Learn Live - Azure ML Fundamentals

Sdílet
Vložit
  • čas přidán 1. 08. 2024
  • Full series information: aka.ms/learnlive-202302FT
    More info here: aka.ms/learnlive-202302FT-Ep9
    Follow on Microsoft Learn:
    - Session documentation: aka.ms/learnlive-20230404FT
    In the Azure ML Fundamentals session, you will get an understanding of the overall Azure Machine Learning (AzureML) components and how you can start using the AzureML studio web portal to accelerate you AI journey in the cloud.
    ---------------------
    Learning objectives
    - Intro to Azure ML Service
    - Implement ML solution in Azure ML Service and Azure ML Studio leveraging, Azure ML assets, notebooks, AutoML and SDK V2
    ---------------------
    Chapters
    --------
    00:00 - Welcome
    00:55 - Introduction
    02:02 - Learning Objectives
    13:58 - Where do we start? - Azure Machine Learning Service and Access Control
    23:05 - Azure Machine Learning Studio - Let us create our Compute for Data Science activities
    27:04 - Authoring Experience for your Notebook - Use Azure ML Python SDK to manage our ML Model Life Cycle
    34:27 - Create Data Assets from your choice of Data Store to train your ML Model.
    54:47 - Model Authoring - Generate your model through Automated ML with high scale, efficiency, and productivity all while sustaining model quality - Demo
    56:47 - Register your model to Azure ML Models registry
    1:05:55 - Deploy your Model to a Managed Endpoint, I Realtime Endpoint Demo
    1:10:05 - Inferencing - Scoring against your model Endpoint
    1:17:18 - Designer can help you put together a model pipeline very easily - creates the code for scoring script and creates the environment yml file for your model
    1:19:15 - Q & A - When you do not have a target variable for your model, un-supervised learning algorithm (regression) might the option you select during Automated ML
    1:21:23 - Closure
    ---------------------
    Presenters
    Meer Alam
    Azure Customer Engineer
    Microsoft
    - LinkedIn: / meeralam
    Marco Aurelio Cardoso
    Azure Customer Engineer
    Microsoft
    - LinkedIn: / marco-cardoso
    Moderators
    Neeraj Jhaveri
    Senior FastTrack Engineer
    Microsoft
    - LinkedIn: / neerajjhaveri
  • Věda a technologie

Komentáře • 1

  • @benjamincarter6095
    @benjamincarter6095 Před 10 měsíci

    Why is Microsoft limiting data sources for Azure ML to only other Azure tools? Very disappointing.