有可能
背景(考古学)
2019年冠状病毒病(COVID-19)
德尔菲法
供应链
计算机科学
过程(计算)
透视图(图形)
政府(语言学)
过程管理
人工智能
知识管理
管理科学
业务
营销
工程类
古生物学
语言学
哲学
病理
传染病(医学专业)
医学
心理学
疾病
心理治疗师
生物
操作系统
作者
Kirti Nayal,Rakesh D. Raut,Maciel M. Queiroz,Vinay Surendra Yadav,Balkrishna E. Narkhede
标识
DOI:10.1108/ijlm-01-2021-0002
摘要
Purpose This article aims to model the challenges of implementing artificial intelligence and machine earning (AI-ML) for moderating the impacts of COVID-19, considering the agricultural supply chain (ASC) in the Indian context. Design/methodology/approach 20 critical challenges were modeled based on a comprehensive literature review and consultation with experts. The hybrid approach of “Delphi interpretive structural modeling (ISM)-Fuzzy Matrice d' Impacts Croises Multiplication Applique'e à un Classement (MICMAC) − analytical network process (ANP)” was used. Findings The study's outcome indicates that “lack of central and state regulations and rules” and “lack of data security and privacy” are the crucial challenges of AI-ML implementation in the ASC. Furthermore, AI-ML in the ASC is a powerful enabler of accurate prediction to minimize uncertainties. Research limitations/implications This study will help stakeholders, policymakers, government and service providers understand and formulate appropriate strategies to enhance AI-ML implementation in ASCs. Also, it provides valuable insights into the COVID-19 impacts from an ASC perspective. Besides, as the study was conducted in India, decision-makers and practitioners from other geographies and economies must extrapolate the results with due care. Originality/value This study is one of the first that investigates the potential of AI-ML in the ASC during COVID-19 by employing a hybrid approach using Delphi-ISM-Fuzzy-MICMAC-ANP.
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