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Production-Ready Applied Deep Learning

You're reading from   Production-Ready Applied Deep Learning Learn how to construct and deploy complex models in PyTorch and TensorFlow deep learning frameworks

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Product type Paperback
Published in Aug 2022
Publisher Packt
ISBN-13 9781803243665
Length 322 pages
Edition 1st Edition
Tools
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Authors (3):
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Lenin Mookiah Lenin Mookiah
Author Profile Icon Lenin Mookiah
Lenin Mookiah
Tomasz Palczewski Tomasz Palczewski
Author Profile Icon Tomasz Palczewski
Tomasz Palczewski
Jaejun (Brandon) Lee Jaejun (Brandon) Lee
Author Profile Icon Jaejun (Brandon) Lee
Jaejun (Brandon) Lee
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Toc

Table of Contents (19) Chapters Close

Preface 1. Part 1 – Building a Minimum Viable Product
2. Chapter 1: Effective Planning of Deep Learning-Driven Projects FREE CHAPTER 3. Chapter 2: Data Preparation for Deep Learning Projects 4. Chapter 3: Developing a Powerful Deep Learning Model 5. Chapter 4: Experiment Tracking, Model Management, and Dataset Versioning 6. Part 2 – Building a Fully Featured Product
7. Chapter 5: Data Preparation in the Cloud 8. Chapter 6: Efficient Model Training 9. Chapter 7: Revealing the Secret of Deep Learning Models 10. Part 3 – Deployment and Maintenance
11. Chapter 8: Simplifying Deep Learning Model Deployment 12. Chapter 9: Scaling a Deep Learning Pipeline 13. Chapter 10: Improving Inference Efficiency 14. Chapter 11: Deep Learning on Mobile Devices 15. Chapter 12: Monitoring Deep Learning Endpoints in Production 16. Chapter 13: Reviewing the Completed Deep Learning Project 17. Index 18. Other Books You May Enjoy

Weight sharing – reducing the number of distinct weight values

Weight sharing or weight clustering is another technique that can significantly reduce the size of the model. The idea behind this technique is rather simple: let’s cluster the weights into groups (or clusters) and use the centroid values instead of individual weight values. In this case, we can store the value of each centroid instead of storing every value for the weights. Therefore, we can compress the model size significantly and possibly speed up the inference process. The key idea behind weight sharing is graphically presented in Figure 10.2 (adapted from the official TF blog post on weight clustering API: https://blog.tensorflow.org/2020/08/tensorflow-model-optimization-toolkit-weight-clustering-api.html):

Figure 10.2 – An illustration of weight sharing

Let’s learn how to perform weight sharing in TF before looking at how to do the same in PyTorch.

Performing...

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