【24h】

Automated Process Improvement: Status, Challenges, and Perspectives (Keynote Abstract)

机译:自动化流程改进:现状,挑战和观点(主题摘要)

获取原文

摘要

Business processes are the operational backbone of modern organizations. Their continuous management and improvement is key to the achievement of business objectives. Accordingly, a common task for managers and analysts is to discover, assess, and exploit process improvement opportunities. Current approaches to discover process improvement opportunities are expert-driven. In these approaches, data are used to assess opportunities derived from experience and intuition rather than to discover them in the first place. Moreover, as the assessment of opportunities is manual, analysts can only explore a fraction of the overall space of improvement opportunities. Recent advances in machine learning and artificial intelligence are making it possible to move from manual to automated (or semi-automated) approaches to business process improvement. This talk will present a vision for the emerging field of Al-driven automated process improvement. The talk will focus on three families of methods: (1) predictive process monitoring; (2) robotic process mining; and (3) search-based process optimization. Predictive process monitoring methods allow us to analyze ongoing executions of a process in order to predict future states and undesirable outcomes at runtime. These predictions can be used to trigger interventions in order to maximize a given reward function, for example by generating alerts or making recommendations to process workers. The talk will provide a taxonomy of the state of the art in this field, as well as open questions and possible research directions. Robotic process mining seeks to analyze logs generated by user interactions in order to discover repetitive routines (e.g. clerical routines) that are fully deterministic and can therefore be automated via Robotic Process Automation (RPA) scripts. These scripts are executed by software bots, with minimal user supervision, thus relieving workers from tedious and error-prone work. The talk will present initial results in the field of robotic process mining and discuss challenges and opportunities. Finally, the talk will introduce a gestating family of methods for search-based process optimization. These techniques rely on multi-objective optimization algorithms in conjunction with data-driven process simulation, in order to discover sets of changes to one or more business processes, which maximize one or more performance measures. The talk will present a framework for search-based process optimization and will sketch approaches that could be explored to realize the vision of a recommender system for process improvement.
机译:业务流程是现代组织的运营骨干。他们的持续管理和改进是实现业务目标的关键。因此,经理和分析师的共同任务是发现,评估和利用过程改进机会。当前发现过程改进机会的方法是专家驱动的。在这些方法中,数据用于评估从经验和直觉中获得的机会,而不是首先发现它们。此外,由于对机会的评估是手动的,因此分析人员只能探索改善机会的整体空间的一小部分。机器学习和人工智能的最新进展使从手动方法转变为自动化(或半自动化)方法来改进业务流程成为可能。该演讲将为铝驱动的自动化过程改进的新兴领域提供一个愿景。演讲将集中在三种方法上:(1)预测过程监控; (2)机器人过程挖掘; (3)基于搜索的流程优化。预测性过程监视方法使我们能够分析过程的正在进行的执行情况,以便预测运行时的未来状态和不良结果。这些预测可用于触发干预措施,以最大化给定的奖励功能,例如,通过生成警报或向加工工人提出建议。演讲将提供该领域的最新技术分类,以及未解决的问题和可能的研究方向。机器人流程挖掘旨在分析用户交互生成的日志,以发现完全确定性的重复例程(例如文书例程),因此可以通过机器人流程自动化(RPA)脚本进行自动化。这些脚本由软件漫游器执行,而无需用户监督,从而使工作人员免于繁琐且容易出错的工作。演讲将展示机器人过程挖掘领域的初步成果,并讨论挑战和机遇。最后,演讲将介绍基于搜索的流程优化的孕育方法。这些技术依赖于多目标优化算法以及数据驱动的流程模拟,以便发现对一个或多个业务流程的更改集,从而使一个或多个性能指标最大化。演讲将提供基于搜索的过程优化的框架,并将勾勒出可以探索的方法,以实现推荐程序系统以实现过程改进的愿景。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号