def eval_epoch( epoch: int, model: BaseModel, dataset, device, tracker: BaseTracker, checkpoint: ModelCheckpoint, visualizer: Visualizer, early_break: bool, ): model.eval() tracker.reset("val") visualizer.reset(epoch, "val") loader = dataset.val_dataloader() with Ctq(loader) as tq_val_loader: for data in tq_val_loader: data = data.to(device) with torch.no_grad(): model.set_input(data) model.forward() tracker.track(model) tq_val_loader.set_postfix(**tracker.get_metrics(), color=COLORS.VAL_COLOR) if visualizer.is_active: visualizer.save_visuals(model.get_current_visuals()) if early_break: break metrics = tracker.publish(epoch) tracker.print_summary() checkpoint.save_best_models_under_current_metrics(model, metrics)
def eval_epoch(model: BaseModel, dataset, device, tracker: BaseTracker, checkpoint: ModelCheckpoint): tracker.reset("val") loader = dataset.val_dataloader with Ctq(loader) as tq_val_loader: for data in tq_val_loader: with torch.no_grad(): model.set_input(data, device) model.forward() tracker.track(model) tq_val_loader.set_postfix(**tracker.get_metrics(), color=COLORS.VAL_COLOR) tracker.print_summary()
def test_epoch(model: BaseModel, dataset, device, tracker: BaseTracker, checkpoint: ModelCheckpoint): tracker.reset("test") loader = dataset.test_dataloader() with Ctq(loader) as tq_test_loader: for data in tq_test_loader: data = data.to(device) with torch.no_grad(): model.set_input(data) model.forward() tracker.track(model) tq_test_loader.set_postfix(**tracker.get_metrics(), color=COLORS.TEST_COLOR) tracker.print_summary()
def run(model: BaseModel, dataset: BaseDataset, device, output_path, cfg): # Set dataloaders num_fragment = dataset.num_fragment if cfg.data.is_patch: for i in range(num_fragment): dataset.set_patches(i) dataset.create_dataloaders( model, cfg.batch_size, False, cfg.num_workers, False, ) loader = dataset.test_dataloaders()[0] features = [] scene_name, pc_name = dataset.get_name(i) with Ctq(loader) as tq_test_loader: for data in tq_test_loader: # pcd = open3d.geometry.PointCloud() # pcd.points = open3d.utility.Vector3dVector(data.pos[0].numpy()) # open3d.visualization.draw_geometries([pcd]) with torch.no_grad(): model.set_input(data, device) model.forward() features.append(model.get_output().cpu()) features = torch.cat(features, 0).numpy() log.info("save {} from {} in {}".format(pc_name, scene_name, output_path)) save(output_path, scene_name, pc_name, dataset.base_dataset[i].to("cpu"), features) else: dataset.create_dataloaders( model, 1, False, cfg.num_workers, False, ) loader = dataset.test_dataloaders()[0] with Ctq(loader) as tq_test_loader: for i, data in enumerate(tq_test_loader): with torch.no_grad(): model.set_input(data, device) model.forward() features = model.get_output()[0] # batch of 1 save(output_path, scene_name, pc_name, data.to("cpu"), features)
def run(model: BaseModel, dataset: BaseDataset, device, output_path): loaders = dataset.test_dataloaders predicted = {} for loader in loaders: loader.dataset.name with Ctq(loader) as tq_test_loader: for data in tq_test_loader: with torch.no_grad(): model.set_input(data, device) model.forward() predicted = { **predicted, **dataset.predict_original_samples(data, model.conv_type, model.get_output()) } save(output_path, predicted)
def test_epoch(model: BaseModel, dataset, device, tracker: BaseTracker, checkpoint: ModelCheckpoint): loaders = dataset.test_dataloaders for loader in loaders: stage_name = loader.dataset.name tracker.reset(stage_name) with Ctq(loader) as tq_test_loader: for data in tq_test_loader: with torch.no_grad(): model.set_input(data, device) model.forward() tracker.track(model) tq_test_loader.set_postfix(**tracker.get_metrics(), color=COLORS.TEST_COLOR) tracker.print_summary()
def run(model: BaseModel, dataset: BaseDataset, device, output_path): loaders = dataset.test_dataloaders() predicted = {} for idx, loader in enumerate(loaders): dataset.get_test_dataset_name(idx) with Ctq(loader) as tq_test_loader: for data in tq_test_loader: data = data.to(device) with torch.no_grad(): model.set_input(data) model.forward() predicted = { **predicted, **dataset.predict_original_samples(data, model.conv_type, model.get_output()) } save(output_path, predicted)
def eval_epoch(model: BaseModel, dataset, device, tracker: BaseTracker, checkpoint: ModelCheckpoint, log): model.eval() tracker.reset("val") loader = dataset.val_dataloader() with Ctq(loader) as tq_val_loader: for data in tq_val_loader: data = data.to(device) with torch.no_grad(): model.set_input(data) model.forward() tracker.track(model) tq_val_loader.set_postfix(**tracker.get_metrics(), color=COLORS.VAL_COLOR) metrics = tracker.publish() tracker.print_summary() checkpoint.save_best_models_under_current_metrics(model, metrics)
def test_epoch( epoch: int, model: BaseModel, dataset, device, tracker: BaseTracker, checkpoint: ModelCheckpoint, visualizer: Visualizer, early_break: bool, ): model.eval() loaders = dataset.test_dataloaders() for idx, loader in enumerate(loaders): stage_name = dataset.get_test_dataset_name(idx) tracker.reset(stage_name) visualizer.reset(epoch, stage_name) with Ctq(loader) as tq_test_loader: for data in tq_test_loader: data = data.to(device) with torch.no_grad(): model.set_input(data) model.forward() tracker.track(model) tq_test_loader.set_postfix(**tracker.get_metrics(), color=COLORS.TEST_COLOR) if visualizer.is_active: visualizer.save_visuals(model.get_current_visuals()) if early_break: break metrics = tracker.publish(epoch) tracker.print_summary() checkpoint.save_best_models_under_current_metrics(model, metrics)