00:20:00

Microsoft Azure AI Fundamentals Practice Test (AI-900)

Use the form below to configure your Microsoft Azure AI Fundamentals Practice Test (AI-900). The practice test can be configured to only include certain exam objectives and domains. You can choose between 5-100 questions and set a time limit.

Logo for Microsoft Azure AI Fundamentals AI-900
Questions
Number of questions in the practice test
Free users are limited to 20 questions, upgrade to unlimited
Seconds Per Question
Determines how long you have to finish the practice test
Exam Objectives
Which exam objectives should be included in the practice test

Microsoft Azure AI Fundamentals AI-900 Information

The Microsoft Certified: Azure AI Fundamentals (AI-900) exam is an entry-level certification designed for individuals seeking foundational knowledge of artificial intelligence (AI) and machine learning (ML) concepts and their applications within the Microsoft Azure platform. The AI-900 exam covers essential AI workloads such as anomaly detection, computer vision, and natural language processing, and it emphasizes responsible AI principles, including fairness, transparency, and accountability. While no deep technical background is required, a basic familiarity with technology and Azure’s services can be helpful, making this certification accessible to a wide audience, from business decision-makers to early-career technologists.

The exam covers several major domains, starting with AI workloads and considerations, which introduces candidates to various types of AI solutions and ethical principles. Next, it delves into machine learning fundamentals, explaining core concepts like data features, model training, and types of machine learning such as classification and clustering. The exam also emphasizes specific Azure tools for implementing AI solutions, such as Azure Machine Learning Studio for visual model-building, the Computer Vision service for image analysis, and Azure Bot Service for conversational AI. Additionally, candidates learn how natural language processing (NLP) tasks, including sentiment analysis, translation, and speech recognition, are managed within Azure’s language and speech services.

Achieving the AI-900 certification demonstrates a solid understanding of AI and ML basics and prepares candidates for more advanced Azure certifications in data science or AI engineering. It’s an excellent credential for those exploring how AI solutions can be effectively used within the Azure ecosystem, whether to aid business decision-making or to set a foundation for future roles in AI and data analytics.

Microsoft Azure AI Fundamentals AI-900 Logo
  • Free Microsoft Azure AI Fundamentals AI-900 Practice Test

  • 20 Questions
  • Unlimited
  • Describe Artificial Intelligence Workloads and Considerations
    Describe Fundamental Principles of Machine Learning on Azure
    Describe Features of Computer Vision Workloads on Azure
    Describe Features of Natural Language Processing (NLP) Workloads on Azure
    Describe features of generative AI workloads on Azure
Question 1 of 20

An organization wants to make their application accessible to international users by automatically rendering text content in different languages.

Which Azure AI service feature should they use?

  • Key Phrase Extraction

  • Language Detection

  • Translation

  • Sentiment Analysis

Question 2 of 20

Which of the following is a characteristic of solutions that enable the extraction of textual content from images?

  • Ability to classify images into predefined categories.

  • Ability to recognize and extract printed and handwritten text from images.

  • Ability to detect faces and analyze facial features.

  • Ability to segment and identify individual objects within an image.

Question 3 of 20

A hospital wants to develop a machine learning model to estimate the length of stay for patients based on their medical history and treatment plans.

Which type of machine learning technique is most suitable for this scenario?

  • Clustering

  • Association Rule Mining

  • Regression

  • Classification

Question 4 of 20

An online retail company wants to enhance customer engagement by introducing a new feature on their website. They are considering various AI-powered solutions.

Which of the following would be an appropriate use of generative AI in this context?

  • Generating personalized product descriptions for each customer based on their browsing history.

  • Analyzing customer purchasing patterns to recommend products they might like.

  • Using image recognition to categorize new products uploaded by sellers.

  • Implementing a chatbot that provides customers with automated responses based on predefined scripts.

Question 5 of 20

A company needs to extract and classify specific information such as names of people, organizations, locations, and dates from customer feedback data to gain insights.

Which feature of Azure AI services should they use to achieve this?

  • Entity Recognition

  • Key Phrase Extraction

  • Language Modeling

  • Sentiment Analysis

Question 6 of 20

An organization wants to enhance their application by programmatically generating images through Azure OpenAI Service.

Which model should they utilize?

