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# Copyright (c) 2021, NVIDIA CORPORATION. All rights reserved. | |
# | |
# NVIDIA CORPORATION and its licensors retain all intellectual property | |
# and proprietary rights in and to this software, related documentation | |
# and any modifications thereto. Any use, reproduction, disclosure or | |
# distribution of this software and related documentation without an express | |
# license agreement from NVIDIA CORPORATION is strictly prohibited. | |
"""Facilities for pickling Python code alongside other data. | |
The pickled code is automatically imported into a separate Python module | |
during unpickling. This way, any previously exported pickles will remain | |
usable even if the original code is no longer available, or if the current | |
version of the code is not consistent with what was originally pickled.""" | |
import sys | |
import pickle | |
import io | |
import inspect | |
import copy | |
import uuid | |
import types | |
import dnnlib | |
#---------------------------------------------------------------------------- | |
_version = 6 # internal version number | |
_decorators = set() # {decorator_class, ...} | |
_import_hooks = [] # [hook_function, ...] | |
_module_to_src_dict = dict() # {module: src, ...} | |
_src_to_module_dict = dict() # {src: module, ...} | |
#---------------------------------------------------------------------------- | |
def persistent_class(orig_class): | |
r"""Class decorator that extends a given class to save its source code | |
when pickled. | |
Example: | |
from torch_utils import persistence | |
@persistence.persistent_class | |
class MyNetwork(torch.nn.Module): | |
def __init__(self, num_inputs, num_outputs): | |
super().__init__() | |
self.fc = MyLayer(num_inputs, num_outputs) | |
... | |
@persistence.persistent_class | |
class MyLayer(torch.nn.Module): | |
... | |
When pickled, any instance of `MyNetwork` and `MyLayer` will save its | |
source code alongside other internal state (e.g., parameters, buffers, | |
and submodules). This way, any previously exported pickle will remain | |
usable even if the class definitions have been modified or are no | |
longer available. | |
The decorator saves the source code of the entire Python module | |
containing the decorated class. It does *not* save the source code of | |
any imported modules. Thus, the imported modules must be available | |
during unpickling, also including `torch_utils.persistence` itself. | |
It is ok to call functions defined in the same module from the | |
decorated class. However, if the decorated class depends on other | |
classes defined in the same module, they must be decorated as well. | |
This is illustrated in the above example in the case of `MyLayer`. | |
It is also possible to employ the decorator just-in-time before | |
calling the constructor. For example: | |
cls = MyLayer | |
if want_to_make_it_persistent: | |
cls = persistence.persistent_class(cls) | |
layer = cls(num_inputs, num_outputs) | |
As an additional feature, the decorator also keeps track of the | |
arguments that were used to construct each instance of the decorated | |
class. The arguments can be queried via `obj.init_args` and | |
`obj.init_kwargs`, and they are automatically pickled alongside other | |
object state. A typical use case is to first unpickle a previous | |
instance of a persistent class, and then upgrade it to use the latest | |
version of the source code: | |
with open('old_pickle.pkl', 'rb') as f: | |
old_net = pickle.load(f) | |
new_net = MyNetwork(*old_obj.init_args, **old_obj.init_kwargs) | |
misc.copy_params_and_buffers(old_net, new_net, require_all=True) | |
""" | |
assert isinstance(orig_class, type) | |
if is_persistent(orig_class): | |
return orig_class | |
assert orig_class.__module__ in sys.modules | |
orig_module = sys.modules[orig_class.__module__] | |
orig_module_src = _module_to_src(orig_module) | |
class Decorator(orig_class): | |
_orig_module_src = orig_module_src | |
_orig_class_name = orig_class.__name__ | |
def __init__(self, *args, **kwargs): | |
super().__init__(*args, **kwargs) | |
self._init_args = copy.deepcopy(args) | |
self._init_kwargs = copy.deepcopy(kwargs) | |
assert orig_class.__name__ in orig_module.__dict__ | |
_check_pickleable(self.__reduce__()) | |
def init_args(self): | |
return copy.deepcopy(self._init_args) | |
def init_kwargs(self): | |
return dnnlib.EasyDict(copy.deepcopy(self._init_kwargs)) | |
def __reduce__(self): | |
fields = list(super().__reduce__()) | |
fields += [None] * max(3 - len(fields), 0) | |
if fields[0] is not _reconstruct_persistent_obj: | |
