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""" Model / state_dict utils |
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Hacked together by / Copyright 2020 Ross Wightman |
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""" |
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import fnmatch |
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from copy import deepcopy |
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import torch |
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from torchvision.ops.misc import FrozenBatchNorm2d |
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from timm.layers import BatchNormAct2d, SyncBatchNormAct, FrozenBatchNormAct2d,\ |
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freeze_batch_norm_2d, unfreeze_batch_norm_2d |
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from .model_ema import ModelEma |
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def unwrap_model(model): |
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if isinstance(model, ModelEma): |
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return unwrap_model(model.ema) |
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else: |
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if hasattr(model, 'module'): |
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return unwrap_model(model.module) |
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elif hasattr(model, '_orig_mod'): |
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return unwrap_model(model._orig_mod) |
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else: |
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return model |
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def get_state_dict(model, unwrap_fn=unwrap_model): |
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return unwrap_fn(model).state_dict() |
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def avg_sq_ch_mean(model, input, output): |
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""" calculate average channel square mean of output activations |
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""" |
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return torch.mean(output.mean(axis=[0, 2, 3]) ** 2).item() |
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def avg_ch_var(model, input, output): |
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""" calculate average channel variance of output activations |
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""" |
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return torch.mean(output.var(axis=[0, 2, 3])).item() |
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def avg_ch_var_residual(model, input, output): |
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""" calculate average channel variance of output activations |
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""" |
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return torch.mean(output.var(axis=[0, 2, 3])).item() |
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class ActivationStatsHook: |
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"""Iterates through each of `model`'s modules and matches modules using unix pattern |
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matching based on `hook_fn_locs` and registers `hook_fn` to the module if there is |
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a match. |
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Arguments: |
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model (nn.Module): model from which we will extract the activation stats |
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hook_fn_locs (List[str]): List of `hook_fn` locations based on Unix type string |
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matching with the name of model's modules. |
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hook_fns (List[Callable]): List of hook functions to be registered at every |
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module in `layer_names`. |
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Inspiration from https://docs.fast.ai/callback.hook.html. |
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Refer to https://gist.github.com/amaarora/6e56942fcb46e67ba203f3009b30d950 for an example |
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on how to plot Signal Propogation Plots using `ActivationStatsHook`. |
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""" |
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def __init__(self, model, hook_fn_locs, hook_fns): |
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self.model = model |
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self.hook_fn_locs = hook_fn_locs |
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self.hook_fns = hook_fns |
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if len(hook_fn_locs) != len(hook_fns): |
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raise ValueError("Please provide `hook_fns` for each `hook_fn_locs`, \ |
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their lengths are different.") |
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self.stats = dict((hook_fn.__name__, []) for hook_fn in hook_fns) |
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for hook_fn_loc, hook_fn in zip(hook_fn_locs, hook_fns): |
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self.register_hook(hook_fn_loc, hook_fn) |
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def _create_hook(self, hook_fn): |
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def append_activation_stats(module, input, output): |
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out = hook_fn(module, input, output) |
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self.stats[hook_fn.__name__].append(out) |
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return append_activation_stats |
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def register_hook(self, hook_fn_loc, hook_fn): |
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for name, module in self.model.named_modules(): |
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if not fnmatch.fnmatch(name, hook_fn_loc): |
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continue |
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module.register_forward_hook(self._create_hook(hook_fn)) |
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def extract_spp_stats( |
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model, |
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hook_fn_locs, |
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hook_fns, |
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input_shape=[8, 3, 224, 224]): |
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"""Extract average square channel mean and variance of activations during |
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forward pass to plot Signal Propogation Plots (SPP). |
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Paper: https://arxiv.org/abs/2101.08692 |
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Example Usage: https://gist.github.com/amaarora/6e56942fcb46e67ba203f3009b30d950 |
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""" |
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x = torch.normal(0., 1., input_shape) |
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hook = ActivationStatsHook(model, hook_fn_locs=hook_fn_locs, hook_fns=hook_fns) |
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_ = model(x) |
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return hook.stats |
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def _freeze_unfreeze(root_module, submodules=[], include_bn_running_stats=True, mode='freeze'): |
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""" |
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Freeze or unfreeze parameters of the specified modules and those of all their hierarchical descendants. This is |
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done in place. |
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Args: |
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root_module (nn.Module, optional): Root module relative to which the `submodules` are referenced. |
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submodules (list[str]): List of modules for which the parameters will be (un)frozen. They are to be provided as |
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named modules relative to the root module (accessible via `root_module.named_modules()`). An empty list |
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means that the whole root module will be (un)frozen. Defaults to [] |
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include_bn_running_stats (bool): Whether to also (un)freeze the running statistics of batch norm 2d layers. |
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Defaults to `True`. |
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mode (bool): Whether to freeze ("freeze") or unfreeze ("unfreeze"). Defaults to `"freeze"`. |
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""" |
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assert mode in ["freeze", "unfreeze"], '`mode` must be one of "freeze" or "unfreeze"' |
