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Quick start
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API
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- Dense
- PReLU 2D
- PReLU 3D
- PReLU 4D
- PReLU 5D
- AdditiveAttention
- Attention
- MutiHeadAttention
- Conv1D
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- ConvLSTM1D
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- Conv1DTranspose
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- Embedding
- BatchNormalization
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- Dense
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- AdditiveAttention
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- Conv1D
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- ConvLSTM1D
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- Conv1DTranspose
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- Embedding
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- Dense
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- GRU
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- Conv1D
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- ConvLSTM1D
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- Embedding
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- Dense
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- ConvLSTM3D
- Conv1DTranspose
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- Conv3DTranspose
- DepthwiseConv2D
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- BatchNormalization
- LayerNormalization
- PReLU 2D
- PReLU 3D
- PReLU 4D
- PReLU 5D
- Bidirectional
- GRU
- LSTM
- RNN (GRU)
- RNN (LSTM)
- RNN (SimpleRNN)
- SimpleRNN
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- Dense
- Embedding
- AdditiveAttention
- Attention
- MultiHeadAttention
- Conv1D
- Conv2D
- Conv3D
- ConvLSTM1D
- ConvLSTM2D
- ConvLSTM3D
- Conv1DTranspose
- Conv2DTranspose
- Conv3DTranspose
- DepthwiseConv2D
- SeparableConv1D
- SeparableConv2D
- BatchNormalization
- LayerNormalization
- PReLU 2D
- PReLU 3D
- PReLU 4D
- PReLU 5D
- Bidirectional
- GRU
- LSTM
- RNN (GRU)
- RNN (LSTM)
- RNN (SimpleRNN)
- SimpleRNN
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- Dense
- Embedding
- AdditiveAttention
- Attention
- MultiHeadAttention
- Conv1D
- Conv2D
- Conv3D
- ConvLSTM1D
- ConvLSTM2D
- ConvLSTM3D
- Conv1DTranspose
- Conv2DTranspose
- Conv3DTranspose
- DepthwiseConv2D
- SeparableConv1D
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- BatchNormalization
- LayerNormalization
- PReLU 2D
- PReLU 3D
- PReLU 4D
- PReLU 5D
- Bidirectional
- GRU
- LSTM
- RNN (GRU)
- RNN (LSTM)
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- Dense
- Embedding
- AdditiveAttention
- Attention
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- Conv1D
- Conv2D
- Conv3D
- ConvLSTM1D
- ConvLSTM2D
- ConvLSTM3D
- Conv1DTranspose
- Conv2DTranspose
- Conv3DTranspose
- DepthwiseConv2D
- SeparableConv1D
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- BatchNormalization
- LayerNormalization
- PReLU 2D
- PReLU 3D
- PReLU 4D
- PReLU 5D
- Bidirectional
- GRU
- LSTM
- RNN (GRU)
- RNN (LSTM)
- RNN (SimpleRNN)
- SimpleRNN
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- Add
- AdditiveAttention
- AlphaDropout
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- ConvLSTM1D
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- ConvLSTM3D
- Cropping1D
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- Dense
- DepthwiseConv2D
- Dropout
- Embedding
- Flatten
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- GRU
- Input
- LayerNormalization
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- MaxPool1D
- MaxPool2D
- MaxPool3D
- MultiHeadAttention
- Multiply
- Permute3D
- Reshape
- RNN
- SeparableConv1D
- SeparableConv2D
- SimpleRNN
- SpatialDropout
- Substract
- TimeDistributed
- UpSampling1D
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- ZeroPadding1D
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- AlphaDropout
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- BatchNormalization
- Bidirectional
- Conv1D
- Conv1DTranspose
- Conv2D
- Conv2DTranspose
- Conv3D
- Conv3DTranspose
- Cropping1D
- Cropping2D
- Cropping3D
- Dense
- DepthwiseConv2D
- Dropout
- Embedding
- Flatten
- GaussianDropout
- GaussianNoise
- GlobalAvgPool1D
- GlobalAvgPool2D
- GlobalAvgPool3D
- GlobalMaxPool1D
- GlobalMaxPool2D
- GlobalMaxPool3D
- GRU
- LayerNormalization
- LSTM
- MaxPool1D
- MaxPool2D
- MaxPool3D
- Permute3D
- Reshape
- RNN
- SeparableConv1D
- SeparableConv2D
- SimpleRNN
- SpatialDropout
- UpSampling1D
- UpSampling2D
- UpSampling3D
- ZeroPadding1D
- ZeroPadding2D
- ZeroPadding3D
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- Resume
- Accuracy
- BinaryAccuracy
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- MeanTensor
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- Poisson
- Precision
- PrecisionAtRecall
- Recall
- RecallAtPrecision
- RootMeanSquaredError
- SensitivityAtSpecificity
- SparseCategoricalAccuracy
- SparseCategoricalCrossentropy
- SparseTopKCategoricalAccuracy
- Specificity
- SpecificityAtSensitivity
- SquaredHinge
- Sum
- TopKCategoricalAccuracy
- TrueNegatives
- TruePositives
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- Resume
- Constant
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- HeNormal
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- Identity
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ConvLSTM2D
Description
Adds the weights of the ConvLSTM2D layer to the weights table. Type : polymorphic.
Input parameters
Weights in : array
name : string, name of layer.
weights : variant, weights values.
name : string, name of layer.
kernel : array, 4D values. kernel = [4*n_filters, channels, size[0], size[1]].
recurrent_kernel : array, 4D values. recurrent_kernel = [4*n_filters, n_filters, size[0], size[1]].
bias : array, 1D values. bias = [4*n_filters].
Output parameters
Weights out : array
name : string, name of layer.
weights : variant, weights values.
Dimension
- kernel = [4*n_filters, channels, size[0], size[1]]
The kernel size depends on the input of the ConvLSTM2D layer and the parameters n_filters and size of the ConvLSTM2D cell.
For example, if the input of the layer has a size of [samples = 10, time = 8, channels = 5, rows = 3, cols = 2], n_filters a value of 6 and size the value [3, 3], then kernel will have a size of [4*n_filters = 6, channels = 5, size[0] = 3, size[1] = 3].
- recurrent_kernel = [4*n_filters, n_filters, size[0], size[1]]
The size of recurrent_kernel depends on the parameters n_filters and size of the ConvLSTM2D cell.
For example, if n_filters has a value of 6 and size the value [3, 3], then recurrent_kernel will have a size of [4*n_filters = 6, n_filters = 6, size[0] = 3, size[1] = 3].
- bias = [4*n_filters]
The size of bias depends on the parameter n_filters of the ConvLSTM2D cell.
For example if n_filters has a value of 6 then the bias size will be [4*n_filters = 6].
Example
All these exemples are snippets PNG, you can drop these Snippet onto the block diagram and get the depicted code added to your VI (Do not forget to install HAIBAL library to run it).