Jump to ratings and reviews
Rate this book

Data Science on the Google Cloud Platform: Implementing End-to-End Real-Time Data Pipelines: From Ingest to Machine Learning

Rate this book
Learn how easy it is to apply sophisticated statistical and machine learning methods to real-world problems when you build on top of the Google Cloud Platform (GCP). With this practical guide, author and GCP Program Manager Valliappa Lakshmanan shows you how to gain insight into a sample business decision by applying different statistical and machine learning methods and tools.

Along the way, you'll get an extensive tour of the big data and machine learning parts of GCP. You'll start with statistical methods, move into straightforward classification, and then explore windowing and real-time prediction.


Move from basic to increasingly sophisticated methods
Understand interactive querying of very large datasets with BigQuery
Learn about probabilistic decision making with SparkSQL and Spark
Train a TensorFlow model in Python and call it from Java
Create a data processing pipeline with Dataflow
Compute time-windowed aggregates in real-time

404 pages, Paperback

Published February 6, 2018

70 people are currently reading
158 people want to read

About the author

Valliappa Lakshmanan

25 books23 followers

Ratings & Reviews

What do you think?
Rate this book

Friends & Following

Create a free account to discover what your friends think of this book!

Community Reviews

5 stars
16 (34%)
4 stars
17 (36%)
3 stars
9 (19%)
2 stars
3 (6%)
1 star
1 (2%)
Displaying 1 - 10 of 10 reviews
Profile Image for Henne.
159 reviews75 followers
September 18, 2019
A good overview of data science and machine learning techniques using 'big data' technologies on GCP; a good companion to the GCP Data Engineering courses on Coursera.
Profile Image for Ben.
194 reviews14 followers
March 1, 2019
Somewhat of an unfair rating of two stars as I do not think I was among the intended audience for this book or at least didn't have the right expectations for this book. I have a background in software engineering, have used GCP for software engineering purposes, but do not have a data science background. To me, the book seemed like a mix of concepts, product descriptions, code snippets, and a single real-world example that, in mixing these, did not deliver an interesting, instructive message on any of the individual parts. It didn't really spend enough time at the conceptual level for me to feel like I understand the data science concepts any better. The command-line and code snippets didn't seem like useful knowledge as they are easily looked up in a reference and not "reusable" knowledge. I was also bored to death of the airline delays example by the end of the book :) I struggled to generalize the information in the book. Given my expectations, I likely would have been better off picking up a book on the introductory concepts of data science than this book.
14 reviews3 followers
July 30, 2020
This book was of great help with the Data Engineering exam of Google Cloud.
Profile Image for Andrew Breza.
505 reviews32 followers
July 17, 2022
As my employer prepares to move to GCP, I've been studying the platform's capabilities and getting excited about what it can do. The other GCP books I've read have covered the platform at a high level, discussing how the different services fit together. This book is much more applied, taking a concrete problem and working through a different aspect of it in each chapter.

My only critique of the book is that the example problem is straightforward enough that most of the firepower the author throws at it is overkill. An R script on a reasonably powerful laptop would have probably had only a slightly higher error rate.
Profile Image for William Anderson.
134 reviews25 followers
May 4, 2018
While this is a great intro to some of the basics and offerings of GCP that can be leveraged for datascience, the book is targeting much more to explaining the pieces of the platform and getting up and running vs anything in depth. While the cloud native solutions such as cloud dataflow are touched on each could have its own book going through architecture integrations more in depth. Nonetheless a solid intro book.
Profile Image for Waits.
2 reviews2 followers
January 11, 2022
Really bad book. Very disordered thoughts, very long paragraphs talking about being a Data Engineer or simple visualizations and little about basic fundamentals of GCP.

Lack of clarity, examples did not work properly. I was not able to even finish the book, I am still not quite sure what was the reason of this book, but the title does not relate to the reality.
Profile Image for Douglas.
159 reviews13 followers
January 16, 2018
A level-headed end to end process for data science and engineering in the cloud (not just Google Cloud). The author was a teammate of mine when joining the company and he should be very proud of this work.
Profile Image for Paul.
227 reviews
April 2, 2021
Useful step-by-step guide to do a simple Data Science project on Google Cloud Platform, including where to get some initial public data to work with, how to create the components on Google Cloud Platform, how to analyze the results, and related things.
Profile Image for Anh Dang.
10 reviews6 followers
August 31, 2021
The book is practical, sufficiently informative. But focus on one language of Python would be better. Could published a book focusing on Java
Displaying 1 - 10 of 10 reviews

Can't find what you're looking for?

Get help and learn more about the design.