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SkillSoft Explore Course

IT Skills     Cloud Computing and Virtualization     Microsoft     DP-100: Designing and Implementing a Data Science Solution on Azure
Azure Machine Learning Studio can make use of various types of data stores and datasets for training and testing data.
In this course, you'll learn about the types of data stores that are available in Azure, including Azure Storage (blob and file containers), Azure Data Lake stores, Azure SQL Database, and Azure Databricks file system. Next, you'll explore how to create and register data stores and the types of datasets that can be created. Next, you'll learn how to run a notebook using Jupyter to work with data, data stores, and datasets, as well as how to create a compute cluster. You'll examine the available compute targets such as local compute, compute clusters, and attached compute, as well as the types of environments. Finally, you'll learn to create and manage a compute instance and a compute cluster in the Azure Machine Learning workspace.
This course is one in a collection that prepares learners for the Designing and Implementing a Data Science Solution on Azure (DP-100) exam.

Objectives

DP-100 - Azure Data Scientist Associate: Machine Learning Data Stores & Compute

  • discover the key concepts covered in this course
  • describe the types of data stores that are available in Azure including Azure Storage (blob and file containers), Azure Data Lake stores, Azure SQL Database, and Azure Databricks file system (DBFS)
  • create and register data stores in Machine Learning Studio for Azure blob container, Azure file share, and Azure Data Lake Storage Gen 2
  • describe the types of datasets that can be created and then create, register, and use datasets
  • run a notebook using Jupyter to work with data, data stores, and datasets
  • describe types of Machine Learning Studio compute targets such as local compute, compute clusters, and attached compute
  • show various methods for creating Python environments in Machine Learning Studio
  • create and manage a compute instance in the Azure Machine Learning workspace
  • create and manage a compute cluster in the Azure Machine Learning Workspace
  • run a notebook using Jupyter to create a compute cluster
  • summarize the key concepts covered in this course