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Incremental inconsistency detection with low memory overhead

机译:低内存开销的增量不一致检测

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摘要

Ensuring models' consistency is a key concern when using a model-based development approach. Therefore, model inconsistency detection has received significant attention over the last years. To be useful, inconsistency detection has to be sound, efficient, and scalable. Incremental detection is one way to achieve efficiency in the presence of large models. In most of the existing approaches, incrementalization is carried out at the expense of the memory consumption that becomes proportional to the model size and the number of consistency rules. In this paper, we propose a new incremental inconsistency detection approach that only consumes a small and model size-independent amount of memory. It will therefore scale better to projects using large models and many consistency rules.
机译:使用基于模型的开发方法时,确保模型的一致性是一个关键问题。因此,模型不一致检测在最近几年受到了广泛的关注。为了有用,不一致检测必须合理,有效且可扩展。增量检测是在存在大型模型时实现效率的一种方法。在大多数现有方法中,增量化是以牺牲内存消耗为代价的,内存消耗与模型大小和一致性规则数量成正比。在本文中,我们提出了一种新的增量不一致性检测方法,该方法仅消耗少量且与模型大小无关的内存。因此,它将更适合使用大型模型和许多一致性规则的项目。

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