Supply Chain Risk Management: Data Structuring

Nina Lopez, Animesh Pattanayak, J. Smith
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Abstract

Supply chain risk management (SCRM) is an area of research that addresses both logistics concepts to maximize efficiency, reliability, and revenue as well as risk features, such as potential weak points, break points, and vulnerabilities within the supply chain. SCRM is used to find risks introduced at each node in a supply chain and how these risks can impact a company’s products, individuals, customers, and reputation. SCRM is a relatively new field, so standardized processes including data structuring are not fully documented. This paper explains the importance of a standard data structuring methodology and how it can enhance current SCRM efforts. Data ingest, structuring, and analysis are predominantly managed by humans. Automating some of the less complex steps can positively impact SCRM by allowing human analysts to focus on more strategic analyses. Types of data to be collected and structured are collected via publicly available information related to hardware, software, and corporate entities. After the data has been collected, the information is formatted in a specific manner, conforming to a schema, to allow for more effective and efficient ingest for further analysis. This paper outlines data structures used by Pacific Northwest National Laboratory for SCRM research and analysis purposes. These structures have been used for hundreds of analyses and have been successful in developing a common baseline. Data structuring is one of the first steps in data standardization, which will further mature and enhance the SCRM research area.
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供应链风险管理:数据结构
供应链风险管理(SCRM)是一个研究领域,它解决了物流概念,以最大限度地提高效率、可靠性和收入,以及风险特征,如供应链中的潜在弱点、断点和漏洞。SCRM用于发现在供应链中每个节点引入的风险,以及这些风险如何影响公司的产品、个人、客户和声誉。SCRM是一个相对较新的领域,因此包括数据结构在内的标准化过程没有完整的文档。本文解释了标准数据结构方法的重要性,以及它如何增强当前的SCRM工作。数据摄取、结构化和分析主要由人工管理。自动化一些不太复杂的步骤可以通过允许人工分析师专注于更具战略性的分析来积极地影响SCRM。要收集和结构化的数据类型是通过与硬件、软件和公司实体相关的公开信息收集的。收集完数据后,将按照模式以特定的方式格式化信息,以便更有效、更高效地摄取信息以进行进一步分析。本文概述了太平洋西北国家实验室用于SCRM研究和分析目的的数据结构。这些结构已被用于数百次分析,并已成功地开发了一个公共基线。数据结构化是数据标准化的第一步,它将进一步成熟和加强SCRM研究领域。
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