| mlr_pipeops_nn_avg_pool1d {mlr3torch} | R Documentation |
1D Average Pooling
Description
Applies a 1D adaptive average pooling over an input signal composed of several input planes.
Input and Output Channels
One input channel called "input" and one output channel called "output".
For an explanation see PipeOpTorch.
State
The state is the value calculated by the public method $shapes_out().
Credit
Part of this documentation have been copied or adapted from the documentation of torch.
Parameters
-
kernel_size:: (integer())
The size of the window. Can be a single number or a vector. -
stride::integer()
The stride of the window. Can be a single number or a vector. Default:kernel_size. -
padding::integer()
Implicit zero paddings on both sides of the input. Can be a single number or a vector. Default: 0. -
ceil_mode::integer()
WhenTRUE, will use ceil instead of floor to compute the output shape. Default:FALSE. -
count_include_pad::logical(1)
WhenTRUE, will include the zero-padding in the averaging calculation. Default:TRUE. -
divisor_override::logical(1)
If specified, it will be used as divisor, otherwise size of the pooling region will be used. Default: NULL. Only available for dimension greater than 1.
Internals
Calls nn_avg_pool1d() during training.
Super classes
mlr3pipelines::PipeOp -> mlr3torch::PipeOpTorch -> mlr3torch::PipeOpTorchAvgPool -> PipeOpTorchAvgPool1D
Methods
Public methods
Inherited methods
Method new()
Creates a new instance of this R6 class.
Usage
PipeOpTorchAvgPool1D$new(id = "nn_avg_pool1d", param_vals = list())
Arguments
id(
character(1))
Identifier of the resulting object.param_vals(
list())
List of hyperparameter settings, overwriting the hyperparameter settings that would otherwise be set during construction.
Method clone()
The objects of this class are cloneable with this method.
Usage
PipeOpTorchAvgPool1D$clone(deep = FALSE)
Arguments
deepWhether to make a deep clone.
See Also
Other PipeOps:
mlr_pipeops_nn_avg_pool2d,
mlr_pipeops_nn_avg_pool3d,
mlr_pipeops_nn_batch_norm1d,
mlr_pipeops_nn_batch_norm2d,
mlr_pipeops_nn_batch_norm3d,
mlr_pipeops_nn_block,
mlr_pipeops_nn_celu,
mlr_pipeops_nn_conv1d,
mlr_pipeops_nn_conv2d,
mlr_pipeops_nn_conv3d,
mlr_pipeops_nn_conv_transpose1d,
mlr_pipeops_nn_conv_transpose2d,
mlr_pipeops_nn_conv_transpose3d,
mlr_pipeops_nn_dropout,
mlr_pipeops_nn_elu,
mlr_pipeops_nn_flatten,
mlr_pipeops_nn_gelu,
mlr_pipeops_nn_glu,
mlr_pipeops_nn_hardshrink,
mlr_pipeops_nn_hardsigmoid,
mlr_pipeops_nn_hardtanh,
mlr_pipeops_nn_head,
mlr_pipeops_nn_layer_norm,
mlr_pipeops_nn_leaky_relu,
mlr_pipeops_nn_linear,
mlr_pipeops_nn_log_sigmoid,
mlr_pipeops_nn_max_pool1d,
mlr_pipeops_nn_max_pool2d,
mlr_pipeops_nn_max_pool3d,
mlr_pipeops_nn_merge,
mlr_pipeops_nn_merge_cat,
mlr_pipeops_nn_merge_prod,
mlr_pipeops_nn_merge_sum,
mlr_pipeops_nn_prelu,
mlr_pipeops_nn_relu,
mlr_pipeops_nn_relu6,
mlr_pipeops_nn_reshape,
mlr_pipeops_nn_rrelu,
mlr_pipeops_nn_selu,
mlr_pipeops_nn_sigmoid,
mlr_pipeops_nn_softmax,
mlr_pipeops_nn_softplus,
mlr_pipeops_nn_softshrink,
mlr_pipeops_nn_softsign,
mlr_pipeops_nn_squeeze,
mlr_pipeops_nn_tanh,
mlr_pipeops_nn_tanhshrink,
mlr_pipeops_nn_threshold,
mlr_pipeops_torch_ingress,
mlr_pipeops_torch_ingress_categ,
mlr_pipeops_torch_ingress_ltnsr,
mlr_pipeops_torch_ingress_num,
mlr_pipeops_torch_loss,
mlr_pipeops_torch_model,
mlr_pipeops_torch_model_classif,
mlr_pipeops_torch_model_regr
Examples
# Construct the PipeOp
pipeop = po("nn_avg_pool1d")
pipeop
# The available parameters
pipeop$param_set