# YOLOv5 PyTorch utils import datetime import logging import os import platform import subprocess import time from contextlib import contextmanager from copy import deepcopy from pathlib import Path import math import torch import torch.backends.cudnn as cudnn import torch.distributed as dist import torch.nn as nn import torch.nn.functional as F import torchvision try: import thop # for FLOPs computation except ImportError: thop = None LOGGER = logging.getLogger(__name__) @contextmanager def torch_distributed_zero_first(local_rank: int): """ Decorator to make all processes in distributed training wait for each local_master to do something. """ if local_rank not in [-1, 0]: dist.barrier() yield if local_rank == 0: dist.barrier() def init_torch_seeds(seed=0): # Speed-reproducibility tradeoff https://pytorch.org/docs/stable/notes/randomness.html torch.manual_seed(seed) if seed == 0: # slower, more reproducible cudnn.benchmark, cudnn.deterministic = False, True else: # faster, less reproducible cudnn.benchmark, cudnn.deterministic = True, False def date_modified(path=__file__): # return human-readable file modification date, i.e. '2021-3-26' t = datetime.datetime.fromtimestamp(Path(path).stat().st_mtime) return f'{t.year}-{t.month}-{t.day}' def git_describe(path=Path(__file__).parent): # path must be a directory # return human-readable git description, i.e. v5.0-5-g3e25f1e https://git-scm.com/docs/git-describe s = f'git -C {path} describe --tags --long --always' try: return subprocess.check_output(s, shell=True, stderr=subprocess.STDOUT).decode()[:-1] except subprocess.CalledProcessError as e: return '' # not a git repository def select_device(device='', batch_size=None): # device = 'cpu' or '0' or '0,1,2,3' s = f'YOLOv5 🚀 {git_describe() or date_modified()} torch {torch.__version__} ' # string device = str(device).strip().lower().replace('cuda:', '') # to string, 'cuda:0' to '0' cpu = device == 'cpu' if cpu: os.environ['CUDA_VISIBLE_DEVICES'] = '-1' # force torch.cuda.is_available() = False elif device: # non-cpu device requested os.environ['CUDA_VISIBLE_DEVICES'] = device # set environment variable assert torch.cuda.is_available(), f'CUDA unavailable, invalid device {device} requested' # check availability cuda = not cpu and torch.cuda.is_available() if cuda: devices = device.split(',') if device else '0' # range(torch.cuda.device_count()) # i.e. 0,1,6,7 n = len(devices) # device count if n > 1 and batch_size: # check batch_size is divisible by device_count assert batch_size % n == 0, f'batch-size {batch_size} not multiple of GPU count {n}' space = ' ' * (len(s) + 1) for i, d in enumerate(devices): p = torch.cuda.get_device_properties(i) s += f"{'' if i == 0 else space}CUDA:{d} ({p.name}, {p.total_memory / 1024 ** 2}MB)\n" # bytes to MB else: s += 'CPU\n' LOGGER.info(s.encode().decode('ascii', 'ignore') if platform.system() == 'Windows' else s) # emoji-safe return torch.device('cuda:0' if cuda else 'cpu') def time_sync(): # pytorch-accurate time if torch.cuda.is_available(): torch.cuda.synchronize() return time.time() def profile(input, ops, n=10, device=None): # YOLOv5 speed/memory/FLOPs profiler # # Usage: # input = torch.randn(16, 3, 640, 640) # m1 = lambda x: x * torch.sigmoid(x) # m2 = nn.SiLU() # profile(input, [m1, m2], n=100) # profile over 100 iterations results = [] logging.basicConfig(format="%(message)s", level=logging.INFO) device = device or select_device() print(f"{'Params':>12s}{'GFLOPs':>12s}{'GPU_mem (GB)':>14s}{'forward (ms)':>14s}{'backward (ms)':>14s}" f"{'input':>24s}{'output':>24s}") for x in input if isinstance(input, list) else [input]: x = x.to(device) x.requires_grad = True for m in ops if isinstance(ops, list) else [ops]: m = m.to(device) if hasattr(m, 'to') else m # device m = m.half() if hasattr(m, 'half') and isinstance(x, torch.Tensor) and x.dtype is torch.float16 else m tf, tb, t = 0., 0., [0., 0., 0.] # dt forward, backward try: flops = thop.profile(m, inputs=(x,), verbose=False)[0] / 1E9 * 2 # GFLOPs except: flops = 0 try: for _ in range(n): t[0] = time_sync() y = m(x) t[1] = time_sync() try: _ = (sum([yi.sum() for yi in y]) if isinstance(y, list) else y).sum().backward() t[2] = time_sync() except Exception as e: # no backward method print(e) t[2] = float('nan') tf += (t[1] - t[0]) * 1000 / n # ms per op forward tb += (t[2] - t[1]) * 1000 / n # ms per op backward mem = torch.cuda.memory_reserved() / 1E9 if torch.cuda.is_available() else 0 # (GB) s_in = tuple(x.shape) if isinstance(x, torch.Tensor) else 'list' s_out = tuple(y.shape) if isinstance(y, torch.Tensor) else 'list' p = sum(list(x.numel() for x in m.parameters())) if isinstance(m, nn.Module) else 