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Validating SBA Lending Models Faster

A leading bank wanted to accelerate its SBA lending program by testing credit models and data integrations in a secure sandbox, reducing deployment time, improving compliance, and increasing lending efficiency.

Outcomes

20%+

Approval Rate Improvement

15%

Risk Accuracy Improvement

40%

Operational Cost Reduction

15%

Customer Satisfaction Uplift

Technology Vendors Suited to Evaluation

Business Problem

The bank faced challenges scaling its SBA lending operations due to fragmented data, limited access to real-world testing environments, and manual deployment processes. Assessing creditworthiness was slow and inconsistent, while validating new models carried high operational and regulatory risk.

The bank needed a controlled, compliant environment to test and refine SBA models safely before production rollout.

Challenges

  • Data Complexity: Integrating disparate data sources to assess credit risk.
  • Model Validation: Difficulty in testing new models without real-world data.
  • Operational Bottlenecks: Lack of streamlined processes for rapid deployment and testing.

From Idea to Evidence with NayaOne

Using NayaOne’s platform, the bank ran a structured proof of concept (PoC) to test and validate new SBA lending models under realistic conditions.

  • Rapid Experimentation: Deployed pre-configured sandboxes to test SBA workflows and APIs quickly, reducing setup time.
  • Model Validation: Verified model accuracy and reliability using a mix of synthetic data.
  • Data Integration: Combined multiple data sources for unified credit risk assessment.
  • Compliance Testing: Ensured models aligned with SBA guidelines and banking regulations.
  • Collaborative Evaluation: Enabled credit, risk, and compliance teams to work in parallel, improving delivery speed and oversight.

Impact Metrics

PoC Timeline Reduction

4 weeks with NayaOne vs 12 months traditionally

Time Saved in Vendor Evaluation

1+ year

Decision Quality

Evidence-backed approvals and policy tuning based on model performance and data consistency.

KPIs

  • Model Validation Accuracy (%): Success rate of approved models versus test baselines.
  • Credit Decision Turnaround (hours): Time from application input to credit decision.
  • Automation Coverage (%): Share of lending processes executed automatically.
  • Compliance Pass Rate (%): Alignment with SBA and regulatory requirements.
  • PoC Setup Time (days): Duration to deploy and begin model testing.

Validate SBA Lending Models Faster

Test and refine SBA credit models securely within a sandbox environment to accelerate lending, improve compliance, and enhance credit accuracy.

Request Commercial Lending Use Cases

Challenges in Enterprise Technology Adoption

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