COURSE OBJECTIVE:
Individuals who hold the ISTQB® Certified Tester- AI Testing certification should be able to accomplish the following business outcomes: Understand the current state and expected trends of AI Experience the implementation and testing of a ML model and recognize where testers can best influence its quality Understand the challenges associated with testing AI-Based systems, such as their self-learning capabilities, bias, ethics, complexity, non-determinism, transparency and explainability Contribute to the test strategy for an AI-Based system Design and execute test cases for AI-based systems Recognize the special requirements for the test infrastructure to support the testing of AI-based systems Understand how AI can be used to support software testing In addition, Certified AI Testers should be able to demonstrate their skills in the following areas once they have completed the course and passed the exam: Describe the AI effect and show how it influences the definition of AI Distinguish between narrow AI, general AI, and super AI Differentiate between AI-based systems and conventional systems Recognize the different technologies used to implement AI Identify popular AI development frameworks Compare the choices available for hardware to implement AI-based systems Explain the concept of AI as a Service (AIaaS) Explain the use of pre-trained AI models and the risks associated with them Describe how standards apply to AI-based systems Explain the importance of flexibility and adaptability as characteristics of AI-based systems Explain the relationship between autonomy and AI-based systems Explain the importance of managing evolution for AI-based systems Describe the different causes and types of bias for AI-based systems Discuss the ethical principles that should be respected in the development, deployment and use of AI-based systems Explain the occurrence of side effects and reward hacking in AI-based systems Explain how transparency, interpretability and explainability apply to AI-based systems Recall the characteristics that make it difficult to use AI-based systems in safety-related applications Describe classification and regression as part of supervised learning Describe clustering and association as part of unsupervised learning Describe reinforcement learning Summarize the workflow used to create an ML system Given a project scenario, identify an appropriate ML approach (from classification, regression, clustering, association, or reinforcement learning) Explain the factors involved in the selection of ML algorithms Summarize the concepts of underfitting and overfitting Demonstrate underfitting and overfitting Describe the activities and challenges related to data preparation Perform data preparation in support of the creation of an ML model Contrast the use of training, validation and test datasets in the development of an ML model Identify training and test datasets and create an ML model Describe typical dataset quality issues Recognize how poor data quality can cause problems with the resultant ML model Recall the different approaches to the labelling of data in datasets for supervised learning Recall reasons for the data in datasets being mislabeled Calculate the ML functional performance metrics from a given set of confusion matrix data Contrast and compare the concepts behind the ML functional performance metrics for classification, regression and clustering methods Summarize the limitations of using ML functional performance metrics to determine the quality of the ML system Select appropriate ML functional performance metrics and/or their values for a given ML model and scenario Evaluate the created ML model using selected ML functional performance metrics Explain the use of benchmark suites in the context of ML Explain the structure and working of a neural network including a DNN Experience the implementation of a perceptron Describe the different coverage measures for neural networks Explain how system specifications for AI-based systems can create challenges in testing Describe how AI-based systems are tested at each test level Recall those factors associated with test data that can make testing AI-based systems difficult Explain automation bias and how this affects testing Describe the documentation of an AI component and understand how documentation supports the testing of AI-based systems Explain the need for frequently testing the trained model to handle concept drift For a given scenario determine a test approach to be followed when developing an ML system Explain the challenges in testing created by the self-learning of AI-based systems Explain how autonomous AI-based systems are tested Explain how to test for bias in an AI-based system Explain the challenges in testing created by the probabilistic and non-deterministic nature of AI-based systems Explain the challenges in testing created by the complexity of AI-based systems Describe how the transparency, interpretability and explainability of AI-based systems can be tested Use a tool to show how explainability can be used by testers Explain the challenges in creating test oracles resulting from the specific characteristics of AI-based systems Select appropriate test objectives and acceptance criteria for the AI-specific quality characteristics of a given AI-based system Explain how the testing of ML systems can help prevent adversarial attacks and data poisoning Explain how pairwise testing is used for AI-based systems Apply pairwise testing to derive and execute test cases for an AI-based system Explain how back-to-back testing is used for AI-based systems Explain how A/B testing is applied to the testing of AI-based systems Apply metamorphic testing for the testing of AI-based systems Apply metamorphic testing to derive test cases for a given scenario and execute them Explain how experience-based testing can be applied to the testing of AI-based systems Apply exploratory testing to an AI-based system For a given scenario select appropriate test techniques when testing an AI-based system Describe the main factors that differentiate the test environments for AI-based systems from those required for conventional systems Describe the benefits provided by virtual test environments in the testing of AI-based systems Categorize the AI technologies used in software testing Discuss, using examples, those activities in testing where AI is less likely to be used Explain how AI can assist in supporting the analysis of new defects Explain how AI can assist in test case generation Explain how AI can assist in optimization of regression test suites Explain how AI can assist in defect prediction Implement a simple AI-based defect prediction system Explain the use of AI in testing user interfaces
TARGET AUDIENCE:
This course is aimed at software testers, business analysts, user interface managers and acceptance testers, test team leaders, test managers and project managers
COURSE PREREQUISITES:
People attending this this course should have a knowledge of software testing. For those who wish to sit the exam then and ISTQB Foundation in Software Testing Certificate is a pre-requisite.
COURSE CONTENT:
Chapter 1: 105 minutes Introduction to AI Chapter 2: 105 minutes Quality Characteristics for AI-Based SystemsChapter 3: 145 minutes Machine Learning (ML) – OverviewChapter 4: 230 minutes ML – DataChapter 5: 120 minutes ML Functional Performance MetricsChapter 6: 65 minutes ML – Neural Networks and TestingChapter 7: 115 minutes Testing AI-Based Systems OverviewChapter 8: 150 minutes Testing AI-Specific Quality Characteristics Chapter 9: 245 minutes Methods and Techniques for the Testing of AI-Based SystemsChapter 10: 30 minutes Test Environments for AI-Based SystemsChapter 11: 195 minutes Using AI for Testing
FOLLOW ON COURSES:
Any and all ISTQB Advanced level courses