Curriculum

  1. 1

    Book Preview

    1. Mastering Computer Vision with PyTorch 2.0 Free preview
  2. 2

    Introduction

    1. (Included in full purchase)
  3. 3

    Chapter 1 : Diving into PyTorch 2.0

    1. (Included in full purchase)
  4. 4

    Chapter 2 : PyTorch Basics

    1. (Included in full purchase)
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    Chapter 3 : Transitioning from PyTorch 1.x to PyTorch 2.0

    1. (Included in full purchase)
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    Chapter 4 : Venturing into Artificial Neural Networks

    1. (Included in full purchase)
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    Chapter 5 : Diving Deep into Convolutional Neural Networks (CNNs)

    1. (Included in full purchase)
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    Chapter 6 : Data Augmentation and Preprocessing for Vision Tasks

    1. (Included in full purchase)
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    Chapter 7 : Exploring Transfer Learning with PyTorch

    1. (Included in full purchase)
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    Chapter 8 : Advanced Image Classification Models

    1. (Included in full purchase)
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    Chapter 9 : Object Detection Models

    1. (Included in full purchase)
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    Chapter 10 : Tips and Tricks to Improve Model Performance

    1. (Included in full purchase)
  13. 13

    Chapter 11 : Efficient Training with PyTorch Lightning

    1. (Included in full purchase)
  14. 14

    Chapter 12 : Efficient Training with PyTorch Lightning

    1. (Included in full purchase)
  15. 15

    INDEX

    1. (Included in full purchase)

About the course

In an era where Computer Vision has rapidly transformed industries like healthcare and autonomous systems, PyTorch 2.0 has become the leading framework for high-performance AI solutions. [Mastering Computer Vision with PyTorch 2.0] bridges the gap between theory and application, guiding readers through PyTorch essentials while equipping them to solve real-world challenges. Starting with PyTorch’s evolution and unique features, the book introduces foundational concepts like tensors, computational graphs, and neural networks. It progresses to advanced topics such as Convolutional Neural Networks (CNNs), transfer learning, and data augmentation. Hands-on chapters focus on building models, optimizing performance, and visualizing architectures. Specialized areas include efficient training with PyTorch Lightning, deploying models on edge devices, and making models production-ready. Explore cutting-edge applications, from object detection models like YOLO and Faster R-CNN to image classification architectures like ResNet and Inception. By the end, readers will be confident in implementing scalable AI solutions, staying ahead in this rapidly evolving field. Whether you're a student, AI enthusiast, or professional, this book empowers you to harness the power of PyTorch 2.0 for Computer Vision.

About the Author

M. Arshad Siddiqui is a distinguished computer vision expert with extensive experience in developing and deploying cutting-edge AI solutions. His career began as a Computer Vision Engineer at Lensbricks, where he developed innovative vision systems for emerging technologies. He then advanced to Big Vision, refining his expertise in tackling large-scale challenges in computer vision and artificial intelligence.