Microsoft Practice Test AI-102: Designing and Implementing an Azure AI Solution

Rating:
100% of 100
Only %1 left

The AI-102 practice test trains you in implementing and managing artificial intelligence (AI) solutions in Azure.

Why should I use the AI-102 Practice Test to prepare for the official exam?

The AI-102 practice test trains you in implementing and managing artificial intelligence (AI) solutions in Azure. It now includes updated content on integrating Azure OpenAI services, building generative AI applications, and applying responsible AI principles. You'll gain hands-on experience with the latest Azure SDKs and REST APIs to develop solutions involving natural language processing, image and video analysis, knowledge mining, and real-time AI processing. These updates ensure you're prepared for the evolving demands of AI engineering in the Azure ecosystem.

 

The AI-102 practice test includes two different modes: certification and practice mode. Certification mode allows you to assess your knowledge and discover your weak areas, with practice mode allowing you to focus on the areas that need development.

Regular Price $99.00 As low as $54.45

Depending on the country of purchase, prices may be subject to VAT.

All Practice Tests, Up to 60% Off!
Choose the subscription plan that best fits your needs and enjoy full access to our entire practice tests catalog.
Start Now!

Full access to the Practice Test catalog
Get a Subscription Plan from $21.

Questions: 148
Release Date: 08/2021 (Last update: 06/2025)
Job Role: AI Engineer
Language: English

The AI-102 practice test contains 148 questions and covers the following objectives:

Plan and manage an Azure AI solution - 29 questions

Select the appropriate Azure AI Foundry services

  • Select the appropriate service for a generative AI solution
  • Select the appropriate service for a computer vision solution
  • Select the appropriate service for a natural language processing solution
  • Select the appropriate service for a speech solution
  • Select the appropriate service for an information extraction solution
  • Select the appropriate service for a knowledge mining solution

Plan, create and deploy an Azure AI Foundry service

  • Plan for a solution that meets Responsible AI principles
  • Create an Azure AI resource
  • Choose the appropriate AI models for your solution
  • Deploy AI models using the appropriate deployment options
  • Install and utilize the appropriate SDKs and APIs
  • Determine a default endpoint for a service
  • Integrate Azure AI Foundry Services into a continuous integration and continuous delivery (CI/CD) pipeline
  • Plan and implement a container deployment

Manage, monitor, and secure an Azure AI Foundry Service

  • Monitor an Azure AI resource
  • Manage costs for Azure AI Foundry Services
  • Manage and protect account keys
  • Manage authentication for an Azure AI Foundry Service resource

Implement AI solutions responsibly

  • Implement content moderation solutions
  • Configure responsible AI insights, including content safety
  • Implement responsible AI, including content filters and blocklists
  • Prevent harmful behavior, including prompt shields and harm detection
  • Design a responsible AI governance framework

Implement generative AI solutions - 27 questions

Build generative AI solutions with Azure AI Foundry

  • Plan and prepare for a generative AI solution
  • Deploy a hub, project, and necessary resources with Azure AI Foundry
  • Deploy the appropriate generative AI model for your use case
  • Implement a prompt flow solution
  • Implement a RAG pattern by grounding a model in your data
  • Evaluate models and flows
  • Integrate your project into an application with Azure AI Foundry SDK
  • Utilize prompt templates in your generative AI solution

Use Azure OpenAI in Foundry Models to generate content

  • Provision an Azure OpenAI in Foundry Models resource
  • Select and deploy an Azure OpenAI model
  • Submit prompts to generate code and natural language responses
  • Use the DALL-E model to generate images
  • Integrate Azure OpenAI into your own application
  • Use large multimodal models in Azure OpenAI
  • Implement an Azure OpenAI Assistant

Optimize and operationalize a generative AI solution

  • Configure parameters to control generative behavior
  • Configure model monitoring and diagnostic settings, including performance and resource consumption
  • Optimize and manage resources for deployment, including scalability and foundational model updates
  • Enable tracing and collect feedback
  • Implement model reflection
  • Deploy containers for use on local and edge devices
  • Implement orchestration of multiple generative AI models
  • Apply prompt engineering techniques to improve responses
  • Fine-tune an generative model

Implement an agentic solution 8 - questions

Create custom agents

  • Understand the role and use cases of an agent
  • Configure the necessary resources to build an agent
  • Create an agent with the Azure AI Foundry Agent Service
  • Implement complex agents with Semantic Kernel and Autogen
  • Implement complex workflows including orchestration for a multi-agent solution,multiple users, and autonomous capabilities
  • Test, optimize and deploy an agent

Implement computer vision solutions 26 - questions

Analyze images

  • Select visual features to meet image processing requirements
  • Detect objects in images and generate image tags
  • Include image analysis features in an image processing request
  • Interpret image processing responses
  • Extract text from images using Azure AI Vision
  • Convert handwritten text using Azure AI Vision

Implement custom vision models

  • Choose between image classification and object detection models
  • Label images
  • Train a custom image model, including image classification and object detection
  • Evaluate custom vision model metrics
  • Publish a custom vision model
  • Consume a custom vision model
  • Build a custom vision model code first

Analyze videos

  • Use Azure AI Video Indexer to extract insights from a video or live stream
  • Use Azure AI Vision Spatial Analysis to detect presence and movement of people in video

Implement natural language processing solutions 36 - questions

Analyze and translate text

  • Extract key phrases and entities
  • Determine sentiment of text
  • Detect the language used in text
  • Detect personally identifiable information (PII) in text
  • Translate text and documents by using the Azure AI Translator service

