Andrew Ifesinachi, Enoch Oluwademilade Sodiya, Boma Sonimitiem Jacks, Ejike David Ugwuanyi, Mojisola Abimbola Adeyinka, Uchenna Joseph Umoga, Andrew Ifesinachi Daraojimba, Oluwaseun Augustine Lottu
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The application of predictive analytics, powered by machine learning algorithms, allows supply chain professionals to forecast demand more accurately, identify potential disruptions, and optimize inventory levels. This not only improves overall efficiency but also reduces costs and minimizes the risk of stockouts or overstock situations. Furthermore, the integration of AI-driven automation in supply chain management has streamlined routine tasks, such as order processing, inventory replenishment, and route optimization. This automation not only accelerates processes but also mitigates the risk of human errors, enhancing overall reliability. The ability of AI to continuously learn from historical data and adapt to evolving market conditions contributes to a more agile and responsive supply chain ecosystem. In the context of supply chain risk management, AI and ML play a pivotal role in identifying vulnerabilities and providing proactive strategies to mitigate potential disruptions. Sentiment analysis and predictive modeling enable organizations to assess geopolitical, economic, and environmental factors, thereby enhancing the resilience of their supply chains. However, the adoption of AI and ML in supply chain analytics is not without challenges. This review explores the ethical considerations, data security concerns, and the need for skilled personnel in managing these advanced technologies. Additionally, it delves into the importance of explainability and transparency in AI-driven decision-making processes, emphasizing the need for a balance between automation and human oversight. 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引用次数: 0
摘要
人工智能(AI)和机器学习(ML)在供应链分析中的整合已成为重塑传统物流和运营的变革力量。本综述批判性地研究了人工智能和 ML 在优化供应链流程、提高决策能力以及在动态市场需求时代促进灵活性方面的多方面作用。人工智能和 ML 技术能够从庞大而复杂的数据集中提取可行的见解,从而彻底改变了数据分析。在机器学习算法的支持下,预测分析的应用使供应链专业人员能够更准确地预测需求、识别潜在的干扰并优化库存水平。这不仅能提高整体效率,还能降低成本,最大限度地减少缺货或库存过剩的风险。此外,将人工智能驱动的自动化整合到供应链管理中,简化了订单处理、库存补充和路线优化等常规任务。这种自动化不仅加快了流程,还降低了人为错误的风险,提高了整体可靠性。人工智能能够不断从历史数据中学习,并适应不断变化的市场条件,有助于建立一个更加灵活、反应更快的供应链生态系统。在供应链风险管理方面,人工智能和 ML 在识别漏洞和提供前瞻性战略以减轻潜在干扰方面发挥着举足轻重的作用。情感分析和预测建模使企业能够评估地缘政治、经济和环境因素,从而提高供应链的复原力。然而,在供应链分析中采用人工智能和 ML 并非没有挑战。本综述探讨了管理这些先进技术的道德考虑因素、数据安全问题以及对熟练人员的需求。此外,它还深入探讨了人工智能驱动的决策过程中可解释性和透明度的重要性,强调了在自动化和人工监督之间保持平衡的必要性。本综述强调了人工智能和 ML 对供应链分析的变革性影响,强调了它们在日益复杂多变的商业环境中革新传统做法、提高效率和增强应变能力的潜力。
Reviewing the role of AI and machine learning in supply chain analytics
The integration of Artificial Intelligence (AI) and Machine Learning (ML) in supply chain analytics has emerged as a transformative force in reshaping traditional logistics and operations. This review critically examines the multifaceted role of AI and ML in optimizing supply chain processes, enhancing decision-making capabilities, and fostering agility in an era of dynamic market demands. AI and ML technologies have revolutionized data analytics by enabling the extraction of actionable insights from vast and complex datasets. The application of predictive analytics, powered by machine learning algorithms, allows supply chain professionals to forecast demand more accurately, identify potential disruptions, and optimize inventory levels. This not only improves overall efficiency but also reduces costs and minimizes the risk of stockouts or overstock situations. Furthermore, the integration of AI-driven automation in supply chain management has streamlined routine tasks, such as order processing, inventory replenishment, and route optimization. This automation not only accelerates processes but also mitigates the risk of human errors, enhancing overall reliability. The ability of AI to continuously learn from historical data and adapt to evolving market conditions contributes to a more agile and responsive supply chain ecosystem. In the context of supply chain risk management, AI and ML play a pivotal role in identifying vulnerabilities and providing proactive strategies to mitigate potential disruptions. Sentiment analysis and predictive modeling enable organizations to assess geopolitical, economic, and environmental factors, thereby enhancing the resilience of their supply chains. However, the adoption of AI and ML in supply chain analytics is not without challenges. This review explores the ethical considerations, data security concerns, and the need for skilled personnel in managing these advanced technologies. Additionally, it delves into the importance of explainability and transparency in AI-driven decision-making processes, emphasizing the need for a balance between automation and human oversight. This review underscores the transformative impact of AI and ML on supply chain analytics, emphasizing their potential to revolutionize traditional practices, enhance efficiency, and fortify resilience in an increasingly complex and dynamic business environment.