沃尔玛的销售数据分析——大数据分析的视角

Manpreet Singh, Bhawick Ghutla, Reuben Lilo Jnr, Aesaan F S Mohammed, Mahmood A. Rashid
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引用次数: 14

摘要

21世纪的信息技术正在向天空发展,需要处理和研究大量数据,以使传统方法不再有效的数据变得有意义。现在,零售商需要360度全方位地了解他们的消费者,如果没有这一点,他们可能会失去市场竞争优势。零售商必须创造有效的促销和优惠,以满足其销售和营销目标,否则他们将放弃当前市场提供的主要机会。很多时候,零售商很难理解市场状况,因为他们的零售店在不同的地理位置。大数据的应用使这些零售组织能够使用上一年的数据来更好地预测和预测来年的销售。它还使零售商能够获得有价值的分析性见解,特别是确定在不同地理位置的特定商店中在所需时间购买所需产品的客户。在本文中,我们分析了世界上最大的零售商沃尔玛商店的数据集,以确定业务驱动因素,并预测哪些部门受到不同情景(如温度、燃料价格和假期)的影响,以及它们对不同地点商店销售的影响。我们利用Spark框架的Scala和Python API来获得对消费者行为的新见解,并通过分析数据的可视化表示来理解沃尔玛的营销努力及其数据驱动策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Walmart's Sales Data Analysis - A Big Data Analytics Perspective
Information technology in this 21st century is reaching the skies with large-scale of data to be processed and studied to make sense of data where the traditional approach is no more effective. Now, retailers need a 360-degree view of their consumers, without which, they can miss competitive edge of the market. Retailers have to create effective promotions and offers to meet its sales and marketing goals, otherwise they will forgo the major opportunities that the current market offers. Many times it is hard for the retailers to comprehend the market condition since their retail stores are at various geographical locations. Big Data application enables these retail organizations to use prior year’s data to better forecast and predict the coming year’s sales. It also enables retailers with valuable and analytical insights, especially determining customers with desired products at desired time in a particular store at different geographical locations. In this paper, we analysed the data sets of world’s largest retailers, Walmart Store to determine the business drivers and predict which departments are affected by the different scenarios (such as temperature, fuel price and holidays) and their impact on sales at stores’ of different locations. We have made use of Scala and Python API of the Spark framework to gain new insights into the consumer behaviours and comprehend Walmart’s marketing efforts and their data-driven strategies through visual representation of the analysed data.
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