Global: model: PP-YOLOE-R-L mode: check_dataset # check_dataset/train/evaluate/predict dataset_dir: "dataset/rdet_dota_examples" device: gpu:0,1,2,3 output: "output" CheckDataset: convert: enable: False src_dataset_type: null split: enable: False train_percent: null val_percent: null Train: num_classes: 15 epochs_iters: 10 batch_size: 1 learning_rate: 0.128 pretrain_weight_path: https://paddledet.bj.bcebos.com/models/pretrained/CSPResNetb_l_pretrained.pdparams warmup_steps: 100 resume_path: null log_interval: 10 eval_interval: 5 Evaluate: weight_path: "output/best_model/best_model.pdparams" log_interval: 10 Export: weight_path: https://paddledet.bj.bcebos.com/models/ppyoloe_r_crn_l_3x_dota.pdparams Predict: batch_size: 1 model_dir: "output/best_model/inference" input: "https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/rotated_object_detection_001.png" kernel_option: run_mode: paddle