| Print List Price: | $39.99 |
| Kindle Price: | $31.99 Save $8.00 (20%) |
| Sold by: | Amazon.com Services LLC |
Your Memberships & Subscriptions
Download the free Kindle app and start reading Kindle books instantly on your smartphone, tablet, or computer - no Kindle device required.
Read instantly on your browser with Kindle for Web.
Using your mobile phone camera - scan the code below and download the Kindle app.
Follow the author
OK
Data Ingestion with Python Cookbook: A practical guide to ingesting, monitoring, and identifying errors in the data ingestion process 1st Edition, Kindle Edition
Deploy your data ingestion pipeline, orchestrate, and monitor efficiently to prevent loss of data and quality
Purchase of the print or Kindle book includes a free PDF eBook
Key Features
- Harness best practices to create a Python and PySpark data ingestion pipeline
- Seamlessly automate and orchestrate your data pipelines using Apache Airflow
- Build a monitoring framework by integrating the concept of data observability into your pipelines
Book Description
Data Ingestion with Python Cookbook offers a practical approach to designing and implementing data ingestion pipelines. It presents real-world examples with the most widely recognized open source tools on the market to answer commonly asked questions and overcome challenges.
You’ll be introduced to designing and working with or without data schemas, as well as creating monitored pipelines with Airflow and data observability principles, all while following industry best practices. The book also addresses challenges associated with reading different data sources and data formats. As you progress through the book, you’ll gain a broader understanding of error logging best practices, troubleshooting techniques, data orchestration, monitoring, and storing logs for further consultation.
By the end of the book, you’ll have a fully automated set that enables you to start ingesting and monitoring your data pipeline effortlessly, facilitating seamless integration with subsequent stages of the ETL process.
What you will learn
- Implement data observability using monitoring tools
- Automate your data ingestion pipeline
- Read analytical and partitioned data, whether schema or non-schema based
- Debug and prevent data loss through efficient data monitoring and logging
- Establish data access policies using a data governance framework
- Construct a data orchestration framework to improve data quality
Who this book is for
This book is for data engineers and data enthusiasts seeking a comprehensive understanding of the data ingestion process using popular tools in the open source community. For more advanced learners, this book takes on the theoretical pillars of data governance while providing practical examples of real-world scenarios commonly encountered by data engineers.
Table of Contents
- Introduction to Data Ingestion
- Principals of Data Access – Accessing your Data
- Data Discovery – Understanding Our Data Before Ingesting It
- Reading CSV and JSON Files and Solving Problems
- Ingesting Data from Structured and Unstructured Databases
- Using PySpark with Defined and Non-Defined Schemas
- Ingesting Analytical Data
- Designing Monitored Data Workflows
- Putting Everything Together with Airflow
- Logging and Monitoring Your Data Ingest in Airflow
- Automating Your Data Ingestion Pipelines
- Using Data Observability for Debugging, Error Handling, and Preventing Downtime
- ISBN-13978-1837632602
- Edition1st
- PublisherPackt Publishing
- Publication dateMay 31, 2023
- LanguageEnglish
- File size48426 KB
Kindle E-Readers
- Kindle Paperwhite
- Kindle Scribe (1st Generation)
- Kindle (10th Generation)
- Kindle Oasis (10th Generation)
- Kindle Paperwhite (10th Generation)
- Kindle
- Kindle Oasis (9th Generation)
- Kindle Paperwhite (5th Generation)
- Kindle Touch
- All new Kindle paperwhite
- Kindle Paperwhite (11th Generation)
- Kindle Oasis
- All New Kindle E-reader
- Kindle Voyage
- All New Kindle E-reader (11th Generation)
Fire Tablets
Customers who bought this item also bought
Editorial Reviews
About the Author
Gláucia Esppenchutz is a data engineer with expertise in managing data pipelines and vast amounts of data using cloud and on-premises technologies. She worked in companies such as Globo, BMW Group, and Cloudera. Currently, she works at AiFi, specializing in the field of data operations for autonomous systems.
She comes from the biomedical field and shifted her career ten years ago to chase the dream of working closely with technology and data. She is in constant contact with the open source community, mentoring people and helping to manage projects, and has collaborated with the Apache, PyLadies group, FreeCodeCamp, Udacity, and MentorColor communities.
Product details
- ASIN : B0C3CQDYHW
- Publisher : Packt Publishing; 1st edition (May 31, 2023)
- Publication date : May 31, 2023
- Language : English
- File size : 48426 KB
- Text-to-Speech : Enabled
- Screen Reader : Supported
- Enhanced typesetting : Enabled
- X-Ray : Not Enabled
- Word Wise : Not Enabled
- Print length : 414 pages
- Best Sellers Rank: #2,083,000 in Kindle Store (See Top 100 in Kindle Store)
- #287 in Data Warehousing (Kindle Store)
- #655 in Data Modeling & Design (Kindle Store)
- #681 in Data Warehousing (Books)
- Customer Reviews:
About the author

Hello there! I'm Gláucia, an experienced developer with a passion for Python and DataOps. With over 8 years of coding under my belt, I've had the opportunity to work on a wide range of projects, harnessing the power of Python to solve complex problems and streamline data operations.
