With the massive innovation that drives the digital market these days, organizations are continuing to develop features, as well as new test code to cover these features.
What I’ve learned is that often, the test code developers would not always stop and look back into their existing test suites and validate whether the new tests that are being developed are somehow a superset to existing ones. In addition, legacy tests are a continuous load and overhead on your SDLC cycles length if they are not being maintained over time.
Many Owners To The Same Problem
Since we live in an agile/DevQAOps world, test code development is not a QA only problem, but rather everyone3s. Tests are being executed throughout the pipeline from Dev to integration and pre/post production testing.
Use of smart tagging mechanism for your test scenarios (login), suites (App A) and types unit, regression) can be a good step towards gaining control over your tests.
Without some context, discipline, and continuous structured validation of the tests, it will become harder as you progress your SDLC to debug, analyze and solve defects (would be like finding the key in the below visual mess)
- Develop the tests with context, tags and proper annotations that would make sense to you and your team even 12 months from the development day. Make sure that in your execution reports you then have a way to filter using these annotations to only get the view of a given functional area, platform etc.
- Match your device under tests capabilities to the test code and application under test. Make sure that you focus e.g. your fingerprint based tests only on the devices that support it (API XX and above).
- Perform test code review every agreed upon time – in such review, group your feature specific test suites and try to optimize, merge, eliminate flakiness, identify missing coverage areas etc. It is harder to do it as the time progresses, so depending on your release cadence and test development maturity, set the right goals – more reviews would be better than less – it will also be shorter and more efficient that way since the delta between such review will be smaller.
- Drive joint Dev, Test, Product, Marketing decisions based on data – When you have the ability to get quality analysis from your entire test suites, it is recommended to gather all counter parts and brainstorm on the findings. Which tests are most effective, can we shrink based on the data the release cycles, are we missing tests for specific areas, are there platforms that are more buggies than others, which tests takes longer than others to finish etc.
- Optimize your CI and build-acceptance testing – based on the above intelligence, teams can reach data driven decision about what to include in their CI as well. Testing in the build cycle via CI should be fast, reliable with zero false positives. With quality insights on your tests, you can decide and certify the most valuable and fastest tests to get into this CI testing, and by that to shrink the overall process without risking coverage aspect.
A test is code, and like you refactor, maintain, retire and improve your code, you should do the same to your tests. Make sure to always be in control over your tests, and by that, gain control over your quality of your app in a continuous manner.