Long Short-Term Memory with PyTorch + Lightning
In this StatQuest we'll learn how to code an LSTM unit from scratch and then train it. Then we'll do the same thing with the PyTorch function nn.LSMT(). Along the way we'll learn two cool tricks that Lightning gives us that make our lives easier: 1) How to add more training epochs without starting over and 2) How to easily visualize the training results to determine if you need to do more training or are done. English This video has been dubbed using an artificial voice via https://aloud.area120.google.com to increase accessibility. You can change the audio track language in the Settings menu. Spanish Este video ha sido doblado al español con voz artificial con https://aloud.area120.google.com para aumentar la accesibilidad. Puede cambiar el idioma de la pista de audio en el menú Configuración. Portuguese Este vídeo foi dublado para o português usando uma voz artificial via https://aloud.area120.google.com para melhorar sua acessibilidade. Você pode alterar o idioma do áudio no menu Configurações. For a complete index of all the StatQuest videos, check out: https://statquest.org/video-index/ If you'd like to support StatQuest, please consider... Patreon: / statquest ...or... YouTube Membership: / @statquest ...buying one of my books, a study guide, a t-shirt or hoodie, or a song from the StatQuest store... https://statquest.org/statquest-store/ ...or just donating to StatQuest! https://www.paypal.me/statquest Lastly, if you want to keep up with me as I research and create new StatQuests, follow me on twitter: / joshuastarmer 0:00 Awesome song and introduction 4:25 Importing the modules 5:39 An outline of an LSTM class 6:56 init(): Creating and initializing the tensors 9:09 lstm_unit(): Doing the LSTM math 12:25 forward(): Make a forward pass through an unrolled LSTM 13:42 configure_optimizers(): Configure the...optimizers. 14:00 training_step(): Calculate the loss and log progress 16:40 Using and training our homemade LSTM 20:43 Evaluating training with TensorBoard 23:22 Adding more epochs to training 26:18 Using and training PyTorch's nn.lstm() #StatQuest

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