In addition to my programming prowess, I'm also an author. I recently wrote a book that explores the fascinating world of data engineering and offers practical insights for aspiring developers. It was a labor of love, and I'm thrilled to share my knowledge and experiences with others.
But that's not all—I have a couple of other passions outside the tech realm. You'll often find me brewing delicious cups of coffee as a barista during my free time. There's something incredibly satisfying about crafting the perfect cup of joe and bringing joy to people's mornings.
When I'm not coding or brewing coffee, I'm pursuing my other artistic endeavor—I'm a drumming enthusiast! Although I consider myself a drummer wannabe, I love the rhythmic beats and the way music brings people together. Drumming allows me to unleash my creative energy and connect with others through the power of music.
Join me on this exciting journey as we explore the limitless possibilities of Python, delve into the intricacies of DataOps, and dive into the captivating world of literature, coffee, and music.
Customer reviews
- 5 star4 star3 star2 star1 star5 star40%29%31%0%0%40%
- 5 star4 star3 star2 star1 star4 star40%29%31%0%0%29%
- 5 star4 star3 star2 star1 star3 star40%29%31%0%0%31%
- 5 star4 star3 star2 star1 star2 star40%29%31%0%0%0%
- 5 star4 star3 star2 star1 star1 star40%29%31%0%0%0%
Customer Reviews, including Product Star Ratings help customers to learn more about the product and decide whether it is the right product for them.
To calculate the overall star rating and percentage breakdown by star, we don’t use a simple average. Instead, our system considers things like how recent a review is and if the reviewer bought the item on Amazon. It also analyzed reviews to verify trustworthiness.
Learn more how customers reviews work on AmazonReviews with images
Great Book!
Top reviews from the United States
There was a problem filtering reviews right now. Please try again later.
- Reviewed in the United States on June 26, 2023The book is amazing, it helped me through daily situations and also gave me new perspectives. The mention to OpenMetadata helped to solve a problem I was facing in my current company. I recommend for new and seasoned Data Engineers.
The book is amazing, it helped me through daily situations and also gave me new perspectives. The mention to OpenMetadata helped to solve a problem I was facing in my current company. I recommend for new and seasoned Data Engineers.
Images in this review
- Reviewed in the United States on August 7, 2023I just finished reading this book last week. Having worked in data engineering field more than 10 years now , I found this book a great resource for someone who wants to build skills as a hands-on data-engineer . It offers a practical explanation of the data ingestion lifecycle, covering aspects like data discovery, ingestion from various databases, PySpark usage with different schemas, monitored workflows design, Airflow integration, error handling. The book's focus on open-source tools and real-world scenarios equips readers with skills to build efficient pipelines, ensure data quality, and troubleshoot effectively. I really liked the last section of data observability in the book where it covers the statsd , prometheus and grafana setup.
Though I would have loved to more details on another popular data engineering stack Dbt,Snowflake, Yet fundamentals of building scalable data pipelines will remain the same regardless of the tech stack. I would highly recommend this book for data engineers seeking practical guidance and understanding of data ingestion challenges and solutions.
- Reviewed in the United States on June 28, 2023The book covers life cycle of Data ingestion process (ingesting, monitoring & errors). Author goes in depth about Data Discovery ,Ingesting Data from Structured and Unstructured Databases, PySpark with Defined and Non-Defined Schemas, Designing Monitored Data Workflows, Airflow, Logging and Monitoring Data Ingest in Airflow, Automating Data Ingestion Pipelines, Data Observability for Debugging, Error Handling, and Preventing Downtime. Throughout the book there are lots of examples with code. Highly recommend this book for entry level and experienced data engineers.
- Reviewed in the United States on July 10, 2023"Data Ingestion with Python Cookbook" is a practical and comprehensive guide that equips data engineers and enthusiasts with the knowledge and skills to design and implement efficient data ingestion pipelines. The book seamlessly blends industry best practices with real-world examples, utilizing popular open-source tools to overcome common challenges in the field.
From data schema design to creating monitored pipelines with Apache Airflow, the book covers a wide range of topics essential for building robust data ingestion processes. Readers learn to integrate data observability principles into their pipelines, ensuring data quality and facilitating troubleshooting. The book also addresses the complexities of reading various data sources and formats, offering practical solutions and techniques.
Throughout the book, readers gain insights into error logging best practices, data orchestration, monitoring, and establishing data access policies through a data governance framework. With a focus on automation and efficiency, the book empowers readers to effortlessly ingest and monitor their data pipelines, laying the foundation for seamless integration with subsequent stages of the ETL process.
"Data Ingestion with Python Cookbook" is a valuable resource for data engineers and enthusiasts seeking a comprehensive understanding of data ingestion using popular open-source tools. Whether you're a beginner or an advanced learner, this book provides practical examples and theoretical pillars of data governance to address real-world scenarios encountered in data engineering projects.





