Course Description
Introduction
AI can help teams understand beneficiary experience faster by analyzing surveys, complaints, and comments to find key themes, drivers, and service issues. This practical course equips specialists with simple AI-enabled methods to turn feedback into clear insights and actions—while protecting beneficiary data and maintaining accuracy through human review.
Course Objectives
• Use AI to summarize feedback and identify themes
• Find key experience drivers and pain points
• Support journey improvement with insights
• Create simple insight reports and dashboards
• Apply safe, responsible AI practices
Target Audience
• Beneficiary experience specialists and coordinators
• Service center and complaint handling teams
• Quality and performance measurement staff
• Program teams improving beneficiary services
• Teams responsible for survey and feedback analysis
Course Outlines
Day 1: AI Basics for Experience Insights
• Where AI helps with feedback
• AI limits and verification needs
• Data types: surveys, calls, complaints
• Safe use and confidentiality
• Activity: Choose 3 AI use cases
Day 2: Theme Detection and Summaries
• Clustering comments into themes
• Sentiment basics (positive/negative)
• Extracting key issues and requests
• Creating simple theme labels
• Workshop: Build a theme report
Day 3: Driver and Segment Insights
• Linking themes to KPIs
• Simple driver analysis concepts
• Segmenting by channel/location
• Finding “moments that matter”
• Activity: Create an insight summary
Day 4: Turning Insights into Actions
• Prioritizing issues (impact vs effort)
• Writing recommendations clearly
• Tracking actions and owners
• Closing the loop with beneficiaries
• Case study: Improvement planning exercise
Day 5: Governance and Reporting
• Responsible AI rules for beneficiary data
• Quality checks for AI outputs
• Simple dashboards and monthly reports
• Adoption plan and training
• Final project: AI insights playbook
