An Auto Optimized Payment Service Requests Scheduling Algorithm via Data Analytics through Machine Learning

George Wanganga, Yanzhen Qu
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引用次数: 1

Abstract

Traditional customer payment service scheduling approaches cannot cope with the modern demand for timely, high-quality service due to the disruption of big data within small and medium-sized payment solution providers (SaMS-PSP). While many customers have access to modern technologies to lodge their service requests easily and fast, SaMS-PSPs do not have equally automated big data-driven capabilities to handle the growing demands of these service requests. To effectively improve SaMS-PSP’s customer payment service requests processing speeds, personnel optimization, throughput, and low latency scheduling, we have developed a new customer payment service request scheduling algorithm via matching request priority with the best personnel to handle the request based on data analytics through machine learning. Our experiments and testing have confirmed the merits of this new algorithm. We are also in the process of applying this new algorithm in real-world payment operations.
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通过机器学习,通过数据分析实现自动优化的支付服务请求调度算法
由于中小型支付解决方案提供商(SaMS-PSP)内部大数据的中断,传统的客户支付服务调度方法无法满足现代对及时、高质量服务的需求。虽然许多客户可以使用现代技术轻松快速地提出服务请求,但sams - psp并没有同样自动化的大数据驱动能力来处理这些服务请求不断增长的需求。为了有效提高SaMS-PSP的客户支付服务请求处理速度、人员优化、吞吐量和低延迟调度,我们开发了一种新的客户支付服务请求调度算法,通过机器学习的数据分析,将请求优先级与处理请求的最佳人员进行匹配。我们的实验和测试证实了这种新算法的优点。我们也正在将这个新算法应用到现实世界的支付操作中。
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