Important
This repository has been integrated with a new combined pre-award-stores.
This service provides an API for accessing the Access Funding Application Store.
This service depends on the following:
Testing in Python repos Further information on the test data used for transactional tests is contained here
As part of the application submission workflow, we use a FIFO AWS SQS to automate our application export to assessment.
We export the application as a 'fat' payload. This includes all application data (including metadata/attributes), this ensure assessment does not need to call application_store for additional information.
We can simulate an SQS locally when using our docker runner instance. Our docker runner uses localstack to simulate these AWS services, see here.
If messages are not consumed and deleted they will be move to the Dead-Letter_Queue, here we can inspect the message for faults and retry.
The SQS queues have a number of confiuration options, we are using the AWS SDK for Python (Boto3), see docs here.
There is an API endpoint on this service to send a submitted application to assessment:
```
/queue/{queue_name}/{application_id}
```
General instructions for local db development are available here: Local database development
Show count of applications by status for each round
select fund_id, round_id, status, count(status) from applications group by fund_id, status, round_id;
Total to be sent, by fund/round
select fund_id, round_id, count(id) from applications where status not in ('SUBMITTED') group by fund_id, round_id;
You can seed test data to use in the running application (separate to unit test data seeding). The seeding process needs a running fund-store to retrieve fund/round form section config, so it runs within the docker container for application-store within the docker runner. To run the seeding script:
- Make sure your local docker-runner is running
- Find the container ID of
application-store
by usingdocker ps
- Use docker exec to get into that container:
docker exec -it <container_id> bash
- Execute the script:
python scripts/seed_db_test_data.py
. You will be prompted for inputs: fund, round, account_id (the UUID not email address), the status of the seeded applications and how many to create.
Unit tests exist in test_seed_db. They are marked as skipped as they require a running fund-store to retrieve form config (no point in duplicating this for tests) so they won't run in the pipeline but are fine locally. If your local fund store runs on a non-standard port etc, edit the local_fund_store
fixture in that tests file. If you want to run the tests, just comment out the skip marker.
To seed applicaitons, we need the completed form json. If you have that, skip to the end of part 1 and put that form json into the required file.
- Get a submitted application into your local DB. You can either do this manually or by running the automated tests against your local docker runner.
- Find the
application_id
of that submitted application._ - Edit the tests file to un-skip
test_retrieve_test_data
and then settarget_app
to be theapplication_id
you just submitted. - Update your unit test config to point at the same DB as the docker runner. Update pytest.ini so that
D:DATABASE_URL
points at the docker runner application store db:D:DATABASE_URL=postgresql://postgres:postgres@127.0.0.1:5433/application_store # pragma: allowlist secret
- Run the single test
test_retrieve_test_data
- this should output the json of all the completed forms for that application into funding-service-design-store/forms.json. - Copy this file into seed_data and name it
<fund_short_code>_<round_short_code>_all_forms.json
. - IMPORTANT Change the config in pytest.ini back to what it was so you don't accidentally wipe your docker runner DB next time you run tests!
- In seed_db there is a constant called
FUND_CONFIG
- update this following the existing structure for your new fund/round (if it's a new round on an existing fund, just add it as another key torounds
item in that fund). You will need to know the name of the form that contains the field used to the name the application/project. - In the same file, update the
click.option
choice values for fund/round as required, to allow your new options. - Test it - update the unit tests to use this new config and check it works.
Details on how our pipelines work and the release process is available here
Paketo is used to build the docker image which gets deployed to our test and production environments. Details available here
When running the docker image generated with paketo, envs
needs to contain a value for each of the following:
ACCOUNT_STORE_API_HOST
FUND_STORE_API_HOST
SENTRY_DSN
GITHUB_SHA
DATABASE_URL
Copilot is used for infrastructure deployment. Instructions are available here, with the following values for the application store:
- service-name: fsd-application-store
- image-name: funding-service-design-application-store