Important definitions and terminologies used in Deep Learning with PyTorch
A
- Activation function in Deep Learning with PyTorch
- Adagrad in Deep Learning with PyTorch
- Adam in Deep Learning with PyTorch
- ATen in Deep Learning with PyTorch
- Attention mechanism in Deep Learning with PyTorch
- Autoencoder in Deep Learning with PyTorch
B
- Backpropagation in Deep Learning with PyTorch
- Batch normalization in Deep Learning with PyTorch
- Batch size in Deep Learning with PyTorch
- Binary classification in Deep Learning with PyTorch
- Boltzmann machine in Deep Learning with PyTorch
C
- Cascade training in Deep Learning with PyTorch
- CNN in Deep Learning with PyTorch
- Convolution in Deep Learning with PyTorch
- Convolution Operation in Deep Learning with PyTorch
- Convolutional autoencoder in Deep Learning with PyTorch
- Cross-entropy loss in Deep Learning with PyTorch
- Cross-validation in Deep Learning with PyTorch
- CUDA in Deep Learning with PyTorch
D
- Data augmentation in Deep Learning with PyTorch
- Data loader in Deep Learning with PyTorch
- Data normalization in Deep Learning with PyTorch
- Deep belief network in Deep Learning with PyTorch
- Dimensionality reduction in Deep Learning with PyTorch
- Distributed Data-Parallel in Deep Learning with PyTorch
- Dropout in Deep Learning with PyTorch
- Dynamic Graphs in Deep Learning with PyTorch
E
- Early fusion in Deep Learning with PyTorch
- Early stopping in Deep Learning with PyTorch
- Embedding in Deep Learning with PyTorch
- Ensemble learning in Deep Learning with PyTorch
- Epoch in Deep Learning with PyTorch
F
- Feedforward neural network in Deep Learning with PyTorch
- Fine-tuned model in Deep Learning with PyTorch
- Fine-tuning in Deep Learning with PyTorch
- Focal loss in Deep Learning with PyTorch
- Fully connected layer in Deep Learning with PyTorch
G
- GAN in Deep Learning with PyTorch
- Gated Recurrent Unit (GRU) in Deep Learning with PyTorch
- Generative model in Deep Learning with PyTorch
- Gradient descent in Deep Learning with PyTorch
- Gradient in Deep Learning with PyTorch
H
- Hidden layer in Deep Learning with PyTorch
I
- Inception in Deep Learning with PyTorch
- Inference in Deep Learning with PyTorch
- Input layer in Deep Learning with PyTorch
J
- Jacobian matrix in Deep Learning with PyTorch
K
- K-means clustering in Deep Learning with PyTorch
- Kernel in Deep Learning with PyTorch
- Kullback-Leibler divergence in Deep Learning with PyTorch
L
- L1 regularization in Deep Learning with PyTorch
- L2 regularization in Deep Learning with PyTorch
- Label smoothing in Deep Learning with PyTorch
- LeakyReLU in Deep Learning with PyTorch
- Learning rate in Deep Learning with PyTorch
- Local response normalization in Deep Learning with PyTorch
- Loss function in Deep Learning with PyTorch
- LSTM in Deep Learning with PyTorch
M
- Max pooling in Deep Learning with PyTorch
- Mean absolute error in Deep Learning with PyTorch
- Mean squared error in Deep Learning with PyTorch
- Memory network in Deep Learning with PyTorch
- Metric learning in Deep Learning with PyTorch
- Mini-batch gradient descent in Deep Learning with PyTorch
- Mini-batch in Deep Learning with PyTorch
- MobileNet in Deep Learning with PyTorch
- Momentum in Deep Learning with PyTorch
- Multi-class classification in Deep Learning with PyTorch
- Multi-layer perceptron in Deep Learning with PyTorch
N
- Negative log-likelihood loss in Deep Learning with PyTorch
- Nesterov momentum in Deep Learning with PyTorch
- Non-maximum suppression in Deep Learning with PyTorch
O
- Object detection in Deep Learning with PyTorch
- One-hot encoding in Deep Learning with PyTorch
- Optimizer in Deep Learning with PyTorch
- Overfitting in Deep Learning with PyTorch
P
- Padding in Deep Learning with PyTorch
- Perceptron in Deep Learning with PyTorch
- Pre-trained model in Deep Learning with PyTorch
- Probabilistic graphical model in Deep Learning with PyTorch
- PyTorch in Deep Learning with PyTorch
- PyTorch Lightning in Deep Learning with PyTorch
R
- Radial basis function network in Deep Learning with PyTorch
- Random forest in Deep Learning with PyTorch
- Ranking loss in Deep Learning with PyTorch
- Recurrent neural network (RNN) in Deep Learning with PyTorch
- Regularization in Deep Learning with PyTorch
- ReLU in Deep Learning with PyTorch
- Residual connections in Deep Learning with PyTorch
- ResNet in Deep Learning with PyTorch
- RNN in Deep Learning with PyTorch
S
- Scheduling learning rate in Deep Learning with PyTorch
- Sequence to sequence (seq2seq) model in Deep Learning with PyTorch
- Sigmoid activation function in Deep Learning with PyTorch
- Sigmoid in Deep Learning with PyTorch
- Softmax in Deep Learning with PyTorch
- Stochastic gradient descent in Deep Learning with PyTorch
- Stochastic weight averaging (SWA) in Deep Learning with PyTorch
- Stride in Deep Learning with PyTorch
- Support vector machine (SVM) in Deep Learning with PyTorch
T
- Tensor in Deep Learning with PyTorch
- TorchScript in Deep Learning with PyTorch
- Transfer learning in Deep Learning with PyTorch
- Transformer in Deep Learning with PyTorch
- Triplet loss in Deep Learning with PyTorch
U
- U-Net in Deep Learning with PyTorch
- Unsupervised learning in Deep Learning with PyTorch
V
- Validation set in Deep Learning with PyTorch
- Vanishing gradient problem in Deep Learning with PyTorch
- Variational autoencoder in Deep Learning with PyTorch
W
- Weight decay in Deep Learning with PyTorch
- Weight initialization in Deep Learning with PyTorch
- Word2Vec in Deep Learning with PyTorch
X
- Xavier initialization in Deep Learning with PyTorch
- Xavier normal initialization in Deep Learning with PyTorch
Z
- Zero-padding in Deep Learning with PyTorch
- Zoneout in Deep Learning with PyTorch