The AutoProof Verifier: Usability by Non-Experts and on Standard Code
August 17, 2015 Β· Declared Dead Β· π F-IDE
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Authors
Carlo A. Furia, Christopher M. Poskitt, Julian Tschannen
arXiv ID
1508.03895
Category
cs.SE: Software Engineering
Cross-listed
cs.HC,
cs.LO
Citations
16
Venue
F-IDE
Last Checked
4 months ago
Abstract
Formal verification tools are often developed by experts for experts; as a result, their usability by programmers with little formal methods experience may be severely limited. In this paper, we discuss this general phenomenon with reference to AutoProof: a tool that can verify the full functional correctness of object-oriented software. In particular, we present our experiences of using AutoProof in two contrasting contexts representative of non-expert usage. First, we discuss its usability by students in a graduate course on software verification, who were tasked with verifying implementations of various sorting algorithms. Second, we evaluate its usability in verifying code developed for programming assignments of an undergraduate course. The first scenario represents usability by serious non-experts; the second represents usability on "standard code", developed without full functional verification in mind. We report our experiences and lessons learnt, from which we derive some general suggestions for furthering the development of verification tools with respect to improving their usability.
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