Book Image

Building ETL Pipelines with Python

By : Brij Kishore Pandey, Emily Ro Schoof
5 (1)
Book Image

Building ETL Pipelines with Python

5 (1)
By: Brij Kishore Pandey, Emily Ro Schoof

Overview of this book

Modern extract, transform, and load (ETL) pipelines for data engineering have favored the Python language for its broad range of uses and a large assortment of tools, applications, and open source components. With its simplicity and extensive library support, Python has emerged as the undisputed choice for data processing. In this book, you’ll walk through the end-to-end process of ETL data pipeline development, starting with an introduction to the fundamentals of data pipelines and establishing a Python development environment to create pipelines. Once you've explored the ETL pipeline design principles and ET development process, you'll be equipped to design custom ETL pipelines. Next, you'll get to grips with the steps in the ETL process, which involves extracting valuable data; performing transformations, through cleaning, manipulation, and ensuring data integrity; and ultimately loading the processed data into storage systems. You’ll also review several ETL modules in Python, comparing their pros and cons when building data pipelines and leveraging cloud tools, such as AWS, to create scalable data pipelines. Lastly, you’ll learn about the concept of test-driven development for ETL pipelines to ensure safe deployments. By the end of this book, you’ll have worked on several hands-on examples to create high-performance ETL pipelines to develop robust, scalable, and resilient environments using Python.
Table of Contents (22 chapters)
1
Part 1:Introduction to ETL, Data Pipelines, and Design Principles
Free Chapter
2
Chapter 1: A Primer on Python and the Development Environment
5
Part 2:Designing ETL Pipelines with Python
11
Part 3:Creating ETL Pipelines in AWS
15
Part 4:Automating and Scaling ETL Pipelines

Accessibility to data

Even though there are many existing data sources, some of them might be inaccessible, unreliable, or irrelevant to the purpose of your pipeline. Further, measuring the accessibility of data sources is dependent on circumstances that are oftentimes outside of your direct control, such as procuring the right access credentials, assessing the finesse of a company’s cybersecurity system, or simply having a limitation in your system’s short-term storage capacity.

Whatever the unique limitations of data accessibility are, it needs to be accounted for within the design of your architecture since the ability to connect to data sources with consistency has heavy impacts on downstream workflows. Being aware of the frequency of connection for each data source is essential to not only choose the most accessible data source but also to help determine the cadence of certain analytics due to the restriction of how often various sources can be merged together...