AWS Certified AI Practitioner (AIF-C01) Study Guide

AIF-C01 AWS Certified AI Practitioner Study Guide

AIF-C01 Preparation Details

Preparing for the AIF-C01 AWS Certified AI Practitioner certification exam? Start here with a complete, objective-wise AIF-C01 study guide designed to help you pass faster.

This guide brings together official AWS documentation, key concepts, and curated resources for every AIF-C01 exam objective, making it ideal for both beginners and last-minute revision.

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AWS Generative AI Developer Prep

CourseraAWS Certified AI Practitioner (Pearson)
UdemyUltimate AWS Certified AI Practitioner
WhizlabsAWS Certified AI Practitioner Practice Test

Content Domain 1: Fundamentals of AI and ML

Task Statement 1.1: Explain basic AI concepts and terminologies

Define basic AI terms (for example, AI, ML, deep learning, neural networks, computer vision, NLP, model, algorithm, training and inferencing, bias, fairness, fit, LLM, GenAI, agentic AI)

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Machine Learning Lens – AWS Well-Architected Framework

Types of Algorithms – Amazon SageMaker AI

What is Amazon Bedrock?

Describe the similarities and differences between AI, ML, GenAI, deep learning, and agentic AI

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Generative AI Lens – AWS Well-Architected Framework

Machine Learning Lens – AWS Well-Architected Framework

Describe various types of inferencing (for example, batch, real-time, asynchronous, serverless)

Batch inference – Amazon Bedrock

Amazon Bedrock model inference

Deploy a model in Amazon SageMaker

Describe the different types of data in AI models (for example, labeled and unlabeled, tabular, time-series, image, text, structured and unstructured)

Types of Algorithms – Amazon SageMaker AI

Supported multimodal input for Amazon Bedrock models

Data Wrangler – Amazon SageMaker AI

Describe different types of AI/ML learning (for example, supervised learning, unsupervised learning, reinforcement learning methods)

Types of Algorithms – Amazon SageMaker AI

Built-in algorithms and pretrained models in Amazon SageMaker

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Task Statement 1.2: Identify practical use cases for AI

Recognize applications where AI/ML can provide value (for example, assist human decision making, solution scalability, automation)

Machine Learning Lens – AWS Well-Architected Framework

Machine Learning (ML) and Artificial Intelligence (AI) – Overview of Amazon Web Services

Determine when AI/ML solutions are not appropriate (for example, cost-benefit analyses, situations when a specific outcome is needed instead of a prediction)

Choosing an AWS machine learning service

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Select the appropriate AI/ML techniques for specific use cases (for example, regression, classification, clustering)

Types of Algorithms – Amazon SageMaker AI

Built-in algorithms and pretrained models in Amazon SageMaker

Machine Learning Lens – AWS Well-Architected Framework

Identify examples of real-world AI applications (for example, computer vision, NLP, speech recognition, recommendation systems, fraud detection, forecasting, knowledge bases, agentic AI)

Machine Learning (ML) and Artificial Intelligence (AI) – Overview of Amazon Web Services

Retrieve data and generate AI responses with Amazon Bedrock Knowledge Bases

Agents for Amazon Bedrock

Explain the capabilities of AWS managed AI/ML services (for example, Amazon SageMaker AI, Amazon Transcribe, Amazon Translate, Amazon Comprehend, Amazon Lex, Amazon Polly)

Amazon Machine Learning Documentation

Choosing an AWS machine learning service

What is Amazon SageMaker AI?

What is Amazon Comprehend?

What is Amazon Lex?

