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PyTorch vs TensorFlow for Your Python Deep Learning Project


In this tutorial, you’ll learn:

  • What the differences are between PyTorch and TensorFlow
  • What tools and resources are available for each
  • How to choose the best option for your specific use case

You’ll start by taking a close look at both platforms, beginning with the slightly older TensorFlow. Then, you’ll explore PyTorch and some considerations to help you determine which choice is best for your project. Let’s get started!


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