torch.nn.utils.prune.ln_structured¶
- torch.nn.utils.prune.ln_structured(module, name, amount, n, dim, importance_scores=None)[source][source]¶
Prune tensor by removing channels with the lowest L
n
-norm along the specified dimension.Prunes tensor corresponding to parameter called
name
inmodule
by removing the specifiedamount
of (currently unpruned) channels along the specifieddim
with the lowest Ln
-norm. Modifies module in place (and also return the modified module) by:adding a named buffer called
name+'_mask'
corresponding to the binary mask applied to the parametername
by the pruning method.replacing the parameter
name
by its pruned version, while the original (unpruned) parameter is stored in a new parameter namedname+'_orig'
.
- Parameters
module (nn.Module) – module containing the tensor to prune
name (str) – parameter name within
module
on which pruning will act.amount (int or float) – quantity of parameters to prune. If
float
, should be between 0.0 and 1.0 and represent the fraction of parameters to prune. Ifint
, it represents the absolute number of parameters to prune.n (int, float, inf, -inf, 'fro', 'nuc') – See documentation of valid entries for argument
p
intorch.norm()
.dim (int) – index of the dim along which we define channels to prune.
importance_scores (torch.Tensor) – tensor of importance scores (of same shape as module parameter) used to compute mask for pruning. The values in this tensor indicate the importance of the corresponding elements in the parameter being pruned. If unspecified or None, the module parameter will be used in its place.
- Returns
modified (i.e. pruned) version of the input module
- Return type
module (nn.Module)
Examples
>>> from torch.nn.utils import prune >>> m = prune.ln_structured( ... nn.Conv2d(5, 3, 2), 'weight', amount=0.3, dim=1, n=float('-inf') ... )