Identify when traditional ML models or foundation models (FMs) are appropriate for a specific use case (for example, based on regulatory concerns, explainability requirements, operational constraints)

Choosing an AWS machine learning service

Choosing a generative AI service – AWS Decision Guides

What Is Fairness and Model Explainability for Machine Learning Predictions? – Amazon SageMaker

Task Statement 1.3: Describe the AI/ML development lifecycle

Describe and differentiate components of an AI/ML pipeline

Amazon SageMaker Pipelines – create and manage ML workflows

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Machine Learning Lens – AWS Well-Architected Framework

Describe sources of FM models (for example, open source pre-trained models, training custom models)

Supported foundation models in Amazon Bedrock

Customize an Amazon Bedrock model by fine-tuning

Amazon SageMaker JumpStart

Describe methods to use a model in production (for example, managed API service, self-hosted API)

Amazon Bedrock API reference

Deploy a model in Amazon SageMaker

Choosing an AWS machine learning service

Identify relevant AWS services and features for each stage of an AI/ML pipeline (for example, Amazon Bedrock, Amazon Q, Amazon Quick, Kiro, SageMaker AI)

What is Amazon Bedrock?

What is Amazon Q Business?

Amazon SageMaker Pipelines – create and manage ML workflows

SageMaker Data Wrangler – Amazon SageMaker AI

Describe fundamental concepts of ML operations (MLOps) (for example, experimentation, repeatable processes, scalable systems, managing technical debt, achieving production readiness, model monitoring, model re-training)

Amazon SageMaker Model Monitor

Amazon SageMaker Pipelines – create and manage ML workflows

Amazon SageMaker Model Registry

Machine Learning Lens – AWS Well-Architected Framework

Describe model performance metrics (for example, accuracy, precision, recall, F1 score) and business metrics (for example, cost per user, development costs, customer feedback, ROI) to evaluate ML models

Metrics and validation – Amazon SageMaker AI

Accuracy – Amazon SageMaker AI

Choose the best performing model using Amazon Bedrock evaluations

Prepare – Machine Learning Lens

Content Domain 2: Fundamentals of GenAI

Task Statement 2.1: Explain the basic concepts of generative AI (GenAI)

Define foundational GenAI concepts (for example, tokens, chunking, embeddings, vectors, prompt engineering, transformer-based LLMs, FMs, multi-modal models, diffusion models)

Key terminology – Amazon Bedrock

Prompt engineering concepts – Amazon Bedrock

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Configure chunking for Amazon Bedrock Knowledge Bases

Titan Embeddings G1 – Amazon Bedrock

Identify potential use cases for GenAI models (for example, image, video, and audio generation; summarization; AI assistants; translation; code generation; customer service agents; search; recommendation engines)

Layer 4: Repeatable application patterns for common generative AI use cases – AWS Prescriptive Guidance

What is Amazon Bedrock?

Video generation with Sora 2 – Amazon Bedrock

Amazon Q Business User Guide

Describe the FM lifecycle (for example, data selection, model selection, pre-training, fine-tuning, evaluation, deployment, feedback)

Customize an Amazon Bedrock model by fine-tuning

Choose the best performing model using Amazon Bedrock evaluations

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Generative AI Lens – AWS Well-Architected Framework

Describe the token-based pricing model and its effect on cost and performance for inference

Amazon Bedrock pricing

Monitor your token usage by counting tokens before running inference – Amazon Bedrock

Model execution strategies for AI workloads – AWS Prescriptive Guidance

Describe the role of context engineering in FM applications

Prompt engineering concepts – Amazon Bedrock

Architecting a successful generative AI proof of concept – AWS Prescriptive Guidance

Retrieve data and generate AI responses with Amazon Bedrock Knowledge Bases

Define foundational agentic AI concepts (for example, multi-agent system patterns, MCP and its role in connecting agents to external systems, multi-agent communication patterns, memory management, tool usage, and workflow orchestration)

Agents for Amazon Bedrock

Overview – Amazon Bedrock AgentCore

Amazon Bedrock AgentCore Gateway: Securely connect tools and other resources

Amazon Bedrock AgentCore Memory

Guidance for Multi-Agent Orchestration on AWS

Task Statement 2.2: Understand the capabilities and limitations of GenAI for solving business problems

Describe the advantages of GenAI (for example, adaptability, responsiveness, conversational capabilities, ability to generate content)

What is Amazon Bedrock?

