Arcan: A tool for architectural smells detection

Autor: Elisabetta Di Nitto, Damian A. Tamburri, Ilaria Pigazzini, Marco Zanoni, Riccardo Roveda, Francesca Arcelli Fontana
Přispěvatelé: ARCELLI FONTANA, F, Pigazzini, I, Roveda, R, Tamburri, D, Zanoni, M, Nitto, E
Jazyk: angličtina
Rok vydání: 2017
Předmět:
Zdroj: ICSA Workshops
Popis: Code smells are sub-optimal coding circumstances such as blob classes or spaghetti code - they have received much attention and tooling in recent software engineering research. Higher-up in the abstraction level, architectural smells are problems or sub-optimal architectural patterns or other design-level characteristics. These have received significantly less attention even though they are usually considered more critical than code smells, and harder to detect, remove, and refactor. This paper describes an open-source tool called Arcan developed for the detection of architectural smells through an evaluation of several different architecture dependency issues. The detection techniques inside Arcan exploit graph database technology, allowing for high scalability in smells detection and better management of large amounts of dependencies of multiple kinds. In the scope of this paper, we focus on the evaluation of Arcan results carried out with real-life software developers to check if the architectural smells detected by Arcan are really perceived as problems and to get an overall usefulness evaluation of the tool.
Databáze: OpenAIRE