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Microsoft Azure AI Fundamentals Practice Test (AI-900)

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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.

Free Microsoft Azure AI Fundamentals AI-900 Practice Test

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  • Questions: 15
  • Time: Unlimited
  • Included Topics:
    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 15

Which of the following is a feature of an image classification solution?

  • Predicting the content category of an image

  • Extracting text from images for text analysis

  • Detecting facial features to analyze emotions

  • Identifying and locating objects within an image

Question 2 of 15

A marketing team wants to analyze customer photos uploaded to their app to extract demographics such as age range, gender, and emotional expressions to tailor their advertising campaigns.

Which type of computer vision solution should they use?

  • Facial Analysis

  • Object Detection

  • Image Classification

  • Optical Character Recognition (OCR)

Question 3 of 15

You are tasked with building a machine learning model, but you have limited time and expertise in selecting the best algorithm and tuning hyperparameters.

Which Azure Machine Learning feature should you use to address this challenge?

  • Azure Cognitive Services

  • Azure Automated Machine Learning

  • Azure Machine Learning Studio Notebooks

  • Azure Machine Learning Designer

Question 4 of 15

Which statement describes a feature of generative AI models?

  • They generate new data similar to the data they were trained on

  • They analyze data without generating output

  • They compress data to reduce storage requirements

  • They classify input data into predefined categories

Question 5 of 15

Which scenario is best addressed using a machine learning technique that finds patterns in data without relying on labeled outcomes?

  • Predicting housing prices based on features like size and location.

  • Forecasting future stock prices based on historical data.

  • Discovering customer segments with similar purchasing behaviors for marketing purposes.

  • Determining if a transaction is fraudulent based on past labeled data.

Question 6 of 15

An organization wants to develop an AI system that converts natural language descriptions of features into corresponding programming code to expedite their software development process.

Which Azure OpenAI model should they choose to achieve this goal?

  • Embeddings

  • Codex

  • DALL-E

  • GPT-3

Question 7 of 15

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?

  • Classification

  • Regression

  • Time Series Analysis

  • Clustering

Question 8 of 15

An insurance company needs to extract text from a vast number of printed forms to automate their data entry process.

Which Azure service provides the necessary optical character recognition capabilities?

  • Azure AI Face

  • Azure AI Text Analytics

  • Azure AI Language Understanding

  • Azure AI Vision

Question 9 of 15

Which of the following is a feature of OCR solutions?

  • Analyzing facial features to recognize emotions

  • Detecting and classifying objects within an image

  • Translating spoken language into text

  • Extracting text content from images or documents

Question 10 of 15

You are tasked with developing an AI solution capable of synthesizing new content by modeling the underlying patterns of your data.

Which feature is essential for the AI model to achieve this?

  • Ability to identify clusters within unlabeled data

  • Ability to predict continuous values from input features

  • Ability to categorize data into predefined classes

  • Ability to generate data by learning data distributions

Question 11 of 15

Which of the following best indicates a key feature of generative AI solutions?

  • Extraction of insights from unstructured text data

  • Classification of data into predefined categories

  • Detection of anomalies in real-time data streams

  • Ability to generate new content based on learned data patterns

Question 12 of 15

A data scientist is building a machine learning model to predict housing prices based on various factors such as location, size, and age of properties.

In the dataset, which of the following represents the label?

  • The location of the property

  • The age of the property in years

  • The size of the property in square feet

  • The price of the property

Question 13 of 15

As a data scientist at a marketing firm, you are tasked with generating personalized product descriptions for the company's online catalog. You consider using a generative AI model to automate this process.

Which of the following is a key characteristic of a generative AI model that makes it suitable for this task?

  • It can classify images into predefined categories.

  • It can predict numerical values based on historical data.

  • It can recognize speech and convert it to text.

  • It can generate new content based on learned patterns from training data.

Question 14 of 15

A developer needs to analyze customer feedback to identify the overall sentiment and extract key phrases.

Which Azure service provides these capabilities?

  • Azure AI Speech service

  • Azure AI Language service

  • Azure Machine Learning service

  • Azure Cognitive Search

Question 15 of 15

An organization wants to ensure that its automated loan approval system is fair to all applicants.

What is the most effective approach to minimize unfairness in the system?

  • Use training data that includes a wide range of demographic groups

  • Increase the complexity of the algorithm to improve accuracy

  • Expand the dataset by collecting more data of the same type

  • Exclude any features related to personal characteristics from the data