Train a CNN on Google colab | MNIST Digit classifier - Deep learning codes
This video shows a demo code of the MNIST digit classifier using convolution neural networks (CNN). Further, It shows how to use GPU on google colab for training a convolutional neural network. Google colab can help in practicing the implementation of deep learning models.
Google colab helps in faster training of a deep learning model.
DCGAN from scratch pytorch implementation | Fake faces using generative models :-https://youtu.be/MESyIGQIbQo
Pytorch tutorial - Digit classification | MNIST Digit classification using ANN :-https://youtu.be/5o3gLcv14eA
Playlist of Deep Learning:-https://youtube.com/playlist?list=PLCVV78b4CEE5Wb9zn49VMle1stNWrpzV7
mnist CNN
#deeplearning #colab #mnistcnn
Видео Train a CNN on Google colab | MNIST Digit classifier - Deep learning codes канала Lesson LogiCS
Google colab helps in faster training of a deep learning model.
DCGAN from scratch pytorch implementation | Fake faces using generative models :-https://youtu.be/MESyIGQIbQo
Pytorch tutorial - Digit classification | MNIST Digit classification using ANN :-https://youtu.be/5o3gLcv14eA
Playlist of Deep Learning:-https://youtube.com/playlist?list=PLCVV78b4CEE5Wb9zn49VMle1stNWrpzV7
mnist CNN
#deeplearning #colab #mnistcnn
Видео Train a CNN on Google colab | MNIST Digit classifier - Deep learning codes канала Lesson LogiCS
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