Querying Databricks with Spark SQL by Adam Aspin
Miér Nov 15, 2023 9:00 pm
[/center]
pdf | 34.14 MB | N/A | Isbn:N/A | Author: Adam Aspin | Year: 2023
[/center]
Description:
Databricks stands out as a widely embraced platform dedicated to the creation of data lakes. Within its framework, it extends support to a specialized version of Structured Query Language (SQL) known as Spark SQL. If you are interested in learning more about how to use Spark SQL to analyze data in a data lake, then this book is for you.
The book covers everything from basic queries to complex data-processing tasks. It begins with an introduction to SQL and Spark. It then covers the basics of SQL, including data types, operators, and clauses. The next few chapters focus on filtering, aggregation, and calculation. Additionally, it covers dates and times, formatting output, and using logic in your queries. It also covers joining tables, subqueries, derived tables, and common table expressions. Additionally, it discusses correlated subqueries, joining and filtering datasets, using SQL in calculations, segmenting and classifying data, rolling analysis, and analyzing data over time. The book concludes with a chapter on advanced data presentation.
By the end of the book, you will be able to use Spark SQL to perform complex data analysis tasks on data lakes.
https://rapidgator.net/file/060b104ed67818064251c562d626d333/Aspin.A..Querying.Databricks.with.Spark.SQL..Leverage.SQL...Big.Data...2023.rar
https://alfafile.net/file/Aumrq/Aspin.A..Querying.Databricks.with.Spark.SQL..Leverage.SQL...Big.Data...2023.rar
[/center]
- Querying Databricks with Spark SQL: Leverage SQL to Query and Analyze Big Data for...
- Databricks Lakehouse Platform Cookbook by Alan L. Dennis
- Learn T-SQL Querying: A guide to developing efficient and elegant T-SQL code - Ped...
- Learn T-SQL Querying: A guide to developing efficient and elegant T-SQL code - Ped...
- Aspin A Pro Data Mashup for Power BI Transform Data 2022
Permisos de este foro:
No puedes responder a temas en este foro.