Optimizing Structured Data Processing through Robotic Process Automation
- URL: http://arxiv.org/abs/2408.14791v3
- Date: Thu, 31 Oct 2024 12:23:42 GMT
- Title: Optimizing Structured Data Processing through Robotic Process Automation
- Authors: Vivek Bhardwaj, Ajit Noonia, Sandeep Chaurasia, Mukesh Kumar, Abdulnaser Rashid, Mohamed Tahar Ben Othman,
- Abstract summary: This study investigates the use of RPA for structured data extraction and evaluates its advantages over manual processes.
By comparing human-performed tasks with those executed by RPA software bots, we assess efficiency and accuracy in data extraction from invoices.
Our findings highlight the significant efficiency gains achieved by RPA, with bots completing tasks in significantly less time compared to manual efforts.
- Score: 2.3997896447030653
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Robotic Process Automation (RPA) has emerged as a game-changing technology in data extraction, revolutionizing the way organizations process and analyze large volumes of documents such as invoices, purchase orders, and payment advices. This study investigates the use of RPA for structured data extraction and evaluates its advantages over manual processes. By comparing human-performed tasks with those executed by RPA software bots, we assess efficiency and accuracy in data extraction from invoices, focusing on the effectiveness of the RPA system. Through four distinct scenarios involving varying numbers of invoices, we measure efficiency in terms of time and effort required for task completion, as well as accuracy by comparing error rates between manual and RPA processes. Our findings highlight the significant efficiency gains achieved by RPA, with bots completing tasks in significantly less time compared to manual efforts across all cases. Moreover, the RPA system consistently achieves perfect accuracy, mitigating the risk of errors and enhancing process reliability. These results underscore the transformative potential of RPA in optimizing operational efficiency, reducing human labor costs, and improving overall business performance.
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