0 # parameters print(f'{p:12}{flops:12.4g}{mem:>14.3f}{tf:14.4g}{tb:14.4g}{str(s_in):>24s}{str(s_out):>24s}') results.append([p, flops, mem, tf, tb, s_in, s_out]) except Exception as e: print(e) results.append(None) torch.cuda.empty_cache() return results def is_parallel(model): # Returns True if model is of type DP or DDP return type(model) in (nn.parallel.DataParallel, nn.parallel.DistributedDataParallel) def de_parallel(model): # De-parallelize a model: returns single-GPU model if model is of type DP or DDP return model.module if is_parallel(model) else model def intersect_dicts(da, db, exclude=()): # Dictionary intersection of matching keys and shapes, omitting 'exclude' keys, using da values return {k: v for k, v in da.items() if k in db and not any(x in k for x in exclude) and v.shape == db[k].shape} def initialize_weights(model): for m in model.modules(): t = type(m) if t is nn.Conv2d: pass # nn.init.kaiming_normal_(m.weight, mode='fan_out', nonlinearity='relu') elif t is nn.BatchNorm2d: m.eps = 1e-3 m.momentum = 0.03 elif t in [nn.Hardswish, nn.LeakyReLU, nn.ReLU, nn.ReLU6]: m.inplace = True def find_modules(model, mclass=nn.Conv2d): # Finds layer indices matching module class 'mclass' return [i for i, m in enumerate(model.module_list) if isinstance(m, mclass)] def sparsity(model): # Return global model sparsity a, b = 0., 0. for p in model.parameters(): a += p.numel() b += (p == 0).sum() return b / a def prune(model, amount=0.3): # Prune model to requested global sparsity import torch.nn.utils.prune as prune print('Pruning model... ', end='') for name, m in model.named_modules(): if isinstance(m, nn.Conv2d): prune.l1_unstructured(m, name='weight', amount=amount) # prune prune.remove(m, 'weight') # make permanent print(' %.3g global sparsity' % sparsity(model)) def fuse_conv_and_bn(conv, bn): # Fuse convolution and batchnorm layers https://tehnokv.com/posts/fusing-batchnorm-and-conv/ fusedconv = nn.Conv2d(conv.in_channels, conv.out_channels, kernel_size=conv.kernel_size, stride=conv.stride, padding=conv.padding, groups=conv.groups, bias=True).requires_grad_(False).to(conv.weight.device) # prepare filters w_conv = conv.weight.clone().view(conv.out_channels, -1) w_bn = torch.diag(bn.weight.div(torch.sqrt(bn.eps + bn.running_var))) fusedconv.weight.copy_(torch.mm(w_bn, w_conv).view(fusedconv.weight.shape)) # prepare spatial bias b_conv = torch.zeros(conv.weight.size(0), device=conv.weight.device) if conv.bias is None else conv.bias b_bn = bn.bias - bn.weight.mul(bn.running_mean).div(torch.sqrt(bn.running_var + bn.eps)) fusedconv.bias.copy_(torch.mm(w_bn, b_conv.reshape(-1, 1)).reshape(-1) + b_bn) return fusedconv def model_info(model, verbose=False, img_size=640): # Model information. img_size may be int or list, i.e. img_size=640 or img_size=[640, 320] n_p = sum(x.numel() for x in model.parameters()) # number parameters n_g = sum(x.numel() for x in model.parameters() if x.requires_grad) # number gradients if verbose: print('%5s %40s %9s %12s %20s %10s %10s' % ('layer', 'name', 'gradient', 'parameters', 'shape', 'mu', 'sigma')) for i, (name, p) in enumerate(model.named_parameters()): name = name.replace('module_list.', '') print('%5g %40s %9s %12g %20s %10.3g %10.3g' % (i, name, p.requires_grad, p.numel(), list(p.shape), p.mean(), p.std())) try: # FLOPs from thop import profile stride = max(int(model.stride.max()), 32) if hasattr(model, 'stride') else 32 img = torch.zeros((1, model.yaml.get('ch', 3), stride, stride), device=next(model.parameters()).device) # input flops = profile(deepcopy(model), inputs=(img,), verbose=False)[0] / 1E9 * 2 # stride GFLOPs img_size = img_size if isinstance(img_size, list) else [img_size, img_size] # expand if int/float fs = ', %.1f GFLOPs' % (flops * img_size[0] / stride * img_size[1] / stride) # 640x640 GFLOPs except (ImportError, Exception): fs = '' LOGGER.info(f"Model Summary: {len(list(model.modules()))} layers, {n_p} parameters, {n_g} gradients{fs}") def load_classifier(name='resnet101', n=2): # Loads a pretrained model reshaped to n-class output model = torchvision.models.__dict__[name](pretrained=True) # ResNet model properties # input_size = [3, 224, 224] # input_space = 'RGB' # input_range = [0, 1] # mean = [0.485, 0.456, 0.406] # std = [0.229, 0.224, 0.225] # Reshape output to n classes filters = model.fc.weight.shape[1] model.fc.bias = nn.Parameter(torch.zeros(n), requires_grad=True) model.fc.weight = nn.Parameter(torch.zeros(n, filters), requires_grad=True) model.fc.out_features = n return model def scale_img(img, ratio=1.0, same_shape=False, gs=32): # img(16,3,256,416) # scales img(bs,3,y,x) by ratio constrained to gs-multiple if ratio == 1.0: return img else: h, w = img.shape[2:] s = (int(h * ratio), int(w * ratio)) # new size img = F.interpolate(img, size=s, mode='bilinear', align_corners=False) # resize if not same_shape: # pad/crop img h, w = [math.ceil(x * ratio / gs) * gs for x in (h, w)] return F.pad(img, [0, w - s[1], 0, h - s[0]], value=0.447) # value = imagenet mean def copy_attr(a, b, include=(), exclude=()): # Copy attributes from b to a, options to only include [...] and to exclude [...] for k, v in b.