Book Image

Distributed Machine Learning with Python

By : Guanhua Wang
Book Image

Distributed Machine Learning with Python

By: Guanhua Wang

Overview of this book

Reducing time cost in machine learning leads to a shorter waiting time for model training and a faster model updating cycle. Distributed machine learning enables machine learning practitioners to shorten model training and inference time by orders of magnitude. With the help of this practical guide, you'll be able to put your Python development knowledge to work to get up and running with the implementation of distributed machine learning, including multi-node machine learning systems, in no time. You'll begin by exploring how distributed systems work in the machine learning area and how distributed machine learning is applied to state-of-the-art deep learning models. As you advance, you'll see how to use distributed systems to enhance machine learning model training and serving speed. You'll also get to grips with applying data parallel and model parallel approaches before optimizing the in-parallel model training and serving pipeline in local clusters or cloud environments. By the end of this book, you'll have gained the knowledge and skills needed to build and deploy an efficient data processing pipeline for machine learning model training and inference in a distributed manner.
Table of Contents (17 chapters)
1
Section 1 – Data Parallelism
6
Section 2 – Model Parallelism
11
Section 3 – Advanced Parallelism Paradigms

Model evaluation and hyperparameter tuning

After each epoch of our data parallel model training, we need to evaluate whether the training progress is good or not. We use these evaluation results to conduct hyperparameter tuning, such as the learning rate and batch size per GPU.

Note that the validation set for hyper parameter tuning is from the training set, not the test set, so we split the total training data with a 5:1 ratio. 5/6 of the total training data is for model training, while 1/6 of the total data is for model validation. This can be implemented as follows:

train_all_set = datasets.MNIST('./mnist_data', 
      download=True, train=True,
               transform =  transforms.Compose([
          transforms.ToTensor(),
             ...