Choosing a generative AI service – AWS Decision Guides

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Identify disadvantages of GenAI solutions (for example, hallucinations, interpretability, inaccuracy, nondeterminism)

Use contextual grounding check to filter hallucinations in responses – Amazon Bedrock

Prompt engineering concepts – Amazon Bedrock

Generative AI Lens – AWS Well-Architected Framework

Identify factors to consider when selecting GenAI models (for example, model types, performance requirements, capabilities, constraints, compliance, cost, latency, model complexity)

Choosing a generative AI service – AWS Decision Guides

Amazon Bedrock or Amazon SageMaker AI?

Supported foundation models in Amazon Bedrock

Understanding intelligent prompt routing in Amazon Bedrock

Determine business value and metrics for GenAI applications (for example, cross-domain performance, ROI, efficiency, conversion rate, average revenue per user, accuracy, customer lifetime value)

Generative AI quality metrics – Generative AI Lens

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Choose the best performing model using Amazon Bedrock evaluations

Task Statement 2.3: Describe AWS infrastructure and technologies for building GenAI applications

Identify AWS services and features to develop GenAI applications (for example, Amazon Bedrock, Amazon SageMaker AI, SageMaker JumpStart, Amazon Q, Kiro, Strands Agents, Amazon Bedrock AgentCore)

What is Amazon Bedrock?

Amazon SageMaker JumpStart

Overview – Amazon Bedrock AgentCore

What is Amazon Q Developer?

Amazon Bedrock or Amazon SageMaker AI?

Describe the advantages of using AWS GenAI services to build applications (for example, accessibility, lower barrier to entry, efficiency, cost-effectiveness, speed to market, ability to meet business objectives)

Choosing a generative AI service – AWS Decision Guides

Model execution strategies for AI workloads – AWS Prescriptive Guidance

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Describe the benefits of AWS infrastructure for GenAI applications (for example, security, compliance, responsibility, safety)

Security in Amazon Bedrock

Implementing security and responsible AI – AWS Prescriptive Guidance

Layer 3: Security and governance for generative AI platforms on AWS – AWS Prescriptive Guidance

Describe cost tradeoffs of AWS GenAI services (for example, responsiveness, availability, redundancy, performance, regional coverage, token-based pricing, provision throughput, custom models)

Amazon Bedrock pricing

Increase model invocation capacity with Provisioned Throughput in Amazon Bedrock

Increase throughput with cross-Region inference – Amazon Bedrock

GENCOST03-BP03 Implement prompt caching to reduce token costs – Generative AI Lens

Content Domain 3: Applications of Foundation Models

Task Statement 3.1: Describe design considerations for applications that use foundation models (FMs)

Identify selection criteria to choose FMs (for example, cost, modality, latency, multi-lingual, model size, model complexity, customization, input/output length, prompt caching)

Supported foundation models in Amazon Bedrock

Choosing a generative AI service – AWS Decision Guides

Understanding intelligent prompt routing in Amazon Bedrock

GENCOST03-BP03 Implement prompt caching to reduce token costs – Generative AI Lens

Describe the effect of inference parameters on model responses (for example, temperature, input/output length)

Inference parameters for foundation models – Amazon Bedrock

Configure and customize queries and response generation – Amazon Bedrock

Define Retrieval Augmented Generation (RAG) and describe its business applications (for example, Amazon Bedrock Knowledge Bases)

Retrieve data and generate AI responses with Amazon Bedrock Knowledge Bases

Knowledge bases for Amazon Bedrock – AWS Prescriptive Guidance

Retrieval Augmented Generation options and architectures on AWS – AWS Prescriptive Guidance

Identify AWS services that help store embeddings within vector databases (for example, Amazon OpenSearch Service, Amazon Aurora, Amazon Neptune, Amazon RDS for PostgreSQL)

Prerequisites for using a vector store you created for a knowledge base – Amazon Bedrock

Choosing an AWS vector database for RAG use cases – AWS Prescriptive Guidance

Vector database options – AWS Prescriptive Guidance

Amazon OpenSearch Service – vector database capabilities

Explain the cost tradeoffs of various approaches to FM customization (for example, pre-training, fine-tuning, in-context learning, RAG, model distillation)

