Reader small image

You're reading from  Modern Data Architectures with Python

Product typeBook
Published inSep 2023
Reading LevelExpert
PublisherPackt
ISBN-139781801070492
Edition1st Edition
Languages
Concepts
Right arrow
Author (1)
Brian Lipp
Brian Lipp
author image
Brian Lipp

Brian Lipp is a Technology Polyglot, Engineer, and Solution Architect with a wide skillset in many technology domains. His programming background has ranged from R, Python, and Scala, to Go and Rust development. He has worked on Big Data systems, Data Lakes, data warehouses, and backend software engineering. Brian earned a Master of Science, CSIS from Pace University in 2009. He is currently a Sr. Data Engineer working with large Tech firms to build Data Ecosystems.
Read more about Brian Lipp

Right arrow

Adding speed with Z-ordering

Z-ordering is the process of collocating data related to common files. This can allow for data skipping and a significant reduction in processing time. Z-order is applied per column and should be used like partitions on columns when you’re filtering your table.

Here, we are applying Z-order to the whole table for a given column:

deltaTable.optimize().executeZOrderBy(COLUMN NAME)

We can also use the where method to apply Z-ordering to a table slice:

deltaTable.optimize().where("date=' YYYY-MM-DD'").executeZOrderBy(COLUMUN NAME)

With that, we have looked at one type of performance enhancement with Delta tables: Z-ordering. Next, we will look at another critical performance enhancement, known as bloom filtering. What makes bloom filtering is that it’s a data structure that saves space and allows for data skipping.

Bloom filters

One way to increase read speed is to use bloom filters. A bloom filter is an...

lock icon
The rest of the page is locked
Previous PageNext Page
You have been reading a chapter from
Modern Data Architectures with Python
Published in: Sep 2023Publisher: PacktISBN-13: 9781801070492

Author (1)

author image
Brian Lipp

Brian Lipp is a Technology Polyglot, Engineer, and Solution Architect with a wide skillset in many technology domains. His programming background has ranged from R, Python, and Scala, to Go and Rust development. He has worked on Big Data systems, Data Lakes, data warehouses, and backend software engineering. Brian earned a Master of Science, CSIS from Pace University in 2009. He is currently a Sr. Data Engineer working with large Tech firms to build Data Ecosystems.
Read more about Brian Lipp