Home > Store

Exam Ref 70-774 Perform Cloud Data Science with Azure Machine Learning

Exam Ref 70-774 Perform Cloud Data Science with Azure Machine Learning

eBook (Watermarked)

  • Your Price: $25.59
  • List Price: $31.99
  • Includes EPUB, MOBI, and PDF
  • About eBook Formats
  • This eBook includes the following formats, accessible from your Account page after purchase:

    ePub EPUB The open industry format known for its reflowable content and usability on supported mobile devices.

    MOBI MOBI The eBook format compatible with the Amazon Kindle and Amazon Kindle applications.

    Adobe Reader PDF The popular standard, used most often with the free Adobe® Reader® software.

    This eBook requires no passwords or activation to read. We customize your eBook by discreetly watermarking it with your name, making it uniquely yours.

Also available in other formats.

Register your product to gain access to bonus material or receive a coupon.


  • Copyright 2018
  • Dimensions: 7-3/8" x 9"
  • Edition: 1st
  • eBook (Watermarked)
  • ISBN-10: 0-13-484964-7
  • ISBN-13: 978-0-13-484964-5

Prepare for Microsoft Exam 70-774–and help demonstrate your real-world mastery of performing key data science activities with Azure Machine Learning services. Designed for experienced IT professionals ready to advance their status, Exam Ref focuses on the critical thinking and decision-making acumen needed for success at the MCSA level.

Focus on the expertise measured by these objectives:

  • Prepare data for analysis in Azure Machine Learning and export from Azure Machine Learning
  • Develop machine learning models
  • Operationalize and manage Azure Machine Learning Services
  • Use other services for machine learning

This Microsoft Exam Ref:

  • Organizes its coverage by exam objectives
  • Features strategic, what-if scenarios to challenge you
  • Assumes you are familiar with Azure data services, machine learning concepts, and common data science processes

About the Exam

Exam 70-774 focuses on skills and knowledge needed to prepare data for analysis with Azure Machine Learning; find key variables describing your data’s behavior; develop models and identify optimal algorithms; train, validate, deploy, manage, and consume Azure Machine Learning Models; and leverage related services and APIs.

About Microsoft Certification

Passing this exam as well as Exam 70-773: Analyzing Big Data with Microsoft R earns your MCSA: Machine Learning certifi¿cation, demonstrating your expertise in operationalizing Microsoft Azure machine learning and Big Data with R Server and SQL R Services.

See full details at: microsoft.com/learning



Follow the instructions to download this book's support material.

  1. Click the Download button below to start the download.
  2. If prompted, click Save.
  3. Locate the .pdf file on your computer. Click to open in a .pdf reader.

Sample Content

Table of Contents

Chapter 1 Prepare data for analysis in Azure Machine Learning and export from Azure Machine Learning

Skill 1.1: Import and export data to and from Azure Machine Learning

Skill 1.2: Explore and summarize data

Skill 1.3: Cleanse data for Azure Machine Learning

Skill 1.4 Perform feature engineering

Chapter 2 Develop machine learning models

Skill 2.1: Select an appropriate algorithm or method

Skill 2.2: Initialize and train appropriate models

Skill 2.3: Validate models

Chapter 3 Operationalize and manage Azure Machine Learning Services

Skill 3.1: Deploy models using Azure Machine Learning

Skill 3.2: Manage Azure Machine Learning projects and workspaces

Skill 3.3: Consume Azure Machine Learning models

Skill 3.4: Consume exemplar Cognitive Services APIs

Chapter 4 Use other services for machine learning

Skill 4.1: Build and use neural networks with the Microsoft Cognitive Toolkit

Skill 4.2: Streamline development by using existing resources

Skill 4.3: Perform data science at scale by using HDInsight

Skill 4.4: Perform database analytics by using SQL Server R Services on Azure  



We've made every effort to ensure the accuracy of this book and its companion content. Any errors that have been confirmed since this book was published can be downloaded below.

Download the errata

Submit Errata

More Information

Unlimited one-month access with your purchase
Free Safari Membership