Customize an Amazon Bedrock model by fine-tuning

Distill a model in Amazon Bedrock

Architecting a successful generative AI proof of concept – AWS Prescriptive Guidance

Amazon Bedrock pricing

Define the role of AI agents and describe AI agents’ business applications

Agents for Amazon Bedrock

Overview – Amazon Bedrock AgentCore

Layer 4: Repeatable application patterns for common generative AI use cases – AWS Prescriptive Guidance

Task Statement 3.2: Choose effective prompt engineering techniques

Define the concepts and constructs of prompt engineering (for example, context, instruction, negative prompts)

What is a prompt? – Amazon Bedrock

Prompt engineering concepts – Amazon Bedrock

Prompt templates and examples for Amazon Bedrock text models

Define techniques for prompt engineering (for example, chain-of-thought, zero-shot, single-shot, few-shot, prompt templates)

Prompt engineering concepts – Amazon Bedrock

Optimizing generative AI prompts – AWS Prescriptive Guidance

Advanced prompt templates – Amazon Bedrock

Identify and describe the benefits and best practices for prompt engineering (for example, response quality improvement, experimentation, guardrails, discovery, specificity and concision, using multiple comments)

Optimizing generative AI prompts – AWS Prescriptive Guidance

LLM prompt engineering best practices – AWS Prescriptive Guidance

Safeguard your application with Amazon Bedrock Guardrails

Define potential risks and limitations of prompt engineering (for example, exposure, poisoning, hijacking, jailbreaking)

Prompt injection security – Amazon Bedrock

Detect prompt attacks with Amazon Bedrock Guardrails

4. Input validation and guardrails for agentic AI systems on AWS – AWS Prescriptive Guidance

LLM prompt engineering best practices FAQ – AWS Prescriptive Guidance

Describe prompt versioning and management strategies that use Amazon Bedrock Prompt Management

Construct and store reusable prompts with Prompt management in Amazon Bedrock

Manage versions of your prompt – Amazon Bedrock

Test a prompt using Prompt management – Amazon Bedrock

Task Statement 3.3: Describe the training and fine-tuning process for FMs

Describe the key elements of training an FM (for example, pre-training, fine-tuning, continuous pre-training, distillation)

Customize an Amazon Bedrock model by fine-tuning

Customize a model with fine-tuning or continued pre-training in Amazon Bedrock

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Define methods for fine-tuning an FM (for example, instruction tuning, adapting models for specific domains, transfer learning, continuous pre-training)

Customize a model with fine-tuning or continued pre-training in Amazon Bedrock

Fine-tune Amazon Bedrock models

Amazon SageMaker JumpStart

Describe how to prepare data to fine-tune an FM (for example, data curation, governance, size, labeling, representativeness, RLHF)

Prepare the fine-tuning training and validation datasets – Amazon Bedrock

Amazon SageMaker Data Wrangler

Amazon SageMaker Ground Truth – Create datasets

Amazon Augmented AI (Amazon A2I) Developer Guide

Task Statement 3.4: Describe methods to evaluate FM performance

Determine approaches to evaluate FM performance (for example, human-in-the-loop evaluation, benchmark datasets, Amazon Bedrock Model Evaluation)

Choose the best performing model using Amazon Bedrock evaluations

Create a human evaluation job – Amazon Bedrock

Create an evaluation job – Amazon Bedrock

Identify relevant metrics to assess FM performance (for example, ROUGE, BLEU, BERTScore, LLM-as-a-judge)

Review metrics for an automated model evaluation job in Amazon Bedrock (console)

Use metrics to understand model performance – Amazon Bedrock

Evaluate model performance using another LLM as a judge – Amazon Bedrock

Evaluate an Amazon Bedrock model for text summarization accuracy – Amazon SageMaker AI

Determine whether an FM effectively meets business objectives (for example, productivity, user engagement, task engineering)

