1 research outputs found
On Learning Meaningful Assert Statements for Unit Test Cases
Software testing is an essential part of the software lifecycle and requires
a substantial amount of time and effort. It has been estimated that software
developers spend close to 50% of their time on testing the code they write. For
these reasons, a long standing goal within the research community is to
(partially) automate software testing. While several techniques and tools have
been proposed to automatically generate test methods, recent work has
criticized the quality and usefulness of the assert statements they generate.
Therefore, we employ a Neural Machine Translation (NMT) based approach called
Atlas(AuTomatic Learning of Assert Statements) to automatically generate
meaningful assert statements for test methods. Given a test method and a focal
method (i.e.,the main method under test), Atlas can predict a meaningful assert
statement to assess the correctness of the focal method. We applied Atlas to
thousands of test methods from GitHub projects and it was able to predict the
exact assert statement manually written by developers in 31% of the cases when
only considering the top-1 predicted assert. When considering the top-5
predicted assert statements, Atlas is able to predict exact matches in 50% of
the cases. These promising results hint to the potential usefulness ofour
approach as (i) a complement to automatic test case generation techniques, and
(ii) a code completion support for developers, whocan benefit from the
recommended assert statements while writing test code