Istqb Certified Tester Ai Testing-Full Training + Mock Exam
Published 3/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.93 GB | Duration: 5h 51m
Published 3/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.93 GB | Duration: 5h 51m
Complete ISTQB AI Testing Course: Full Exam Prep, Certification Training and a Sample Exam
What you'll learn
Understand fundamental AI concepts, history, and real-world applications.
Learn key quality attributes such as adaptability, transparency, and performance in AI systems.
Explore different ML types, workflows, and considerations for selecting ML models.
Understand data preprocessing, bias, quality challenges, and data handling in AI systems.
Learn evaluation metrics like accuracy, precision, recall, and F1-score for ML models.
Gain insights into neural networks, coverage measures, and challenges in testing deep learning models.
Examine key test levels, risks, and methodologies for validating AI systems.
Explore AI-specific testing techniques focusing on bias, explainability, and robustness.
Learn various testing methods, including pairwise testing, metamorphic testing, and back-to-back testing.
Understand the infrastructure and tools required for AI system testing.
Discover how AI can automate and enhance software testing techniques.
Requirements
No programming experience required. Detailed guides provided for everything you need to know
Description
This ISTQB Certified Tester AI Testing course is a complete training program designed to help professionals understand and test AI-based systems effectively. Covering the ISTQB syllabus, this course provides a structured approach to AI fundamentals, machine learning, quality characteristics, and AI testing methodologies.Course Outline:Chapter 1: Introduction to AI – Understand AI concepts, types, and applications.Chapter 2: Quality Characteristics for AI-Based Systems – Explore AI-specific attributes like transparency, fairness, and robustness.Chapter 3: Machine Learning (ML) Overview – Learn ML fundamentals, supervised and unsupervised learning.Chapter 4: ML Data – Understand data preprocessing, feature engineering, and dataset quality.Chapter 5: ML Functional Performance Metrics – Explore key evaluation techniques.Chapter 6: ML Neural Networks and Testing – Learn about deep learning and neural networks.Chapter 7: Testing AI-Based Systems Overview – Understand AI testing challenges.Chapter 8: Testing AI-Specific Quality Characteristics – Focus on explainability, bias, and safety testing.Chapter 9: Methods and Techniques for AI Testing – Learn testing strategies.Chapter 10: Test Environments for AI-Based Systems – Explore test automation and tools.Chapter 11: Using AI for Testing – Learn how AI can enhance software testing.This course is ideal for QA professionals, testers, and AI practitioners preparing for the ISTQB AI Testing certification with practical examples and exam-focused insights.
Overview
Section 1: Introduction and Chapter 1
Lecture 1 Introduction to the course
Lecture 2 Chapter 1: Introduction to Artificial Intelligence (AI)
Lecture 3 AI Technologies
Lecture 4 Hardware for AI-Based Systems
Lecture 5 AI as a Service (AIaaS)
Lecture 6 Pre-Trained models and Transfer Learning
Lecture 7 Standards. Regulations and AI
Section 2: Chapter 2: Quality Characteristics for AI-Based Systems
Lecture 8 Overview of AI Specific Characteristics
Lecture 9 Flexibility and Adaptability
Lecture 10 Autonomy and Evolution
Lecture 11 Bias
Lecture 12 Types of Bias: Algorthmic and Sample
Lecture 13 Ethics, Side-effects and Reward Hacking
Lecture 14 Transparency, Interpretability, Explainability and Safety
Section 3: Chapter 3: Machine Learning (ML) – Overview
Lecture 15 Forms of Machine Learning
Lecture 16 Machine Learning Workflow
Section 4: Chapter 4: ML Data
Lecture 17 Data Preparation and Split
Lecture 18 Exercise, Dataset Quality Issues and Effects, Data Labelling
Section 5: Chapter 5: ML Functional Performance Metrics
Lecture 19 Confusion Matrix and Accuracy
Lecture 20 Precision,Recall, F1-Score and Exercise
Lecture 21 Functional Performance Metrics: Limitations, Selections and Exercise
Lecture 22 Benchmark Suites for ML
Section 6: Chapter 6: ML – Neural Networks and Testing
Lecture 23 Overview of Neural Networks
Lecture 24 Exercise - Implement a Simple Perceptron and Training a Neural Network
Lecture 25 Coverage Measures and Criteria for Neural Networks
Section 7: Chapter 7: Testing AI-Based Systems Overview
Lecture 26 Test Levels for AI-Based Systems
Lecture 27 Automation Bias,Documentation, Cconcept Drift,Exercise, Risks and Mitigations
Section 8: Chapter 8: Testing AI-Specific Quality Characteristics
Lecture 28 Challenges Testing Self-Learning Systems
Lecture 29 Testing Autonomous AI-Based Systems, Algorithmic, Sample, and Inappropriate Bias
Lecture 30 Challenges Testing Probabilistic and Non-Deterministic AI-Based Systems
Lecture 31 Challenges Testing Complex AI-Based Systems
Lecture 32 Test Oracles for AI-Based Systems
Lecture 33 Test Objectives and Acceptance Criteria
Lecture 34 Testing the Transparency, Interpretability, and Explainability
Section 9: Chapter 9: Methods and Techniques for the Testing of AI-Based Systems
Lecture 35 Adversarial attacks and Data Poisoning
Lecture 36 Pairwise Testing
Lecture 37 Back-To-Back Testing and A/B Testing
Lecture 38 Metamorphic Testing
Lecture 39 Experience-Based Testing
Lecture 40 Exercise: Exploratory Testing and Exploratory Data Analysis (EDA)
Lecture 41 Selecting Test Techniques for AI-Based Systems
Section 10: Chapter 10: Test Environments for AI-Based Systems
Lecture 42 Test Environments for AI-Based Systems
Lecture 43 Benefits of Virtual Test Environments
Section 11: Chapter 11: Using AI for Testing
Lecture 44 Power of AI in Testing
Lecture 45 Using AI to Analyze Reported Defects
Lecture 46 Using AI for Test Case Generation
Lecture 47 Using AI for the Optimization of Regression Test Suites
Lecture 48 Exercise: Build a Defect Prediction System
Lecture 49 Using AI for Defect Prediction and Testing User Interfaces
Section 12: Final Sample Exam
This course is designed for professionals working with AI-based systems and AI-driven testing, including but not limited to: Testing & QA Professionals – Testers, test analysts, test engineers, test consultants, test managers, and user acceptance testers. Data & AI Specialists – Data analysts and professionals working with AI models. Software Development Teams – Developers, software engineers, and technical architects involved in AI testing. Project & Quality Managers – Business analysts, quality managers, and project managers looking to understand AI testing methodologies. IT & Operations Leaders – IT directors, operations team members, and management consultants involved in AI adoption. Prerequisite: Candidates must hold the Certified Tester Foundation Level (CTFL) certification to qualify for this course. This course is ideal for anyone looking to enhance their expertise in testing AI-based systems and leveraging AI for software testing.