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You're reading from  Deep Learning with PyTorch Lightning

Product typeBook
Published inApr 2022
Reading LevelBeginner
PublisherPackt
ISBN-139781800561618
Edition1st Edition
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Kunal Sawarkar
Kunal Sawarkar
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Kunal Sawarkar

Kunal Sawarkar is a chief data scientist and AI thought leader. He leads the worldwide partner ecosystem in building innovative AI products. He also serves as an advisory board member and an angel investor. He holds a master's degree from Harvard University with major coursework in applied statistics. He has been applying machine learning to solve previously unsolved problems in industry and society, with a special focus on deep learning and self-supervised learning. Kunal has led various AI product R&D labs and has 20+ patents and papers published in this field. When not diving into data, he loves doing rock climbing and learning to fly aircraft, in addition to an insatiable curiosity for astronomy and wildlife.
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Scaling up training

Scaling up training requires us to speed up the training process for large amounts of data and utilize GPUs and TPUs better. In this section, we will cover some of the tips on how to efficiently use provisions in PyTorch Lightning to accomplish this.

Speeding up model training using a number of workers

How can the PyTorch Lightning framework help speed up model training? One useful parameter to know is num_workers, which comes from PyTorch, and PyTorch Lightning builds on top of it by giving advice about the number of workers.

Solution

The PyTorch Lightning framework offers a number of provisions for speeding up model training, such as the following:

  • You can set a non-zero value for the num_workers argument to speed up model training. The following code snippet provides an example of this:
    import torch.utils.data as data
    ...
    dataloader = data.DataLoader(num_workers=4, ...)

The optimal num_workers value depends on the batch size and configuration...

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Deep Learning with PyTorch Lightning
Published in: Apr 2022Publisher: PacktISBN-13: 9781800561618

Author (1)

author image
Kunal Sawarkar

Kunal Sawarkar is a chief data scientist and AI thought leader. He leads the worldwide partner ecosystem in building innovative AI products. He also serves as an advisory board member and an angel investor. He holds a master's degree from Harvard University with major coursework in applied statistics. He has been applying machine learning to solve previously unsolved problems in industry and society, with a special focus on deep learning and self-supervised learning. Kunal has led various AI product R&D labs and has 20+ patents and papers published in this field. When not diving into data, he loves doing rock climbing and learning to fly aircraft, in addition to an insatiable curiosity for astronomy and wildlife.
Read more about Kunal Sawarkar