Business Process Automation using Robotic Process Automation (RPA) and AI Algorithm’s on Various Tasks

M. N. Dandale, Mazharunnisa, D. J. J. D. Daniel, R. Priya, Md. Abul Ala Walid, Thulasimani T
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引用次数: 1

Abstract

Robotic Process Automation (RPA) bots automate mundane, rules-based operations, allowing workers more time to focus on high-level, strategic projects. Meanwhile, AI be used to analyze data and spot trends, resulting in better choices and increased productivity for enterprises. Previous researches are less efficient, slowly working algorithms when classification is performed in a large set of databases. The existing methods could be doing better while comparing the error factors, and in the cross-verification process, they have made inappropriate results, leading to wrong classifications. Robotic Process Automation (RPA) bots automate mundane, rules-based operations, allowing workers more time to focus on high-level, strategic projects. Meanwhile, AI be used to analyze data and spot trends, resulting in better choices and increased productivity for enterprises. Previous research on email automation and invoice process automation have needed to improve classification model efficiency and they have less efficient, slowly working algorithms when doing classification in a large set of databases. In this work, the Random Forest algorithm is used for classification, and the Quest method is used to segment texts in emails and invoices, both of which can be automated more effectively. The results of existing categorization algorithms have been less than ideal, especially when used to huge datasets, and are often completely inaccurate. The suggested method outperforms previous ML/AI approaches because it produces highly accurate outcomes with little resource investment. There are a number of benefits to utilizing RPA with AI, such as cost reduction, increased output, and streamlined operations. The advantages of this automation, challenges that must be met, and potential answers to those questions are discussed in this study.
在各种任务中使用机器人过程自动化(RPA)和人工智能算法的业务流程自动化
机器人流程自动化(RPA)机器人将日常的、基于规则的操作自动化,让员工有更多的时间专注于高层次的、战略性的项目。同时,人工智能可以用于分析数据和发现趋势,从而为企业提供更好的选择和提高生产力。以前的研究是效率较低的,当在大的数据库集中进行分类时,算法运行缓慢。现有的方法在比较误差因素时可以做得更好,但在交叉验证过程中,得出了不合适的结果,导致了错误的分类。机器人流程自动化(RPA)机器人将日常的、基于规则的操作自动化,让员工有更多的时间专注于高层次的、战略性的项目。同时,人工智能可以用于分析数据和发现趋势,从而为企业提供更好的选择和提高生产力。以往在电子邮件自动化和发票流程自动化方面的研究都需要提高分类模型的效率,而且当在大数据库中进行分类时,它们的算法效率较低,运行速度较慢。在这项工作中,使用随机森林算法进行分类,使用Quest方法对电子邮件和发票中的文本进行分割,这两种方法都可以更有效地自动化。现有的分类算法的结果不太理想,特别是当用于庞大的数据集时,往往是完全不准确的。建议的方法优于以前的ML/AI方法,因为它以很少的资源投入产生高度准确的结果。将RPA与AI结合使用有很多好处,比如降低成本、增加产量和简化操作。本研究讨论了自动化的优点、必须面对的挑战以及这些问题的潜在答案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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