供应链中大数据分析与需求建模的文献综述

Puneeth Kumar T, M. N, R. Hegadi
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引用次数: 3

摘要

近年来,新的数字技术被引入到我们的商业和社会环境中,引起了一场被认为是数字化转型的重大变化。虽然环境变化表明大多数组织开始使用先进技术,如物联网(IoT)、移动应用程序、黑链、智能物联网,这些技术产生了大量的数据,传统的商业智能系统难以处理实时或接近实时的大量数据,导致对洞察力发现、需求建模和供应链优化的抽象,需求建模和供应链优化的大数据计划承诺通过整合各种服务、方法和工具来应对这些挑战,以实现更灵活、更适应性的分析和决策。本文将重点回顾供应链中使用的分析和预测方法的水平,了解供应链的基本原理和需求建模的作用。结合数据科学、人工智能、大数据回波系统和供应链等知识,提出了大数据背景下供应链分析的高层次框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Literature Review on Big Data Analytics and Demand Modeling in Supply Chain
New digital technologies have been introduced into our business and social environments, causing a major change that is recognized as the digital transformation in recent years. While environmental shifts suggest that most of the organization starts using advanced technologies such as Internet of Things(IoT), Mobile applications, Blackchain, Intelligence Things, catboats and many more in their supply chain planning to gain an early competitive advantage and these technologies generates enormous amount of data that the traditional business intelligence system difficult to handle processing of vast data in real-time or nearly real time causes abstraction to the insight discovery, demand modeling and supply chain optimization, Big Data initiatives for demand modeling and supply chain optimization promise to answer these challenges by incorporating various services, methods and tools for more agile and adaptably analytics and decision making, there by this paper focus on reviewing the level of analytics and the forecasting methods being used in the supply chain, understating the fundamentals of supply chain and role of demand modeling, there by proposing a high level framework for supply chain analytics in the context of big data with the knowledge of data science, artificial intelligence, big data echo system and supply chain.
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