Testing

Integration and Regression Tests

Learning Objectives

  • Understand the purpose of integration and regression tests
  • Understand how to implement an integration test

Integration Tests

You can think of a software project like a clock. Functions and classes are the gears and cogs that make up the system. On their own, they can be of the highest quality. Unit tests verify that each gear is well made. However, the clock still needs to be put together. The gears need to fit with one another.

Because they deal with gluing code together, there are typically fewer integration tests in a test suite than there are unit tests. However, integration tests are no less important. Integration tests are essential for having adequate testing. They encompass all of the cases that you cannot hit through plain unit testing.

Sometimes, especially in probabilistic or stochastic codes, the precise behavior of an integration test cannot be determined beforehand. That is OK. In these situations it is acceptable for integration tests to verify average or aggregate behavior rather than exact values. Sometimes you can mitigate nondeterminism by saving seed values to a random number generator, but this is not always going to be possible. It is better to have an imperfect integration test than no integration test at all.

As a simple example, consider the three functions a(), b(), and c(). The a() function adds one to a number, b() multiplies a number by two, and c() composes them. These functions are defined as follows:

def a(x):
    return x + 1

def b(x):
    return 2 * x

def c(x):
    return b(a(x))

The a() and b() functions can each be unit tested because they each do one thing. However, c() cannot be truly unit tested because all of the real work is farmed out to a() and b(). Testing c() will be a test of whether a() and b() can be integrated together.

Integration tests still follow the pattern of comparing expected results to observed results. A sample test_c() is implemented here:

from nose.tools import assert_equal

from mod import c

def test_c():
    exp = 6
    obs = c(2)
    assert_equal(exp, obs)

Given the lack of clarity in what is defined as a code unit, what is considered an integration test is also a little fuzzy. Integration tests can range from the extremely simple (like the one just shown) to the very complex. A good delimiter, though, is in opposition to the unit tests. If a function or class only combines two or more unit-tested pieces of code, then you need an integration test. If a function implements new behavior that is not otherwise tested, you need a unit test.

The structure of integration tests is very similar to that of unit tests. There is an expected result, which is compared against the observed value. However, what goes in to creating the expected result or setting up the code to run can be considerably more complicated and more involved. Integration tests can also take much longer to run because of how much more work they do. This is a useful classification to keep in mind while writing tests. It helps separate out which test should be easy to write (unit) and which ones may require more careful consideration (integration).

Integration tests, however, are not the end of the story.

Regression Tests

Regression tests are qualitatively different from both unit and integration tests. Rather than assuming that the test author knows what the expected result should be, regression tests look to the past for the expected behavior. The expected result is taken as what was previously computed for the same inputs.

Like integration tests, regression tests tend to be high level. They often operate on an entire code base. They are particularly common and useful for physics simulators.

A common regression test strategy spans multiple code versions. Suppose there is an input file for version X of a simulator. We can run the simulation and then store the output file for later use, typically somewhere accessible online. While version Y is being developed, the test suite will automatically download the output for version X, run the same input file for version Y, and then compare the two output files. If anything is significantly different between them, the test fails.

In the event of a regression test failure, the onus is on the current developers to explain why. Sometimes there are backward-incompatible changes that had to be made. The regression test failure is thus justified, and a new version of the output file should be uploaded as the version to test against. However, if the test fails because the physics is wrong, then the developer should fix the latest version of the code as soon as possible.

Regression tests can and do catch failures that integration and unit tests miss. Regression tests act as an automated short-term memory for a project. Unfortunately, each project will have a slightly different approach to regression testing based on the needs of the software. Testing frameworks provide tools to help with building regression tests but do not offer any sophistication beyond what has already been seen in this chapter.

Depending on the kind of project, regression tests may or may not be needed. They are only truly needed if the project is a simulator. Having a suite of regression tests that cover the range of physical possibilities is vital to ensuring that the simulator still works. In most other cases, you can get away with only having unit and integration tests.

While more test classifications exist for more specialized situations, we have covered what you will need to know for almost every situation in computational physics.

Key Points

  • Integration tests interrogate the coopration of pieces of the software
  • Regression tests use past behavior as the expected result