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291 lines
14 KiB
291 lines
14 KiB
3 years ago
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""" PyTorch FX Based Feature Extraction Helpers
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An extension/alternative to timm.models.features making use of PyTorch FX. Here, the idea is to:
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1. Symbolically trace a model producing a graph based intermediate representation (PyTorch FX functionality with
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some custom tweaks)
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2. Identify desired feature extraction nodes and reconfigure them as output nodes while deleting all unecessary
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nodes. (custom - inspired by https://github.com/pytorch/vision/pull/3597)
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3. Write the resulting graph into a GraphModule (PyTorch FX functionality)
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Copyright 2021 Alexander Soare
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"""
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from typing import Callable, Dict
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import math
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from collections import OrderedDict
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from pprint import pprint
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from inspect import ismethod
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import re
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import warnings
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import torch
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from torch import nn
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from torch import fx
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import torch.nn.functional as F
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from .features import _get_feature_info
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from .fx_helpers import fx_and, fx_float_to_int
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# Layers we went to treat as leaf modules for FeatureGraphNet
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from .layers import Conv2dSame, ScaledStdConv2dSame, BatchNormAct2d, BlurPool2d, CondConv2d, StdConv2dSame
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from .layers import GatherExcite, DropPath
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from .layers.non_local_attn import BilinearAttnTransform
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from .layers.pool2d_same import MaxPool2dSame, AvgPool2dSame
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# These modules will not be traced through.
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_leaf_modules = {
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Conv2dSame, ScaledStdConv2dSame, BatchNormAct2d, BlurPool2d, CondConv2d, StdConv2dSame, GatherExcite, DropPath,
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BilinearAttnTransform, MaxPool2dSame, AvgPool2dSame
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}
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try:
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from .layers import InplaceAbn
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_leaf_modules.add(InplaceAbn)
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except ImportError:
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pass
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def register_leaf_module(module: nn.Module):
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"""
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Any module not under timm.models.layers should get this decorator if we don't want to trace through it.
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"""
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_leaf_modules.add(module)
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return module
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# These functions will not be traced through
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_autowrap_functions=(fx_float_to_int, fx_and)
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class TimmTracer(fx.Tracer):
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"""
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Temporary bridge from torch.fx.Tracer to include any general workarounds required to make FX work for us
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"""
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def __init__(self, autowrap_modules=(math, ), autowrap_functions=(), enable_cpatching=False):
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super().__init__(autowrap_modules=autowrap_modules, enable_cpatching=enable_cpatching)
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# FIXME: This is a workaround pending on a PyTorch PR https://github.com/pytorch/pytorch/pull/62106
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self._autowrap_function_ids.update(set([id(f) for f in autowrap_functions]))
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def create_node(self, kind, target, args, kwargs, name=None, type_expr=None):
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# FIXME: This is a workaround pending on a PyTorch PR https://github.com/pytorch/pytorch/pull/62095
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if target == F.pad:
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kwargs['value'] = float(kwargs['value'])
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return super().create_node(kind, target, args, kwargs, name=name, type_expr=type_expr)
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class LeafNodeTracer(TimmTracer):
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"""
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Account for desired leaf nodes according to _leaf_modules and _autowrap functions
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"""
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def __init__(self):
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super().__init__(autowrap_functions=_autowrap_functions)
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def is_leaf_module(self, m: nn.Module, module_qualname: str) -> bool:
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if isinstance(m, tuple(_leaf_modules)):
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return True
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return super().is_leaf_module(m, module_qualname)
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# Taken from https://github.com/pytorch/examples/blob/master/fx/module_tracer.py with modifications for storing
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# qualified names for all Nodes, not just top-level Modules
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class NodePathTracer(LeafNodeTracer):
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"""
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NodePathTracer is an FX tracer that, for each operation, also records the qualified name of the Node from which the
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operation originated. A qualified name here is a `.` seperated path walking the hierarchy from top level module
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down to leaf operation or leaf module. The name of the top level module is not included as part of the qualified
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name. For example, if we trace a module who's forward method applies a ReLU module, the qualified name for that
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node will simply be 'relu'.
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"""
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def __init__(self):
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super().__init__()
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# Track the qualified name of the Node being traced
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self.current_module_qualname : str = ''
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# A map from FX Node to the qualified name
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self.node_to_qualname = OrderedDict()
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def call_module(self, m: torch.nn.Module, forward: Callable, args, kwargs):
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"""
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Override of Tracer.call_module (see https://pytorch.org/docs/stable/fx.html#torch.fx.Tracer.call_module).
