Course Outline

Introduction to Microsoft Power Platform

  • Overview of Power Platform
  • Key components and their interactions
  • Setting up the environment
  • Overview of common data service (DataVerse)
  • Understanding connectors and integrations

Power Apps

  • Introduction to Power Apps
  • Types of Power Apps (Canvas, Model-driven, and Portal)
  • Planning and setting up an app environment
  • Designing user interfaces
  • Integrating data sources
  • Using formulas and controls
  • Data modeling basics
  • Form customization and business rules
  • Automated workflows
  • Using custom connectors
  • Integration with other Power Platform components
  • Monitoring and analytics

Power Automate

  • Overview of automation capabilities
  • Different types of flows (Automated, Button, Scheduled, and Business process flows)
  • Triggering events and actions
  • Working with expressions and conditions
  • Error handling and debugging
  • Using AI Builder
  • Handling approvals and complex processes
  • Best practices for efficient flows

DataVerse

  • Introduction to DataVerse
  • Architecture and data management
  • Security modeling
  • Creating and managing entities
  • Relationships and data integrity
  • Using calculated fields and roll-up fields
  • Customizing forms, views, and dashboards

Power BI

  • Fundamentals of Power BI
  • Data sourcing and preparation
  • Building datasets and data models
  • Designing effective dashboards
  • Sharing insights across the organization
  • DAX and advanced data modeling
  • Administration and workspace management

Power Virtual Agents

  • Introduction to Power Virtual Agents
  • Planning and creating bots
  • Understanding the authoring canvas
  • Integrating bots with data sources
  • Handling user inputs and outputs
  • Using AI to enhance bot capabilities
  • Monitoring and analyzing bot performance

Summary and Next Steps

Requirements

  • Basic understanding of business processes
  • Basic IT and database knowledge

Audience

  • IT professionals
  • Data analysts
  • Business analysts
 35 Hours

Number of participants



Price per participant

Testimonials (7)

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