Pattern-Based Peephole Optimizations with Java JIT Tests
March 17, 2024 Β· Declared Dead Β· π International Symposium on Software Testing and Analysis
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Authors
Zhiqiang Zang, Aditya Thimmaiah, Milos Gligoric
arXiv ID
2403.11283
Category
cs.SE: Software Engineering
Cross-listed
cs.PL
Citations
2
Venue
International Symposium on Software Testing and Analysis
Last Checked
4 months ago
Abstract
We present JOG, a framework that facilitates developing Java JIT peephole optimizations alongside JIT tests. JOG enables developers to write a pattern, in Java itself, that specifies desired code transformations by writing code before and after the optimization, as well as any necessary preconditions. Such patterns can be written in the same way that tests of the optimization are already written in OpenJDK. JOG translates each pattern into C/C++ code that can be integrated as a JIT optimization pass. JOG also generates Java tests for optimizations from patterns. Furthermore, JOG can automatically detect possible shadow relation between a pair of optimizations where the effect of the shadowed optimization is overridden by another. Our evaluation shows that JOG makes it easier to write readable JIT optimizations alongside tests without decreasing the effectiveness of JIT optimizations. We wrote 162 patterns, including 68 existing optimizations in OpenJDK, 92 new optimizations adapted from LLVM, and two new optimizations that we proposed. We opened eight pull requests (PRs) for OpenJDK, including six for new optimizations, one on removing shadowed optimizations, and one for newly generated JIT tests; seven PRs have already been integrated into the master branch of OpenJDK.
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