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This override:
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1) Stores away the qualified name of the caller for restoration later
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2) Installs the qualified name of the caller in `current_module_qualname` for retrieval by `create_proxy`
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3) Once a leaf module is reached, calls `create_proxy`
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4) Restores the caller's qualified name into current_module_qualname
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"""
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old_qualname = self.current_module_qualname
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try:
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module_qualname = self.path_of_module(m)
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self.current_module_qualname = module_qualname
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if not self.is_leaf_module(m, module_qualname):
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out = forward(*args, **kwargs)
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return out
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return self.create_proxy('call_module', module_qualname, args, kwargs)
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finally:
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self.current_module_qualname = old_qualname
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def create_proxy(self, kind: str, target: fx.node.Target, args, kwargs, name=None, type_expr=None):
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"""
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Override of `Tracer.create_proxy`. This override intercepts the recording
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of every operation and stores away the current traced module's qualified
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name in `node_to_qualname`
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"""
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proxy = super().create_proxy(kind, target, args, kwargs, name, type_expr)
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self.node_to_qualname[proxy.node] = self._get_node_qualname(
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self.current_module_qualname, proxy.node)
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return proxy
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def _get_node_qualname(self, module_qualname: str, node: fx.node.Node):
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node_qualname = module_qualname
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if node.op == 'call_module':
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# Node terminates in a leaf module so the module_qualname is a complete description of the node
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# Just need to check if this module has appeared before. If so add postfix counter starting from _1 for the
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# first reappearance (this follows the way that repeated leaf ops are enumerated by PyTorch FX)
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for existing_qualname in reversed(self.node_to_qualname.values()):
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# Check to see if existing_qualname is of the form {node_qualname} or {node_qualname}_{int}
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if re.match(rf'{node_qualname}(_[0-9]+)?$', existing_qualname) is not None:
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postfix = existing_qualname.replace(node_qualname, '')
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if len(postfix):
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# existing_qualname is of the form {node_qualname}_{int}
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next_index = int(postfix[1:]) + 1
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else:
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# existing_qualname is of the form {node_qualname}
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next_index = 1
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node_qualname += f'_{next_index}'
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break
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else:
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# Node terminates in non- leaf module so the node name needs to be appended
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if len(node_qualname) > 0: # only append '.' if we are deeper than the top level module
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node_qualname += '.'
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node_qualname += str(node)
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return node_qualname
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def print_graph_node_qualified_names(model: nn.Module):
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"""
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Dev utility to prints nodes in order of execution. Useful for choosing `nodes` for a FeatureGraphNet design.
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This is useful for two reasons:
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1. Not all submodules are traced through. Some are treated as leaf modules. See `LeafNodeTracer`
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2. Leaf ops that occur more than once in the graph get a `_{counter}` postfix.
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WARNING: Changes to the operations in the original module might not change the module's overall behaviour, but they
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may result in changes to the postfixes for the names of repeated ops, thereby breaking feature extraction.
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"""
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tracer = NodePathTracer()
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tracer.trace(model)
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pprint(list(tracer.node_to_qualname.values()))
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def get_intermediate_nodes(model: nn.Module, return_nodes: Dict[str, str]) -> nn.Module:
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"""
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Creates a new FX-based module that returns intermediate nodes from a given model. This is achieved by re-writing
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the computation graph of the model via FX to return the desired nodes as outputs. All unused nodes are removed,
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together with their corresponding parameters.
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Args:
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model (nn.Module): model on which we will extract the features
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return_nodes (Dict[name, new_name]): a dict containing the names (or partial names - see note below) of the
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nodes for which the activations will be returned as the keys. The values of the dict are the names
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of the returned activations (which the user can specify).
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A note on node specification: A node is specified as a `.` seperated path walking the hierarchy from top
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level module down to leaf operation or leaf module. For instance `blocks.5.3.bn1`. Nevertheless, the keys
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in this dict need not be fully specified. One could provide `blocks.5` as a key, and the last node with
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that prefix will be selected.
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While designing a feature extractor one can use the `print_graph_node_qualified_names` utility as a guide
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to which nodes are available.
