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| """ | |
| RT-DETRv4: Painlessly Furthering Real-Time Object Detection with Vision Foundation Models | |
| Copyright (c) 2025 The RT-DETRv4 Authors. All Rights Reserved. | |
| --------------------------------------------------------------------------------- | |
| Modified from DEIM: DETR with Improved Matching for Fast Convergence | |
| Copyright (c) 2024 The DEIM Authors. All Rights Reserved. | |
| """ | |
| import sys | |
| import math | |
| from typing import Iterable | |
| import torch | |
| import torch.amp | |
| from torch.utils.tensorboard import SummaryWriter | |
| from torch.cuda.amp.grad_scaler import GradScaler | |
| from ..optim import ModelEMA, Warmup | |
| from ..data import CocoEvaluator | |
| from ..misc import MetricLogger, SmoothedValue, dist_utils | |
| def _compute_encoder_transformer_grad_percentage(model: torch.nn.Module) -> float: | |
| """Compute percentage of gradients attributed to encoder transformer only. | |
| This avoids collecting/printing any other stats for speed. | |
| """ | |
| total_l1 = 0.0 | |
| enc_l1 = 0.0 | |
| for name, param in model.named_parameters(): | |
| grad = param.grad | |
| if grad is None: | |
| continue | |
| val = grad.detach().abs().sum().item() | |
| total_l1 += val | |
| # Support both DDP ('module.') and non-DDP naming | |
| if name.startswith('module.encoder.encoder'): | |
| enc_l1 += val | |
| if total_l1 <= 0.0 or not math.isfinite(total_l1): | |
| return 0.0 | |
| return 100.0 * enc_l1 / total_l1 | |
| def train_one_epoch(self_lr_scheduler, lr_scheduler, model: torch.nn.Module, criterion: torch.nn.Module, | |
| data_loader: Iterable, optimizer: torch.optim.Optimizer, | |
| device: torch.device, epoch: int, max_norm: float = 0, **kwargs): | |
| model.train() | |
| criterion.train() | |
| metric_logger = MetricLogger(delimiter=" ") | |
| metric_logger.add_meter('lr', SmoothedValue(window_size=1, fmt='{value:.6f}')) | |
| header = 'Epoch: [{}]'.format(epoch) | |
| print_freq = kwargs.get('print_freq', 10) | |
| writer :SummaryWriter = kwargs.get('writer', None) | |
| ema :ModelEMA = kwargs.get('ema', None) | |
| scaler :GradScaler = kwargs.get('scaler', None) | |
| lr_warmup_scheduler :Warmup = kwargs.get('lr_warmup_scheduler', None) | |
| # Gradient Analysis | |
| encoder_grad_percentages = [] | |
| cur_iters = epoch * len(data_loader) | |
| teacher_model = kwargs.get('teacher_model', None) | |
| for i, (samples, targets) in enumerate(metric_logger.log_every(data_loader, print_freq, header)): | |
| samples = samples.to(device) | |
| targets = [{k: v.to(device) for k, v in t.items()} for t in targets] | |
| global_step = epoch * len(data_loader) + i | |
| metas = dict(epoch=epoch, step=i, global_step=global_step, epoch_step=len(data_loader)) | |
| teacher_encoder_output_for_distillation = None | |
| if teacher_model is not None: | |
| with torch.no_grad(): | |
| teacher_encoder_output_for_distillation = teacher_model(samples).detach() | |
| if scaler is not None: | |
| with torch.autocast(device_type=str(device), cache_enabled=True): | |
| outputs = model(samples, targets=targets, | |
| teacher_encoder_output=teacher_encoder_output_for_distillation) | |
| if torch.isnan(outputs['pred_boxes']).any() or torch.isinf(outputs['pred_boxes']).any(): | |
| print(outputs['pred_boxes']) | |
| state = model.state_dict() | |
| new_state = {} | |
| for key, value in model.state_dict().items(): | |
| new_key = key.replace('module.', '') | |
| state[new_key] = value | |
| new_state['model'] = state | |
| dist_utils.save_on_master(new_state, "./NaN.pth") | |
| with torch.autocast(device_type=str(device), enabled=False): | |
| loss_dict = criterion(outputs, targets, **metas) | |
| loss = sum(loss_dict.values()) | |
| scaler.scale(loss).backward() | |
| if max_norm > 0: | |
| scaler.unscale_(optimizer) | |
| torch.nn.utils.clip_grad_norm_(model.parameters(), max_norm) | |
| # Collect gradient | |
| if dist_utils.is_main_process() and hasattr(criterion, 'distill_adaptive_params') and \ | |
| getattr(criterion, 'distill_adaptive_params') and \ | |
| criterion.distill_adaptive_params.get('enabled', False): | |
| pct = _compute_encoder_transformer_grad_percentage(model) | |
