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Learn TensorFlow Enterprise

You're reading from   Learn TensorFlow Enterprise Build, manage, and scale machine learning workloads seamlessly using Google's TensorFlow Enterprise

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Product type Paperback
Published in Nov 2020
Publisher Packt
ISBN-13 9781800209145
Length 314 pages
Edition 1st Edition
Languages
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Author (1):
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KC Tung KC Tung
Author Profile Icon KC Tung
KC Tung
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Toc

Table of Contents (15) Chapters Close

Preface 1. Section 1 – TensorFlow Enterprise Services and Features
2. Chapter 1: Overview of TensorFlow Enterprise FREE CHAPTER 3. Chapter 2: Running TensorFlow Enterprise in Google AI Platform 4. Section 2 – Data Preprocessing and Modeling
5. Chapter 3: Data Preparation and Manipulation Techniques 6. Chapter 4: Reusable Models and Scalable Data Pipelines 7. Section 3 – Scaling and Tuning ML Works
8. Chapter 5: Training at Scale 9. Chapter 6: Hyperparameter Tuning 10. Section 4 – Model Optimization and Deployment
11. Chapter 7: Model Optimization 12. Chapter 8: Best Practices for Model Training and Performance 13. Chapter 9: Serving a TensorFlow Model 14. Other Books You May Enjoy

Regularization

During the training process, the model is learning to find the best set of weights and biases that minimize the loss function. As the model architecture becomes more complex, or simply starts to take on more layers, the model is being fitted with more parameters. Although this may help to produce a better fit during training, having to use more parameters may also lead to overfitting.

In this section, we will dive into some regularization techniques that can be implemented in a straightforward fashion in the tf.keras API.

L1 and L2 regularization

Traditional methods to address the concern of overfitting involve introducing a penalty term in the loss function. This is known as regularization. The penalty term is directly related to model complexity, which is largely determined by the number of non-zero weights. To be more specific, there are three traditional types of regularization used in machine learning:

  • L1 regularization (also known as Lasso):...
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