nn_module: Base class for all neural network modules.

View source: R/nn.R

nn_moduleR Documentation

Base class for all neural network modules.

Description

Your models should also subclass this class.

Usage

nn_module(
  classname = NULL,
  inherit = nn_Module,
  ...,
  private = NULL,
  active = NULL,
  parent_env = parent.frame()
)

Arguments

classname

an optional name for the module

inherit

an optional module to inherit from

...

methods implementation

private

passed to R6::R6Class().

active

passed to R6::R6Class().

parent_env

passed to R6::R6Class().

Details

Modules can also contain other Modules, allowing to nest them in a tree structure. You can assign the submodules as regular attributes.

You are expected to implement the initialize and the forward to create a new nn_module.

Initialize

The initialize function will be called whenever a new instance of the nn_module is created. We use the initialize functions to define submodules and parameters of the module. For example:

initialize = function(input_size, output_size) {
   self$conv1 <- nn_conv2d(input_size, output_size, 5)
   self$conv2 <- nn_conv2d(output_size, output_size, 5)
}

The initialize function can have any number of parameters. All objects assigned to ⁠self$⁠ will be available for other methods that you implement. Tensors wrapped with nn_parameter() or nn_buffer() and submodules are automatically tracked when assigned to ⁠self$⁠.

The initialize function is optional if the module you are defining doesn't have weights, submodules or buffers.

Forward

The forward method is called whenever an instance of nn_module is called. This is usually used to implement the computation that the module does with the weights ad submodules defined in the initialize function.

For example:

forward = function(input) {
   input <- self$conv1(input)
   input <- nnf_relu(input)
   input <- self$conv2(input)
   input <- nnf_relu(input)
   input
 }

The forward function can use the self$training attribute to make different computations depending wether the model is training or not, for example if you were implementing the dropout module.

Examples

if (torch_is_installed()) {
model <- nn_module(
  initialize = function() {
    self$conv1 <- nn_conv2d(1, 20, 5)
    self$conv2 <- nn_conv2d(20, 20, 5)
  },
  forward = function(input) {
    input <- self$conv1(input)
    input <- nnf_relu(input)
    input <- self$conv2(input)
    input <- nnf_relu(input)
    input
  }
)
}

torch documentation built on June 7, 2023, 6:19 p.m.