3.1.7. unit_scaling.DepthSequential
- class unit_scaling.DepthSequential(*args: Any)[source]
A
torch.nn.Sequential
that automatically configures the depth for sake of scaling. Note that this does not track depth changes caused by modifications after initial construction.Modules will be added to it in the order they are passed in the constructor. Alternatively, an
OrderedDict
of modules can be passed in. Theforward()
method ofSequential
accepts any input and forwards it to the first module it contains. It then “chains” outputs to inputs sequentially for each subsequent module, finally returning the output of the last module.The value a
Sequential
provides over manually calling a sequence of modules is that it allows treating the whole container as a single module, such that performing a transformation on theSequential
applies to each of the modules it stores (which are each a registered submodule of theSequential
).What’s the difference between a
Sequential
and atorch.nn.ModuleList
? AModuleList
is exactly what it sounds like–a list for storingModule
s! On the other hand, the layers in aSequential
are connected in a cascading way.Example:
# Using Sequential to create a small model. When `model` is run, # input will first be passed to `Conv2d(1,20,5)`. The output of # `Conv2d(1,20,5)` will be used as the input to the first # `ReLU`; the output of the first `ReLU` will become the input # for `Conv2d(20,64,5)`. Finally, the output of # `Conv2d(20,64,5)` will be used as input to the second `ReLU` model = nn.Sequential( nn.Conv2d(1,20,5), nn.ReLU(), nn.Conv2d(20,64,5), nn.ReLU() ) # Using Sequential with OrderedDict. This is functionally the # same as the above code model = nn.Sequential(OrderedDict([ ('conv1', nn.Conv2d(1,20,5)), ('relu1', nn.ReLU()), ('conv2', nn.Conv2d(20,64,5)), ('relu2', nn.ReLU()) ]))
- append(module: Module) Sequential
Append a given module to the end.
- Parameters:
module (nn.Module) – module to append