ControlFlag: A Self-supervised Idiosyncratic Pattern Detection System for Software Control Structures

Loading...
Thumbnail Image
Penn collection
Machine Programming
Degree type
Discipline
Subject
Funder
Grant number
License
Copyright date
Distributor
Related resources
Author
Hasabnis, Niranjan
Contributor
Abstract

Software debugging has been shown to utilize upwards of 50% of developers’ time. Machine programming, the field concerned with the automation of software (and hardware) development, has recently made progress in both research and production-quality automated debugging systems. In this paper, we present ControlFlag, a system that detects possible idiosyncratic violations in software control structures. ControlFlag also suggests possible corrections in the event a true error is detected. A novelty of ControlFlag is that it is entirely self-supervised; that is, it requires no labels to learn about the potential idiosyncratic programming pattern violations. In addition to presenting ControlFlag’s design, we also provide an abbreviated experimental evaluation.

Advisor
Date of presentation
2020-01-01
Conference name
Machine Programming
Conference dates
2023-05-18T00:14:20.000
Conference location
Date Range for Data Collection (Start Date)
Date Range for Data Collection (End Date)
Digital Object Identifier
Series name and number
Volume number
Issue number
Publisher
Publisher DOI
Journal Issue
Comments
Recommended citation
Collection