Overview
- Offers methods for choosing the right architecture for a machine learning solution using Microsoft technologies
- Gives you valuable knowledge for creating, developing, and deploying machine learning in different products
- Provides a holistic perspective of the options for doing machine learning using different Microsoft tools
Access this book
Tax calculation will be finalised at checkout
Other ways to access
Table of contents (20 chapters)
-
Getting Started
-
Machine Learning with R and Power BI
-
Machine Learning SQL Server
-
Machine Learning in Azure
Keywords
- Microsoft Advance Analytics Architecture
- R services
- Machine Learning Services
- Azure Data Lake
- Spark
- Power BI Visualization
- Azure Machine Learning Workbench
- Azure Machine Learning studio
- Row Level Security in Power BI
- R language
- Python language
- Supervised Learning
- Unsupervised Learning
- Data science Virtual Machine
- Leila Etaati
About this book
Know how to do machine learning with Microsoft technologies. This book teaches you to do predictive, descriptive, and prescriptive analyses with Microsoft Power BI, Azure Data Lake, SQL Server, Stream Analytics, Azure Databricks, HD Insight, and more.
The ability to analyze massive amounts of real-time data and predict future behavior of an organization is critical to its long-term success. Data science, and more specifically machine learning (ML), is today’s game changer and should be a key building block in every company’s strategy. Managing a machine learning process from business understanding, data acquisition and cleaning, modeling, and deployment in each tool is a valuable skill set.
Machine Learning with Microsoft Technologies is a demo-driven book that explains how to do machine learning with Microsoft technologies. You will gain valuable insight into designing the best architecture for development, sharing, and deploying a machine learning solution. This book simplifies the process of choosing the right architecture and tools for doing machine learning based on your specific infrastructure needs and requirements.
Detailed content is provided on the main algorithms for supervised and unsupervised machine learning and examples show ML practices using both R and Python languages, the main languages inside Microsoft technologies.
What You'll Learn
- Choose the right Microsoft product for your machine learning solution
- Create and manage Microsoft’s tool environments for development, testing, and production of a machine learning project
- Implement and deploy supervised and unsupervised learning in Microsoft products
- Set up Microsoft Power BI, Azure Data Lake, SQL Server, Stream Analytics, Azure Databricks, and HD Insight to perform machine learning
- Set up a data science virtual machine and test-drive installed tools, such as Azure ML Workbench, Azure ML Server Developer, Anaconda Python, Jupyter Notebook, Power BI Desktop, Cognitive Services, machine learning and data analytics tools, and more
- Architect a machine learning solution factoring in all aspects of self service, enterprise, deployment, and sharing
Who This Book Is For
Data scientists, data analysts, developers, architects, and managers who want to leverage machine learning in their products, organization, and services, and make educated, cost-saving decisions about their ML architecture and tool set.
Authors and Affiliations
About the author
Bibliographic Information
Book Title: Machine Learning with Microsoft Technologies
Book Subtitle: Selecting the Right Architecture and Tools for Your Project
Authors: Leila Etaati
DOI: https://doi.org/10.1007/978-1-4842-3658-1
Publisher: Apress Berkeley, CA
eBook Packages: Professional and Applied Computing, Apress Access Books, Professional and Applied Computing (R0)
Copyright Information: Leila Etaati 2019
Softcover ISBN: 978-1-4842-3657-4Published: 13 June 2019
eBook ISBN: 978-1-4842-3658-1Published: 12 June 2019
Edition Number: 1
Number of Pages: XV, 365
Number of Illustrations: 9 b/w illustrations, 356 illustrations in colour
Topics: Microsoft and .NET, Artificial Intelligence, Python