AI Fundamentals Exam Prep

Study Guide

Artificial Intelligence Fundamentals Certificate Study Guide

Use the saved domain outline to connect ai concepts, terminology, and use cases, data, machine learning, and model development, ai engineering, platforms, and operations, ai governance, risk, ethics, and trustworthiness to scenario-based questions and explanations.

How the Exam Is Structured

Artificial Intelligence Fundamentals Certificate (AI Fundamentals) validates ai concepts, terminology, and use cases, data, machine learning, and model development, ai engineering, platforms, and operations, ai governance, risk, ethics, and trustworthiness. The ExamPal practice bank includes 40 premium questions and 40 free questions mapped across the official blueprint.

DomainWeightFocus
Domain 1 — AI Concepts, Terminology, and Use Cases 20% Task 1.1: Explain foundational AI concepts; Define artificial intelligence
Domain 2 — Data, Machine Learning, and Model Development 30% Task 2.1: Describe the role of data in AI systems; Importance of data characteristics
Domain 3 — AI Engineering, Platforms, and Operations 15% Task 3.1: Identify AI infrastructure and deployment options; Deployment options
Domain 4 — AI Governance, Risk, Ethics, and Trustworthiness 20% Task 4.1: Explain AI governance fundamentals; Define AI governance
Domain 5 — AI Assurance, Audit, and Responsible Adoption 15% Task 5.1: Explain the auditor’s role in AI environments; Understand the AI lifecycle

20% of exam

Domain 1 — AI Concepts, Terminology, and Use Cases

Covers foundational AI concepts, major learning approaches, common models and techniques, business value, and practical use cases. This domain emphasizes understanding what AI is, how it is used, and how different AI methods map to business problems.

Task 1.1: Explain foundational AI concepts
Define artificial intelligence
Define machine learning
Define deep learning
Define generative AI
Distinguish narrow AI from general AI
Common AI capabilities

30% of exam

Domain 2 — Data, Machine Learning, and Model Development

Covers the role of data, feature engineering, the machine learning lifecycle, model training and optimization, algorithm selection, performance evaluation, and NLP basics. This domain emphasizes how data and models are prepared, trained, assessed, and applied.

Task 2.1: Describe the role of data in AI systems
Importance of data characteristics
Data types
Data preparation activities
Task 2.2: Explain feature engineering and preprocessing
Feature selection and extraction
Common preprocessing techniques

15% of exam

Domain 3 — AI Engineering, Platforms, and Operations

Covers AI infrastructure, system components, operational considerations, and technical environments. This domain emphasizes deployment choices, monitoring, versioning, reproducibility, and the environments used to build and run AI systems.

Task 3.1: Identify AI infrastructure and deployment options
Deployment options
Benefits of cloud AI
Deployment considerations
Task 3.2: Describe AI system components
AI pipelines
Key system components

20% of exam

Domain 4 — AI Governance, Risk, Ethics, and Trustworthiness

Covers governance fundamentals, ethical principles, AI risks, risk management, and trustworthiness. This domain emphasizes oversight, responsible use, and the characteristics that make AI systems reliable and acceptable to stakeholders.

Task 4.1: Explain AI governance fundamentals
Define AI governance
Policies, roles, and accountability
Governance before deployment
Task 4.2: Identify ethical principles in AI
Key ethical principles
Ethical issues

15% of exam

Domain 5 — AI Assurance, Audit, and Responsible Adoption

Covers the auditor’s role in AI environments, audit considerations, assessment of AI outputs, and practices that support responsible adoption. This domain emphasizes assurance, validation, professional judgment, and human oversight in AI-enabled decision-making.

Task 5.1: Explain the auditor’s role in AI environments
Understand the AI lifecycle
AI affects assurance activities
Verify assumptions, controls, and outputs
Task 5.2: Identify audit considerations for AI systems
Audit scope and objectives
Review areas for AI audits

Key Terms to Know

These terms are loaded from the shared terminology pack and appear across the question explanations.

AI lifecycle
The full sequence of stages in an AI system, from design and development to deployment and monitoring.
GPU
Graphics Processing Unit; specialized hardware commonly used to accelerate AI and machine learning workloads.
K-means clustering
An unsupervised learning algorithm that partitions data into K groups based on similarity.
Manage function
The function in the NIST AI Risk Management Framework focused on prioritizing and acting on identified AI risks.
NIST AI Risk Management Framework
A framework from NIST for identifying, assessing, prioritizing, and managing risks associated with AI systems.
TPU
Tensor Processing Unit; specialized hardware optimized for machine learning computations.
agent
An entity in reinforcement learning that takes actions in an environment to achieve a goal.
audio data
Sound-based digital data used in AI applications such as speech recognition or classification.
audit scope
The defined boundaries, processes, systems, and objectives included in an audit review.
bias in content output
Unfair, skewed, or discriminatory results produced by an AI system due to patterns in its training data or design.
chatbot
A software application that simulates conversation with users, often for customer service or support.
classification
A predictive task where a model assigns inputs to predefined categories or labels.
cloud-based AI services
AI tools and platforms delivered over the cloud that provide scalable computing resources and managed capabilities.
clusters
Groups of similar data points formed by a clustering algorithm.
conversational AI
AI systems designed to interact with users through natural language in chat or voice interfaces.
customer segmentation
The process of grouping customers into segments based on similarities in behavior or characteristics.
data augmentation
Techniques used to create modified versions of existing data to improve model training.
decision tree
A machine learning model that splits data into branches based on input attributes to make classifications or predictions.

Official Materials and Guidance

This page is built from ISACA official materials and ExamPal shared release pack, the shared syllabus, topic tree, terminology pack, free pack, and premium pack.

  • -Guidance: ISACA official page, resources page, candidate guide links, study guide listing
  • -Domain outline: Official page lists learning areas; no public percentage split found: AI principles/concepts/uses; essential AI software/algorithms; AI risks and ethics.