A leading financial institution was facing growing challenges in managing loan recovery and NPA (Non-Performing Asset) follow-ups. Manual processes, language barriers, and inconsistent customer engagement led to high delinquency rates and slow resolution cycles. To overcome these issues, the bank deployed Agent Force and Agent Analyst on Nexastack’s Agentic AI Infrastructure — enabling multilingual, intelligent, and automated follow-ups with borrowers.
Agent force automated customer communication through personalized, context-aware outreach in regional languages. The agent analyst continuously analyzed repayment patterns, behavioral signals, and credit data to segment defaulters, predict repayment intent, and recommend follow-up strategies.
This AI-driven approach significantly reduced manual collection efforts, improved recovery rates, and enhanced customer experience — enabling faster loan resolution while maintaining compliance and empathy in customer interactions.
The client, a mid-sized retail bank, relied heavily on manual and phone-based debt collection processes. As customer volumes grew, it struggled with:
Low recovery efficiency: Manual follow-ups were slow and inconsistent across branches.
Language and cultural barriers: Non-English borrowers often misunderstood repayment terms or ignored messages.
Limited insights: No analytics on borrower intent, payment patterns, or emotional sentiment.
Compliance risks: Manual outreach increased the risk of regulatory non-compliance in communication tone and timing.
Improve recovery rates and reduce delinquency turnaround time.
Deliver consistent, compliant, and multilingual customer communication.
Enhance operational efficiency through automation.
Use predictive analytics for better NPA forecasting and proactive engagement.
No automation or analytics in debt collection workflows.
No integration between CRM, payment systems, and communication tools.
Inability to personalize engagement by borrower behavior or language.
No centralized view of follow-up actions or outcomes.
Adherence to RBI debt collection guidelines and data privacy regulations.
Need for audit trails of all communication touchpoints.
Maintaining respectful borrower engagement standards.
Legacy CRM lacked intelligent automation.
Disparate borrower data sources (loan systems, payment records, call logs).
No centralized reporting for follow-up performance.
No behavioral segmentation or intent prediction models.
Limited access to unified historical repayment data.
No multilingual NLP capability for borrower conversations.
Manual workflows couldn’t scale to handle thousands of overdue accounts daily.
Inconsistent follow-up frequency and timing.
The bank implemented Nexastack’s Agentic AI Collection. Framework using Agentforce and Agentanalyst.
Agentforce automated multilingual borrower outreach — via voice calls, WhatsApp, SMS, and email — tailored to borrower language, behavior, and payment history.
Agentanalyst applied advanced analytics to assess repayment probability, prioritize accounts, and recommend the best follow-up strategies.
The agents worked together to:
Identify high-risk NPAs through behavioral scoring.
Auto-trigger personalized follow-ups in the borrower’s preferred language.
Schedule EMI reminders, fee explanations, and rescheduling options.
Update the CRM automatically with borrower responses and follow-up status.
This context-first, event-driven agentic system improved recovery rates, reduced operational load, and ensured compliance across every borrower interaction.
|
Industry |
Use Cases |
Value Delivered |
|
Banking & Financial Services |
Retail loans, credit cards, microfinance |
Higher recovery rate, faster follow-ups, multilingual outreach |
|
NBFCs & Microfinance Institutions |
Rural borrower engagement |
Local-language automation, better borrower experience |
|
Fintech Platforms |
Loan lifecycle automation |
Predictive repayment modeling, lower NPA ratios |
|
Credit Unions & Cooperative Banks |
EMI collection, overdue alerts |
Reduced manual workload, improved compliance tracking |
Agentforce → Automated multilingual follow-up and borrower communication.
Agentanalyst → Behavioral analytics, NPA risk scoring, and predictive insights.
Agent Analyst aggregates loan, payment, and CRM data to predict borrower risk scores.
Identifies accounts likely to default and prioritizes them for early outreach.
Agent force personalizes borrower engagement using regional language models (English, Hindi, Nepali, Tamil, etc.).
Sends timely reminders, explains overdue charges, and offers restructuring options.
All communication is tone-checked for compliance and empathy.
CRM auto-updated with borrower responses, next action dates, and collection outcomes.
Seamless integration with loan management and payment systems for real-time updates.
Agents operate 24x7, ensuring continuous borrower engagement.
Enhanced NPA prediction accuracy by 40% through behavioral analytics.
Continuous feedback loop improved model retraining and targeting precision.
Unified borrower data from CRM, payment history, and communication logs.
Real-time data pipeline enabled context-aware decision-making.
Automated end-to-end process: Predict → Engage → Follow-up → Update CRM.
Reduced manual workload by 60%.
35% faster loan recovery cycles.
40% improvement in follow-up conversion rates.
50% reduction in manual collection effort.
Fully compliant multilingual borrower communication.
Scalable automation capable of handling 100K+ borrowers.
Real-time integration with existing loan and CRM systems.
Secure data handling with audit trails for every interaction.
“With Nexastack’s Agentic AI, our loan recovery process became faster, smarter, and more empathetic. Multilingual AI agents connected with borrowers at the right time, with the right message — improving repayment rates and reducing NPA burden significantly.”
— Head of Retail Collections, Leading NBFC
Human-AI Collaboration Works Best: Combining agentic automation with human oversight led to better borrower trust.
Multilingual Context Matters: Borrower empathy increased dramatically when communication was localized.
Compliance-First Design: Built-in regulatory filters prevented non-compliant messaging.
Data Enrichment is Key: Unified and contextualized borrower data improved
Start with small borrower segments and scale gradually.
Integrate AI agents tightly with existing CRM and payment systems.
Establish feedback loops for continuous model improvement.
Ensure transparent, ethical, and compliant communication standards.
Expand AI-driven collection to corporate and SME loans.
Introduce Agent GRC for compliance governance and audit automation.
Develop emotion-aware voice agents for higher borrower empathy.
Build multilingual dashboards for collection managers and compliance teams.
By deploying Agentforce and Agentanalyst on Nexastack’s Agentic AI Infrastructure, the bank transformed its loan collection process. Automation, predictive insights, and multilingual engagement reduced NPAs, enhanced compliance, and improved borrower relationships — positioning the institution as a digital-first leader in intelligent loan recovery.