Udemy
    •  
    •  
    •  
    •  
    •  
    •  
    •  
    •  
Bereik wereldwijd miljoenen mensen door optimaal gebruik te maken van je kennis.
Meer informatie
Je winkelwagentje is leeg.
Verder winkelen
AI-900 Course Azure AI Fundamentals with Virtual Simulations
Rollenspel
Score 4,3 van de 5(892 scores)
5.403 studenten
Laatst bijgewerkt: 2-2026
Engels

Wat je leert

  • Learn the concepts and perform hands on activities needed to pass the AI-900 exam
  • Gain a tremendous amount of knowledge involving advanced Azure AI Services
  • Get loads of hands on experience with Azure AI Services
  • Utilize hands on simulations that can be access anytime, anywhere!

Cursusinhoud

14 secties68 collegesTotale lengte van 5u 35m
  • Welcome to the course!4:33
  • Creating a free Azure Account7:01
  • Converting your Azure account name to a business account name4:28
  • Order of concepts covered in the course1:28
  • DO NOT SKIP: Portals renamed!1:51
  • Introduction to artificial intelligence terminology13:19
  • DON'T SKIP! Using Assignments in the course3:04
  • Certificate of Completion0:33

Vereisten

  • Willingness to put in the time and practice the steps shown in the course

Beschrijving

We really hope you'll agree, this training is way more than the average course on Udemy!

Have access to the following:

  • Training from an instructor of over 25 years who has trained thousands of people and also a Microsoft Certified Trainer

  • Lecture that explains the concepts in an easy to learn method for someone that is just starting out with this material

  • Instructor led hands on and simulations to practice that can be followed even if you have little to no experience

TOPICS COVERED INCLUDING HANDS ON LECTURE AND PRACTICE TUTORIALS:

Introduction

  • Welcome to the course

  • IMPORTANT Using Assignments in the course

  • Creating a free Azure Account

  • Order of concepts covered in the course

  • Introduction to artificial intelligence terminology

Identify features of common AI workloads

  • Understanding features of anomaly detection workloads

  • Example of univariate anomaly detection

  • Example of multivariate anomaly detection

  • What is computer vision workloads?

  • Conceptual usage of natural language processing workloads

  • Visualizing knowledge mining principals

Identify guiding principles for responsible AI

  • Introduction to responsible AI

  • Fairness and Inclusiveness in an AI solution

  • Reliability and safety in an AI solution

  • Privacy and security in an AI solution

  • Transparency in an AI solution

  • Accountability in an AI solution

Identify common machine learning types

  • Create an Azure Machine Learning workspace for machine learning scenarios

  • What is regression machine learning?

  • Building a pipeline with regression machine learning for cleaning a dataset

  • Implement a regression machine learning scenario

  • Evaluating the results of regression machine learning scenarios

  • What is classification machine learning?

  • Implement a classification machine learning scenario in Azure

  • Understanding labels on a confusion matrix

  • Clustering machine learning example

Describe core machine learning concepts

  • Understanding features and labels in a dataset for machine learning

  • How training and validation datasets are used in machine learning

Describe capabilities of visual tools in Azure Machine Learning Studio

  • Using Automated machine learning

  • Understanding Azure Machine Learning Designer

  • Cleaning up our existing Azure resources

Identify common types of computer vision solutions

  • What are the Azure computer vision solutions?

  • Creating an Azure computer vision resource

  • Image classification and object detection solutions in vision studio

  • Optical character recognition solutions in vision studio

  • Facial detection and facial analysis solutions in vision studio

  • Spatial analysis solutions in vision studio

Identify Azure tools and services for computer vision tasks

  • Using the POSTMAN tool for interacting with Azure AI Services

  • Implementing the capabilities of the Computer Vision service

  • Implementing the capabilities of the Custom Vision service

  • Implementing the capabilities of the Face service

  • Implementing the capabilities of the Form Recognizer service

Identify features of common NLP Workload Scenarios

  • What are the Azure AI Language features?

  • Creating a language service resource in Azure

  • Trying out key phrase extraction

  • Trying out key entity recognition

  • Trying out key sentiment analysis

  • Trying out key language modeling

  • Trying out key speech recognition and synthesis

  • Trying out key translation

Identify Azure tools and services for NLP workloads

  • Exploring the capabilities of the Language service

  • Exploring the capabilities of the Speech service

  • Exploring the capabilities of the Translator service

  • Configuring Azure AI language to support questions and answers support

Identify considerations for conversational AI solutions on Azure

  • Understanding the features and uses for bots

  • Capabilities of Power Virtual Agents and the Azure Bot service

  • Remove existing resource

Identify features and capabilities of generative AI & the Azure Open AI Service

  • Features of generative Open AI models

  • Common scenarios for generative Open AI

  • Responsible Open AI considerations for generative AI

Voor wie is deze cursus bedoeld:

  • IT people interested in learning and passing the Microsoft AI-900 exam!