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Practical Deep Learning at Scale with MLflow

You're reading from   Practical Deep Learning at Scale with MLflow Bridge the gap between offline experimentation and online production

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Product type Paperback
Published in Jul 2022
Publisher Packt
ISBN-13 9781803241333
Length 288 pages
Edition 1st Edition
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Author (1):
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Yong Liu Yong Liu
Author Profile Icon Yong Liu
Yong Liu
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Toc

Table of Contents (17) Chapters Close

Preface 1. Section 1 - Deep Learning Challenges and MLflow Prime
2. Chapter 1: Deep Learning Life Cycle and MLOps Challenges FREE CHAPTER 3. Chapter 2: Getting Started with MLflow for Deep Learning 4. Section 2 –
Tracking a Deep Learning Pipeline at Scale
5. Chapter 3: Tracking Models, Parameters, and Metrics 6. Chapter 4: Tracking Code and Data Versioning 7. Section 3 –
Running Deep Learning Pipelines at Scale
8. Chapter 5: Running DL Pipelines in Different Environments 9. Chapter 6: Running Hyperparameter Tuning at Scale 10. Section 4 –
Deploying a Deep Learning Pipeline at Scale
11. Chapter 7: Multi-Step Deep Learning Inference Pipeline 12. Chapter 8: Deploying a DL Inference Pipeline at Scale 13. Section 5 – Deep Learning Model Explainability at Scale
14. Chapter 9: Fundamentals of Deep Learning Explainability 15. Chapter 10: Implementing DL Explainability with MLflow 16. Other Books You May Enjoy

Chapter 6: Running Hyperparameter Tuning at Scale

Hyperparameter tuning or hyperparameter optimization (HPO) is a procedure that finds the best possible deep neural network structures, types of pretrained models, and model training process within a reasonable computing resource constraint and time frame. Here, hyperparameter refers to parameters that cannot be changed or learned during the ML training process, such as the number of layers inside a deep neural network, the choice of a pretrained language model, or the learning rate, batch size, and optimizer of the training process. In this chapter, we will use HPO as a shorthand to refer to the process of hyperparameter tuning and optimization. HPO is a critical step for producing a high-performance ML/DL model. Given that the search space of the hyperparameter is very large, efficiently running HPO at scale is a major challenge. The complexity and high cost of evaluating a DL model, compared to classical ML models, further compound...

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