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Upload misc.py

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  1. torch_utils/misc.py +262 -0
torch_utils/misc.py ADDED
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+ # Copyright (c) 2021, NVIDIA CORPORATION. All rights reserved.
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+ #
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+ # NVIDIA CORPORATION and its licensors retain all intellectual property
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+ # and proprietary rights in and to this software, related documentation
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+ # and any modifications thereto. Any use, reproduction, disclosure or
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+ # distribution of this software and related documentation without an express
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+ # license agreement from NVIDIA CORPORATION is strictly prohibited.
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+
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+ import re
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+ import contextlib
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+ import numpy as np
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+ import torch
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+ import warnings
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+ import dnnlib
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+
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+ #----------------------------------------------------------------------------
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+ # Cached construction of constant tensors. Avoids CPU=>GPU copy when the
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+ # same constant is used multiple times.
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+
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+ _constant_cache = dict()
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+
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+ def constant(value, shape=None, dtype=None, device=None, memory_format=None):
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+ value = np.asarray(value)
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+ if shape is not None:
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+ shape = tuple(shape)
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+ if dtype is None:
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+ dtype = torch.get_default_dtype()
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+ if device is None:
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+ device = torch.device('cpu')
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+ if memory_format is None:
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+ memory_format = torch.contiguous_format
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+
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+ key = (value.shape, value.dtype, value.tobytes(), shape, dtype, device, memory_format)
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+ tensor = _constant_cache.get(key, None)
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+ if tensor is None:
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+ tensor = torch.as_tensor(value.copy(), dtype=dtype, device=device)
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+ if shape is not None:
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+ tensor, _ = torch.broadcast_tensors(tensor, torch.empty(shape))
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+ tensor = tensor.contiguous(memory_format=memory_format)
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+ _constant_cache[key] = tensor
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+ return tensor
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+
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+ #----------------------------------------------------------------------------
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+ # Replace NaN/Inf with specified numerical values.
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+
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+ try:
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+ nan_to_num = torch.nan_to_num # 1.8.0a0
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+ except AttributeError:
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+ def nan_to_num(input, nan=0.0, posinf=None, neginf=None, *, out=None): # pylint: disable=redefined-builtin
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+ assert isinstance(input, torch.Tensor)
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+ if posinf is None:
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+ posinf = torch.finfo(input.dtype).max
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+ if neginf is None:
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+ neginf = torch.finfo(input.dtype).min
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+ assert nan == 0
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+ return torch.clamp(input.unsqueeze(0).nansum(0), min=neginf, max=posinf, out=out)
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+
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+ #----------------------------------------------------------------------------
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+ # Symbolic assert.
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+
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+ try:
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+ symbolic_assert = torch._assert # 1.8.0a0 # pylint: disable=protected-access
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+ except AttributeError:
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+ symbolic_assert = torch.Assert # 1.7.0
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+
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+ #----------------------------------------------------------------------------
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+ # Context manager to suppress known warnings in torch.jit.trace().
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+
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+ class suppress_tracer_warnings(warnings.catch_warnings):
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+ def __enter__(self):
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+ super().__enter__()
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+ warnings.simplefilter('ignore', category=torch.jit.TracerWarning)
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+ return self
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+
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+ #----------------------------------------------------------------------------
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+ # Assert that the shape of a tensor matches the given list of integers.
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+ # None indicates that the size of a dimension is allowed to vary.
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+ # Performs symbolic assertion when used in torch.jit.trace().
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+
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+ def assert_shape(tensor, ref_shape):
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+ if tensor.ndim != len(ref_shape):
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+ raise AssertionError(f'Wrong number of dimensions: got {tensor.ndim}, expected {len(ref_shape)}')
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+ for idx, (size, ref_size) in enumerate(zip(tensor.shape, ref_shape)):
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+ if ref_size is None:
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+ pass
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+ elif isinstance(ref_size, torch.Tensor):
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+ with suppress_tracer_warnings(): # as_tensor results are registered as constants
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+ symbolic_assert(torch.equal(torch.as_tensor(size), ref_size), f'Wrong size for dimension {idx}')
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+ elif isinstance(size, torch.Tensor):
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+ with suppress_tracer_warnings(): # as_tensor results are registered as constants
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+ symbolic_assert(torch.equal(size, torch.as_tensor(ref_size)), f'Wrong size for dimension {idx}: expected {ref_size}')
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+ elif size != ref_size:
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+ raise AssertionError(f'Wrong size for dimension {idx}: got {size}, expected {ref_size}')
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+
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+ #----------------------------------------------------------------------------
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+ # Function decorator that calls torch.autograd.profiler.record_function().
