Use this guide to one of SQL Server 2019’s most impactful features―Big Data Clusters. You will learn about data virtualization and data lakes for this complete artificial intelligence (AI) and machine learning (ML) platform within the SQL Server database engine. You will know how to use Big Data Clusters to combine large volumes of streaming data for analysis along with data stored in a traditional database. For example, you can stream large volumes of data from Apache Spark in real time while executing Transact-SQL queries to bring in relevant additional data from your corporate, SQL Server database.
Filled with clear examples and use cases, this book provides
everything necessary to get started working with Big Data Clusters in
SQL Server 2019. You will learn about the architectural foundations that
are made up from Kubernetes, Spark, HDFS, and SQL Server on Linux. You
then are shown how to configure and deploy Big Data Clusters in
on-premises environments or in the cloud. Next, you are taught about
querying. You will learn to write queries in Transact-SQL―taking
advantage of skills you have honed for years―and with those queries you
will be able to examine and analyze data from a wide variety of sources
such as Apache Spark.
Through the theoretical foundation provided in this book and
easy-to-follow example scripts and notebooks, you will be ready to use
and unveil the full potential of SQL Server 2019: combining different
types of data spread across widely disparate sources into a single view
that is useful for business intelligence and machine learning analysis.
What You Will Learn
- Install, manage, and troubleshoot Big Data Clusters in cloud or on-premise environments
- Analyze large volumes of data directly from SQL Server and/or Apache Spark
- Manage data stored in HDFS from SQL Server as if it were relational data
- Implement advanced analytics solutions through machine learning and AI
- Expose different data sources as a single logical source using data virtualization
Who This Book Is For
Data engineers, data scientists, data architects, and database
administrators who want to employ data virtualization and big data
analytics in their environments
ID: SC - 1440
0 comments:
Post a Comment
Comment form message