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Acknowledgement: Starter code from https://github.com/pytorch/vision/pull/3597
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"""
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return_nodes = {str(k): str(v) for k, v in return_nodes.items()}
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# Instantiate our NodePathTracer and use that to trace the model
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tracer = NodePathTracer()
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graph = tracer.trace(model)
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name = model.__class__.__name__ if isinstance(model, nn.Module) else model.__name__
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graph_module = fx.GraphModule(tracer.root, graph, name)
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available_nodes = [f'{v}.{k}' for k, v in tracer.node_to_qualname.items()]
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# FIXME We don't know if we should expect this to happen
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assert len(set(available_nodes)) == len(available_nodes), \
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"There are duplicate nodes! Please raise an issue https://github.com/rwightman/pytorch-image-models/issues"
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# Check that all outputs in return_nodes are present in the model
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for query in return_nodes.keys():
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if not any([m.startswith(query) for m in available_nodes]):
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raise ValueError(f"return_node: {query} is not present in model")
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# Remove existing output nodes
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orig_output_node = None
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for n in reversed(graph_module.graph.nodes):
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if n.op == "output":
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orig_output_node = n
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assert orig_output_node
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# And remove it
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graph_module.graph.erase_node(orig_output_node)
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# Find nodes corresponding to return_nodes and make them into output_nodes
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nodes = [n for n in graph_module.graph.nodes]
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output_nodes = OrderedDict()
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for n in reversed(nodes):
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if 'tensor_constant' in str(n):
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# NOTE Without this control flow we would get a None value for
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# `module_qualname = tracer.node_to_qualname.get(n)`. On the other hand, we can safely assume that we'll
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# never need to get this as an interesting intermediate node.
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continue
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module_qualname = tracer.node_to_qualname.get(n)
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for query in return_nodes:
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depth = query.count('.')
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if '.'.join(module_qualname.split('.')[:depth+1]) == query:
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output_nodes[return_nodes[query]] = n
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return_nodes.pop(query)
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break
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output_nodes = OrderedDict(reversed(list(output_nodes.items())))
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# And add them in the end of the graph
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with graph_module.graph.inserting_after(nodes[-1]):
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graph_module.graph.output(output_nodes)
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# Remove unused modules / parameters
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graph_module.graph.eliminate_dead_code()
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graph_module.recompile()
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graph_module = fx.GraphModule(graph_module, graph_module.graph, name)
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return graph_module
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class FeatureGraphNet(nn.Module):
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"""
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Take the provided model and transform it into a graph module. This class wraps the resulting graph module while
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also keeping the original model's non-parameter properties for reference. The original model is discarded.
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WARNING: Changes to the operations in the original module might not change the module's overall behaviour, but they
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may result in changes to the postfixes for the names of repeated ops, thereby breaking feature extraction.
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TODO: FIX THIS
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WARNING: This puts the input model into eval mode prior to tracing. This means that any control flow dependent on
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the model being in train mode will be lost.
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"""
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def __init__(self, model, out_indices, out_map=None):
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super().__init__()
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model.eval()
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self.feature_info = _get_feature_info(model, out_indices)
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if out_map is not None:
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assert len(out_map) == len(out_indices)
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# NOTE the feature_info key is innapropriately named 'module' because prior to FX only modules could be
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# provided. Recall that here, we may also provide nodes referring to individual ops
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return_nodes = {info['module']: out_map[i] if out_map is not None else info['module']
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for i, info in enumerate(self.feature_info) if i in out_indices}
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self.graph_module = get_intermediate_nodes(model, return_nodes)
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# Keep non-parameter model properties for reference
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for attr_str in model.__dir__():
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attr = getattr(model, attr_str)
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if (not attr_str.startswith('_') and attr_str not in self.__dir__() and not ismethod(attr)
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and not isinstance(attr, (nn.Module, nn.Parameter))):
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setattr(self, attr_str, attr)
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def forward(self, x):
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return list(self.graph_module(x).values())
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def train(self, mode=True):
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"""
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NOTE: This also covers `self.eval()` as that just does self.train(False)
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"""
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if mode:
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warnings.warn(
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"Setting a FeatureGraphNet to training mode won't necessarily have the desired effect. Control "
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"flow depending on `self.training` will follow the `False` path. See FeatureGraphNet doc-string "
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"for more details.")
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super().train(mode)
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