Data quality monitoring is critical to all experiments impacting the quality of any physics results. Traditionally, this is done through an alarm system, which detects low level faults, leaving higher level monitoring to human crews. Artificial Intelligence is beginning to find its way into scientific applications, but comes with difficulties, relying on the acquisition of new skill sets, either through education or acquisition, in data science. This paper will discuss the development and deployment of the Hydra monitoring system in production at Gluex. It will show how "off-the-shelf" technologies can be rapidly developed, as well as discuss what sociological hurdles must be overcome to successfully deploy such a system. Early results from production running of Hydra will also be shared as well as a future outlook for development of Hydra.
翻译:数据质量监测对于影响任何物理结果质量的所有实验都至关重要。 传统上,这是通过警报系统完成的,该系统探测到低水平的缺陷,使船员得到更高的监测。 人工智能开始进入科学应用,但遇到了困难,依靠通过教育或获取获得数据科学方面的新技能组合。本文件将讨论在Gluex生产过程中开发和部署九头蛇监测系统的问题。它将显示如何迅速开发“现成”技术,并讨论成功部署这种系统必须克服哪些社会障碍。海德拉生产运行的早期结果也将分享,以及水德拉的未来发展前景。