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+
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+ def profiled_function(fn):
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+ def decorator(*args, **kwargs):
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+ with torch.autograd.profiler.record_function(fn.__name__):
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+ return fn(*args, **kwargs)
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+ decorator.__name__ = fn.__name__
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+ return decorator
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+
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+ #----------------------------------------------------------------------------
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+ # Sampler for torch.utils.data.DataLoader that loops over the dataset
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+ # indefinitely, shuffling items as it goes.
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+
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+ class InfiniteSampler(torch.utils.data.Sampler):
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+ def __init__(self, dataset, rank=0, num_replicas=1, shuffle=True, seed=0, window_size=0.5):
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+ assert len(dataset) > 0
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+ assert num_replicas > 0
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+ assert 0 <= rank < num_replicas
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+ assert 0 <= window_size <= 1
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+ super().__init__(dataset)
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+ self.dataset = dataset
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+ self.rank = rank
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+ self.num_replicas = num_replicas
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+ self.shuffle = shuffle
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+ self.seed = seed
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+ self.window_size = window_size
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+
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+ def __iter__(self):
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+ order = np.arange(len(self.dataset))
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+ rnd = None
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+ window = 0
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+ if self.shuffle:
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+ rnd = np.random.RandomState(self.seed)
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+ rnd.shuffle(order)
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+ window = int(np.rint(order.size * self.window_size))
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+
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+ idx = 0
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+ while True:
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+ i = idx % order.size
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+ if idx % self.num_replicas == self.rank:
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+ yield order[i]
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+ if window >= 2:
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+ j = (i - rnd.randint(window)) % order.size
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+ order[i], order[j] = order[j], order[i]
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+ idx += 1
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+
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+ #----------------------------------------------------------------------------
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+ # Utilities for operating with torch.nn.Module parameters and buffers.
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+
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+ def params_and_buffers(module):
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+ assert isinstance(module, torch.nn.Module)
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+ return list(module.parameters()) + list(module.buffers())
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+
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+ def named_params_and_buffers(module):
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+ assert isinstance(module, torch.nn.Module)
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+ return list(module.named_parameters()) + list(module.named_buffers())
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+
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+ def copy_params_and_buffers(src_module, dst_module, require_all=False):
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+ assert isinstance(src_module, torch.nn.Module)
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+ assert isinstance(dst_module, torch.nn.Module)
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+ src_tensors = {name: tensor for name, tensor in named_params_and_buffers(src_module)}
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+ for name, tensor in named_params_and_buffers(dst_module):
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+ assert (name in src_tensors) or (not require_all)
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+ if name in src_tensors:
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+ tensor.copy_(src_tensors[name].detach()).requires_grad_(tensor.requires_grad)
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+
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+ #----------------------------------------------------------------------------
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+ # Context manager for easily enabling/disabling DistributedDataParallel
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+ # synchronization.
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+
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+ @contextlib.contextmanager
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+ def ddp_sync(module, sync):
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+ assert isinstance(module, torch.nn.Module)
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+ if sync or not isinstance(module, torch.nn.parallel.DistributedDataParallel):
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+ yield
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+ else:
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+ with module.no_sync():
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+ yield
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+
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+ #----------------------------------------------------------------------------
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+ # Check DistributedDataParallel consistency across processes.
