AI-900: Microsoft Azure AI Fundamentals Course - May 2022
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Should you take AI-900 Exam?
Artificial intelligence and machine learning are all set to dictate the future of technology. The focus of Microsoft Azure on machine-learning innovation is one of the prominent reasons for the rising popularity of Azure AI. Therefore, many aspiring candidates are looking for credible approaches for the AI-900 exam preparation that is a viable instrument for candidates to start their careers in Azure AI.
The interesting fact about the AI-900 certification is that it is a fundamental-level certification exam. Therefore, candidates from technical as well as ones with non-technical backgrounds can pursue the AI-900 certification exam. In addition, there is no requirement for software engineering or data science experience for the AI-900 certification exam.
The AI-900 certification can also help you build the foundation for Azure AI Engineer Associate or Azure Data Scientist Associate certifications.
Course last updated – May 2022
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What includes in this course?
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8+ hrs. of content, Practice test, quizzes, etc.
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PPT, Demo resources, and other study material
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Full lifetime access
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Certificate of course completion
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30-days Money-Back Guarantee
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This course has more than enough practice questions to get you to prepare for the exam.
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Even though there are no labs in the exam, I have practically demonstrated concepts wherever possible to make sure you feel confident with concepts.
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Exam Format and Information
Exam Name Exam AI-900: Microsoft Azure AI Fundamentals
Exam Duration 60 Minutes
Exam Type Multiple Choice Examination
Number of Questions 40 – 60 Questions
Exam Fee $99
Eligibility/Pre-requisite None
Exam validity 1 year
Exam Languages English, Japanese, Korean, and Simplified Chinese
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The AI-900 exam covers the following topics:
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Describe AI workloads and considerations (15-20%)
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Describe fundamental principles of machine learning on Azure (30-35%)
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Describe features of computer vision workloads on Azure (15-20%)
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Describe features of Natural Language Processing (NLP) workloads on Azure (15-20%)
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Describe features of conversational AI workloads on Azure (15-20%)
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Exam Topics in detail
Domain 1: Describing AI workloads and considerations
The subtopics in this domain include,
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Identification of features in common AI workloads
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Identification of guiding principles for responsible AI
Domain 2: Describing fundamental principles of machine learning on Azure
The subtopics in this domain include,
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Identification of common machine learning variants
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Description of core machine learning concepts
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Identification of core risks in the creation of a machine learning solution
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Description of capabilities of no-code machine learning with Azure Machine Learning
Domain 3: Description of features in computer vision workloads on Azure
The subtopics in this domain include,
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Identification of common types of computer vision solutions
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Identification of Azure tools and services for computer vision tasks
Domain 4: Describing features of Natural Language Processing (NLP) workloads on Azure
The subtopics in this domain are as follows,
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Identification of features in common NLP workload scenarios
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Identifying Azure tools and services for NLP workloads
Domain 5: Description of features of conversational AI workloads on Azure
The subtopics in this domain include,
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Identification of common use cases for conversational AI
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Identifying Azure services for conversational AI
Happy Learning!!
Eshant Garg
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9Learning objectivesVideo lesson
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10What is Artificial IntelligenceVideo lesson
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11[Retired] Prediction and ForecastingVideo lesson
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12Anomaly Detection workloadsVideo lesson
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13Computer Vision workloadsVideo lesson
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14Natural language processingVideo lesson
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15Knowledge mining workloadsVideo lesson
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16[Retired] Conversational AI workloadsVideo lesson
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17Introduction to Guiding Principles of responsible AIVideo lesson
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18Guiding Principle - FairnessVideo lesson
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19Guiding Principle - Reliability and SafetyVideo lesson
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20Guiding Principle - Privacy and SecurityVideo lesson
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21Guiding Principle - InclusivenessVideo lesson
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22Guiding Principle - TransparencyVideo lesson
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23Guiding Principle - AccountabilityVideo lesson
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24Articles and Blogs Per Objective (Further study material)Text lesson
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25PPT Notes for this sectionText lesson
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26Actual exam questions: AI FundamentalsCuestionario
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27Learning objectivesVideo lesson
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28Introduction to Machine LearningVideo lesson
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29Rule-based vs Machine Learning based LearningVideo lesson
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30Classification vs Regression vs Clustering Machine Learning TypesVideo lesson
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31Feature Selection and Feature EngineeringVideo lesson
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32Training vs Validating DatasetVideo lesson
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33Machine Learning AlgorithmsVideo lesson
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34Demo Part1.1 ML WorkspaceVideo lesson
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35Demo Part1.2 Regression ModelVideo lesson
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36Demo Part1.3 Delete ResourcesVideo lesson
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37Demo 2.1 Classification ModelVideo lesson
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38Demo 3.1 Automated Machine LearningVideo lesson
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39Demo: Delete ComputeVideo lesson
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40Articles and Blogs Per Objective (Further study material)Text lesson
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41PPT Notes for this sectionText lesson
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42Actual exam questions: Machine LearningCuestionario
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43Learning objectivesVideo lesson
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44Image Classification vs Object Detection vs Semantic SegmentationVideo lesson
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45Optical Character Recognition OCRVideo lesson
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46Face Detection Recognition and AnalysisVideo lesson
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47What is Cognitive ServicesVideo lesson
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48What is Computer Vision ServicesVideo lesson
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49Demo: Computer VisionVideo lesson
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50Custom Vision ServiceVideo lesson
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51Demo: Custom Vision ServiceVideo lesson
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52Face ServiceVideo lesson
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53Form Recognizer ServiceVideo lesson
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54Articles and Blogs Per Objective (Further study material)Text lesson
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55PPT Notes for this sectionText lesson
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56Actual exam questions: Computer VisionCuestionario
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57Take a breakText lesson
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58RequestVideo lesson
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59Learning objectivesVideo lesson
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60What is Natural Language ProcessingVideo lesson
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61Key Phrase Extraction vs Entity Recognition vs Sentiment AnalysisVideo lesson
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62Language ModelingVideo lesson
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63Speech Recognition and Speech SynthesisVideo lesson
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64TranslationVideo lesson
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65Introduction to Azure Tools and Services for NLPVideo lesson
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66[Retired] Text Analytics ServiceVideo lesson
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67Speech ServiceVideo lesson
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68Translator ServiceVideo lesson
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69Language Understanding Service (LUIS)Video lesson
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70Articles and Blogs Per Objective (Further study material)Text lesson
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71PPT Notes for this sectionText lesson
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72Actual exam questions: Natural Language ProcessingCuestionario
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73Learning objectivesVideo lesson
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74Conversational AI Use casesVideo lesson
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75QnA Maker and Bot FrameworkVideo lesson
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76Demo QnA Maker and Bot FrameworkVideo lesson
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77Articles and Blogs Per Objective (Further study material)Text lesson
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78PPT Notes for this sectionText lesson
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79Actual exam questions: Conversation AICuestionario
