--- trainer: class_path: eva.Trainer init_args: n_runs: &N_RUNS ${oc.env:N_RUNS, 5} default_root_dir: &OUTPUT_ROOT ${oc.env:OUTPUT_ROOT, logs/${oc.env:MODEL_NAME, vitg14_reg}/offline/gleason_arvaniti} max_steps: &MAX_STEPS ${oc.env:MAX_STEPS, 12500} checkpoint_type: ${oc.env:CHECKPOINT_TYPE, best} devices: ${oc.env:NUM_DEVICES, 1} callbacks: - class_path: eva.callbacks.ConfigurationLogger - class_path: lightning.pytorch.callbacks.TQDMProgressBar init_args: refresh_rate: ${oc.env:TQDM_REFRESH_RATE, 1} - class_path: lightning.pytorch.callbacks.LearningRateMonitor init_args: logging_interval: epoch - class_path: lightning.pytorch.callbacks.ModelCheckpoint init_args: filename: best save_last: ${oc.env:SAVE_LAST, false} save_top_k: 1 monitor: &MONITOR_METRIC ${oc.env:MONITOR_METRIC, val/MulticlassAccuracy} mode: &MONITOR_METRIC_MODE ${oc.env:MONITOR_METRIC_MODE, max} - class_path: lightning.pytorch.callbacks.EarlyStopping init_args: min_delta: 0 patience: ${oc.env:PATIENCE, 42} monitor: *MONITOR_METRIC mode: *MONITOR_METRIC_MODE - class_path: eva.callbacks.ClassificationEmbeddingsInMemoryWriter init_args: output_dir: &DATASET_EMBEDDINGS_ROOT ${oc.env:EMBEDDINGS_ROOT, ./data/embeddings}/${oc.env:MODEL_NAME, vitg14_reg}/gleason_arvaniti dataloader_idx_map: 0: train 1: val #backbone: #class_path: eva.vision.models.ModelFromRegistry #init_args: #model_name: ${oc.env:MODEL_NAME, universal/vit_small_patch16_224_dino} #model_extra_kwargs: ${oc.env:MODEL_EXTRA_KWARGS, null} backbone: class_path: eva.core.models.wrappers.ModelFromFunction init_args: path: torch.hub.load arguments: repo_or_dir: facebookresearch/dinov2 model: dinov2_vitg14_reg pretrained: true checkpoint_path: ${oc.env:CHECKPOINT_PATH, ../checkpoints/teacher_epoch250000.pth} overwrite: true logger: - class_path: lightning.pytorch.loggers.TensorBoardLogger init_args: save_dir: *OUTPUT_ROOT name: "" model: class_path: eva.HeadModule init_args: head: class_path: torch.nn.Linear init_args: in_features: ${oc.env:IN_FEATURES, 1536} out_features: &NUM_CLASSES 4 criterion: torch.nn.CrossEntropyLoss optimizer: class_path: torch.optim.AdamW init_args: lr: ${oc.env:LR_VALUE, 0.0003} metrics: common: - class_path: eva.metrics.AverageLoss - class_path: eva.metrics.MulticlassClassificationMetrics init_args: num_classes: *NUM_CLASSES data: class_path: eva.DataModule init_args: datasets: train: class_path: eva.datasets.InMemoryEmbeddingsClassificationDataset init_args: &DATASET_ARGS root: *DATASET_EMBEDDINGS_ROOT manifest_file: manifest.csv split: train val: class_path: eva.datasets.InMemoryEmbeddingsClassificationDataset init_args: <<: *DATASET_ARGS split: val predict: - class_path: eva.vision.datasets.GleasonArvaniti init_args: &PREDICT_DATASET_ARGS root: ${oc.env:DATA_ROOT, /block/eva-data/arvaniti_gleason_patches} split: train transforms: class_path: eva.vision.data.transforms.common.ResizeAndCrop init_args: size: ${oc.env:RESIZE_DIM, 224} mean: ${oc.env:NORMALIZE_MEAN, [0.485, 0.456, 0.406]} std: ${oc.env:NORMALIZE_STD, [0.229, 0.224, 0.225]} - class_path: eva.vision.datasets.GleasonArvaniti init_args: <<: *PREDICT_DATASET_ARGS split: val dataloaders: train: batch_size: &BATCH_SIZE ${oc.env:BATCH_SIZE, 256} num_workers: &N_DATA_WORKERS ${oc.env:N_DATA_WORKERS, 4} shuffle: true val: batch_size: *BATCH_SIZE num_workers: *N_DATA_WORKERS predict: batch_size: &PREDICT_BATCH_SIZE ${oc.env:PREDICT_BATCH_SIZE, 64} num_workers: *N_DATA_WORKERS