Skip to content

xlegend1024/az-cloudscale-adv-analytics

Repository files navigation

Cloud Scale Advanced Analtyics

Experience end-to-end Advanced Analytics on cloud using Blob, ADF, Databricks, SQLDB and Azure Machine Leaning Studio.

In this hands on lab, you can understand how to apply following Azure services to your project

  • Azure Data Factory
  • Azure Databricks
  • Azure SQL Database
  • Azure Key Vault

After the workshop you will be able to:

  1. Understand process and architecture for cloud scale andvanced analaytics project
  2. Create appropreate Azure services for data prep. & training environment
  3. Know how to wanggle data in a scale
  4. Expermiments on data and select the best model
  5. Deploy and interact with your score model

Architecture

overallarch

Scenario

Extract data from a web and load the data to Azure Blob storage. Mount the Azure Blob storage to Azure Databricks to prepare the data for Machine Learning. When save prepared data on Azure Blob, access the prepared data from Azure Machine Learning Studio. Conduct machine learning experiments and select the best model for prediction. When a model is selected, deploy the score model as a web service from the Azure Machine Learning Studio. Lastly, extract new data set from SQL Database and

  1. Create Hands-on Lab envrironment using a script
  1. Create Azure Data Factory (v2)

  2. Create Data Pipeline

  1. Create Azure Databricks

  2. Create Azure Databricks cluster

  3. Import and Run Notebook

Labs for Data Scientist

Import following url from Azure Databricks

https://github.com/xlegend1024/az-adb-aml-lab/raw/master/databricks/az-adb-aml-lab.dbc

Use Azure Data Factory for batch scoring

Import following url from Azure Databricks

https://github.com/xlegend1024/az-cloudscale-adv-analytics/blob/master/AzureDatabricks/07_MLlib_Classification_Deployment.ipynb

Lab 06. Azure AutoML

Import following url from Azure Databricks

https://github.com/xlegend1024/az-adb-aml-lab/raw/master/databricks/az-adb-aml-lab.dbc

Start Lab > 01. Ingest Data


Sources and references

About

Azure Hands-on Lab for Cloud Scale Adv. Analytics

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 3

  •  
  •  
  •