recreate the
hdb_catalog
schema, and they may fail if certain tables already exist. (It’s also useful to be able to just drop and recreate the entire test database if it somehow gets into a bad state.) -
You can pass the
-v
or-vv
options topytest
to enable more verbose output while running the tests and in test failures. You can also pass the-l
option to display the current values of Python local variables in test failures. -
Tests can be run against a specific backend (defaulting to Postgres) with the
backend
flag, for example:pytest --hge-urls http://localhost:8080 \ --pg-urls 'postgres://<user>:<password>@<host>:<port>/<dbname>' --backend mssql -k TestGraphQLQueryBasicCommon
For more details, please consult pytest --help
.
Running BigQuery tests
Running integration tests against a BigQuery data source is a little more involved due to the necessary service account requirements:
HASURA_BIGQUERY_PROJECT_ID=# the project ID of the service account
HASURA_BIGQUERY_SERVICE_ACCOUNT_EMAIL=# eg. "<<SERVICE_ACCOUNT_NAME>>@<<PROJECT_NAME>>.iam.gserviceaccount.com"
HASURA_BIGQUERY_SERVICE_KEY=# the service account key
Before running the test suite:
- Ensure you have access to a Google Cloud Console service account. Store the project ID and account email in
HASURA_BIGQUERY_PROJECT_ID
variable. - Create and download a new service account key. Store the contents of file in a
HASURA_BIGQUERY_SERVICE_KEY
variable.export HASURA_BIGQUERY_SERVICE_KEY=$(cat /path/to/service/account)
- Login and activate the service account, if it is not already activated.
- Verify the service account is accessible via the BigQuery API:
- Run the following command:
If the query succeeds, the service account is setup correctly to run tests against BigQuery locally.source scripts/verify-bigquery-creds.sh $HASURA_BIGQUERY_PROJECT_ID $HASURA_BIGQUERY_SERVICE_KEY $HASURA_BIGQUERY_SERVICE_ACCOUNT_EMAIL
- Finally, run the BigQuery test suite with
HASURA_BIGQUERY_SERVICE_KEY
andHASURA_BIGQUERY_PROJECT_ID
environment variables set. For example:
scripts/dev.sh test --integration --backend bigquery -k TestGraphQLQueryBasicBigquery
Note to Hasura team: a service account is already setup for internal use, please check the wiki for further details.
Tests structure
-
Tests are grouped as test classes in test modules (names starting with
test_
) -
The configuration files (if needed) for the tests in a class are usually kept in one folder.
- The folder name is usually either the
dir
variable or thedir()
function
- The folder name is usually either the
-
Some tests (like in
test_graphql_queries.py
) requires a setup and teardown per class.- Here we are extending the
DefaultTestSelectQueries
class. - This class defines a fixture which will run the configurations in
setup.yaml
andteardown.yaml
once per class - Extending test class should define a function name
dir()
, which returns the configuration folder
- Here we are extending the
-
For mutation tests (like in
test_graphql_mutations.py
)- We need a
schema_setup
andschema_teardown
per class - And
values_setup
andvalues_teardown
per test - Doing schema setup and teardown per test is expensive.
- We are extending the
DefaultTestMutations
class for this. - This class defines a fixture which will run the configuration in
setup.yaml
andteardown.yaml
once per class. - Another fixture defined in this class runs the configuration in
values_setup.yaml
andvalues_teardown.yaml
once per class.
- We need a
Writing python tests
-
Check whether the test you intend to write already exists in the test suite, so that there will be no duplicate tests or the existing test will just need to be modified.
-
All the tests use setup and teardown, the setup step is used to initialize the graphql-engine and the database in a certain state after which the tests should be run. After the tests are run, the state needs to be cleared, which should be done in the teardown step. The setup and teardown is localised for every python test class.
See
TestCreateAndDelete
in test_events.py for reference. -
The setup and teardown can be configured to run before and after every test in a test class or run before and after running all the tests in a class. Depending on the use case, there are different fixtures like
per_class_tests_db_state
,per_method_tests_db_state
defined in the conftest.py file. -
Sometimes, it's required to run the graphql-engine with in a different configuration only for a particular set of tests. In this case, these tests should be run only when the graphql-engine is run with the said configuration and should be skipped in other graphql-engine configurations. This can be done by accepting a new command-line flag from the
pytest
command and depending on the value or presence of the flag, the tests should be run accordingly. After adding this kind of a test, a new section needs to be added in the test-server.sh. This new section's name should also be added in theserver-test-names.txt
file, otherwise the test will not be run in the CI.For example,
The tests in the test_remote_schema_permissions.py are only to be run when the remote schema permissions are enabled in the graphql-engine and when it's not set, these tests should be skipped. Now, to run these tests we parse a command line option from pytest called (
--enable-remote-schema-permissions
) and the presence of this flag means that we need to run these tests. When the tests are run with this command line option, it's assumed that the server has enabled remote schema permissions.
Adding test support for a new backend
The current workflow for supporting a new backend in integration tests is as follows:
- Add functions to launch and cleanup a server for the new backend. Example.
- Augment
dev.sh
to support the new backend. Example. - Connect the GraphQL Engine to the database you've just launched. Example.
- Add setup and teardown files:
setup_<backend>
: forv1/query
or metadata queries such as<backend>_track_table
. Example.schema_setup_<backend>
: forv2/query
queries such as<backend>_run_sql
. Example.teardown_<backend>
andcleardb_<backend>
- Important: filename suffixes should be the same as the value that’s being passed to
—backend
; that's how the files are looked up.
- Specify a
backend
parameter for theper_backend_test_class
andper_backend_test_function
fixtures, parameterised by backend. Example.
Note: When teardown is not disabled (via skip_teardown
(*) , in which case, this phase is skipped entirely), teardown.yaml
always runs before schema_teardown.yaml
, even if the tests fail. See setup_and_teardown
in server/tests-py/conftest.py
for the full source code/logic.
(*): See setup_and_teardown_v1q
and setup_and_teardown_v2q
in conftest.py
for more details.
This means, for example, that if teardown.yaml
untracks a table, and schema_teardown.yaml
runs raw SQL to drop the table, both would succeed (assuming the table is tracked/exists).
Test suite naming convention The current convention is to indicate the backend(s) tests can be run against in the class name. For example:
TestGraphQLQueryBasicMSSQL
for tests that can only be run against a SQL Server backendTestGraphQLQueryBasicCommon
for tests that can be run against more than one backend- If a test class doesn't have a suffix specifying the backend, nor does its name end in
Common
, then it is likely a test written pre-v2.0 that can only be run on Postgres
This naming convention enables easier test filtering with pytest command line flags.
The backend-specific and common test suites are disjoint; for example, run pytest --integration -k "Common or MSSQL" --backend mssql
to run all MSSQL tests.
Note that --backend
does not interact with the selection of tests. You will generally have to combine --backend
with -k
.
Updating Python requirements
The packages/requirements are documented in two files:
server/tests-py/requirements-top-level.txt
server/tests-py/requirements.txt
The server/tests-py/requirements-top-level.txt
file is the main file. It
contains the direct dependencies along with version requirements we know
we should be careful about.
The server/tests-py/requirements.txt
file is the lock file. It holds
version numbers for all direct and transitive dependencies. This file
can be re-generated by:
- alter
server/tests-py/requirements-top-level.txt
- remove
server/tests-py/requirements.txt
- run
dev.sh test --integration
- update
DEVSH_VERSION
inscripts/dev.sh
to force reinstall these dependencies
Steps 3 can be done manually:
pip3 install -r requirements-top-level.txt
pip3 freeze > requirements.txt