Front-end Testing & Coverage
Status: Accepted
Last Modified: 2023-07-19
Related Issue: 174
Deciders: Sammy Steiner, Lucas Brown, Billy Daly, Andy Cochran, Daphne Gold
Tags: ADR
Context and Problem Statement
Back-end testing is essential in maintaining a stable and healthy codebase, creating APIs without regression, and an important part of the developer workflow.
Decision Drivers
Robust: Chosen testing frameworks should have features that offer diverse ways of verifying back-end codebase functionality, reducing the need for intensive manual testing
Well-maintained: Accessible tooling is well-maintained by owners and keeps up with current ecosystems in which it will be integrated.
Ease of use: Achieving high coverage should be attainable. ICs should be able to onboard with the tooling and execute in a reasonable time frame to maintain that coverage.
Fast: Running tests shouldn't take ages.
Options Considered
Unit Testing
Pytest
Test Coverage
Coverage
Pros and Cons of the Options
The pytest framework makes it easy to write small, readable tests, and can scale to support complex functional testing for applications and libraries.
Pros
Lightweight, well-supported and documented testing solution
Already integrated in Flask back-end template
Modular fixtures for managing small or parametrized long-lived test resources
Can run unittest (including trial) and nose test suites out of the box
Rich plugin architecture, with over 800+ external plugins and thriving community
Cons
Compatibility issues with other testing frameworks means it's difficult to swap out for other frameworks
Coverage.py is a tool for measuring code coverage of Python programs. It monitors your program, noting which parts of the code have been executed, then analyzes the source to identify code that could have been executed but was not.
Pros
Fully automated
Cons
Code coverage is only one piece of a stable and healthy testing approach
Decision Outcome
Unit Testing
Pytest, because it is integrated into the Nava Flask template application, well-maintained, and lightweight. Importantly, documentation is thorough and helpful information for troubleshooting can be easily accessed.
Testing Coverage
Coverage, because it is integrated into the Nava Flask template application, well-maintained, and lightweight. Importantly, documentation is thorough and helpful information for troubleshooting can be easily accessed.
We added a code coverage threshold of %80 in api/pyproject.toml
Last updated