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物流大数据标准及案例研究 被引量:1

Logistics big data standardization and case study
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摘要 介绍了在城市物流配送领域的数据化和智能化改造过程中,如何面对大数据标准化的挑战,并从调度系统和开放平台两方面入手,提出了提高单次配送效率和节省多次配送成本的标准化解决方案。案例为物流大数据标准化技术提供了可供参考的分析思路、实施案例和创新经验。 In the field of logistics distribution, the solution of data and intelligent transformation process was introduced to solve how to face the challenges of big data standardization, and how to improve the single distribution efficiency and save multiple distribution cost standard solution from the scheduling system and open platform. The case provides a reference for the analysis of logistics data standardization technology, the implementation of cases and innovative experience.
作者 蒋凡
出处 《大数据》 2017年第4期60-66,共7页 Big Data Research
关键词 城市物流 O2O 大数据 标准化 urban logistics O2O big data standardization
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