QR Food Ordering System with Data Analytics

Chee-Chun Wong, Lee-Ying Chong, Siew-Chin Chong, Check-Yee Law
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Abstract

As the epidemic starts to slow down and Malaysians are more confident about containing the outbreak with the norm of vaccination, diners have been aching to return to dining rooms, with many restaurants functioning at full capacity, but staffing is an entirely different story. As restaurateurs try to keep their businesses running at full speed and solve limited staff issues, there is only one solution: process automation. This paper aims to design a food ordering system that covers the benefits of automating the ordering process using the QR code and provides visualised insightful information based on the business data. Customers place the food order by scanning the QR code on the restaurant table, and it is then brought to a digital version of the restaurant's menu and make orders. The proposed system automates customer bills after the order, and it helps reduce human error in calculating bills. On the other hand, the proposed system has an admin interface that enables restaurant owners to modify the restaurant's menu, generate QR codes for the new dining table, receive orders from customers, and get automated bills generated by customers' orders. Most importantly, the system allows restaurant owners to have an insightful view of their business data such as visualised charts on sales data, highlighted crucial data and so on to improve decision-making and forecasting future demand using data analysis techniques which are not populated in similar systems currently. Machine learning has become a huge trend nowadays, it is also included to in the proposed system to forecast more valuable data for the business.
二维码订餐系统与数据分析
随着疫情开始放缓,马来西亚人对通过接种疫苗控制疫情更有信心,食客们一直渴望回到餐厅,许多餐馆满负荷运转,但人员配备完全是另一回事。当餐馆老板试图让他们的业务全速运转并解决有限的员工问题时,只有一个解决方案:流程自动化。本文旨在设计一个食品订购系统,该系统涵盖了使用QR码自动化订购过程的好处,并提供基于业务数据的可视化洞察力信息。顾客通过扫描餐桌上的二维码来点餐,然后它会被带到餐厅菜单的数字版本并下单。所建议的系统在订单完成后自动处理客户账单,它有助于减少计算账单时的人为错误。另一方面,该系统有一个管理界面,使餐馆老板能够修改餐馆的菜单,为新餐桌生成二维码,接收顾客的订单,并根据顾客的订单自动生成账单。最重要的是,该系统允许餐馆老板对他们的业务数据有一个深刻的看法,如销售数据的可视化图表,突出显示关键数据等,以改善决策和预测未来的需求,使用数据分析技术,目前在类似的系统中没有填充。机器学习现在已经成为一个巨大的趋势,它也被包含在提议的系统中,为业务预测更多有价值的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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