Dynamic Prefetching of Data Tiles for Interactive Visualization

L. Battle, Remco Chang, M. Stonebraker
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引用次数: 157

Abstract

In this paper, we present ForeCache, a general-purpose tool for exploratory browsing of large datasets. ForeCache utilizes a client-server architecture, where the user interacts with a lightweight client-side interface to browse datasets, and the data to be browsed is retrieved from a DBMS running on a back-end server. We assume a detail-on-demand browsing paradigm, and optimize the back-end support for this paradigm by inserting a separate middleware layer in front of the DBMS. To improve response times, the middleware layer fetches data ahead of the user as she explores a dataset. We consider two different mechanisms for prefetching: (a) learning what to fetch from the user's recent movements, and (b) using data characteristics (e.g., histograms) to find data similar to what the user has viewed in the past. We incorporate these mechanisms into a single prediction engine that adjusts its prediction strategies over time, based on changes in the user's behavior. We evaluated our prediction engine with a user study, and found that our dynamic prefetching strategy provides: (1) significant improvements in overall latency when compared with non-prefetching systems (430% improvement); and (2) substantial improvements in both prediction accuracy (25% improvement) and latency (88% improvement) relative to existing prefetching techniques.
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交互式可视化中数据块的动态预取
在本文中,我们提出了一个用于探索性浏览大型数据集的通用工具ForeCache。ForeCache利用客户机-服务器体系结构,其中用户与轻量级客户机端接口交互以浏览数据集,要浏览的数据从后端服务器上运行的DBMS检索。我们假设一个按需详细浏览范例,并通过在DBMS前面插入一个单独的中间件层来优化对该范例的后端支持。为了改善响应时间,中间件层在用户浏览数据集之前获取数据。我们考虑了两种不同的预取机制:(a)学习从用户最近的运动中获取什么,以及(b)使用数据特征(例如,直方图)来查找与用户过去查看过的数据相似的数据。我们将这些机制整合到一个单一的预测引擎中,根据用户行为的变化,随着时间的推移调整其预测策略。我们通过用户研究评估了我们的预测引擎,发现我们的动态预取策略提供了:(1)与非预取系统相比,总体延迟显著改善(改善430%);(2)相对于现有的预取技术,预测精度(提高25%)和延迟(提高88%)都有了实质性的提高。
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