2021-10-13 12:00:23 +02:00
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# Copyright (c) 2021, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
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2021-10-07 11:55:26 +02:00
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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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"""Facilities for reporting and collecting training statistics across
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multiple processes and devices. The interface is designed to minimize
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synchronization overhead as well as the amount of boilerplate in user
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code."""
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import re
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import numpy as np
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import torch
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import dnnlib
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from . import misc
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#----------------------------------------------------------------------------
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_num_moments = 3 # [num_scalars, sum_of_scalars, sum_of_squares]
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_reduce_dtype = torch.float32 # Data type to use for initial per-tensor reduction.
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_counter_dtype = torch.float64 # Data type to use for the internal counters.
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_rank = 0 # Rank of the current process.
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_sync_device = None # Device to use for multiprocess communication. None = single-process.
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_sync_called = False # Has _sync() been called yet?
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_counters = dict() # Running counters on each device, updated by report(): name => device => torch.Tensor
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_cumulative = dict() # Cumulative counters on the CPU, updated by _sync(): name => torch.Tensor
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#----------------------------------------------------------------------------
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def init_multiprocessing(rank, sync_device):
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r"""Initializes `torch_utils.training_stats` for collecting statistics
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across multiple processes.
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This function must be called after
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`torch.distributed.init_process_group()` and before `Collector.update()`.
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The call is not necessary if multi-process collection is not needed.
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Args:
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rank: Rank of the current process.
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sync_device: PyTorch device to use for inter-process
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communication, or None to disable multi-process
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collection. Typically `torch.device('cuda', rank)`.
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"""
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global _rank, _sync_device
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assert not _sync_called
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_rank = rank
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_sync_device = sync_device
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#----------------------------------------------------------------------------
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@misc.profiled_function
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def report(name, value):
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r"""Broadcasts the given set of scalars to all interested instances of
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`Collector`, across device and process boundaries.
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This function is expected to be extremely cheap and can be safely
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called from anywhere in the training loop, loss function, or inside a
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`torch.nn.Module`.
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Warning: The current implementation expects the set of unique names to
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be consistent across processes. Please make sure that `report()` is
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called at least once for each unique name by each process, and in the
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same order. If a given process has no scalars to broadcast, it can do
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`report(name, [])` (empty list).
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Args:
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name: Arbitrary string specifying the name of the statistic.
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Averages are accumulated separately for each unique name.
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value: Arbitrary set of scalars. Can be a list, tuple,
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NumPy array, PyTorch tensor, or Python scalar.
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Returns:
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The same `value` that was passed in.
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"""
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if name not in _counters:
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_counters[name] = dict()
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elems = torch.as_tensor(value)
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if elems.numel() == 0:
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return value
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elems = elems.detach().flatten().to(_reduce_dtype)
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moments = torch.stack([
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torch.ones_like(elems).sum(),
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elems.sum(),
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elems.square().sum(),
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])
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assert moments.ndim == 1 and moments.shape[0] == _num_moments
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moments = moments.to(_counter_dtype)
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device = moments.device
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if device not in _counters[name]:
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_counters[name][device] = torch.zeros_like(moments)
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_counters[name][device].add_(moments)
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return value
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#----------------------------------------------------------------------------
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def report0(name, value):
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r"""Broadcasts the given set of scalars by the first process (`rank = 0`),
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but ignores any scalars provided by the other processes.
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See `report()` for further details.
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"""
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report(name, value if _rank == 0 else [])
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return value
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#----------------------------------------------------------------------------
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class Collector:
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r"""Collects the scalars broadcasted by `report()` and `report0()` and
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computes their long-term averages (mean and standard deviation) over
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user-defined periods of time.
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The averages are first collected into internal counters that are not
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directly visible to the user. They are then copied to the user-visible
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state as a result of calling `update()` and can then be queried using
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`mean()`, `std()`, `as_dict()`, etc. Calling `update()` also resets the
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internal counters for the next round, so that the user-visible state
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effectively reflects averages collected between the last two calls to
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`update()`.
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Args:
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regex: Regular expression defining which statistics to
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collect. The default is to collect everything.
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keep_previous: Whether to retain the previous averages if no
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scalars were collected on a given round
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(default: True).
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"""
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def __init__(self, regex='.*', keep_previous=True):
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self._regex = re.compile(regex)
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self._keep_previous = keep_previous
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self._cumulative = dict()
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self._moments = dict()
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self.update()
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self._moments.clear()
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def names(self):
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r"""Returns the names of all statistics broadcasted so far that
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match the regular expression specified at construction time.
