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Distributed Machine Learning with Python

You're reading from   Distributed Machine Learning with Python Accelerating model training and serving with distributed systems

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Product type Paperback
Published in Apr 2022
Publisher Packt
ISBN-13 9781801815697
Length 284 pages
Edition 1st Edition
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Author (1):
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Guanhua Wang Guanhua Wang
Author Profile Icon Guanhua Wang
Guanhua Wang
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Table of Contents (17) Chapters Close

Preface 1. Section 1 – Data Parallelism
2. Chapter 1: Splitting Input Data FREE CHAPTER 3. Chapter 2: Parameter Server and All-Reduce 4. Chapter 3: Building a Data Parallel Training and Serving Pipeline 5. Chapter 4: Bottlenecks and Solutions 6. Section 2 – Model Parallelism
7. Chapter 5: Splitting the Model 8. Chapter 6: Pipeline Input and Layer Split 9. Chapter 7: Implementing Model Parallel Training and Serving Workflows 10. Chapter 8: Achieving Higher Throughput and Lower Latency 11. Section 3 – Advanced Parallelism Paradigms
12. Chapter 9: A Hybrid of Data and Model Parallelism 13. Chapter 10: Federated Learning and Edge Devices 14. Chapter 11: Elastic Model Training and Serving 15. Chapter 12: Advanced Techniques for Further Speed-Ups 16. Other Books You May Enjoy

Model training in a heterogeneous environment

This is not a very general case. The motivation for heterogeneous DNN model training is that we may have some legacy hardware accelerators. For example, a company may have used NVIDIA K80 GPUs 10 years ago. Now the company purchases new GPUs such as NVIDIA V100. However, the older K80 GPUs are still usable and the company wants to use all the legacy hardware.

One key challenge of doing heterogeneous DNN model training is load balancing among different hardware.

Let's assume the computation power of each K80 is half of the V100. To achieve good load balancing, if we are doing data parallel training, we should assign N as the mini-batch size on K80 and 2*N as the mini-batch size on V100. If we are doing model-parallel training, we should assign 1/3 layers on K80 and 2/3 layers on V100.

Note that the preceding example for heterogeneous DNN training is simplified. In reality, it is much harder to achieve decent load balancing...

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