管理预报工厂

Laura Bright, D. Maier, Bill Howe
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引用次数: 5

摘要

CORIE预测工厂由一组每天在专用本地资源上执行的数据产品生成运行组成。目标是最大限度地提高生产力和资源利用率,同时仍然确保及时完成所有预测。许多现有的工作流管理系统解决了低级别的工作流规范和执行挑战,但没有直接解决大规模数据产品工厂带来的高级挑战。在本文中,我们讨论了管理CORIE预测工厂的几个具体挑战,包括计划和调度、改进数据流和分析日志数据,并指出了它们在“物理”制造世界中的类似之处。我们提出了我们为应对这些挑战而实施的解决方案,并提出了显示这些解决方案的好处的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Managing the Forecast Factory
The CORIE forecast factory consists of a set of data product generation runs that are executed daily on dedicated local resources. The goal is to maximize productivity and resource utilization while still ensuring timely completion of all forecasts. Many existing workflow management systems address low-level workflow specification and execution challenges, but do not directly address the high-level challenges posed by large-scale data product factories. In this paper we discuss several specific challenges to managing the CORIE forecast factory including planning and scheduling, improving data flow, and analyzing log data, and point out their analogs in the "physical" manufacturing world. We present solutions we have implemented to address these challenges, and present experimental results that show the benefits of these solutions.
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