Introduction to Spark SQL in Python
Learn how to manipulate data and create machine learning feature sets in Spark using SQL in Python.
Course Description
Learn Spark SQL
If you’re familiar with SQL and have heard great things about Apache Spark, this course is for you. Apache Spark is a computing framework for processing big data, and Spark SQL is a component of Apache Spark. This four-hour course will show you how to take Spark to a new level of usefulness, using advanced SQL features, such as window functions.
Over the course of four chapters, you’ll use Spark SQL to analyze time series data, extract the most common words from a text document, create feature sets from natural language text, and use them to predict the last word in a sentence using logistic regression.
Discover the Uses of Spark SQL
You’ll start by creating and querying an SQL table in Spark, as well as learning how to use SQL window functions to perform running sums, running differences, and other operations.
Next, you’ll explore how to use the window function in Spark SQL for natural language processing, including using a moving window analysis to find common word sequences.
In chapter 3, you’ll learn how to use the SQL Spark UI to properly cache DataFrames and SQL tables before exploring the best practices for logging in Spark.
Finally, you use all of the skills learned so far to load and tokenize raw text before extracting word sequences. You’ll then use logistic regression to classify the text, using raw natural language data to train a text classifier.
Gain a Thorough Introduction to Spark SQL
By the end of the course, you’ll have a firm understanding of Spark SQL and will understand how Spark combines the power of distributed computing with the ease of use of Python and SQL.
What You’ll Learn
PySpark SQL
In this chapter you will learn how to create and query a SQL table in Spark. Spark SQL brings the expressiveness of SQL to Spark. You will also learn how to use SQL window functions in Spark. Window functions perform a calculation across rows that are related to the current row. They greatly simplify achieving results that are difficult to express using only joins and traditional aggregations. We’ll use window functions to perform running sums, running differences, and other operations that are challenging to perform in basic SQL.
Caching, Logging, and the Spark UI
In the previous chapters you learned how to use the expressiveness of window function SQL. However, this expressiveness now makes it important that you understand how to properly cache dataframes and cache SQL tables. It is also important to know how to evaluate your application. You learn how to do do this using the Spark UI. You’ll also learn a best practice for logging in Spark. Spark SQL brings with it another useful tool for tuning query performance issues, the query execution plan. You will learn how to use the execution plan for evaluating the provenance of a dataframe.
Using Window Function SQL for Natural Language Processing
In this chapter, you will be loading natural language text. Then you will apply a moving window analysis to find frequent word sequences.
Text Classification
Previous chapters provided you with the tools for loading raw text, tokenizing it, and extracting word sequences. This is already very useful for analysis, but it is also useful for machine learning. What you’ve learned now comes together by using logistic regression to classify text. By the conclusion of this chapter, you will have loaded raw natural language text data and used it to train a text classifier.
User Reviews
Be the first to review “Introduction to Spark SQL in Python”
You must be logged in to post a review.
There are no reviews yet.