通过 Al-Driven 预测提高供应链效率,构建新一代人工智能 (AI)/ 机器学习网络

Manish Krishnan, Antara Khastgir
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引用次数: 0

摘要

网络硬件行业在供应链管理方面面临着独特的挑战。这些挑战包括不可预测的需求模式、复杂的物流以及快速技术进步造成的干扰。本文探讨了如何将人工智能(AI)融入预测方法,以提高该行业的供应链效率。应用人工智能驱动的预测模型可以帮助企业改进需求预测、完善库存管理并简化物流操作。本文以最新研究和行业实践为基础,强调了人工智能对供应链效率的变革性影响,并对最佳实施实践提出了见解。此外,研究还探讨了人工智能与网络硬件供应链管理的交叉点,重点是利用人工智能分析硬件故障模式,并解释硬件生成的警报和中断。通过利用人工智能的分析能力,现代企业可以提取可行的见解,以降低故障率并提高供应链预测的准确性。这种创新方法能够更有效地预测硬件故障并做好准备,优化备件库存管理,最大限度地减少昂贵的退货授权(RMA)需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Supply Chain Efficiency to Build Next-Gen Artificial Intelligence (AI)/Machine Learning Network Through Al-Driven Forecasting
The networking hardware industry is characterized by unique challenges when it comes to supply chain management. These include unpredictable demand patterns, complex logistics, besides disruptions caused by rapid technological advancements. This paper explores the integration of artificial intelligence (AI) into forecasting methodologies to enhance supply chain efficiency within the sector. Application of AI-driven forecasting models can help organizations improve demand predictions, refine inventory management, and streamline logistical operations. Drawing on recent research and industry practices, this article highlights the transformative impact of AI on supply chain efficiency and offers insights into best implementation practices. Furthermore, the research investigates the intersection of AI and networking hardware supply chain management, focusing on leveraging AI to analyze hardware failure patterns and interpret hardware-generated alarms and interrupts. By harnessing analytical capabilities of AI, modern organizations can extract actionable insights to reduce failure rates and enhance supply chain forecasting accuracy. This innovative approach enables more effective anticipation and preparation for hardware failures, optimizing spare part inventory management and minimizing the need for costly return merchandise authorizations (RMAs).
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