Course Outline

Introduction to AI Builder and Low-Code AI

  • AI Builder capabilities and common scenarios
  • Licensing, governance, and tenant-level considerations
  • Overview of the Power Platform integrations (Power Apps, Power Automate, Dataverse)

OCR and Form Processing: Structured and Unstructured Documents

  • Differences between structured templates and free-form documents
  • Preparing training data: labeling fields, sample diversity, and quality guidelines
  • Building an AI Builder form processing model and evaluating extraction accuracy
  • Post-processing extracted data: validation, normalization, and error handling
  • Hands-on lab: OCR extraction from mixed form types and integration into a processing flow

Prediction Models: Classification and Regression

  • Problem framing: qualitative (classification) vs quantitative (regression) tasks
  • Feature preparation and handling missing data within Power Platform workflows
  • Training, testing, and interpreting model metrics (accuracy, precision, recall, RMSE)
  • Model explainability and fairness considerations in business use cases
  • Hands-on lab: build a custom prediction model for churn/score or numeric forecast

Integration with Power Apps and Power Automate

  • Embedding AI Builder models into canvas and model-driven apps
  • Creating automated flows to process extracted data and trigger business actions
  • Design patterns for scalable, maintainable AI-driven apps
  • Hands-on lab: end-to-end scenario — document upload, OCR, prediction, and workflow automation

Complementary Process Mining Concepts (Optional)

  • How Process Mining helps discover, analyze and improve processes using event logs
  • Using Process Mining outputs to inform model features and automate improvement loops
  • Practical example: combine Process Mining insights with AI Builder to reduce manual exceptions

Production Considerations, Governance, and Monitoring

  • Data governance, privacy, and compliance when using AI Builder on sensitive documents
  • Model lifecycle: retraining, versioning, and performance monitoring
  • Operationalizing models with alerts, dashboards, and human-in-the-loop validation

Summary and Next Steps

Requirements

  • Experience with Power Apps, Power Automate, or Power Platform administration
  • Familiarity with data concepts, basic ML ideas, and model evaluation
  • Comfort working with datasets, Excel/CSV exports, and basic data cleansing

Audience

  • Power Platform developers and solution architects
  • Data analysts and process owners seeking automation through AI
  • Business automation leads focused on document processing and prediction use cases
 14 Hours

Number of participants


Price Per Participant (Exc. Tax)

Testimonials (2)

Provisional Courses

Related Categories