ChatGPT 在提升汽车售后业务流程的客户体验和效率方面的作用

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Applied System Innovation Pub Date : 2024-03-28 DOI:10.3390/asi7020029
Piotr Sliż
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引用次数: 0

摘要

目的:随着深度学习和人工智能技术的进步,2022 年,OpenAI 的 ChatGPT 等语言模型应运而生。本文的主要目的是深入研究 ChatGPT 在业务流程管理(BPM)领域的能力。这一探索需要分析其在汽车售后流程中的实际应用,特别是通过流程挖掘技术。原创性:本文强调了 ChatGPT 在汽车行业售后流程选定阶段的可能应用问题。方法:为实现本文的主要目的,采用了文献综述、参与观察、非结构化访谈、CRISP-DM 方法和流程挖掘等方法。研究结果:本研究强调了实施 ChatGPT OpenAI 工具对加强汽车售后行业流程的积极影响。研究于 2023 年进行,当时该工具刚刚推出不久,研究强调了该工具在提高售后领域客户满意度方面的潜力。调查的重点是流程执行时间。一个关键前提是,等待时间代表了客户寻求这些服务的额外成本。这项研究采用流程挖掘方法,找出了存在不必要延误的阶段。通过与领域专家的合作,为所研究的流程阶段确定基准持续时间。研究建议整合 ChatGPT 以改进和加快各阶段的工作,包括服务接待、接待结账、维修和维护以及索赔维修。这种整体方法符合当前业务流程改进和优化的需要,旨在提高汽车售后服务部门的运营效率和以客户为中心的服务交付。
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The Role of ChatGPT in Elevating Customer Experience and Efficiency in Automotive After-Sales Business Processes
Purpose: The advancements in deep learning and AI technologies have led to the development of such language models, in 2022, as OpenAI’s ChatGPT. The primary objective of this paper is to thoroughly examine the capabilities of ChatGPT within the realm of business-process management (BPM). This exploration entails analyzing its practical application, particularly through process-mining techniques, within the context of automotive after-sales processes. Originality: this article highlights the issue of possible ChatGPT application in selected stages of after-sales processes in the automotive sector. Methods: to achieve the main aim of this paper, methods such as a literature review, participant observation, unstructured interviews, CRISP-DM methodology, and process mining were used. Findings: This study emphasizes the promising impact of implementing the ChatGPT OpenAI tool to enhance processes in the automotive after-sales sector. Conducted in 2023, shortly after the tool’s introduction, the research highlights its potential to contribute to heightened customer satisfaction within the after-sales domain. The investigation focuses on the process-execution time. A key premise is that waiting time represents an additional cost for customers seeking these services. Employing process-mining methodologies, the study identifies stages characterized by unnecessary delays. Collaborative efforts with domain experts are employed to establish benchmark durations for researched processes’ stages. The study proposes the integration of ChatGPT to improve and expedite stages, including service reception, reception check-out, repair and maintenance, and claim repair. This holistic approach aligns with the current imperatives of business-process improvement and optimalization, aiming to enhance operational efficiency and customer-centric service delivery in the automotive after-sales sector.
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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