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Google > 实例探究 > Intesa Sanpaolo: Managing evolving financial risk at speed with data analytics and AI

Intesa Sanpaolo: Managing evolving financial risk at speed with data analytics and AI

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公司规模
Large Corporate
地区
  • Europe
国家
  • Italy
产品
  • Google Cloud
  • BigQuery
  • Looker
  • Vertex AI
  • Google Kubernetes Engine
技术栈
  • Data Analytics
  • AI
  • Cloud Computing
  • Machine Learning
实施规模
  • Enterprise-wide Deployment
影响指标
  • Productivity Improvements
  • Customer Satisfaction
  • Digital Expertise
技术
  • 分析与建模 - 机器学习
  • 分析与建模 - 预测分析
  • 平台即服务 (PaaS) - 数据管理平台
适用功能
  • 商业运营
服务
  • 云规划/设计/实施服务
  • 数据科学服务
  • 系统集成
关于客户
Intesa Sanpaolo is a leading financial services institution in Italy, excelling in retail and corporate banking, as well as wealth management. The Intesa Sanpaolo Group serves 13.7 million customers through a network of over 3,300 branches, strategically distributed across the country. The bank holds market shares no lower than 12% in most Italian regions, showcasing its strong presence and influence in the financial sector. As a large corporate entity, Intesa Sanpaolo is committed to innovation and efficiency, particularly in the realm of risk management. The bank's focus on adopting advanced technologies like data analytics and AI reflects its dedication to maintaining a competitive edge in the rapidly evolving financial landscape. By leveraging these technologies, Intesa Sanpaolo aims to enhance its risk management capabilities, ensuring compliance with regulatory requirements and effectively mitigating financial risks.
挑战
With its on-premise data analytics lab, Intesa Sanpaolo’s risk management team found it challenging to keep pace with a rapidly evolving financial risk landscape. The global banking system presents significant risk management challenges for financial services institutions due to complex financial structures and sophisticated trading algorithms. Risk management teams need to adopt a data-driven approach to identify and mitigate risks and comply with regulatory requirements. Previously, Intesa Sanpaolo’s risk management team used an on-premise data analytics lab to prototype machine-learning solutions and risk models. However, this lab environment was separate from the production environment, causing delays in releasing solutions and making it harder for the bank to react quickly to changing markets. Additionally, the inability to scale up its on-premise architecture on demand restricted the development of models in sequence, slowing time to market.
解决方案
Intesa Sanpaolo built its Democratic Data Lab on Google Cloud to address the challenges of its on-premise data analytics lab. This new environment allows the risk management team to develop and release risk management solutions more quickly, enabling better control and mitigation of risks. The Democratic Data Lab eliminates the separation between lab and production environments, allowing for seamless transition and faster release of solutions. By using BigQuery as its data warehouse, the lab can access the bank’s data without additional layers, streamlining the development process. The use of Google Kubernetes Engine allows the team to scale resources on demand, facilitating parallel model development and quicker solution releases. Managed services like Vertex AI and BigQuery free the team from infrastructure management, allowing them to focus on developing effective models. The Democratic Data Lab also democratizes access to risk management data insights across the bank, enabling business team members to navigate and query data independently. Looker dashboards provide real-time visualization of key risk indicators, aiding compliance with regulatory requirements and enhancing reporting efficiency.
运营影响
  • The Democratic Data Lab allows Intesa Sanpaolo to develop and release risk management solutions more quickly, enhancing the bank's ability to control and mitigate risks effectively.
  • The unified environment of the Democratic Data Lab eliminates the need for developers to rewrite solutions for production, streamlining the development process and reducing delays.
  • The use of Google Kubernetes Engine enables the risk management team to scale resources on demand, allowing for parallel model development and faster solution releases.
  • The Democratic Data Lab democratizes access to risk management data insights across the bank, empowering business team members to independently navigate and query data.
  • Looker dashboards provide real-time visualization of key risk indicators, aiding compliance with regulatory requirements and enhancing reporting efficiency.
数量效益
  • Releases risk management solutions 20-30% faster with unified lab environment on Google Cloud.
  • Reduces time to complete regulatory stress tests by up to 80%.
  • Cuts time to extract and load data for specific risk modeling purposes by 30% with Gemini 1.5.

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