PrefetchML: a framework for prefetching and caching models

Gwendal Daniel, G. Sunyé, Jordi Cabot
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引用次数: 10

Abstract

Prefetching and caching are well-known techniques integrated in database engines and file systems in order to speed-up data access. They have been studied for decades and have proven their efficiency to improve the performance of I/O intensive applications. Existing solutions do not fit well with scalable model persistence frameworks because the prefetcher operates at the data level, ignoring potential optimizations based on the information available at the metamodel level. Furthermore, prefetching components are common in relational databases but typically missing (or rather limited) in NoSQL databases, a common option for model storage nowadays. To overcome this situation we propose PrefetchML, a framework that executes prefetching and caching strategies over models. Our solution embeds a DSL to precisely configure the prefetching rules to follow. Our experiments show that PrefetchML provides a significant execution time speedup. Tool support is fully available online.
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PrefetchML:一个用于预取和缓存模型的框架
预取和缓存是众所周知的集成在数据库引擎和文件系统中的技术,目的是加速数据访问。它们已经被研究了几十年,并且已经证明了它们在提高I/O密集型应用程序的性能方面的效率。现有的解决方案不能很好地适应可伸缩的模型持久性框架,因为预取器在数据级操作,忽略了基于元模型级可用信息的潜在优化。此外,预取组件在关系数据库中很常见,但在NoSQL数据库中通常没有(或者相当有限),这是目前模型存储的一个常见选项。为了克服这种情况,我们提出了PrefetchML,这是一个在模型上执行预取和缓存策略的框架。我们的解决方案嵌入了一个DSL来精确地配置要遵循的预取规则。我们的实验表明,PrefetchML提供了显着的执行时间加速。工具支持完全在线提供。
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