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+
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+ def check_ddp_consistency(module, ignore_regex=None):
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+ assert isinstance(module, torch.nn.Module)
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+ for name, tensor in named_params_and_buffers(module):
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+ fullname = type(module).__name__ + '.' + name
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+ if ignore_regex is not None and re.fullmatch(ignore_regex, fullname):
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+ continue
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+ tensor = tensor.detach()
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+ other = tensor.clone()
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+ torch.distributed.broadcast(tensor=other, src=0)
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+ assert (nan_to_num(tensor) == nan_to_num(other)).all(), fullname
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+
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+ #----------------------------------------------------------------------------
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+ # Print summary table of module hierarchy.
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+
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+ def print_module_summary(module, inputs, max_nesting=3, skip_redundant=True):
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+ assert isinstance(module, torch.nn.Module)
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+ assert not isinstance(module, torch.jit.ScriptModule)
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+ assert isinstance(inputs, (tuple, list))
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+
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+ # Register hooks.
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+ entries = []
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+ nesting = [0]
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+ def pre_hook(_mod, _inputs):
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+ nesting[0] += 1
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+ def post_hook(mod, _inputs, outputs):
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+ nesting[0] -= 1
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+ if nesting[0] <= max_nesting:
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+ outputs = list(outputs) if isinstance(outputs, (tuple, list)) else [outputs]
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+ outputs = [t for t in outputs if isinstance(t, torch.Tensor)]
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+ entries.append(dnnlib.EasyDict(mod=mod, outputs=outputs))
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+ hooks = [mod.register_forward_pre_hook(pre_hook) for mod in module.modules()]
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+ hooks += [mod.register_forward_hook(post_hook) for mod in module.modules()]
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+
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+ # Run module.
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+ outputs = module(*inputs)
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+ for hook in hooks:
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+ hook.remove()
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+
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+ # Identify unique outputs, parameters, and buffers.
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+ tensors_seen = set()
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+ for e in entries:
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+ e.unique_params = [t for t in e.mod.parameters() if id(t) not in tensors_seen]
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+ e.unique_buffers = [t for t in e.mod.buffers() if id(t) not in tensors_seen]
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+ e.unique_outputs = [t for t in e.outputs if id(t) not in tensors_seen]
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+ tensors_seen |= {id(t) for t in e.unique_params + e.unique_buffers + e.unique_outputs}
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+
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+ # Filter out redundant entries.
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+ if skip_redundant:
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+ entries = [e for e in entries if len(e.unique_params) or len(e.unique_buffers) or len(e.unique_outputs)]
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+
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+ # Construct table.
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+ rows = [[type(module).__name__, 'Parameters', 'Buffers', 'Output shape', 'Datatype']]
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+ rows += [['---'] * len(rows[0])]
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+ param_total = 0
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+ buffer_total = 0
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+ submodule_names = {mod: name for name, mod in module.named_modules()}
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+ for e in entries:
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+ name = '<top-level>' if e.mod is module else submodule_names[e.mod]
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+ param_size = sum(t.numel() for t in e.unique_params)
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+ buffer_size = sum(t.numel() for t in e.unique_buffers)
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+ output_shapes = [str(list(e.outputs[0].shape)) for t in e.outputs]
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+ output_dtypes = [str(t.dtype).split('.')[-1] for t in e.outputs]
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+ rows += [[
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+ name + (':0' if len(e.outputs) >= 2 else ''),
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+ str(param_size) if param_size else '-',
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+ str(buffer_size) if buffer_size else '-',
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+ (output_shapes + ['-'])[0],
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+ (output_dtypes + ['-'])[0],
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+ ]]
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+ for idx in range(1, len(e.outputs)):
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+ rows += [[name + f':{idx}', '-', '-', output_shapes[idx], output_dtypes[idx]]]
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+ param_total += param_size
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+ buffer_total += buffer_size
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+ rows += [['---'] * len(rows[0])]
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+ rows += [['Total', str(param_total), str(buffer_total), '-', '-']]
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+
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+ # Print table.
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+ widths = [max(len(cell) for cell in column) for column in zip(*rows)]
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+ print()
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+ for row in rows:
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+ print(' '.join(cell + ' ' * (width - len(cell)) for cell, width in zip(row, widths)))
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+ print()
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+ return outputs
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+
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+ #----------------------------------------------------------------------------