Inferring Behavioral Specifications from Large-scale Repositories by Leveraging Collective Intelligence

Hridesh Rajan, T. Nguyen, Gary T. Leavens, Robert Dyer
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引用次数: 10

Abstract

Despite their proven benefits, useful, comprehensible, and efficiently checkable specifications are not widely available. This is primarily because writing useful, non-trivial specifications from scratch is too hard, time consuming, and requires expertise that is not broadly available. Furthermore, the lack of specifications for widely-used libraries and frameworks, caused by the high cost of writing specifications, tends to have a snowball effect. Core libraries lack specifications, which makes specifying applications that use them expensive. To contain the skyrocketing development and maintenance costs of high assurance systems, this self-perpetuating cycle must be broken. The labor cost of specifying programs can be significantly decreased via advances in specification inference and synthesis, and this has been attempted several times, but with limited success. We believe that practical specification inference and synthesis is an idea whose time has come. Fundamental breakthroughs in this area can be achieved by leveraging the collective intelligence available in software artifacts from millions of open source projects. Fine-grained access to such data sets has been unprecedented, but is now easily available. We identify research directions and report our preliminary results on advances in specification inference that can be had by using such data sets to infer specifications.
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利用集体智慧从大规模存储库推断行为规范
尽管证明了它们的好处,但有用的、可理解的和可有效检查的规范并没有被广泛使用。这主要是因为从头开始编写有用的、重要的规范太困难、耗时,并且需要的专业知识并不广泛可用。此外,由于编写规范的高成本,广泛使用的库和框架缺乏规范,这往往会产生滚雪球效应。核心库缺乏规范,这使得指定使用它们的应用程序非常昂贵。为了控制高保证系统的开发和维护成本暴涨,必须打破这种自我延续的循环。指定程序的人工成本可以通过规范推断和合成的进步而显著降低,这已经尝试了几次,但成功有限。我们认为,实践规范推理和综合是一个时代已经到来的想法。这个领域的基本突破可以通过利用来自数百万个开源项目的软件工件中可用的集体智慧来实现。对这些数据集的细粒度访问是前所未有的,但现在很容易获得。我们确定了研究方向,并报告了我们在规范推断方面的进展的初步结果,这些进展可以通过使用这些数据集来推断规范。
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