__dict__.items(): if (len(include) and k not in include) or k.startswith('_') or k in exclude: continue else: setattr(a, k, v) class ModelEMA: """ Model Exponential Moving Average from https://github.com/rwightman/pytorch-image-models Keep a moving average of everything in the model state_dict (parameters and buffers). This is intended to allow functionality like https://www.tensorflow.org/api_docs/python/tf/train/ExponentialMovingAverage A smoothed version of the weights is necessary for some training schemes to perform well. This class is sensitive where it is initialized in the sequence of model init, GPU assignment and distributed training wrappers. """ def __init__(self, model, decay=0.9999, updates=0): # Create EMA self.ema = deepcopy(model.module if is_parallel(model) else model).eval() # FP32 EMA # if next(model.parameters()).device.type != 'cpu': # self.ema.half() # FP16 EMA self.updates = updates # number of EMA updates self.decay = lambda x: decay * (1 - math.exp(-x / 2000)) # decay exponential ramp (to help early epochs) for p in self.ema.parameters(): p.requires_grad_(False) def update(self, model): # Update EMA parameters with torch.no_grad(): self.updates += 1 d = self.decay(self.updates) msd = model.module.state_dict() if is_parallel(model) else model.state_dict() # model state_dict for k, v in self.ema.state_dict().items(): if v.dtype.is_floating_point: v *= d v += (1. - d) * msd[k].detach() def update_attr(self, model, include=(), exclude=('process_group', 'reducer')): # Update EMA attributes copy_attr(self.ema, model, include, exclude) def time_synchronized(): # pytorch-accurate time if torch.cuda.is_available(): torch.cuda.synchronize() return time.time() class TracedModel(nn.Module): def __init__(self, model=None, device=None, img_size=(640, 640)): super(TracedModel, self).__init__() print(" Convert model to Traced-model... ") self.stride = model.stride self.names = model.names self.model = model self.model = revert_sync_batchnorm(self.model) self.model.to('cpu') self.model.eval() self.detect_layer = self.model.model[-1] self.model.traced = True rand_example = torch.rand(1, 3, img_size, img_size) traced_script_module = torch.jit.trace(self.model, rand_example, strict=False) # traced_script_module = torch.jit.script(self.model) traced_script_module.save("traced_model.pt") print(" traced_script_module saved! ") self.model = traced_script_module self.model.to(device) self.detect_layer.to(device) print(" model is traced! \n") def forward(self, x, augment=False, profile=False): out = self.model(x) out = self.detect_layer(out) return out def revert_sync_batchnorm(module): # this is very similar to the function that it is trying to revert: # https://github.com/pytorch/pytorch/blob/c8b3686a3e4ba63dc59e5dcfe5db3430df256833/torch/nn/modules/batchnorm.py#L679 module_output = module if isinstance(module, torch.nn.modules.batchnorm.SyncBatchNorm): new_cls = BatchNormXd module_output = BatchNormXd(module.num_features, module.eps, module.momentum, module.affine, module.track_running_stats) if module.affine: with torch.no_grad(): module_output.weight = module.weight module_output.bias = module.bias module_output.running_mean = module.running_mean module_output.running_var = module.running_var module_output.num_batches_tracked = module.num_batches_tracked if hasattr(module, "qconfig"): module_output.qconfig = module.qconfig for name, child in module.named_children(): module_output.add_module(name, revert_sync_batchnorm(child)) del module return module_output class BatchNormXd(torch.nn.modules.batchnorm._BatchNorm): def _check_input_dim(self, input): # The only difference between BatchNorm1d, BatchNorm2d, BatchNorm3d, etc # is this method that is overwritten by the sub-class # This original goal of this method was for tensor sanity checks # If you're ok bypassing those sanity checks (eg. if you trust your inference # to provide the right dimensional inputs), then you can just use this method # for easy conversion from SyncBatchNorm # (unfortunately, SyncBatchNorm does not store the original class - if it did # we could return the one that was originally created) return