DBS's Gong Xiaojun on AI Transformation: Shifting Agents from Traditional Service Roles to Higher-Value Sales or Advisory Roles

Deep News
12/20

At the 22nd China International Finance Forum held in Shanghai on December 19-20, Gong Xiaojun, Chief Information Officer and Head of Technology & Operations at DBS Bank (China), delivered a keynote speech on building an intelligent financial ecosystem in the digital economy era.

Gong shared insights into DBS Group's Gen-AI transformation journey, which began over two years ago, highlighting several practical applications. The bank is reimagining the future of call centers by deploying intelligent AI agents that automatically identify and extract key customer information during calls, then relay structured data in real time to human agents. This model eliminates the need for agents to spend significant time on manual data entry and preliminary assessments, significantly improving efficiency. More importantly, it enables agents to transition from traditional service roles to higher-value sales or advisory positions.

"If this model is scaled in the future, it could fundamentally reshape banking operations—shifting from department-centric management structures to new organizational forms centered on professional expertise and customer value," Gong noted.

Looking ahead, DBS Group will focus more on developing employees' augmented capabilities and nurturing specialized knowledge workers. Over the next five to ten years, banks that align their organizational structures with AI adoption will gain greater competitive advantages in seizing market opportunities, Gong emphasized.

To realize this vision, he outlined a three-step approach: setting transformational goals, designing operational models and roadmaps, and implementing changes incrementally.

Gong also revealed that DBS Group's future call center workflows will be driven by an "intelligent agent hub" for automated classification and routing. Human roles will evolve into three key functions: 1) A "gatekeeper" team of senior experts to validate AI outputs; 2) A "governance team" for model monitoring and compliance; 3) An "enablement team" to integrate new knowledge into systems and verify outcomes.

Critical steps for this operational shift include data governance, isolating key datasets, system enhancements, and integrating AI into daily operations with support from expert data scientists.

"Gen-AI transformation is a multi-year journey—likely requiring three to five years or longer—but we've begun taking concrete steps," Gong concluded.

免责声明:投资有风险,本文并非投资建议,以上内容不应被视为任何金融产品的购买或出售要约、建议或邀请,作者或其他用户的任何相关讨论、评论或帖子也不应被视为此类内容。本文仅供一般参考,不考虑您的个人投资目标、财务状况或需求。TTM对信息的准确性和完整性不承担任何责任或保证,投资者应自行研究并在投资前寻求专业建议。

热议股票

  1. 1
     
     
     
     
  2. 2
     
     
     
     
  3. 3
     
     
     
     
  4. 4
     
     
     
     
  5. 5
     
     
     
     
  6. 6
     
     
     
     
  7. 7
     
     
     
     
  8. 8
     
     
     
     
  9. 9
     
     
     
     
  10. 10