5 research outputs found

    Assisting Software Developers With License Compliance

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    Open source licensing determines how open source systems are reused, distributed, and modified from a legal perspective. While it facilitates rapid development, it can present difficulty for developers in understanding due to the legal language of these licenses. Because of misunderstandings, systems can incorporate licensed code in a way that violates the terms of the license. Such incompatibilities between licensing can result in the inability to reuse a particular library without either relicensing the system or redesigning the architecture of the system. Prior efforts have predominantly focused on license identification or understanding the underlying phenomena without reasoning about compatibility in a broad scale. The work in this dissertation first investigates the rationale of developers and identifies the areas that developers struggle with respect to free/open source software licensing. First, we investigate the diffusion of licenses and the prevalence of license changes in a large scale empirical study of 16,221 Java systems. We observed a clear lack of traceability and a lack of standardized licensing that led to difficulties and confusion for developers trying to reuse source code. We further investigated the difficulty by surveying the developers of the systems with license changes to understand why they first adopted a license and then changed licenses. Additionally, we performed an analysis on issue trackers and legal mailing lists to extract licensing bugs. From these works, we identified key areas in which developers struggled and needed support. While developers need support to identify license incompatibilities and understand both the cause and implications of the incompatibilities, we observed that state-of-the-art license identification tools did not identify license exceptions. Since these exceptions directly modify the license terms (either the permissions granted by the license or the restrictions imposed by the license), we proposed an approach to complement current license identification techniques in order to classify license exceptions. The approach relies on supervised machine learners to classify the licensing text to identify the particular license exceptions or the lack of a license exception. Subsequently, we built an infrastructure to assist developers with evaluating license compliance warnings for their system. The infrastructure evaluates compliance across the dependency tree of a system to ensure it is compliant with all of the licenses of the dependencies. When an incompatibility is present, it notes the specific library/libraries and the conflicting license(s) so that the developers can investigate these compliance warnings, which would prevent distribution of their software, in their system. We conduct a study on 121,094 open source projects spanning 6 programming languages, and we demonstrate that the infrastructure is able to identify license incompatibilities between these projects and their dependencies

    Automatically Discovering, Reporting and Reproducing Android Application Crashes

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    Mobile developers face unique challenges when detecting and reporting crashes in apps due to their prevailing GUI event-driven nature and additional sources of inputs (e.g., sensor readings). To support developers in these tasks, we introduce a novel, automated approach called CRASHSCOPE. This tool explores a given Android app using systematic input generation, according to several strategies informed by static and dynamic analyses, with the intrinsic goal of triggering crashes. When a crash is detected, CRASHSCOPE generates an augmented crash report containing screenshots, detailed crash reproduction steps, the captured exception stack trace, and a fully replayable script that automatically reproduces the crash on a target device(s). We evaluated CRASHSCOPE's effectiveness in discovering crashes as compared to five state-of-the-art Android input generation tools on 61 applications. The results demonstrate that CRASHSCOPE performs about as well as current tools for detecting crashes and provides more detailed fault information. Additionally, in a study analyzing eight real-world Android app crashes, we found that CRASHSCOPE's reports are easily readable and allow for reliable reproduction of crashes by presenting more explicit information than human written reports.Comment: 12 pages, in Proceedings of 9th IEEE International Conference on Software Testing, Verification and Validation (ICST'16), Chicago, IL, April 10-15, 2016, pp. 33-4

    Are unreachable methods harmful? Results from a controlled experiment

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    In this paper, we present the results of a controlled experiment conducted to assess whether the presence of unreachable methods in source code affects source code comprehensibility and modifiability. A total of 47 undergraduate students at the University of Basilicata participated in this experiment. We divided the participants in two groups. The participants in the first group were asked to comprehend code base containing unreachable methods and implement five change requests in that code base. The participants in the second group were asked to accomplish exactly the same tasks as the participants in the first group, however, the source code provided to them did not contain any unreachable methods. The results of the study indicate that code comprehensibility is significantly higher when source code does not contain unreachable methods. However, we did not observe a statistically significant difference for code modifiability. From these results, we distill lessons and implications for practitioners as well as possible avenues for further research
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