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from collections import OrderedDict, defaultdict |
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from copy import deepcopy |
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from functools import partial |
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from typing import Dict, List, Tuple |
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import torch |
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import torch.nn as nn |
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class FeatureInfo: |
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def __init__(self, feature_info: List[Dict], out_indices: Tuple[int]): |
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prev_reduction = 1 |
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for fi in feature_info: |
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assert 'num_chs' in fi and fi['num_chs'] > 0 |
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assert 'reduction' in fi and fi['reduction'] >= prev_reduction |
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prev_reduction = fi['reduction'] |
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assert 'module' in fi |
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self.out_indices = out_indices |
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self.info = feature_info |
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def from_other(self, out_indices: Tuple[int]): |
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return FeatureInfo(deepcopy(self.info), out_indices) |
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def get(self, key, idx=None): |
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""" Get value by key at specified index (indices) |
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if idx == None, returns value for key at each output index |
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if idx is an integer, return value for that feature module index (ignoring output indices) |
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if idx is a list/tupple, return value for each module index (ignoring output indices) |
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""" |
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if idx is None: |
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return [self.info[i][key] for i in self.out_indices] |
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if isinstance(idx, (tuple, list)): |
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return [self.info[i][key] for i in idx] |
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else: |
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return self.info[idx][key] |
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def get_dicts(self, keys=None, idx=None): |
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""" return info dicts for specified keys (or all if None) at specified indices (or out_indices if None) |
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""" |
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if idx is None: |
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if keys is None: |
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return [self.info[i] for i in self.out_indices] |
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else: |
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return [{k: self.info[i][k] for k in keys} for i in self.out_indices] |
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if isinstance(idx, (tuple, list)): |
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return [self.info[i] if keys is None else {k: self.info[i][k] for k in keys} for i in idx] |
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else: |
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return self.info[idx] if keys is None else {k: self.info[idx][k] for k in keys} |
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def channels(self, idx=None): |
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""" feature channels accessor |
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""" |
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return self.get('num_chs', idx) |
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def reduction(self, idx=None): |
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""" feature reduction (output stride) accessor |
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""" |
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return self.get('reduction', idx) |
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def module_name(self, idx=None): |
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""" feature module name accessor |
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""" |
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return self.get('module', idx) |
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def __getitem__(self, item): |
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return self.info[item] |
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def __len__(self): |
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return len(self.info) |
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class FeatureHooks: |
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""" Feature Hook Helper |
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This module helps with the setup and extraction of hooks for extracting features from |
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internal nodes in a model by node name. This works quite well in eager Python but needs |
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redesign for torcscript. |
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""" |
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def __init__(self, hooks, named_modules, out_map=None, default_hook_type='forward'): |
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modules = {k: v for k, v in named_modules} |
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for i, h in enumerate(hooks): |
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hook_name = h['module'] |
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m = modules[hook_name] |
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hook_id = out_map[i] if out_map else hook_name |
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hook_fn = partial(self._collect_output_hook, hook_id) |
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hook_type = h['hook_type'] if 'hook_type' in h else default_hook_type |
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if hook_type == 'forward_pre': |
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m.register_forward_pre_hook(hook_fn) |
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elif hook_type == 'forward': |
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m.register_forward_hook(hook_fn) |
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else: |
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assert False, "Unsupported hook type" |
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self._feature_outputs = defaultdict(OrderedDict) |
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def _collect_output_hook(self, hook_id, *args): |
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x = args[-1] |
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if isinstance(x, tuple): |
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x = x[0] |
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self._feature_outputs[x.device][hook_id] = x |
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def get_output(self, device) -> Dict[str, torch.tensor]: |
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output = self._feature_outputs[device] |
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self._feature_outputs[device] = OrderedDict() |
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return output |
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def _module_list(module, flatten_sequential=False): |
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ml = [] |
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for name, module in module.named_children(): |
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if flatten_sequential and isinstance(module, nn.Sequential): |
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for child_name, child_module in module.named_children(): |
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combined = [name, child_name] |
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ml.append(('_'.join(combined), '.'.join(combined), child_module)) |
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else: |
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ml.append((name, name, module)) |
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return ml |
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def _get_feature_info(net, out_indices): |
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feature_info = getattr(net, 'feature_info') |
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if isinstance(feature_info, FeatureInfo): |
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return feature_info.from_other(out_indices) |
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elif isinstance(feature_info, (list, tuple)): |
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return FeatureInfo(net.feature_info, out_indices) |
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else: |
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assert False, "Provided feature_info is not valid" |
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def _get_return_layers(feature_info, out_map): |
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module_names = feature_info.module_name() |
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return_layers = {} |
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for i, name in enumerate(module_names): |
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return_layers[name] = out_map[i] if out_map is not None else feature_info.out_indices[i] |
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return return_layers |
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class FeatureDictNet(nn.ModuleDict): |
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""" Feature extractor with OrderedDict return |
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Wrap a model and extract features as specified by the out indices, the network is |
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partially re-built from contained modules. |
