Book Image

Journey to Become a Google Cloud Machine Learning Engineer

By : Dr. Logan Song
Book Image

Journey to Become a Google Cloud Machine Learning Engineer

By: Dr. Logan Song

Overview of this book

This book aims to provide a study guide to learn and master machine learning in Google Cloud: to build a broad and strong knowledge base, train hands-on skills, and get certified as a Google Cloud Machine Learning Engineer. The book is for someone who has the basic Google Cloud Platform (GCP) knowledge and skills, and basic Python programming skills, and wants to learn machine learning in GCP to take their next step toward becoming a Google Cloud Certified Machine Learning professional. The book starts by laying the foundations of Google Cloud Platform and Python programming, followed the by building blocks of machine learning, then focusing on machine learning in Google Cloud, and finally ends the studying for the Google Cloud Machine Learning certification by integrating all the knowledge and skills together. The book is based on the graduate courses the author has been teaching at the University of Texas at Dallas. When going through the chapters, the reader is expected to study the concepts, complete the exercises, understand and practice the labs in the appendices, and study each exam question thoroughly. Then, at the end of the learning journey, you can expect to harvest the knowledge, skills, and a certificate.
Table of Contents (23 chapters)
1
Part 1: Starting with GCP and Python
4
Part 2: Introducing Machine Learning
8
Part 3: Mastering ML in GCP
13
Part 4: Accomplishing GCP ML Certification
15
Part 5: Appendices
Appendix 2: Practicing Using the Python Data Libraries

Tuning the model

During the model validation process, we evaluate the model performances, and there are situations where the model does not fit the validation dataset. Let’s examine the different cases.

Overfitting and underfitting

While underfitting describes the situation where prediction error is not minimized, overfitting is the case where the model fits the training dataset very well but does not fit the validation dataset. An overfitting model gets a very low cost function value during training but poorly predicts on new data. Figure 4.16 depicts the situations for underfitting, robust, and overfitting.

Figure 4.16 – Model fittings

When we try to minimize the cost function and avoid underfitting, we need to make sure our model is generalized and not prone to overfitting. From our ML practice, we know that overfitting is often caused by making a model more complex than necessary. As you can see in Figure 4.16, overfitting makes a training...