Case study > Built Scalable Workflow for a Leading US Fintech > Exception Handling – Aided Technology With Higher Extraction % By Means of Providing Regular Data Insights

Exception Handling – Aided Technology With Higher Extraction % By Means of Providing Regular Data Insights

Data Solutions - Exception Handling Case Study

BUSINESS SITUATION

Exception management workflow requires human actions for setting up machine learning to enable automated data extraction. Irregular extraction requirements led to high human effort and delay in delivering extracted data to end users. The average cycle time to extract requisite data from a document was approximately 10 minutes, with rapid client onboarding and high ingestion, which made the process not scalable.

SGA Approach

To resourcefully manage the challenges SGA worked with the client product team to develop unified extraction requirements which made it easier to systematically extract data with no human intervention. This helped scale the workflow and helped in the reduction of overall volumes. Furthermore, standardizing extraction strategy with system automation helped reduce average cycle time by 70%

 

Exceptions Management

Blended Workflow

  • 70% automated workflow
  • 30% manual workflow

 

Communication Cadence

  • Extraction rate across different document types
  • Average processing time per document
  • Average TAT for every project accomplished

 

Process Engineering

  • Recommend change in extraction strategies with concerned stakeholders
  • Enable machine learning techniques through workflow change
  • Workflow automation for reducing cycle time
  • Data flow between stakeholders for consistent review and eradication of workflow gaps

 

Centralized System

  • Daily summary reports
  • Standardized extraction strategy across projects
  • Workflow monitoring tool to enable operational requirements for daily inflow
  • Automated summary reports for every project

 

Automation

  • Periodical reports
  • Proactive workflows to reduce human intervention and enable machine-learning techniques
  • Data Insights for operational outcomes

 

Engagement

We assessed the AI-based tools and ML capabilities to create a robust, strong exception-handling workflow. This also assisted in enabling proactive measures, reducing manual effort, and replacing it with smart automation.

Benefits & Outcomes

 

  • We achieved 3x growth in volumes with minimum operational costs.

 

Key Takeaways

 

  • We aided technology with a higher extraction percentage by providing regular data insights.
  • We developed a scalable workflow to reduce human intervention and manage multiple projects simultaneously with limited manual effort.
  • We implemented proactive workflow management for qualitative operational output.
  • We designed diverse operational structures curated for every workflow structure.
  • We created a structured cadence to manage agile workflow dynamics.

 

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