Generative AI quality metrics – Generative AI Lens

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Identify approaches to evaluate the performance of applications built with FM (for example, RAG, agents, workflows)

RAG evaluation for Amazon Bedrock Knowledge Bases

Evaluators – Amazon Bedrock AgentCore

Generative AI quality metrics – Generative AI Lens

Identify business objective alignment metrics for AI applications (for example, task completion rate, user satisfaction, cost per interaction)

Generative AI quality metrics – Generative AI Lens

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Amazon Bedrock pricing

Content Domain 4: Guidelines for Responsible AI

Task Statement 4.1: Explain the development of AI systems that are responsible

Identify features of responsible AI (for example, bias, fairness, inclusivity, robustness, safety, veracity)

Responsible AI – Generative AI Lens

Responsible use – Amazon Nova

What Is Fairness and Model Explainability for Machine Learning Predictions? – Amazon SageMaker

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Explain how to use tools to identify features of responsible AI (for example, Amazon Bedrock Guardrails)

Safeguard your application with Amazon Bedrock Guardrails

Create a guardrail – Amazon Bedrock

Use contextual grounding check to filter hallucinations in responses – Amazon Bedrock

Define responsible practices to select a model (for example, environmental considerations, sustainability)

Responsible AI – Generative AI Lens

Choosing a generative AI service – AWS Decision Guides

Implementing security and responsible AI – AWS Prescriptive Guidance

Identify legal risks of working with generative AI (for example, intellectual property infringement claims, biased model outputs, loss of customer trust, end user risk, hallucinations)

Responsible AI – Generative AI Lens

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Use contextual grounding check to filter hallucinations in responses – Amazon Bedrock

Identify characteristics of datasets (for example, inclusivity, diversity, curated data sources, balanced datasets)

Prepare – Machine Learning Lens – AWS Well-Architected Framework

Pre-training Data Bias – Amazon SageMaker AI

Prepare the fine-tuning training and validation datasets – Amazon Bedrock

Describe effects of bias and variance (for example, effects on demographic groups, inaccuracy, overfitting, underfitting)

What Is Fairness and Model Explainability for Machine Learning Predictions? – Amazon SageMaker

Pre-training Data Bias – Amazon SageMaker AI

Post-training Bias – Amazon SageMaker AI

Describe tools to detect and monitor bias, trustworthiness, and truthfulness (for example, analyzing label quality, human audits, subgroup analysis, Amazon SageMaker Clarify, SageMaker Model Monitor, Amazon Augmented AI [Amazon A2I])

Fairness, model explainability and bias detection with SageMaker Clarify – Amazon SageMaker AI

Amazon SageMaker Model Monitor

Amazon Augmented AI (Amazon A2I) Developer Guide

Monitor bias drift and feature attribution drift – Amazon SageMaker AI

Task Statement 4.2: Recognize the importance of transparent and explainable models

Describe the differences between models that are transparent and explainable and models that are not transparent and explainable

Responsible AI – Generative AI Lens

What Is Fairness and Model Explainability for Machine Learning Predictions? – Amazon SageMaker

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

Describe tools to identify transparent and explainable models (for example, Amazon SageMaker Model Cards, SageMaker Clarify, Amazon Bedrock Model Evaluations, open source models, data, licensing)

Amazon SageMaker Model Cards

Fairness, model explainability and bias detection with SageMaker Clarify – Amazon SageMaker AI

Choose the best performing model using Amazon Bedrock evaluations

Trace the steps that Amazon Bedrock Agents takes

Identify tradeoffs between model safety and transparency (for example, measure interpretability and performance)

Responsible AI – Generative AI Lens

Implementing security and responsible AI – AWS Prescriptive Guidance

What Is Fairness and Model Explainability for Machine Learning Predictions? – Amazon SageMaker

Describe principles of human-centered design for explainable AI (for example, user-feedback mechanisms, AI decision transparency)

