| |
| import torch |
| import torch.distributed as dist |
| import torch.nn.functional as F |
| from torch.autograd import Function |
| from torch.autograd.function import once_differentiable |
| from torch.nn.modules.module import Module |
| from torch.nn.parameter import Parameter |
|
|
| from annotator.uniformer.mmcv.cnn import NORM_LAYERS |
| from ..utils import ext_loader |
|
|
| ext_module = ext_loader.load_ext('_ext', [ |
| 'sync_bn_forward_mean', 'sync_bn_forward_var', 'sync_bn_forward_output', |
| 'sync_bn_backward_param', 'sync_bn_backward_data' |
| ]) |
|
|
|
|
| class SyncBatchNormFunction(Function): |
|
|
| @staticmethod |
| def symbolic(g, input, running_mean, running_var, weight, bias, momentum, |
| eps, group, group_size, stats_mode): |
| return g.op( |
| 'mmcv::MMCVSyncBatchNorm', |
| input, |
| running_mean, |
| running_var, |
| weight, |
| bias, |
| momentum_f=momentum, |
| eps_f=eps, |
| group_i=group, |
| group_size_i=group_size, |
| stats_mode=stats_mode) |
|
|
| @staticmethod |
| def forward(self, input, running_mean, running_var, weight, bias, momentum, |
| eps, group, group_size, stats_mode): |
| self.momentum = momentum |
| self.eps = eps |
| self.group = group |
| self.group_size = group_size |
| self.stats_mode = stats_mode |
|
|
| assert isinstance( |
| input, (torch.HalfTensor, torch.FloatTensor, |
| torch.cuda.HalfTensor, torch.cuda.FloatTensor)), \ |
| f'only support Half or Float Tensor, but {input.type()}' |
| output = torch.zeros_like(input) |
| input3d = input.flatten(start_dim=2) |
| output3d = output.view_as(input3d) |
| num_channels = input3d.size(1) |
|
|
| |
| |
| mean = torch.zeros( |
| num_channels, dtype=torch.float, device=input3d.device) |
| var = torch.zeros( |
| num_channels, dtype=torch.float, device=input3d.device) |
| norm = torch.zeros_like( |
| input3d, dtype=torch.float, device=input3d.device) |
| std = torch.zeros( |
| num_channels, dtype=torch.float, device=input3d.device) |
|
|
| batch_size = input3d.size(0) |
| if batch_size > 0: |
| ext_module.sync_bn_forward_mean(input3d, mean) |
| batch_flag = torch.ones([1], device=mean.device, dtype=mean.dtype) |
| else: |
| |
| batch_flag = torch.zeros([1], device=mean.device, dtype=mean.dtype) |
|
|
| |
| vec = torch.cat([mean, batch_flag]) |
| if self.stats_mode == 'N': |
| vec *= batch_size |
| if self.group_size > 1: |
| dist.all_reduce(vec, group=self.group) |
| total_batch = vec[-1].detach() |
| mean = vec[:num_channels] |
|
|
| if self.stats_mode == 'default': |
| mean = mean / self.group_size |
| elif self.stats_mode == 'N': |
| mean = mean / total_batch.clamp(min=1) |
| else: |
| raise NotImplementedError |
|
|
| |
| if batch_size > 0: |
| ext_module.sync_bn_forward_var(input3d, mean, var) |
|
|
| if self.stats_mode == 'N': |
| var *= batch_size |
| if self.group_size > 1: |
| dist.all_reduce(var, group=self.group) |
|
|
| if self.stats_mode == 'default': |
| var /= self.group_size |
| elif self.stats_mode == 'N': |
| var /= total_batch.clamp(min=1) |
| else: |
| raise NotImplementedError |
|
|
| |
| |
| update_flag = total_batch.clamp(max=1) |
| momentum = update_flag * self.momentum |
| ext_module.sync_bn_forward_output( |
| input3d, |
| mean, |
| var, |
| weight, |
| bias, |
| running_mean, |
| running_var, |
| norm, |
| std, |
| output3d, |
| eps=self.eps, |
| momentum=momentum, |
| group_size=self.group_size) |
| self.save_for_backward(norm, std, weight) |
| return output |
|
|
| @staticmethod |
| @once_differentiable |
| def backward(self, grad_output): |
| norm, std, weight = self.saved_tensors |
| grad_weight = torch.zeros_like(weight) |
| grad_bias = torch.zeros_like(weight) |
| grad_input = torch.zeros_like(grad_output) |
| grad_output3d = grad_output.flatten(start_dim=2) |
| grad_input3d = grad_input.view_as(grad_output3d) |
|
|
| batch_size = grad_input3d.size(0) |
| if batch_size > 0: |
| ext_module.sync_bn_backward_param(grad_output3d, norm, grad_weight, |
| grad_bias) |
|
|
| |
| if self.group_size > 1: |
| dist.all_reduce(grad_weight, group=self.group) |
| dist.all_reduce(grad_bias, group=self.group) |
| grad_weight /= self.group_size |
| grad_bias /= self.group_size |
|
|
| if batch_size > 0: |
| ext_module.sync_bn_backward_data(grad_output3d, weight, |
| grad_weight, grad_bias, norm, std, |
| grad_input3d) |
|
|
| return grad_input, None, None, grad_weight, grad_bias, \ |
| None, None, None, None, None |
|
|
|
|
| @NORM_LAYERS.register_module(name='MMSyncBN') |
| class SyncBatchNorm(Module): |
| """Synchronized Batch Normalization. |
| |
| Args: |
| num_features (int): number of features/chennels in input tensor |
