SEAug 10, 2020

A Scalable Querying Scheme for Memory-efficient Runtime Models with History

arXiv:2008.04230v2
Originality Incremental advance
AI Analysis

This addresses a lack of sophisticated technology for runtime models with history, offering incremental improvements for model-driven engineering in adaptive systems.

The paper tackles the problem of scalable and memory-efficient querying for runtime models with history, presenting a scheme that integrates temporal requirements with incremental queries to enable efficient history-aware self-adaptation, with an implementation provided.

Runtime models provide a snapshot of a system at runtime at a desired level of abstraction. Via a causal connection to the modeled system and by employing model-driven engineering techniques, runtime models support schemes for (runtime) adaptation where data from previous snapshots facilitates more informed decisions. Nevertheless, although runtime models and model-based adaptation techniques have been the focus of extensive research, schemes that treat the evolution of the model over time as a first-class citizen have only lately received attention. Consequently, there is a lack of sophisticated technology for such runtime models with history. We present a querying scheme where the integration of temporal requirements with incremental model queries enables scalable querying for runtime models with history. Moreover, our scheme provides for a memory-efficient storage of such models. By integrating these two features into an adaptation loop, we enable efficient history-aware self-adaptation via runtime models, of which we present an implementation.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes