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Mastering PyTorch

You're reading from   Mastering PyTorch Create and deploy deep learning models from CNNs to multimodal models, LLMs, and beyond

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Product type Paperback
Published in May 2024
Publisher Packt
ISBN-13 9781801074308
Length 558 pages
Edition 2nd Edition
Tools
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Author (1):
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Ashish Ranjan Jha Ashish Ranjan Jha
Author Profile Icon Ashish Ranjan Jha
Ashish Ranjan Jha
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Table of Contents (21) Chapters Close

Preface 1. Overview of Deep Learning Using PyTorch 2. Deep CNN Architectures FREE CHAPTER 3. Combining CNNs and LSTMs 4. Deep Recurrent Model Architectures 5. Advanced Hybrid Models 6. Graph Neural Networks 7. Music and Text Generation with PyTorch 8. Neural Style Transfer 9. Deep Convolutional GANs 10. Image Generation Using Diffusion 11. Deep Reinforcement Learning 12. Model Training Optimizations 13. Operationalizing PyTorch Models into Production 14. PyTorch on Mobile Devices 15. Rapid Prototyping with PyTorch 16. PyTorch and AutoML 17. PyTorch and Explainable AI 18. Recommendation Systems with PyTorch 19. PyTorch and Hugging Face 20. Index

Running a PyTorch model in C++

Python can sometimes be limiting, or we might be unable to run machine learning models trained using PyTorch and Python. In this section, we will use the serialized TorchScript model objects (using tracing and scripting) that we exported in the previous section to run model inferences inside C++ code.

Note

Basic working knowledge of C++ is assumed for this section. You can read up on C++ basics here [22]. This section specifically talks a lot about C++ code compilation. You can get a refresher on C++ code compilation concepts here [23].

For this exercise, we need to install CMake, following the steps mentioned in [24], to be able to build the C++ code. After that, we will create a folder named cpp_convnet in the current working directory and work from that directory:

  1. Let’s get straight into writing the C++ file that will run the model inference pipeline. The full C++ code is available here in our GitHub repository...
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