Course Description
Introduction
AI is transforming IT quality assurance by improving test design, detecting defects earlier, strengthening monitoring, and accelerating root-cause analysis. This practical program equips IT quality specialists with AI-enabled methods to enhance QA effectiveness and efficiency—while maintaining governance, validation, and responsible use.
Course Objectives
By the end of this course, participants will be able to:
· Understand where AI supports IT quality assurance and where human review is essential
· Use AI to improve requirements clarity, test design, and coverage
· Apply AI to defect detection, triage, and root-cause support
· Enhance service quality monitoring using AI-assisted signals and alerts
· Establish simple governance, controls, and metrics for AI-enabled QA
Target Audience
This course is designed for:
· Senior IT quality specialists and QA leads
· Software testing and test automation professionals
· IT service quality and operations teams
· PMO/delivery teams responsible for release quality
· Risk, compliance, and audit teams supporting IT controls
Course Outlines
Day 1: AI Basics for IT QA
· AI use cases in QA
· AI limits and risks
· Data needed for AI QA
· Human-in-the-loop approach
· Activity: QA use-case shortlist
Day 2: AI for Test Design
· AI-assisted requirements review
· Test case generation basics
· Test prioritization and risk-based testing
· Coverage checks and gaps
· Workshop: Build a test pack
Day 3: AI for Defects and RCA
· Defect prediction concepts
· Smart triage and clustering
· Root-cause support using patterns
· Reducing duplicate defects
· Activity: Defect triage simulation
Day 4: AI for Service Quality
· AIOps overview for QA
· Anomaly detection basics
· Alert noise reduction
· Linking incidents to releases
· Case study: Quality incident review
Day 5: Governance and Metrics
· Controls for AI QA outputs
· Validation and documentation basics
· QA metrics and dashboards
· Adoption plan and training
· Final project: AI QA playbook
