Industry Clients






Success Stories

Yinhua Fund · Background
To meet business development needs, the company has continuously built its data warehouse system since 2016, completing the construction of marketing data center and investment research data center. Based on internal and external data statistics, extraction, and regulatory reporting needs, it built a reporting platform focused on marketing and investment research analysis, which met the company's daily business reporting and data analysis needs for a considerable period.
However, with the rapid growth of business data scale and business development, higher requirements were placed on the data warehouse system. The main challenges included low development efficiency and high maintenance costs of the original Oracle data warehouse, single service form, reliance on manpower to meet business needs, unclear data structure for core business marketing, investment research, and anti-money laundering operations, and significant bottlenecks in big data computing and storage. There was an urgent need to meet business requirements for high-performance data processing, efficient data services, complex business calculations, massive data queries, metadata, and data quality management. Under these business circumstances, the company proposed building a fund data middle platform in 2020.
Project Objectives
- 01
Massive Data Processing
Meet the needs for massive data processing, historical business data storage, and high-performance indicator calculations in the data center.
- 02
Unified Data Asset Management
Achieve unified convergence of scattered data, standardized processing, unified operation, storage, and management of assets, completing enterprise digital infrastructure.
- 03
Core Capability Enhancement
The long-term goal is to provide more powerful data storage, processing, computing, and data service platforms, achieving strong support for enterprise marketing, investment research business analysis, and intelligent applications, thereby further enhancing the company's various services and competitive capabilities.
Solution Architecture
The Yinhua Fund data center platform, built based on the data development management platform and data asset catalog, integrates data from various business systems and quickly achieves historical data migration, marketing center and investment research center theme data asset construction. Through distributed computing capabilities, it solves the migration and calculation of YOGA TA data that the original Oracle data warehouse could not achieve. Meanwhile, based on the data asset catalog, it realizes data asset operation and management, with significant improvements in data quality and data security management. Through the data service capabilities of the data middle platform, it supports upper-layer data application construction including marketing theme reports, performance analysis, risk control systems, and anti-money laundering projects.

Customer Benefits
Upgrading from traditional Oracle data warehouse architecture to big data center platform architecture has shown significant improvements in data collection objects, data storage and computing architecture, core data architecture, development management tools, and data service capabilities.
Service Capability
Our data middle platform consolidates fragmented data demands through standardized services, supporting both operational analytics and intelligent applications like risk control and AML.Management Tools
Replacing manual processes with automated tools enhances Yinhua Fund's data governance, significantly improving data quality and security.Data Architecture
The upgraded layered data warehouse resolves structural coupling by organizing data into clear thematic domains, reducing usage complexity and costs.Processing Architecture
Our hybrid compute-storage architecture handles batch/real-time data at TB/hour scale, separating operational and analytical data while boosting processing power.Data Objects
The new scalable infrastructure supports diverse data sources (mobile/web-crawled) beyond internal systems, overcoming Oracle's limitations in volume and format handling.

Related Products
Keen BDP Data Development Management Platform
Provides comprehensive managed workflow services and one-stop development management functions, empowering enterprises to build and manage big data capabilities across the entire chain, achieving comprehensive data asset management and establishing private big data centers.
View DetailsKeen Asset Data Asset Catalog
Enterprise's unified data asset portal, serving as a map of enterprise data assets, can provide data information queries for various enterprise roles, trace data origins and specific processing calculation logic. Data assets are automatically accumulated during data development and construction, requiring no manual maintenance.
View DetailsKeen DaaS Data Service Platform
Data service release center, seamlessly connecting with business production systems, solving the last-mile data usage problem. Supports quick service API creation through SQL and drag-and-drop methods, providing complete API lifecycle management, including creation, maintenance, publishing, operation, monitoring, and decommissioning.
View DetailsKeen Dsync Data Synchronization System
One-stop data synchronization product for enterprise multi-source data integration. Solves data interaction and synchronization problems between complex heterogeneous data sources such as relational databases, non-relational databases, big data platforms, and file systems within enterprises under high-concurrency big data scenarios, achieving unified data sharing and distribution within enterprises.
View Details