Amazon Augmented AI (Amazon A2I) Developer Guide

Human in the loop for Amazon Bedrock Agents

Responsible AI – Generative AI Lens

Content Domain 5: Security, Compliance, and Governance for AI Solutions

Task Statement 5.1: Explain methods to secure AI systems

Identify AWS services and features to secure AI systems (for example, IAM roles, policies, and permissions; encryption; Amazon Macie; AWS PrivateLink; AWS shared responsibility model; Amazon Bedrock AgentCore Identity; Policy in AgentCore; Amazon Bedrock Guardrails)

Security in Amazon Bedrock

Amazon Bedrock and data protection

Data protection in Amazon Bedrock AgentCore Identity

Safeguard your application with Amazon Bedrock Guardrails

Layer 3: Security and governance for generative AI platforms on AWS – AWS Prescriptive Guidance

Describe the concept of source citation and documenting data origins (for example, data lineage, data cataloging, Amazon SageMaker Model Cards)

Amazon SageMaker Model Cards

AWS Glue Data Catalog

Log Amazon Bedrock API calls with AWS CloudTrail

Describe best practices for secure data engineering (for example, assessing data quality, implementing privacy-enhancing technologies, data access control, data integrity)

AWS Glue Data Quality

AWS Privacy Reference Architecture – AWS Prescriptive Guidance

Data Protection – Machine Learning Lens

Security perspective: Compliance and assurance of AI systems – AWS Cloud Adoption Framework

Describe security and privacy considerations for AI systems (for example, application security, threat detection, vulnerability management, infrastructure protection, prompt injection, encryption at rest and in transit, data leakage prevention, output filtering and validation, audit trail and logging requirements for AI interactions, toxicity)

Prompt injection security – Amazon Bedrock

Detect prompt attacks with Amazon Bedrock Guardrails

Capability 3. Providing secure access, usage, and implementation of generative AI autonomous agents – AWS Prescriptive Guidance

4. Input validation and guardrails for agentic AI systems on AWS – AWS Prescriptive Guidance

Capability 1. Providing developers and data scientists with secure access to generative AI FMs – AWS Prescriptive Guidance

Describe hallucination detection methods and grounding techniques to improve output accuracy (for example, RAG grounding, output validation, confidence scoring)

Use contextual grounding check to filter hallucinations in responses – Amazon Bedrock

Retrieve data and generate AI responses with Amazon Bedrock Knowledge Bases

Grounding and Retrieval Augmented Generation – AWS Prescriptive Guidance

Task Statement 5.2: Recognize governance and compliance regulations for AI systems

Identify AWS services and features to assist with governance and regulation compliance (for example, AWS Config, Amazon Inspector, AWS Audit Manager, AWS Artifact, AWS CloudTrail, AWS Trusted Advisor)

What is AWS Audit Manager?

What is AWS Config?

What is AWS Artifact?

Log Amazon Bedrock API calls with AWS CloudTrail

What is Amazon Inspector?

Choosing an AWS cloud governance service – AWS Decision Guides

Describe data governance strategies (for example, data lifecycles, logging, residency, monitoring, observation, retention)

Enterprise-grade security and governance for generative AI applications – AWS Prescriptive Guidance

Security and governance – AWS Prescriptive Guidance

Security perspective: Compliance and assurance of AI systems – AWS Cloud Adoption Framework

Amazon S3 Object Lifecycle Management

Describe processes to follow governance protocols (for example, policies, review cadence, review strategies, governance frameworks such as the Generative AI Security Scoping Matrix, transparency standards, team training requirements)

Generative AI Lens – AWS Well-Architected Framework

Enterprise-grade security and governance for generative AI applications – AWS Prescriptive Guidance

Layer 3: Security and governance for generative AI platforms on AWS – AWS Prescriptive Guidance

AWS Cloud Adoption Framework for Artificial Intelligence, Machine Learning, and Generative AI

This brings us to the end of the AIF-C01 AWS Certified AI Practitioner exam study guide.

What do you think? Let me know in the comments section if I have missed out on anything. Also, I love to hear from you how your preparation is going on!

In case you are preparing for other AWS certification exams, check out the AWS study guides for those exams.

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