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if isinstance(root_module, ( |
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torch.nn.modules.batchnorm.BatchNorm2d, |
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torch.nn.modules.batchnorm.SyncBatchNorm, |
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BatchNormAct2d, |
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SyncBatchNormAct, |
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)): |
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raise AssertionError( |
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"You have provided a batch norm layer as the `root module`. Please use " |
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"`timm.utils.model.freeze_batch_norm_2d` or `timm.utils.model.unfreeze_batch_norm_2d` instead.") |
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if isinstance(submodules, str): |
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submodules = [submodules] |
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named_modules = submodules |
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submodules = [root_module.get_submodule(m) for m in submodules] |
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if not len(submodules): |
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named_modules, submodules = list(zip(*root_module.named_children())) |
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for n, m in zip(named_modules, submodules): |
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for p in m.parameters(): |
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p.requires_grad = False if mode == 'freeze' else True |
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if include_bn_running_stats: |
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def _add_submodule(module, name, submodule): |
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split = name.rsplit('.', 1) |
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if len(split) > 1: |
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module.get_submodule(split[0]).add_module(split[1], submodule) |
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else: |
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module.add_module(name, submodule) |
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if mode == 'freeze': |
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res = freeze_batch_norm_2d(m) |
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if isinstance(m, ( |
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torch.nn.modules.batchnorm.BatchNorm2d, |
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torch.nn.modules.batchnorm.SyncBatchNorm, |
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BatchNormAct2d, |
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SyncBatchNormAct, |
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)): |
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_add_submodule(root_module, n, res) |
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else: |
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res = unfreeze_batch_norm_2d(m) |
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if isinstance(m, (FrozenBatchNorm2d, FrozenBatchNormAct2d)): |
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_add_submodule(root_module, n, res) |
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def freeze(root_module, submodules=[], include_bn_running_stats=True): |
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""" |
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Freeze parameters of the specified modules and those of all their hierarchical descendants. This is done in place. |
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Args: |
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root_module (nn.Module): Root module relative to which `submodules` are referenced. |
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submodules (list[str]): List of modules for which the parameters will be frozen. They are to be provided as |
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named modules relative to the root module (accessible via `root_module.named_modules()`). An empty list |
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means that the whole root module will be frozen. Defaults to `[]`. |
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include_bn_running_stats (bool): Whether to also freeze the running statistics of `BatchNorm2d` and |
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`SyncBatchNorm` layers. These will be converted to `FrozenBatchNorm2d` in place. Hint: During fine tuning, |
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it's good practice to freeze batch norm stats. And note that these are different to the affine parameters |
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which are just normal PyTorch parameters. Defaults to `True`. |
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Hint: If you want to freeze batch norm ONLY, use `timm.utils.model.freeze_batch_norm_2d`. |
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Examples:: |
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>>> model = timm.create_model('resnet18') |
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>>> # Freeze up to and including layer2 |
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>>> submodules = [n for n, _ in model.named_children()] |
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>>> print(submodules) |
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['conv1', 'bn1', 'act1', 'maxpool', 'layer1', 'layer2', 'layer3', 'layer4', 'global_pool', 'fc'] |
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>>> freeze(model, submodules[:submodules.index('layer2') + 1]) |
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>>> # Check for yourself that it works as expected |
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>>> print(model.layer2[0].conv1.weight.requires_grad) |
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False |
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>>> print(model.layer3[0].conv1.weight.requires_grad) |
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True |
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>>> # Unfreeze |
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>>> unfreeze(model) |
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""" |
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_freeze_unfreeze(root_module, submodules, include_bn_running_stats=include_bn_running_stats, mode="freeze") |
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def unfreeze(root_module, submodules=[], include_bn_running_stats=True): |
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""" |
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Unfreeze parameters of the specified modules and those of all their hierarchical descendants. This is done in place. |
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Args: |
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root_module (nn.Module): Root module relative to which `submodules` are referenced. |
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submodules (list[str]): List of submodules for which the parameters will be (un)frozen. They are to be provided |
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as named modules relative to the root module (accessible via `root_module.named_modules()`). An empty |
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list means that the whole root module will be unfrozen. Defaults to `[]`. |
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include_bn_running_stats (bool): Whether to also unfreeze the running statistics of `FrozenBatchNorm2d` layers. |
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These will be converted to `BatchNorm2d` in place. Defaults to `True`. |
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See example in docstring for `freeze`. |
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""" |
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_freeze_unfreeze(root_module, submodules, include_bn_running_stats=include_bn_running_stats, mode="unfreeze") |
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def reparameterize_model(model: torch.nn.Module, inplace=False) -> torch.nn.Module: |
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if not inplace: |
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model = deepcopy(model) |
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def _fuse(m): |
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for child_name, child in m.named_children(): |
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if hasattr(child, 'fuse'): |
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setattr(m, child_name, child.fuse()) |
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elif hasattr(child, "reparameterize"): |
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child.reparameterize() |
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elif hasattr(child, "switch_to_deploy"): |
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child.switch_to_deploy() |
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_fuse(child) |
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_fuse(model) |
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return model |
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