mlr_pipeops_torch_loss | R Documentation |
Configures the loss of a deep learning model.
One input channel called "input"
and one output channel called "output"
.
For an explanation see PipeOpTorch
.
The state is the value calculated by the public method shapes_out()
.
The parameters are defined dynamically from the loss set during construction.
During training the loss is cloned and added to the ModelDescriptor
.
mlr3pipelines::PipeOp
-> PipeOpTorchLoss
new()
Creates a new instance of this R6 class.
PipeOpTorchLoss$new(loss, id = "torch_loss", param_vals = list())
loss
(TorchLoss
or character(1)
or nn_loss
)
The loss (or something convertible via as_torch_loss()
).
id
(character(1)
)
Identifier of the resulting object.
param_vals
(list()
)
List of hyperparameter settings, overwriting the hyperparameter settings that would
otherwise be set during construction.
clone()
The objects of this class are cloneable with this method.
PipeOpTorchLoss$clone(deep = FALSE)
deep
Whether to make a deep clone.
Other PipeOps:
mlr_pipeops_nn_adaptive_avg_pool1d
,
mlr_pipeops_nn_adaptive_avg_pool2d
,
mlr_pipeops_nn_adaptive_avg_pool3d
,
mlr_pipeops_nn_avg_pool1d
,
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_nn_unsqueeze
,
mlr_pipeops_torch_ingress
,
mlr_pipeops_torch_ingress_categ
,
mlr_pipeops_torch_ingress_ltnsr
,
mlr_pipeops_torch_ingress_num
,
mlr_pipeops_torch_model
,
mlr_pipeops_torch_model_classif
,
mlr_pipeops_torch_model_regr
Other Model Configuration:
ModelDescriptor()
,
mlr_pipeops_torch_callbacks
,
mlr_pipeops_torch_optimizer
,
model_descriptor_union()
po_loss = po("torch_loss", loss = t_loss("cross_entropy"))
po_loss$param_set
mdin = po("torch_ingress_num")$train(list(tsk("iris")))
mdin[[1L]]$loss
mdout = po_loss$train(mdin)[[1L]]
mdout$loss
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