  • Codex

  • Text Analytics

  • GPT-3

  • DALL·E

Question 7 of 20

Which action is most effective during the model-development phase for mitigating demographic bias in the outputs of a generative AI system?

  • Exclude rare cases and outlier records from the training data to improve convergence speed.

  • Increase the model's depth and number of parameters to let it learn more complex patterns.

  • Gather and use a training dataset that is diverse and representative of all relevant demographic groups.

  • Set the sampling temperature to zero so the model always generates deterministic responses.

Question 8 of 20

An organization needs to process a large collection of images and generate the approximate age of every person detected in each image.

Which Azure AI capability should they use?

  • Facial Analysis

  • Text Analytics

  • Object Detection

  • Speech Recognition

Question 9 of 20

An organization wants to group customers into segments based on similarities in their behavior, but they don't have labeled data.

Which machine learning technique should they utilize?

  • Regression

  • Clustering

  • Time Series Analysis

  • Classification

Question 10 of 20

An organization needs a service that can generate new text based on input prompts, for uses such as content creation or code suggestions.

Which Azure service provides this capability?

  • Azure Text Analytics

  • Azure Cognitive Search

  • Azure OpenAI Service

  • Azure Translator Service

Question 11 of 20

Content recommendation systems are designed to filter out offensive or explicit material from user-generated content.

  • False

  • True

Question 12 of 20

An online retailer is building a recommendation engine that uses individual-level purchase history and click-stream data. The company must comply with privacy regulations such as GDPR while still keeping the data useful for personalizing suggestions.

Which privacy-preserving technique best satisfies this requirement?

  • Encrypt the raw data at rest and decrypt it during model training without additional masking

  • Apply data anonymization to remove or irreversibly mask all PII before model training

  • Aggregate the data into category-level totals and delete the original customer-level records

  • Replace each customer ID with a reversible hash and keep the mapping table for future reference

Question 13 of 20

An environmental research team wants to use AI to automatically identify and track different species of animals in recorded data collected from field sensors.

Which AI workload would be most suitable for this task?

  • Natural Language Processing (NLP)

  • Document Intelligence

  • Knowledge Mining

  • Computer Vision

Question 14 of 20

An organization wants to develop a computer vision system that can determine the overall theme or subject of an image and assign it to one predefined group.

Which type of computer vision solution is most appropriate for this requirement?

  • Optical Character Recognition (OCR) solution

  • Facial Detection solution

  • Image Classification solution

  • Object Detection solution

Question 15 of 20

A financial institution is developing an AI model to approve loan applications.

To ensure the model is fair, what should the team prioritize?

  • Assess model performance across diverse demographic groups

  • Focus on achieving the highest possible accuracy

  • Exclude sensitive attributes from the dataset

  • Increase the overall size of the training dataset

Question 16 of 20

A company plans to implement a chatbot that provides human-like answers to customer queries.

What feature of Azure OpenAI Service should they use?

  • Employ the code generation features of Azure OpenAI Service

  • Use Azure's QnA Maker to fetch answers from a knowledge base

  • Utilize the text generation capabilities of Azure OpenAI Service

  • Leverage the image creation functions of Azure OpenAI Service

Question 17 of 20

You are deploying a text generation AI model that produces job descriptions.

What responsible AI consideration should you address to ensure the generated content treats all candidates equitably?

  • Increase the model's vocabulary to include industry-specific terms

  • Optimize the model's performance to generate descriptions faster

  • Evaluate and adjust the training data to remove discriminatory patterns

  • Reduce the computational resources required for deployment

Question 18 of 20

An organization wants to enhance the searchability of its document repository by automatically identifying significant terms and concepts within their text documents.

Which Azure AI capability should they use to achieve this?

  • Speech Recognition

  • Sentiment Analysis

  • Key Phrase Extraction

  • Entity Recognition

Question 19 of 20

A company needs to automatically assign a single label to each image in a large dataset based on the main object present in the image.

Which type of computer vision solution is most appropriate for this task?

  • Image Classification

  • Facial Detection

  • Optical Character Recognition (OCR)

  • Object Detection

Question 20 of 20

A data analyst needs to analyze customer feedback emails to extract key themes and determine customer sentiment across thousands of messages.

Which Azure service should they use to efficiently perform these tasks?

  • Azure Machine Learning service

  • Azure AI Speech service

  • Azure AI Language service

  • Azure Cognitive Search