Bugs in code continue to pose a fundamental problem for software reliability and cause expensive failures. The process of removing known bugs is termed debugging, which is a classic methodology commonly performed before code is deployed. Traditionally, debugging is tedious, often requiring much manual effort. A more recent technique that complements debugging is data structure repair, which handles bugs that make it to deployed systems and lead to erroneous behavior at runtime by modifying erroneous program states to recover from errors. While data structure repair presents a promising basis for dealing with bugs at runtime, it remains computationally expensive. Our thesis is that debugging and data structure repair can be integrated to provide the basis of an effective approach for removing bugs before code is deployed and handling them after it is deployed. We present a bi-directional integration where ideas at the basis of data structure repair assist in automating debugging and vice versa. Our key insight is two-fold: (1)a repair action performed to mutate an erroneous object field value to repair it can be abstracted into a program statement that performs that update correctly; and (2)repair actions that are performed repeatedly to fix the same error can be memoized and re-used. We design, develop, and evaluate two techniques that embody our insight. One, we present an automated debugging technique that leverages a systematic constraint-based data structure repair technique developed in previous work and provides suggestions on how to fix a faulty program. Two, we present repair abstractions that are based on the same central ideas as in our automated debugging technique and memoize how an erroneous state was repaired, which enables prioritizing and re-using repair actions when the same error occurs again. The focus of our work is programs that operate on structurally complex data, e.g., heap-allocated data structures that have complex structural integrity constraints, such as acyclicity. Checking such constraints plays a central role in the techniques that lay at the foundation of our work. These techniques require the user to provide the constraints, which poses a burden on the user. To facilitate the use of constraint-based techniques, we present a third technique to check constraint violations at runtime using graph spectra, which have been studied extensively by mathematicians to capture properties of graphs. We view the heap of an object-oriented program as an edge-labeled graph, which allows us to apply results from graph spectra theory. Experimental results show the effectiveness of using graph spectra as a basis of capturing structural properties of a class of commonly used data structures. / text
Identifer | oai:union.ndltd.org:UTEXAS/oai:repositories.lib.utexas.edu:2152/26034 |
Date | 19 September 2014 |
Creators | Malik, Muhammad Zubair |
Source Sets | University of Texas |
Language | English |
Detected Language | English |
Type | Thesis |
Format | application/pdf |
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