LGPFSEJun 3, 2020

Detecting and Understanding Real-World Differential Performance Bugs in Machine Learning Libraries

arXiv:2006.01991v127 citations
Originality Incremental advance
AI Analysis

This addresses performance issues in machine learning libraries for developers and users, though it is incremental as it builds on existing fuzzing and analysis techniques.

The paper tackles the problem of detecting and understanding performance bugs in machine learning libraries by developing a method based on differential performance analysis, which identifies inputs causing significant performance variations and provides explanations for these bugs. The approach outperforms state-of-the-art fuzzers in benchmarks and discovered multiple bugs in popular frameworks, with four being fixed by developers.

Programming errors that degrade the performance of systems are widespread, yet there is little tool support for analyzing these bugs. We present a method based on differential performance analysis---we find inputs for which the performance varies widely, despite having the same size. To ensure that the differences in the performance are robust (i.e. hold also for large inputs), we compare the performance of not only single inputs, but of classes of inputs, where each class has similar inputs parameterized by their size. Thus, each class is represented by a performance function from the input size to performance. Importantly, we also provide an explanation for why the performance differs in a form that can be readily used to fix a performance bug. The two main phases in our method are discovery with fuzzing and explanation with decision tree classifiers, each of which is supported by clustering. First, we propose an evolutionary fuzzing algorithm to generate inputs. For this fuzzing task, the unique challenge is that we not only need the input class with the worst performance, but rather a set of classes exhibiting differential performance. We use clustering to merge similar input classes which significantly improves the efficiency of our fuzzer. Second, we explain the differential performance in terms of program inputs and internals. We adapt discriminant learning approaches with clustering and decision trees to localize suspicious code regions. We applied our techniques to a set of applications. On a set of micro-benchmarks, we show that our approach outperforms state-of-the-art fuzzers in finding inputs to characterize the differential performance. On a set of case-studies, we discover and explain multiple performance bugs in popular machine learning frameworks. Four of these bugs, reported first in this paper, have since been fixed by the developers.

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