| eps (float, optional): a value added to the denominator for numerical |
| stability. Defaults to 1e-5. |
| momentum (float, optional): the value used for the running_mean and |
| running_var computation. Defaults to 0.1. |
| affine (bool, optional): whether to use learnable affine parameters. |
| Defaults to True. |
| track_running_stats (bool, optional): whether to track the running |
| mean and variance during training. When set to False, this |
| module does not track such statistics, and initializes statistics |
| buffers ``running_mean`` and ``running_var`` as ``None``. When |
| these buffers are ``None``, this module always uses batch |
| statistics in both training and eval modes. Defaults to True. |
| group (int, optional): synchronization of stats happen within |
| each process group individually. By default it is synchronization |
| across the whole world. Defaults to None. |
| stats_mode (str, optional): The statistical mode. Available options |
| includes ``'default'`` and ``'N'``. Defaults to 'default'. |
| When ``stats_mode=='default'``, it computes the overall statistics |
| using those from each worker with equal weight, i.e., the |
| statistics are synchronized and simply divied by ``group``. This |
| mode will produce inaccurate statistics when empty tensors occur. |
| When ``stats_mode=='N'``, it compute the overall statistics using |
| the total number of batches in each worker ignoring the number of |
| group, i.e., the statistics are synchronized and then divied by |
| the total batch ``N``. This mode is beneficial when empty tensors |
| occur during training, as it average the total mean by the real |
| number of batch. |
| """ |
|
|
| def __init__(self, |
| num_features, |
| eps=1e-5, |
| momentum=0.1, |
| affine=True, |
| track_running_stats=True, |
| group=None, |
| stats_mode='default'): |
| super(SyncBatchNorm, self).__init__() |
| self.num_features = num_features |
| self.eps = eps |
| self.momentum = momentum |
| self.affine = affine |
| self.track_running_stats = track_running_stats |
| group = dist.group.WORLD if group is None else group |
| self.group = group |
| self.group_size = dist.get_world_size(group) |
| assert stats_mode in ['default', 'N'], \ |
| f'"stats_mode" only accepts "default" and "N", got "{stats_mode}"' |
| self.stats_mode = stats_mode |
| if self.affine: |
| self.weight = Parameter(torch.Tensor(num_features)) |
| self.bias = Parameter(torch.Tensor(num_features)) |
| else: |
| self.register_parameter('weight', None) |
| self.register_parameter('bias', None) |
| if self.track_running_stats: |
| self.register_buffer('running_mean', torch.zeros(num_features)) |
| self.register_buffer('running_var', torch.ones(num_features)) |
| self.register_buffer('num_batches_tracked', |
| torch.tensor(0, dtype=torch.long)) |
| else: |
| self.register_buffer('running_mean', None) |
| self.register_buffer('running_var', None) |
| self.register_buffer('num_batches_tracked', None) |
| self.reset_parameters() |
|
|
| def reset_running_stats(self): |
| if self.track_running_stats: |
| self.running_mean.zero_() |
| self.running_var.fill_(1) |
| self.num_batches_tracked.zero_() |
|
|
| def reset_parameters(self): |
| self.reset_running_stats() |
| if self.affine: |
| self.weight.data.uniform_() |
| self.bias.data.zero_() |
|
|
| def forward(self, input): |
| if input.dim() < 2: |
| raise ValueError( |
| f'expected at least 2D input, got {input.dim()}D input') |
| if self.momentum is None: |
| exponential_average_factor = 0.0 |
| else: |
| exponential_average_factor = self.momentum |
|
|
| if self.training and self.track_running_stats: |
| if self.num_batches_tracked is not None: |
| self.num_batches_tracked += 1 |
| if self.momentum is None: |
| exponential_average_factor = 1.0 / float( |
| self.num_batches_tracked) |
| else: |
| exponential_average_factor = self.momentum |
|
|
| if self.training or not self.track_running_stats: |
| return SyncBatchNormFunction.apply( |
| input, self.running_mean, self.running_var, self.weight, |
| self.bias, exponential_average_factor, self.eps, self.group, |
| self.group_size, self.stats_mode) |
| else: |
| return F.batch_norm(input, self.running_mean, self.running_var, |
| self.weight, self.bias, False, |
| exponential_average_factor, self.eps) |
|
|
| def __repr__(self): |
| s = self.__class__.__name__ |
| s += f'({self.num_features}, ' |
| s += f'eps={self.eps}, ' |
| s += f'momentum={self.momentum}, ' |
| s += f'affine={self.affine}, ' |
| s += f'track_running_stats={self.track_running_stats}, ' |
| s += f'group_size={self.group_size},' |
| s += f'stats_mode={self.stats_mode})' |
| return s |
|
|