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Hands-On Data Science with SQL Server 2017

You're reading from   Hands-On Data Science with SQL Server 2017 Perform end-to-end data analysis to gain efficient data insight

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Product type Paperback
Published in Nov 2018
Publisher Packt
ISBN-13 9781788996341
Length 506 pages
Edition 1st Edition
Languages
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Authors (2):
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Vladimír Mužný Vladimír Mužný
Author Profile Icon Vladimír Mužný
Vladimír Mužný
Marek Chmel Marek Chmel
Author Profile Icon Marek Chmel
Marek Chmel
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Toc

Table of Contents (14) Chapters Close

Preface 1. Data Science Overview FREE CHAPTER 2. SQL Server 2017 as a Data Science Platform 3. Data Sources for Analytics 4. Data Transforming and Cleaning with T-SQL 5. Data Exploration and Statistics with T-SQL 6. Custom Aggregations on SQL Server 7. Data Visualization 8. Data Transformations with Other Tools 9. Predictive Model Training and Evaluation 10. Making Predictions 11. Getting It All Together - A Real-World Example 12. Next Steps with Data Science and SQL 13. Other Books You May Enjoy

Summary

SQL Server advanced significantly when ML Services was introduced. In this chapter, we used ML Services to train a simple predictive model. Because of the relational nature of SQL Server, we used the R language, which is suitable for predictive modeling.

In the first section, we started by learning how to check whether ML Services is installed and which languages are supported. Having an installation of ML Services is not enough; it must be properly configured in conjunction with a SQL Server instance. We learned how to configure the whole environment for external languages.

In the second section, we created a physical database schema that can be used to maintain trained predictive models. Different versions of predictive models are usually kept for comparison, so we looked at two approaches to carry out machine learning model versioning.

In the third section, we created...

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