meta = dict(type='class', version=_version, module_src=self._orig_module_src, class_name=self._orig_class_name, state=fields[2]) | |
fields[0] = _reconstruct_persistent_obj # reconstruct func | |
fields[1] = (meta,) # reconstruct args | |
fields[2] = None # state dict | |
return tuple(fields) | |
Decorator.__name__ = orig_class.__name__ | |
_decorators.add(Decorator) | |
return Decorator | |
#---------------------------------------------------------------------------- | |
def is_persistent(obj): | |
r"""Test whether the given object or class is persistent, i.e., | |
whether it will save its source code when pickled. | |
""" | |
try: | |
if obj in _decorators: | |
return True | |
except TypeError: | |
pass | |
return type(obj) in _decorators # pylint: disable=unidiomatic-typecheck | |
#---------------------------------------------------------------------------- | |
def import_hook(hook): | |
r"""Register an import hook that is called whenever a persistent object | |
is being unpickled. A typical use case is to patch the pickled source | |
code to avoid errors and inconsistencies when the API of some imported | |
module has changed. | |
The hook should have the following signature: | |
hook(meta) -> modified meta | |
`meta` is an instance of `dnnlib.EasyDict` with the following fields: | |
type: Type of the persistent object, e.g. `'class'`. | |
version: Internal version number of `torch_utils.persistence`. | |
module_src Original source code of the Python module. | |
class_name: Class name in the original Python module. | |
state: Internal state of the object. | |
Example: | |
@persistence.import_hook | |
def wreck_my_network(meta): | |
if meta.class_name == 'MyNetwork': | |
print('MyNetwork is being imported. I will wreck it!') | |
meta.module_src = meta.module_src.replace("True", "False") | |
return meta | |
""" | |
assert callable(hook) | |
_import_hooks.append(hook) | |
#---------------------------------------------------------------------------- | |
def _reconstruct_persistent_obj(meta): | |
r"""Hook that is called internally by the `pickle` module to unpickle | |
a persistent object. | |
""" | |
meta = dnnlib.EasyDict(meta) | |
meta.state = dnnlib.EasyDict(meta.state) | |
for hook in _import_hooks: | |
meta = hook(meta) | |
assert meta is not None | |
assert meta.version == _version | |
module = _src_to_module(meta.module_src) | |
assert meta.type == 'class' | |
orig_class = module.__dict__[meta.class_name] | |
decorator_class = persistent_class(orig_class) | |
obj = decorator_class.__new__(decorator_class) | |
setstate = getattr(obj, '__setstate__', None) | |
if callable(setstate): | |
setstate(meta.state) # pylint: disable=not-callable | |
else: | |
obj.__dict__.update(meta.state) | |
return obj | |
#---------------------------------------------------------------------------- | |
def _module_to_src(module): | |
r"""Query the source code of a given Python module. | |
""" | |
src = _module_to_src_dict.get(module, None) | |
if src is None: | |
src = inspect.getsource(module) | |
_module_to_src_dict[module] = src | |
_src_to_module_dict[src] = module | |
return src | |
def _src_to_module(src): | |
r"""Get or create a Python module for the given source code. | |
""" | |
module = _src_to_module_dict.get(src, None) | |
if module is None: | |
module_name = "_imported_module_" + uuid.uuid4().hex | |
module = types.ModuleType(module_name) | |
sys.modules[module_name] = module | |
_module_to_src_dict[module] = src | |
_src_to_module_dict[src] = module | |
exec(src, module.__dict__) # pylint: disable=exec-used | |
return module | |
#---------------------------------------------------------------------------- | |
def _check_pickleable(obj): | |
r"""Check that the given object is pickleable, raising an exception if | |
it is not. This function is expected to be considerably more efficient | |
than actually pickling the object. | |
""" | |
return | |
def recurse(obj): | |
if isinstance(obj, (list, tuple, set)): | |
return [recurse(x) for x in obj] | |
if isinstance(obj, dict): | |
return [[recurse(x), recurse(y)] for x, y in obj.items()] | |
if isinstance(obj, (str, int, float, bool, bytes, bytearray)): | |
return None # Python primitive types are pickleable. | |
if f'{type(obj).__module__}.{type(obj).__name__}' in ['numpy.ndarray', 'torch.Tensor']: | |
return None # NumPy arrays and PyTorch tensors are pickleable. | |
if is_persistent(obj): | |
return None # Persistent objects are pickleable, by virtue of the constructor check. | |
return obj | |
with io.BytesIO() as f: | |
pickle.dump(recurse(obj), f) | |
#---------------------------------------------------------------------------- | |