Free Coupon AI-900 Azure AI Fundamentals Practice Exam Questions 2026 [100% OFF]

Hands-On Machine Learning, Deep Learning, Quantum Algorithms & Hybrid AI-QC Applications(AI)

Free Coupon AI-900 Azure AI Fundamentals Practice Exam Questions 2026 [100% OFF]

Take advantage of a 100% OFF coupon code for the 'AI-900 Azure AI Fundamentals Practice Exam Questions 2026' course, created by Codaming • 300k Learners Worldwide , Vedika Singh , Dinesh Kumar, available on Udemy.

This course, updated on February 22, 2026 and will be expired on 2026/02/25

This course provides 49 minute(s) of expert-led training in English , designed to boost your IT Certifications skills.

Highly rated at 4.2-star stars from 16 reviews, it has already helped 4,021 students.

This exclusive coupon is shared by Anonymous, at the price 19.99 $ 0 $

Don’t miss this opportunity to level up your skills!

Prepare for the AI-900 or AI 900 exam with confidence! This set includes 324 unique practice questions created from scratch and fully compliant with the official 2026 exam syllabus.


The AI-900 exam syllabus is structured around five main domains, covering core AI/ML concepts and how they are implemented using Microsoft Azure AI services.


Domain Approximate Weighting

1. Describe Artificial Intelligence workloads and considerations 15-20%

2. Describe fundamental principles of machine learning on Azure 15-20%

3. Describe features of computer vision workloads on Azure 15-20%

4. Describe features of Natural Language Processing (NLP) workloads on Azure 15-20%

5. Describe features of generative AI workloads on Azure 20-25%


1. Describe Artificial Intelligence workloads and considerations (15-20%)

  • Identify features of common AI workloads: computer vision, NLP, document processing, generative AI.

  • Identify guiding principles for responsible AI: fairness, reliability & safety, privacy & security, inclusiveness, transparency, accountability.


2. Describe fundamental principles of machine learning on Azure (15-20%)

  • Identify common machine learning techniques: regression, classification, clustering, deep learning, Transformer architecture.

  • Describe core machine learning concepts: features and labels, training vs validation datasets.

  • Describe Azure Machine Learning capabilities: automated ML, data & compute services, model management & deployment.


3. Describe features of computer vision workloads on Azure (15-20%)

  • Identify types of computer vision solutions: image classification, object detection, OCR, facial detection/analysis.

  • Identify Azure tools & services: e.g., Azure AI Vision, Azure AI Face detection service.


4. Describe features of Natural Language Processing (NLP) workloads on Azure (15-20%)

  • Identify features & uses of NLP scenarios: key phrase extraction, entity recognition, sentiment analysis, language modelling, speech recognition & synthesis, translation.

  • Identify Azure tools & services for NLP workloads: e.g., Azure AI Language, Azure AI Speech.


5. Describe features of generative AI workloads on Azure (20-25%)

  • Identify features of generative AI models and common use-cases.

  • Identify generative AI services/capabilities in Azure: e.g., Azure OpenAI Service, Azure AI Foundry (model catalog).