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"""
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return [name for name in _counters if self._regex.fullmatch(name)]
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def update(self):
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r"""Copies current values of the internal counters to the
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user-visible state and resets them for the next round.
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If `keep_previous=True` was specified at construction time, the
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operation is skipped for statistics that have received no scalars
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since the last update, retaining their previous averages.
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This method performs a number of GPU-to-CPU transfers and one
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`torch.distributed.all_reduce()`. It is intended to be called
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periodically in the main training loop, typically once every
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N training steps.
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"""
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if not self._keep_previous:
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self._moments.clear()
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for name, cumulative in _sync(self.names()):
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if name not in self._cumulative:
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self._cumulative[name] = torch.zeros([_num_moments], dtype=_counter_dtype)
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delta = cumulative - self._cumulative[name]
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self._cumulative[name].copy_(cumulative)
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if float(delta[0]) != 0:
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self._moments[name] = delta
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def _get_delta(self, name):
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r"""Returns the raw moments that were accumulated for the given
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statistic between the last two calls to `update()`, or zero if
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no scalars were collected.
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"""
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assert self._regex.fullmatch(name)
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if name not in self._moments:
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self._moments[name] = torch.zeros([_num_moments], dtype=_counter_dtype)
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return self._moments[name]
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def num(self, name):
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r"""Returns the number of scalars that were accumulated for the given
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statistic between the last two calls to `update()`, or zero if
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no scalars were collected.
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"""
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delta = self._get_delta(name)
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return int(delta[0])
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def mean(self, name):
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r"""Returns the mean of the scalars that were accumulated for the
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given statistic between the last two calls to `update()`, or NaN if
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no scalars were collected.
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"""
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delta = self._get_delta(name)
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if int(delta[0]) == 0:
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return float('nan')
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return float(delta[1] / delta[0])
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def std(self, name):
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r"""Returns the standard deviation of the scalars that were
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accumulated for the given statistic between the last two calls to
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`update()`, or NaN if no scalars were collected.
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"""
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delta = self._get_delta(name)
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if int(delta[0]) == 0 or not np.isfinite(float(delta[1])):
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return float('nan')
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if int(delta[0]) == 1:
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return float(0)
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mean = float(delta[1] / delta[0])
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raw_var = float(delta[2] / delta[0])
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return np.sqrt(max(raw_var - np.square(mean), 0))
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def as_dict(self):
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r"""Returns the averages accumulated between the last two calls to
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`update()` as an `dnnlib.EasyDict`. The contents are as follows:
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dnnlib.EasyDict(
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NAME = dnnlib.EasyDict(num=FLOAT, mean=FLOAT, std=FLOAT),
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...
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)
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"""
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stats = dnnlib.EasyDict()
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for name in self.names():
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stats[name] = dnnlib.EasyDict(num=self.num(name), mean=self.mean(name), std=self.std(name))
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return stats
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def __getitem__(self, name):
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r"""Convenience getter.
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`collector[name]` is a synonym for `collector.mean(name)`.
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"""
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return self.mean(name)
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#----------------------------------------------------------------------------
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def _sync(names):
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r"""Synchronize the global cumulative counters across devices and
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processes. Called internally by `Collector.update()`.
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"""
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if len(names) == 0:
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return []
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global _sync_called
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_sync_called = True
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# Collect deltas within current rank.
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deltas = []
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device = _sync_device if _sync_device is not None else torch.device('cpu')
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for name in names:
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delta = torch.zeros([_num_moments], dtype=_counter_dtype, device=device)
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for counter in _counters[name].values():
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delta.add_(counter.to(device))
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counter.copy_(torch.zeros_like(counter))
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deltas.append(delta)
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deltas = torch.stack(deltas)
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# Sum deltas across ranks.
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if _sync_device is not None:
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torch.distributed.all_reduce(deltas)
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# Update cumulative values.
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deltas = deltas.cpu()
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for idx, name in enumerate(names):
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if name not in _cumulative:
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_cumulative[name] = torch.zeros([_num_moments], dtype=_counter_dtype)
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_cumulative[name].add_(deltas[idx])
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# Return name-value pairs.
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return [(name, _cumulative[name]) for name in names]
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#----------------------------------------------------------------------------
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