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PyTorch Tutorial 14 - Convolutional Neural Network (CNN) 4 года назад


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PyTorch Tutorial 14 - Convolutional Neural Network (CNN)

New Tutorial series about Deep Learning with PyTorch! ⭐ Check out Tabnine, the FREE AI-powered code completion tool I use to help me code faster: https://www.tabnine.com/?utm_source=y... * In this part we will implement our first convolutional neural network (CNN) that can do image classification based on the famous CIFAR-10 dataset. We will learn: - Architecture of CNNs - Convolutional Filter - Max Pooling - Determine the correct layer size - Implement the CNN architecture in PyTorch 📚 Get my FREE NumPy Handbook: https://www.python-engineer.com/numpy... 📓 Notebooks available on Patreon:   / patrickloeber   ⭐ Join Our Discord :   / discord   Part 14: Convolutional Neural Network (CNN) If you enjoyed this video, please subscribe to the channel! Official website: https://pytorch.org/ Part 01:    • PyTorch Tutorial 01 - Installation   More about CNNs: deeplizard channel:    • Convolutional Neural Networks (CNNs) ...   Stanford Lecture:    • Lecture 5 | Convolutional Neural Netw...   http://cs231n.github.io/convolutional... https://machinelearningmastery.com/co... Code for this tutorial series: https://github.com/patrickloeber/pyto... You can find me here: Website: https://www.python-engineer.com Twitter:   / patloeber   GitHub: https://github.com/patrickloeber #Python #DeepLearning #Pytorch ---------------------------------------------------------------------------------------------------------- * This is a sponsored link. By clicking on it you will not have any additional costs, instead you will support me and my project. Thank you so much for the support! 🙏

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