下载PDF
实例探究 > Smart Test Data for Online Banking Products

Smart Test Data for Online Banking Products

技术
  • 分析与建模 - 数据即服务
  • 应用基础设施与中间件 - 数据交换与集成
适用行业
  • 金融与保险
适用功能
  • 产品研发
  • 质量保证
用例
  • 数字孪生
  • 质量预测分析
服务
  • 数据科学服务
  • 系统集成
挑战
One of the largest retail banks in Europe developed a mobile banking app that aims to be a true alternative to in-person banking. To provide a high-quality user experience, extensive testing of the app with clients’ transaction data was crucial. However, the bank’s IT department had to heavily mask transaction data due to privacy policies, and the resulting test data failed to provide realism in transaction amounts, dates, and so on. Dummy data could never match the smart synthetic dataset’s granularity and realism, failing to provide the complexity necessary for testing a product so important to work flawlessly. Imagine you could create realistic customers at the push of a button!
关于客户
The customer is one of the largest retail banks in Europe, known for its extensive range of financial services and products. The bank has a significant customer base and is committed to providing innovative solutions to enhance customer experience. With a focus on digital transformation, the bank developed a mobile banking app intended to serve as a comprehensive alternative to traditional in-person banking. The bank's IT department is tasked with ensuring the app's functionality and security, particularly in handling sensitive transaction data. The bank's commitment to privacy and data protection necessitates the use of advanced technologies to create realistic test data without compromising customer information.
解决方案
MOSTLY AI synthetic data platform, our synthetic data generator was delivered to the bank through a REST API. The algorithm - fed with raw client data - learned its patterns and properties. Once the algorithm was trained, any number of new, realistic synthetic users could be generated. Using a smart test data dashboard, the product development and testing team could generate synthetic customers based on pre-defined parameters, such as the number of accounts, income range, urban or rural address, and others. New, predefined synthetic customers could be created using behavioral data generation to test edge cases.
运营影响
  • Smart, data-driven product features, such as account balance prediction and responsive UX decision-making.
  • Shortened development sprints by several days as a result of near-instant availability of synthetic customers transaction data.
  • Demand a highly realistic product to internal stakeholders, earning valuable support throughout the organization.
数量效益
  • Generating smart test data took significantly less time than anonymizing the initially used and discarded dummy data.

相关案例.

联系我们

欢迎与我们交流!

* Required
* Required
* Required
* Invalid email address
提交此表单,即表示您同意 IoT ONE 可以与您联系并分享洞察和营销信息。
不,谢谢,我不想收到来自 IoT ONE 的任何营销电子邮件。
提交

Thank you for your message!
We will contact you soon.