Replicable Gmbs: a Tool for the Speciication of Collaborative Systems Replicable Gmbs: a Tool for the Speciication of Collaborative Systems
نویسنده
چکیده
Collaborative systems' speciications are complex, due to dynamically changing application structure (as users join and leave the session), concurrency, and interaction in multiuser interfaces. There are few speciication development methods to support these issues. We propose a method and high-level formal languages to specify reconngurable structure and behavior for collaborative systems. The method divides a speciication in several relatively simple, related components. Main languages used are an extension to the UCLA's Graph Model of Behavior (GMB) and Z. This paper presents the method using a case study of a collaborative spreadsheet whose implementation is partially based in the method.
منابع مشابه
Replicable Gmbs: a Tool for the Speciication of Collaborative Systems
Collaborative systems' speciications are complex, due to dynamically changing application structure (as users join and leave the session), concurrency, and interaction in multiuser interfaces. There are few speciication development methods to support these issues. We propose a method and high-level formal languages to specify reconngurable structure and behavior for collaborative systems. The m...
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