OpenText 擁有數十年的專業知識,可幫助您釋放資料、連結人員和流程,並以信任推動 AI
在您的企業中無縫統一資料,消除孤島、改善協作並降低風險
做好 AI 準備,並將您的資料轉化為結構化、可存取且優化的資訊
滿足法規和合規要求,並讓資訊在整個生命週期中受到保護
以全新的方式查看資訊
AI 了解您的企業、您的資料與您的目標
迎向更快速的決策。您的安全個人 AI 助理已經準備好開始工作
利用供應鏈的相關生成式 AI 獲得更深入的見解
利用 AI 內容管理和智能 AI 內容助手提升工作效率
加快應用程式的交付、開發和自動化軟體測試
提升客戶溝通與體驗,促進客戶成功
賦能使用者、服務代理和 IT 人員,讓他們找到所需的答案
以全新的方式查看資訊
AI 了解您的企業、您的資料與您的目標
迎向更快速的決策。您的安全個人 AI 助理已經準備好開始工作
利用供應鏈的相關生成式 AI 獲得更深入的見解
利用 AI 內容管理和智能 AI 內容助手提升工作效率
加快應用程式的交付、開發和自動化軟體測試
提升客戶溝通與體驗,促進客戶成功
賦能使用者、服務代理和 IT 人員,讓他們找到所需的答案
只需連結一次,即可透過安全的 B2B 整合平台觸及任何目標
以具備 AI 的內容管理解決方案重新構想知識
利用 AI 驅動的 DevOps 自動化、測試和品質,更快速交付更優質的軟體
以難忘的客戶體驗重新構思對話
獲得所需的清晰度,以降低 IT 營運的成本和複雜性
使用經過驗證的 OpenText 資訊管理技術建立自訂應用程式
安全資訊管理與可信賴的 AI 相遇
一個統一的資料架構,可提升資料和 AI 的可信度
一個可以使用資料語言建置、部署和迭代代理程式的地方
一套用於幫助擷取資料和自動添加元資料標記的工具,以推動 AI 發展
一套服務和 API,使治理變得主動且持久
專業服務專家協助您踏上 AI 旅程
以全新的方式查看資訊
AI 了解您的企業、您的資料與您的目標
迎向更快速的決策。您的安全個人 AI 助理已經準備好開始工作
利用供應鏈的相關生成式 AI 獲得更深入的見解
利用 AI 內容管理和智能 AI 內容助手提升工作效率
加快應用程式的交付、開發和自動化軟體測試
提升客戶溝通與體驗,促進客戶成功
賦能使用者、服務代理和 IT 人員,讓他們找到所需的答案
ShengPayShengPay creates a Big Data analysis solution with OpenText (formerly Vertica), which provides the platform for unearthing vital business intelligence

Create a platform to analyze Big Data.
Realize the value of big data
Shanghai Shengfutong Electronic Business Co., Ltd. (ShengPay) is a leading Chinese independent third-party payment platform. It was founded by the Shengda Group and focuses on providing safe, convenient and stable payment services to internet and commercial users. Its online and offline comprehensive payment system enables users to fully experience ‘pay anytime and anywhere’ services.
With the number of internet financial users rapidly increasing and the continuous innovation of internet financial applications, there has been explosive growth in the amount of business data ShengPay must deal with. While this growth tests the capacity of ShengPay’s IT systems, it also provides a rare opportunity for the company to use this data to further innovate its financial business. Using Big Data, ShengPay wanted to unearth user demands from massive amounts of business information. This would enable it to improve customer sales and increase risk management and operational strategy, which in turn would help to strengthen its core competitiveness.
To achieve this, ShengPay decided to deploy a Big Data analysis platform to enhance the competitiveness of its financial business.
However, during early discussions on the project, ShengPay discovered that it was not easy to find a suitable Big Data analysis platform. Firstly, there is a massive amount of data in ShengPay’s business systems, and this was growing by hundreds of gigabytes every day, putting huge demand on the inquiry and compression capabilities of the Big Data platform. If the data was not processed quickly, it would not be able to provide a fast and efficient response when servicing and supporting the company’s business data, possibly delaying valuable business opportunities.
Furthermore, ShengPay’s internet financial data is growing exponentially, putting huge demand on the scalability of the Big Data analysis platform. A traditional database is limited by its system framework design. As its performance cannot achieve growth alongside the equipment, it will experience performance bottlenecks once it has expanded to a certain level. If it moves to a new platform, not only will there be a dramatic increase in IT costs but the sustainability of the business may also be affected.
Lastly, the security and usability of the Big Data analysis platform were major areas of focus for ShengPay. Due to the high value and sensitivity of internet financial services, the company needs to guarantee the integrity and usability of its financial data. This means that even if some of the data nodes are damaged, it can still guarantee data security and provide sustainable services. Additionally, ShengPay hoped that the Big Data analysis platform would have automatic optimization functionality. This would not only reduce the workload for operation and maintenance staff but also support the stable and efficient operation of the database.
By deploying Vertica, ShengPay has gathered a massive amount of data, generated by millions of commercial users and several hundred million financial users from all over the country.
Implementing a Powerful Platform
In order to deploy a high performance, highly-scalable, and highly-usable Big Data analysis platform, ShengPay ultimately chose OpenText™ Vertica™. This platform is purpose-built for Big Data analytics. It is designed for use in data warehouses and other Big Data workloads where speed, scalability, simplicity, and openness are crucial to the success of analytics. Vertica relies on a tested, reliable distributed architecture and columnar compression to deliver fast speed.
Vertica was chosen because it could help ShengPay resolve and refine the three major challenges of sales, risk management, and operation strategy, as well as build and drive the healthy development of its financial Big Data environment.
Over ten-fold increase in analysis speed
Following the deployment of Vertica, Hewlett Packard Enterprise (now OpenText) helped ShengPay build an efficient Big Data analysis platform. Vertica uses balanced memory and disk distributed compressed columnar architecture with clustered Big Data storage. Compared to traditional technology, there is exponential growth in the speed data can be analyzed, which significantly enhances the inquiry capability of the system. Operational data shows that once all the historical data is moved to Vertica, ShengPay can directly summarize this data from many years, with the inquiry speed reduced from two hours to just seconds or minutes; enhancing efficiency more than ten-fold.
Vertica has a unique high compression feature which can greatly reduce the data processing load at the same time as lessening demand on storage and other hardware equipment. Currently, ShengPay’s daily data growth amounts to between ten and several hundred gigabytes. With the Vertica high compression and batch loading features, data loading can be completed in under an hour, and in some instances just minutes. This significantly increases loading speed, thus providing sufficient buffer processing time for the second integration of downstream data.
In terms of scalability, Vertica uses the Massively Parallel Processing (MPP) framework design. This can be used on a cluster of economical and efficient commercial servers which can be easily expanded. This provides flexible and simple scalability for ShengPay’s business development, guaranteeing that with the company’s anticipated rapid growth, Vertica will still support performance enhancement and expansion without huge costs or any suspension of services.
After deploying Vertica, ShengPay can also guarantee the integrity of data. Its design has no assistant node or single point of failure, and even if some of the nodes break down, the system can still provide outstanding service. Vertica also uses Database Designer (DBD) automatic optimization design tools which significantly reduce the workload of database administrators, enabling ShengPay’s database to be operated in a more stable and efficient way.

Chinese payment platform, ShengPay, amasses huge amounts of financial data and the volume continues to grow at a fast rate. It wanted to analyze this information to gain valuable insights that it could use to improve services and become more competitive. A powerful platform was needed and ShengPay chose Vertica.