• Post category:StudyBullet-19
  • Reading time:4 mins read


5+ Mock Exams | 240+ real like practice Questions | Aligned with ISTQB Syllabus | Comprehensive Exam Prep

What you will learn

Grasp core AI concepts, including AI effects, technologies, and frameworks.

Differentiate between narrow, general, and super AI.

Understand AI-based versus conventional systems.

Identify quality characteristics like bias, ethics, transparency, and safety in AI systems.

Comprehend machine learning workflows and algorithm selection processes.

Address dataset quality issues and manage data preparation for ML.

Explore testing techniques for neural networks and AI-specific quality characteristics.

Analyze test environments for AI-based systems.

Apply AI tools and techniques to enhance testing processes.

Prepare effectively with six full-length mock tests and detailed answer explanations.

Why take this course?

Are you preparing for the ISTQB Certified Tester AI Testing (CT-AI) certification? This course is your ultimate guide to mastering AI testing concepts and acing the exam. Designed to align perfectly with the ISTQB syllabus, it provides everything you need to build confidence and knowledge for this sought-after certification.

With 5+ full-length mock exams and 240+ expertly crafted practice questions, you’ll experience a testing environment that mirrors the actual exam. Each question is accompanied by detailed explanations, ensuring you understand the concepts behind the answers. The course covers every critical topic outlined in the syllabus, making it an all-in-one resource for passing the CT-AI exam.

Practice Tests aligned to the Course Content

1. Introduction to AI


Get Instant Notification of New Courses on our Telegram channel.

Note➛ Make sure your 𝐔𝐝𝐞𝐦𝐲 cart has only this course you're going to enroll it now, Remove all other courses from the 𝐔𝐝𝐞𝐦𝐲 cart before Enrolling!


  • AI Definitions and Frameworks
  • Narrow, General, and Super AI
  • Standards, Regulations, and Pre-trained Models

2. Quality Characteristics for AI-Based Systems

  • Ethics, Bias, and Safety in AI
  • Transparency, Adaptability, and Autonomy

3. Machine Learning Overview

  • Forms of ML and Workflow Essentials
  • Overfitting, Underfitting, and Dataset Management

4. Testing AI-Based Systems

  • Testing Neural Networks
  • Evaluating Functional and Non-functional Quality

Prepare for the ISTQB CT-AI certification with this top-rated course. With in-depth practice exams and expert content, you’ll be well on your way to acing the certification and advancing your career.

With this course structure and description, you can confidently attract a wide range of learners and professionals interested in ISTQB AI Testing certification.

English
language