Evolutionary Generative Fuzzing for Differential Testing of the Kotlin Compiler
January 12, 2024 ยท Declared Dead ยท ๐ SIGSOFT FSE Companion
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Authors
Calin Georgescu, Mitchell Olsthoorn, Pouria Derakhshanfar, Marat Akhin, Annibale Panichella
arXiv ID
2401.06653
Category
cs.SE: Software Engineering
Citations
6
Venue
SIGSOFT FSE Companion
Last Checked
3 months ago
Abstract
Compiler correctness is a cornerstone of reliable software development. However, systematic testing of compilers is infeasible, given the vast space of possible programs and the complexity of modern programming languages. In this context, differential testing offers a practical methodology as it addresses the oracle problem by comparing the output of alternative compilers given the same set of programs as input. In this paper, we investigate the effectiveness of differential testing in finding bugs within the Kotlin compilers developed at JetBrains. We propose a black-box generative approach that creates input programs for the K1 and K2 compilers. First, we build workable models of Kotlin semantic (semantic interface) and syntactic (enriched context-free grammar) language features, which are subsequently exploited to generate random code snippets. Second, we extend random sampling by introducing two genetic algorithms (GAs) that aim to generate more diverse input programs. Our case study shows that the proposed approach effectively detects bugs in K1 and K2; these bugs have been confirmed and (some) fixed by JetBrains developers. While we do not observe a significant difference w.r.t. the number of defects uncovered by the different search algorithms, random search and GAs are complementary as they find different categories of bugs. Finally, we provide insights into the relationships between the size, complexity, and fault detection capability of the generated input programs.
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