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There is a strong assumption that the modules have been registered into the model in the same |
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order as they are used. There should be no reuse of the same nn.Module more than once, including |
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trivial modules like `self.relu = nn.ReLU`. |
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Only submodules that are directly assigned to the model class (`model.feature1`) or at most |
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one Sequential container deep (`model.features.1`, with flatten_sequent=True) can be captured. |
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All Sequential containers that are directly assigned to the original model will have their |
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modules assigned to this module with the name `model.features.1` being changed to `model.features_1` |
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Arguments: |
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model (nn.Module): model from which we will extract the features |
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out_indices (tuple[int]): model output indices to extract features for |
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out_map (sequence): list or tuple specifying desired return id for each out index, |
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otherwise str(index) is used |
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feature_concat (bool): whether to concatenate intermediate features that are lists or tuples |
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vs select element [0] |
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flatten_sequential (bool): whether to flatten sequential modules assigned to model |
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""" |
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def __init__( |
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self, model, |
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out_indices=(0, 1, 2, 3, 4), out_map=None, feature_concat=False, flatten_sequential=False): |
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super(FeatureDictNet, self).__init__() |
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self.feature_info = _get_feature_info(model, out_indices) |
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self.concat = feature_concat |
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self.return_layers = {} |
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return_layers = _get_return_layers(self.feature_info, out_map) |
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modules = _module_list(model, flatten_sequential=flatten_sequential) |
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remaining = set(return_layers.keys()) |
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layers = OrderedDict() |
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for new_name, old_name, module in modules: |
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layers[new_name] = module |
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if old_name in remaining: |
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self.return_layers[new_name] = str(return_layers[old_name]) |
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remaining.remove(old_name) |
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if not remaining: |
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break |
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assert not remaining and len(self.return_layers) == len(return_layers), \ |
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f'Return layers ({remaining}) are not present in model' |
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self.update(layers) |
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def _collect(self, x) -> (Dict[str, torch.Tensor]): |
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out = OrderedDict() |
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for name, module in self.items(): |
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x = module(x) |
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if name in self.return_layers: |
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out_id = self.return_layers[name] |
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if isinstance(x, (tuple, list)): |
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out[out_id] = torch.cat(x, 1) if self.concat else x[0] |
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else: |
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out[out_id] = x |
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return out |
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def forward(self, x) -> Dict[str, torch.Tensor]: |
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return self._collect(x) |
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class FeatureListNet(FeatureDictNet): |
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""" Feature extractor with list return |
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See docstring for FeatureDictNet above, this class exists only to appease Torchscript typing constraints. |
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In eager Python we could have returned List[Tensor] vs Dict[id, Tensor] based on a member bool. |
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""" |
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def __init__( |
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self, model, |
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out_indices=(0, 1, 2, 3, 4), out_map=None, feature_concat=False, flatten_sequential=False): |
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super(FeatureListNet, self).__init__( |
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model, out_indices=out_indices, out_map=out_map, feature_concat=feature_concat, |
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flatten_sequential=flatten_sequential) |
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def forward(self, x) -> (List[torch.Tensor]): |
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return list(self._collect(x).values()) |
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class FeatureHookNet(nn.ModuleDict): |
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""" FeatureHookNet |
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Wrap a model and extract features specified by the out indices using forward/forward-pre hooks. |
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If `no_rewrite` is True, features are extracted via hooks without modifying the underlying |
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network in any way. |
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If `no_rewrite` is False, the model will be re-written as in the |
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FeatureList/FeatureDict case by folding first to second (Sequential only) level modules into this one. |
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FIXME this does not currently work with Torchscript, see FeatureHooks class |
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""" |
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def __init__( |
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self, model, |
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out_indices=(0, 1, 2, 3, 4), out_map=None, out_as_dict=False, no_rewrite=False, |
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feature_concat=False, flatten_sequential=False, default_hook_type='forward'): |
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super(FeatureHookNet, self).__init__() |
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assert not torch.jit.is_scripting() |
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self.feature_info = _get_feature_info(model, out_indices) |
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self.out_as_dict = out_as_dict |
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layers = OrderedDict() |
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hooks = [] |
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if no_rewrite: |
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assert not flatten_sequential |
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if hasattr(model, 'reset_classifier'): |
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model.reset_classifier(0) |
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layers['body'] = model |
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hooks.extend(self.feature_info.get_dicts()) |
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else: |
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modules = _module_list(model, flatten_sequential=flatten_sequential) |
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remaining = {f['module']: f['hook_type'] if 'hook_type' in f else default_hook_type |
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for f in self.feature_info.get_dicts()} |
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for new_name, old_name, module in modules: |
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layers[new_name] = module |
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for fn, fm in module.named_modules(prefix=old_name): |
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if fn in remaining: |
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hooks.append(dict(module=fn, hook_type=remaining[fn])) |
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del remaining[fn] |
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if not remaining: |
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break |
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assert not remaining, f'Return layers ({remaining}) are not present in model' |
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self.update(layers) |
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self.hooks = FeatureHooks(hooks, model.named_modules(), out_map=out_map) |
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def forward(self, x): |
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for name, module in self.items(): |
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x = module(x) |
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out = self.hooks.get_output(x.device) |
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return out if self.out_as_dict else list(out.values()) |
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