| encoder_grad_percentages.append(pct) | |
| scaler.step(optimizer) | |
| scaler.update() | |
| optimizer.zero_grad() | |
| else: | |
| outputs = model(samples, targets=targets, | |
| teacher_encoder_output=teacher_encoder_output_for_distillation) # NEW kwarg | |
| loss_dict = criterion(outputs, targets, **metas) | |
| loss : torch.Tensor = sum(loss_dict.values()) | |
| optimizer.zero_grad() | |
| loss.backward() | |
| # Collect gradient | |
| if dist_utils.is_main_process() and hasattr(criterion, 'distill_adaptive_params') and \ | |
| getattr(criterion, 'distill_adaptive_params') and \ | |
| criterion.distill_adaptive_params.get('enabled', False): | |
| pct = _compute_encoder_transformer_grad_percentage(model) | |
| encoder_grad_percentages.append(pct) | |
| if max_norm > 0: | |
| torch.nn.utils.clip_grad_norm_(model.parameters(), max_norm) | |
| optimizer.step() | |
| # ema | |
| if ema is not None: | |
| ema.update(model) | |
| if self_lr_scheduler: | |
| optimizer = lr_scheduler.step(cur_iters + i, optimizer) | |
| else: | |
| if lr_warmup_scheduler is not None: | |
| lr_warmup_scheduler.step() | |
| loss_dict_reduced = dist_utils.reduce_dict(loss_dict) | |
| loss_value = sum(loss_dict_reduced.values()) | |
| if not math.isfinite(loss_value): | |
| print("Loss is {}, stopping training".format(loss_value)) | |
| print(loss_dict_reduced) | |
| sys.exit(1) | |
| metric_logger.update(loss=loss_value, **loss_dict_reduced) | |
| metric_logger.update(lr=optimizer.param_groups[0]["lr"]) | |
| if writer and dist_utils.is_main_process() and global_step % 10 == 0: | |
| writer.add_scalar('Loss/total', loss_value.item(), global_step) | |
| for j, pg in enumerate(optimizer.param_groups): | |
| writer.add_scalar(f'Lr/pg_{j}', pg['lr'], global_step) | |
| for k, v in loss_dict_reduced.items(): | |
| writer.add_scalar(f'Loss/{k}', v.item(), global_step) | |
| # gather the stats from all processes | |
| metric_logger.synchronize_between_processes() | |
| return {k: meter.global_avg for k, meter in metric_logger.meters.items()}, encoder_grad_percentages | |
| def evaluate(model: torch.nn.Module, criterion: torch.nn.Module, postprocessor, data_loader, coco_evaluator: CocoEvaluator, device): | |
| model.eval() | |
| criterion.eval() | |
| coco_evaluator.cleanup() | |
| metric_logger = MetricLogger(delimiter=" ") | |
| # metric_logger.add_meter('class_error', SmoothedValue(window_size=1, fmt='{value:.2f}')) | |
| header = 'Test:' | |
| # iou_types = tuple(k for k in ('segm', 'bbox') if k in postprocessor.keys()) | |
| iou_types = coco_evaluator.iou_types | |
| # coco_evaluator = CocoEvaluator(base_ds, iou_types) | |
| # coco_evaluator.coco_eval[iou_types[0]].params.iouThrs = [0, 0.1, 0.5, 0.75] | |
| for samples, targets in metric_logger.log_every(data_loader, 10, header): | |
| samples = samples.to(device) | |
| targets = [{k: v.to(device) for k, v in t.items()} for t in targets] | |
| outputs = model(samples) | |
| orig_target_sizes = torch.stack([t["orig_size"] for t in targets], dim=0) | |
| results = postprocessor(outputs, orig_target_sizes) | |
| # if 'segm' in postprocessor.keys(): | |
| # target_sizes = torch.stack([t["size"] for t in targets], dim=0) | |
| # results = postprocessor['segm'](results, outputs, orig_target_sizes, target_sizes) | |
| res = {target['image_id'].item(): output for target, output in zip(targets, results)} | |
| if coco_evaluator is not None: | |
| coco_evaluator.update(res) | |
| # gather the stats from all processes | |
| metric_logger.synchronize_between_processes() | |
| print("Averaged stats:", metric_logger) | |
| if coco_evaluator is not None: | |
| coco_evaluator.synchronize_between_processes() | |
| # accumulate predictions from all images | |
| if coco_evaluator is not None: | |
| coco_evaluator.accumulate() | |
| coco_evaluator.summarize() | |
| stats = {} | |
| # stats = {k: meter.global_avg for k, meter in metric_logger.meters.items()} | |
| if coco_evaluator is not None: | |
| if 'bbox' in iou_types: | |
| stats['coco_eval_bbox'] = coco_evaluator.coco_eval['bbox'].stats.tolist() | |
| if 'segm' in iou_types: | |
| stats['coco_eval_masks'] = coco_evaluator.coco_eval['segm'].stats.tolist() | |
| return stats, coco_evaluator | |