
TL;DR
This paper introduces a supervised learning approach to predict test traces from static features, reducing the cost of obtaining traces and enabling efficient use in troubleshooting without executing tests.
Contribution
It presents a novel method to predict test traces using static properties and past data, eliminating the need for costly test execution to obtain traces.
Findings
Prediction quality is reasonable on real-world projects.
Using predicted traces in LDP yields similar results to real traces.
Reduces overhead in test trace acquisition.
Abstract
Modern software projects include automated tests written to check the programs' functionality. The set of functions invoked by a test is called the trace of the test, and the action of obtaining a trace is called tracing. There are many tracing tools since traces are useful for a variety of software engineering tasks such as test generation, fault localization, and test execution planning. A major drawback in using test traces is that obtaining them, i.e., tracing, can be costly in terms of computational resources and runtime. Prior work attempted to address this in various ways, e.g., by selectively tracing only some of the software components or compressing the trace on-the-fly. However, all these approaches still require building the project and executing the test in order to get its (partial, possibly compressed) trace. This is still very costly in many cases. In this work, we…
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Taxonomy
TopicsSoftware Engineering Research · Software Testing and Debugging Techniques · Software System Performance and Reliability
