AI-900 course/training: Gain the knowledge needed to pass the AI-900 exam

Поділитися
Вставка
  • Опубліковано 29 лип 2024
  • Watch this video to learn information that will help you pass the AI-900: Course Azure AI Fundamentals with Virtual Simulations
    Gain Certification: Microsoft Certified Azure AI Fundamentals
    GET THE FULL COURSE HERE: bit.ly/46chXks
    INCLUDED EXAM OBJECTIVE CONTENT IN THIS VIDEO
    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
    *Visualizig knowledge mining principals
    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
    GET THE REST OF THE COURSE BELOW HERE: bit.ly/46chXks
    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
    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 Lanaguage 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

КОМЕНТАРІ • 16