In the rapidly evolving BFSI (Banking, Financial Services, and Insurance) sector, the ability to harness enterprise knowledge at scale has become a strategic imperative. With the explosion of unstructured data—emails, reports, policy documents, customer interactions, and regulatory updates—financial institutions are struggling to extract actionable insights in real time.
DeltaDot AI partnered with a leading BFSI conglomerate to deploy a cutting-edge Enterprise Knowledge Automation solution powered by Large Language Models (LLMs). The goal was to transform fragmented institutional knowledge into a unified, intelligent layer that could support decision-making, compliance, customer service, and innovation.
The client is a diversified BFSI group operating across retail banking, insurance, asset management, and fintech. With over 50,000 employees and operations in 12 countries, the organization manages petabytes of data across legacy systems, cloud platforms, and third-party services.
Key characteristics of the client’s environment:
DeltaDot AI proposed a modular Enterprise Knowledge Automation Platform powered by domain-tuned LLMs. The solution was designed to:
1. Operational Efficiency: 40% reduction in time spent searching for documents. 60% faster compliance update dissemination.
2. Improved Decision-Making: Real-time access to summarized insights. Contextual Q&A reduced dependency on senior staff.
3. Enhanced Compliance: Automated alerts for regulatory changes. Traceable knowledge trails for audits.
DeltaDot AI’s Enterprise Knowledge Automation solution transformed the client’s approach to information management. By deploying LLMs in a secure, explainable, and scalable manner, the BFSI organization achieved:
This case study demonstrates how LLMs can be operationalized beyond experimentation—delivering tangible business value in regulated, data-intensive environments like BFSI.