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Transforming Customer Experience with a GenAI-Powered Claims Chatbot

A global bank wanted to modernise the claims experience - easing call centre pressure, enabling 24/7 support, reducing operational inefficiencies, and improving customer satisfaction, all while maintaining strict compliance and data privacy standards.

Outcomes

2x

Faster Claims Triage + Response

60%

Less Manual Workload

24/7

Support Availability

3 weeks

PoC Cycle

Technology Vendors Suited to Evaluation

Business Problem

The bank’s claims process was heavily manual and resource-intensive, leading to slow response times, mounting call centre volumes, and rising loss adjustment expenses.

Legacy systems and strict compliance requirements made it difficult to adopt innovative, AI-driven solutions – resulting in missed opportunities to improve efficiency, reduce fraud, and enhance the overall customer experience.

Challenges

  • Manual, slow claims processing and high call center volumes.
  • Rising Loss Adjustment Expenses (LAE).
  • Pressure to modernise due to fraud and poor customer experience.
  • Innovation blocked by compliance hurdles.

From Idea to Evidence with NayaOne

The bank used NayaOne’s secure sandbox to validate multiple GenAI-powered claims chatbot solutions in a controlled, compliant environment.

  • Rapid Scoping: Business and technical requirements were captured within the first week to define success metrics and evaluation parameters.
  • Instant Access: Vendors were onboarded under NDA on Day 1, enabling immediate configuration and testing.
  • Synthetic Data Training: Chatbot models were trained and tested using synthetic claims data, ensuring privacy and compliance throughout.
  • Hands-On Evaluation: Vendors were benchmarked on ease of integration, response accuracy, compliance alignment, and customer experience impact.
  • Accelerated Delivery: The entire evaluation cycle was completed in just 3 weeks – a 75% reduction compared to traditional pilot timelines.

The PoC provided clear evidence of which AI chatbot solution best balanced automation efficiency, regulatory safety, and customer satisfaction.

Impact Metrics

PoC Timeline Reduction

3 weeks with NayaOne vs 12 months traditionally

Time Saved in Vendor Evaluation

1+ year

Decision Quality

The bank gained hard evidence on whether AI could modernise claims processes and ease call centre pressure.

KPIs

  • Average Handling Time Reduction (%): Decrease in time taken to resolve common claims queries.
  • Call Centre Load Reduction (%): Drop in inbound call volumes post-chatbot deployment.
  • Customer Satisfaction (CSAT) Score: Improvement in user feedback and experience ratings.
  • Automation Rate (%): Percentage of claims interactions handled without human intervention.
  • Response Accuracy (%): Accuracy of chatbot responses to claims-related queries.
  • Compliance Alignment (%): Adherence to internal data privacy and regulatory requirements during chatbot operation.

Validate GenAI Claims Chatbots Safely Before Deployment

Use NayaOne’s secure sandbox to test and compare GenAI-powered claims chatbots with synthetic data – measuring accuracy, compliance, and customer experience improvements before integrating into live claims systems.

Request AI Case Studies

Challenges in Enterprise Technology Adoption

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