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Data engineering has grown rapidly in the past decade, leaving many software engineers, data scientists, and analysts looking for a comprehensive view of this practice. With this practical book, you'll learn how to plan and build systems to serve the needs of your organization and customers by evaluating the best technologies available through the framework of the data engineering lifecycle Review: Great book - Great book. Using it on daily basis. Gives you a comprehensive understanding of data Engineering fundamentals. Review: A Great Overview of the Data Analytics Tech Landscape (for the Uninitiated) - This is a great book for anyone who has a solid understanding of software development and cloud architecture, but doesn't have direct experience building data pipelines or data analytics products. The authors don't get into much technical detail at a tactical level - this is not a book about actually implementing anything whatsoever. Rather, this book offers a really excellent 10,000 foot view of the current state of Data Engineering from multiple angles. Throughout the book they spend a lot of time explaining the "people" side of things (what developers and teams actually do when building Data Eng teams, analytics pipelines, etc.) and how they interact with various other teams and stakeholders (data scientists, analysts, PMs, execs,...). They also cover a vast amount of ground on the architectural side of things. As a developer with years of tech experience, but one which has never directly worked on data pipelines, I really enjoyed how they offered both numerous examples and stories of how projects were built and operated in the _ancient_ "big data" Hadoop era (i.e. 2010-2020, LOL!), and then how quickly the tech and related architectures have changed as significant new technologies came to the fore (i.e. Kafka, BigQuery/Athena, Snowflake/Databricks, etc...). My 2 constructive criticisms of this book are: 1) Some will be frustrated by the lack of tactical content or technical depth. That said, what they sacrifice in depth they make up for in scope. The data analytics space is vast, and evolving at a breakneck pace. They do an admirable job of introducing and summarizing a vast topic, all grounded in practical advice and real-world anecdotes and examples (from their own professional experience). 2) They have 1 surprising blind spot, imho – which is that they don't even offer a passing nod to Domain Driven Design (DDD). Given that they do discuss topics including microservices, data models, schemas, and some aspects of "domains" in the enterprise sense, as well as the need to interact with stakeholders and experts from various other teams (aka "domain experts"), this strikes me as a surprising blind spot. I'd like to see them explore DDD in a future 2nd edition (please!). Final word – If you're an experienced developer or architect with big data or analytics experience, this book may leave you wanting. For anyone else with a solid technical foundation and an interest in the data realm from almost any angle, this is a great read that's well worth your time.



















| Best Sellers Rank | 10,975 in Books ( See Top 100 in Books ) 2 in Data Mining (Books) 2 in Database Applications 3 in Beginner's Guide to Databases |
| Customer Reviews | 4.6 out of 5 stars 694 Reviews |
A**V
Great book
Great book. Using it on daily basis. Gives you a comprehensive understanding of data Engineering fundamentals.
J**Y
A Great Overview of the Data Analytics Tech Landscape (for the Uninitiated)
This is a great book for anyone who has a solid understanding of software development and cloud architecture, but doesn't have direct experience building data pipelines or data analytics products. The authors don't get into much technical detail at a tactical level - this is not a book about actually implementing anything whatsoever. Rather, this book offers a really excellent 10,000 foot view of the current state of Data Engineering from multiple angles. Throughout the book they spend a lot of time explaining the "people" side of things (what developers and teams actually do when building Data Eng teams, analytics pipelines, etc.) and how they interact with various other teams and stakeholders (data scientists, analysts, PMs, execs,...). They also cover a vast amount of ground on the architectural side of things. As a developer with years of tech experience, but one which has never directly worked on data pipelines, I really enjoyed how they offered both numerous examples and stories of how projects were built and operated in the _ancient_ "big data" Hadoop era (i.e. 2010-2020, LOL!), and then how quickly the tech and related architectures have changed as significant new technologies came to the fore (i.e. Kafka, BigQuery/Athena, Snowflake/Databricks, etc...). My 2 constructive criticisms of this book are: 1) Some will be frustrated by the lack of tactical content or technical depth. That said, what they sacrifice in depth they make up for in scope. The data analytics space is vast, and evolving at a breakneck pace. They do an admirable job of introducing and summarizing a vast topic, all grounded in practical advice and real-world anecdotes and examples (from their own professional experience). 2) They have 1 surprising blind spot, imho – which is that they don't even offer a passing nod to Domain Driven Design (DDD). Given that they do discuss topics including microservices, data models, schemas, and some aspects of "domains" in the enterprise sense, as well as the need to interact with stakeholders and experts from various other teams (aka "domain experts"), this strikes me as a surprising blind spot. I'd like to see them explore DDD in a future 2nd edition (please!). Final word – If you're an experienced developer or architect with big data or analytics experience, this book may leave you wanting. For anyone else with a solid technical foundation and an interest in the data realm from almost any angle, this is a great read that's well worth your time.
A**K
All good
Great condition, arrived on time
J**D
Good
A little slow and the audible narration could be better but otherwise an OK book for someone wanting an extended overview of the topic.
V**I
Every data engineer needs to read this book
Every data engineer needs to read this book. The book provides good guidance on the big picture of data engineering, from the source system, storage, ingestion, transformation, serving as well as security, data management, data operation, data architecture, orchestration. And unlike any other technical book this book is a good read! Meaning it's engaging, like in a dialog with the readers. It gets me to think of what is really important. Thank you Joe Reis and Matthew Housley for writing it.
B**.
The subjects and headings are thorough and well-covered.
I like the book very useful
D**U
Great book
Great
D**R
A Must-Have Guide for All Aspiring Data Engineers!
Absolutely top-notch! "Fundamentals of Data Engineering" by Joe Reis and Matt Housley is a masterstroke, providing a comprehensive and practical view of data engineering, a field that has seen rapid growth in recent years. This invaluable resource effortlessly breaks down complex concepts into easily digestible chunks, shedding light on the often-overlooked aspects of the field such as data generation, ingestion, orchestration, transformation, storage, governance, and deployment.
A**R
Must read for anyone in data
I finished reading “Fundamentals of Data Engineering” by Joe Reis and Matt Houser. The book is wonderful and a must read for any data professional. My favorite part is that the book is tool-agnostic. While there are many books that teach data engineering in one specific tool or language, Fundamentals of Data Engineering succeeds in explaining data engineering concepts without being attached to a tool. What also caught my attention is that this book is very well designed for a broad audience. There is value for anyone who is either a seasoned professional, or someone who is relatively new to the field (like me). This field is constantly evolving in a very fast pace, and I can see how Fundamentals of Data Engineering is one of the books that will stand the test of time. I highly recommend it to anyone in the data industry.
F**Z
Excelente
Muy bueno
A**W
Good price
I bought it as a gift for a friend of mine. He was happy about it, as long as he had been looking for this book for a while
G**P
Not sure if it's worth
I am a bit disappointed, the topics are described with no examples, everything is too high level
M**M
Excellent livre mais finition médiocre
Il part en miettes dès le chapitre 2...
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