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You're reading from  Data Observability for Data Engineering

Product typeBook
Published inDec 2023
PublisherPackt
ISBN-139781804616024
Edition1st Edition
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Authors (2):
Michele Pinto
Michele Pinto
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Michele Pinto

Michele Pinto is the Head of Engineering at Kensu. With over 15 years of experience, Michele has a great knack for understanding how data observability and data engineering are closely linked. He started his career as a software engineer and has worked since then in various roles, such as big data engineer, big data architect, head of data and until recently he was a Head of Engineering. He has a great community presence and believes in giving back to the community. He has also been a teacher for Digital Product Management Master TAG Innovation School in Milan, Italy. His collaboration on the book has been prompt, swift, eager, and very invested.
Read more about Michele Pinto

Sammy El Khammal
Sammy El Khammal
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Sammy El Khammal

Sammy El Khammal works at Kensu. He started off as a field engineer and worked his way up to the position of product manager. In the past, he has also worked with Mercedes as their Business Development Analyst – Intern. He has also been an O'Reilly teacher for 3 workshops on data quality, lineage monitoring, and data observability. During that time, he provided some brilliant insights, very responsive behaviour, and immense talent and determination.
Read more about Sammy El Khammal

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What this book covers

Chapter 1, Fundamentals of Data Quality Monitoring, covers a general introduction to data quality and explains the key metrics used to measure it. It will also explain how data quality can be converted to Service Level Agreements (or contracts) to establish trust among data pipeline stakeholders.

Chapter 2, Fundamentals of Data Observability, will complete the user’s knowledge of data quality by adding the observability dimension, taking quality to the next level, and explaining how we can improve data quality monitoring to have real-time contextual information on data pipelines.

Chapter 3, Data Observability Techniques, covers how a data engineer can retrieve information from applications at run time. It will be an overview of the existing techniques and will explain their advantages and disadvantages regarding the efficient implementation of Data Observability.

Chapter 4, Data Observability Elements, provides an overview of the elements needed to collect contextual and real-time information from a pipeline. This will cover a description of those elements and showcase an example of how you can collect them within a Python script doing data manipulation.

Chapter 5, Defining Rules on Indicators, introduces the concepts of continuous validation of the data. The reader will understand how rules can be implemented by the data engineer, manually or in the code, to test the data and where such validation rules can be implemented.

Chapter 6, Root Cause Analysis, focuses on the data issues and how adopting the Data Observability approach simplifies and may even automate anomaly detection and troubleshooting. It will provide a method for Data Incident Management and anomaly detection examples.

Chapter 7, Optimizing Data Pipelines, explains how data observability can be used to manage several aspects of the data pipeline lifecycle such as the cost containment in data pipeline maintenance as well as to aim key aspects like automating documentation, managing catalog, mitigating anomalies, and reduce the change risk.

Chapter 8, Organizing Data Teams and Measuring the Success of Data Observability, focuses on how to introduce Data Observability in your team, describing the different kinds of Data Teams, the different types of organizations where these teams must fit, and how to measure the success of this initiative.

Chapter 9, Data Observability Checklist, suggests a method in the form of a checklist to implement Data Observability in the company pipelines, reviewing the common pitfalls and concerns we encountered when implementing data observability in various companies.

Chapter 10, Pathway to Data Observability, closes the book by providing data engineers with a technical roadmap to implement data observability in a first project and then at scale across the organization.

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Data Observability for Data Engineering
Published in: Dec 2023Publisher: PacktISBN-13: 9781804616024

Authors (2)

author image
Michele Pinto

Michele Pinto is the Head of Engineering at Kensu. With over 15 years of experience, Michele has a great knack for understanding how data observability and data engineering are closely linked. He started his career as a software engineer and has worked since then in various roles, such as big data engineer, big data architect, head of data and until recently he was a Head of Engineering. He has a great community presence and believes in giving back to the community. He has also been a teacher for Digital Product Management Master TAG Innovation School in Milan, Italy. His collaboration on the book has been prompt, swift, eager, and very invested.
Read more about Michele Pinto

author image
Sammy El Khammal

Sammy El Khammal works at Kensu. He started off as a field engineer and worked his way up to the position of product manager. In the past, he has also worked with Mercedes as their Business Development Analyst – Intern. He has also been an O'Reilly teacher for 3 workshops on data quality, lineage monitoring, and data observability. During that time, he provided some brilliant insights, very responsive behaviour, and immense talent and determination.
Read more about Sammy El Khammal