© 2026 UdemyXpert. All rights reserved.

Bootcamp AI-901: Microsoft Azure AI Fundamentals Course1 hour agoIT & Software
[100% OFF] Bootcamp AI-901: Microsoft Azure AI Fundamentals Course

Azure AI901 | Microsoft Azure AI Fundamentals AI-901

Star0
Users10 students
Clock1h total length
English
$0$19.99100% OFF

Course Description

AI 901 Microsoft Azure AI Fundamentals Practice Test

Pass the Microsoft AI-901 Azure AI Fundamentals certification with a complete exam prep course, including 324 practice tests and exam-style questions covering AI workloads, responsible AI principles, generative AI, machine learning, and Microsoft Foundry.

Prepare for the Microsoft AI-901: Azure AI Fundamentals Certification Exam with a comprehensive course designed to help you master Microsoft Azure AI concepts and successfully pass the AI-901 certification.


Whether you are a technical beginner or an aspiring AI developer looking to validate your foundational AI skills, this course will help you learn core Microsoft AI services, generative AI and agents, responsible AI frameworks, basic Python syntax, and AI application building using Microsoft Foundry.


The course is strictly aligned with the newly updated official Microsoft AI-901 exam syllabus, ensuring you are fully prepared for the 2026 certification exam.


AI-901 Exam Domains Covered

This course follows the official Azure AI Fundamentals certification AI-901 exam skills outline, ensuring complete coverage of the newly structured certification exam topics. The AI-901 exam measures your knowledge across two major domains:

  • Identify AI concepts and responsibilities (40–45%)

  • Implement AI solutions by using Microsoft Foundry (55–60%)


  • Identify AI concepts and capabilities (40–45%)

    Describe principles of responsible AI

    • Describe considerations for fairness in an AI solution

  • Describe considerations for reliability and safety in an AI solution

  • Describe considerations for privacy and security in an AI solution

  • Describe considerations for inclusiveness in an AI solution

  • Describe considerations for transparency in an AI solution

  • Describe considerations for accountability in an AI solution


  • Identify AI model components and configurations

    • Describe how generative AI models work

  • Identify an appropriate AI model, based on capabilities

  • Identify appropriate model deployment options and configuration parameters


  • Identify AI workloads

    • Identify scenarios for common AI workloads, including generative and agentic AI, text analysis, speech, computer vision, and information extraction

  • Describe common text analysis techniques, including keyword extraction, entity detection, sentiment analysis, and summarization

  • Identify features and capabilities of speech recognition and speech synthesis

  • Identify features and capabilities of computer vision and image-generation models

  • Identify techniques to extract information from text, images, audio, and videos


  • Implement AI solutions by using Microsoft Foundry (55–60%)

    Implement generative AI apps and agents by using Foundry

    • Create effective system and user prompts for generative AI models

  • Deploy a model and interact with it in the Foundry portal

  • Create a lightweight chat client application by using the Foundry SDK

  • Create and test a single-agent solution in the Foundry portal

  • Create a lightweight client application for an agent


  • Implement AI solutions for text and speech by using Foundry

    • Build a lightweight application that includes text analysis

  • Respond to spoken prompts by using a deployed multimodal model

  • Build a lightweight application by using Azure Speech in Foundry Tools


  • Implement AI solutions with computer vision and image-generation capabilities by using Foundry

    • Interpret visual input in prompts by using a deployed multimodal model

  • Create new visual outputs by using generative models

  • Build a lightweight application that includes vision capabilities


  • Implement AI solutions for information extraction by using Foundry

    • Extract information from documents and forms by using Azure Content Understanding in Foundry Tools

  • Extract information from images by using Content Understanding

  • Extract information from audio and video by using Content Understanding

  • Build a lightweight application with information extraction capabilities by using Content Understanding



  • Happy Learning

    Team Codaming

    Similar Courses