Process and translate speech

  • Integrate generative AI speaking capabilities in an application
  • Implement text-to-speech and speech-to-text using Azure AI Speech
  • Improve text-to-speech by using Speech Synthesis Markup Language (SSML)
  • Implement custom speech solutions with Azure AI Speech
  • Implement intent and keyword recognition with Azure AI Speech
  • Translate speech-to-speech and speech-to-text by using the Azure AI Speech service

Implement custom language models

  • Create intents, entities, and add utterances
  • Train, evaluate, deploy, and test a language understanding model
  • Optimize, backup, and recover language understanding model
  • Consume a language model from a client application
  • Create a custom question answering project
  • Add question-and-answer pairs and import sources for question answering
  • Train, test, and publish a knowledge base
  • Create a multi-turn conversation
  • Add alternate phrasing and chit-chat to a knowledge base
  • Export a knowledge base
  • Create a multi-language question answering solution
  • Implement custom translation, including training, improving, and publishing a custom model

Implement knowledge mining and information extraction solutions 22 - questions

Implement an Azure AI Search solution

  • Provision an Azure AI Search resource, create an index, and define a skillset
  • Create data sources and indexers
  • Implement custom skills and include them in a skillset
  • Create and run an indexer
  • Query an index, including syntax, sorting, filtering, and wildcards
  • Manage Knowledge Store projections, including file, object, and table projections
  • Implement semantic and vector store solutions

Implement an Azure AI Document Intelligence solution

  • Provision a Document Intelligence resource
  • Use prebuilt models to extract data from documents
  • Implement a custom document intelligence model
  • Train, test, and publish a custom document intelligence model
  • Create a composed document intelligence model

Extract information with Azure AI Content Understanding

  • Create an OCR pipeline to extract text from images and documents
  • Summarize, classify, and detect attributes of documents
  • Extract entities, tables, and images from documents
  • Process and ingest documents, images, videos, and audio with Azure AI Content Understanding

Notes: 

  • The bullets that follow each of the skills measured are intended to illustrate how we are assessing that skill. Related topics may be covered in the exam.
  • Most questions cover features that are general availability (GA). The exam may contain questions on Preview features if those features are commonly used.
System Requirements

A practice test simulates the actual exam and prepares you for what to expect in the real thing. A MeasureUp practice test contains around 150 questions covering the exam objective domains. It includes two specific test-taking modes to prepare candidates for their certification: Certification Mode and Practice Mode.

  • Practice Mode allows users to customize their testing environment. They can select the number of questions, set a time limit, randomize question order, and choose how questions are displayed.
  • Certification Mode simulates the actual certification exam environment. This mode is timed and does not show answers or explanations until after the test is completed.

How does it work?

Check out our video to see exactly how MeasureUp’s practice tests work.

Why should you trust MeasureUp over free learning material?

MeasureUp Free learning material
  • A greater number of questions, so more opportunities to learn.
  • Detailed explanations with online references for correct and incorrect answers.
  • A total of fourteen different question types.
  • Customize the test based on your needs. Certification & Practice Mode.
  • A small proportion of questions to introduce the exam.
  • Brief or no explanations of both correct and incorrect answer options.
  • Limited types of questions compared to the actual exam.
  • Just one type of assessment, without customization or a countdown timer.

Will studying with a MeasureUp practice test improve my chances of passing on the first attempt?

Yes. MeasureUp's practice tests are specifically designed to help you save time and pass on the first try. The test is fully customizable, allowing you to focus on your weak areas. Since the style, objectives, question types, and difficulty match the official exam, passing the practice test twice in Certification Mode means you're exam-ready.

What can I expect to earn if I pass the AI-102 exam?

Once you pass the AI-102 and secure a job as a mid-level AI Engineer, you can expect to earn a salary of approximately $145,000 in the United States.

Source: Nigel Franks International.

Only registered users can write reviews. Please Sign in or create an account

AI-102 PRACTICE TEST

Why should you trust AI-102 Practice Test from MeasureUp over free learning material?

The MeasureUp AI-102 practice test has many advantages over free learning material, including:

  • More questions equal more opportunities to learn.
  • Detailed explanations with online references of correct and incorrect answers.
  • A total of fourteen different question types, replicating the look and feel of the real exam.
  • Customizable based on your needs. Certification & Practice Modes.
  • Test Pass Guarantee.
  • Created by experts.

 

Will the questions be the same as the actual exam?

While the questions emulate the official exam in style, content, and difficulty, they are not identical due to copyright restrictions. This ensures you understand the material thoroughly and are well-prepared for any variation in the actual exam.

 

AI-102 CERTIFICATION EXAM

What is the AI-102?

The AI-102 certification exam validates your ability to provision and manage artificial intelligence (AI) solutions in Azure.

 

Is the AI-102 exam hard?

The AI-102 certification exam is one of Microsoft’s Associate-level exams, meaning it is of intermediate difficulty. If you're new to AI in Azure, it's recommended to start with the AI-900.

 

How can I prepare for the AI-102 certification exam?

  • Review the AI-102 objective domains.
  • Create your study plan.
  • Enroll in the MeasureUp practice tests. These emulate the actual exam in style, format, skills, and difficulty, and are available in both practice and certification modes.
  • Practice, practice, practice! After reviewing all questions and explanations, take the test in Certification Mode. When you pass it twice with a score of 90% or more, you're exam ready!

 

How many questions does AI-102 have?

The AI-102 certification exam typically includes between 50 and 55 questions.

 

Is AI-102 worth it?

If you're interested in getting certified in AI on Azure and want to demonstrate your skills to employers, following the Microsoft certification path is the best way to do so.