# Ultralytics YOLO 🚀, AGPL-3.0 license import subprocess import pytest from PIL import Image from tests import CUDA_DEVICE_COUNT, CUDA_IS_AVAILABLE from ultralytics.cfg import TASK2DATA, TASK2MODEL, TASKS from ultralytics.utils import ASSETS, WEIGHTS_DIR, checks from ultralytics.utils.torch_utils import TORCH_1_9 # Constants TASK_MODEL_DATA = [(task, WEIGHTS_DIR / TASK2MODEL[task], TASK2DATA[task]) for task in TASKS] MODELS = [WEIGHTS_DIR / TASK2MODEL[task] for task in TASKS] def run(cmd): """Execute a shell command using subprocess.""" subprocess.run(cmd.split(), check=True) def test_special_modes(): """Test various special command-line modes for YOLO functionality.""" run("yolo help") run("yolo checks") run("yolo version") run("yolo settings reset") run("yolo cfg") @pytest.mark.parametrize("task,model,data", TASK_MODEL_DATA) def test_train(task, model, data): """Test YOLO training for different tasks, models, and datasets.""" run(f"yolo train {task} model={model} data={data} imgsz=32 epochs=1 cache=disk") @pytest.mark.parametrize("task,model,data", TASK_MODEL_DATA) def test_val(task, model, data): """Test YOLO validation process for specified task, model, and data using a shell command.""" run(f"yolo val {task} model={model} data={data} imgsz=32 save_txt save_json") @pytest.mark.parametrize("task,model,data", TASK_MODEL_DATA) def test_predict(task, model, data): """Test YOLO prediction on provided sample assets for specified task and model.""" run(f"yolo predict model={model} source={ASSETS} imgsz=32 save save_crop save_txt") @pytest.mark.parametrize("model", MODELS) def test_export(model): """Test exporting a YOLO model to TorchScript format.""" run(f"yolo export model={model} format=torchscript imgsz=32") def test_rtdetr(task="detect", model="yolov8n-rtdetr.yaml", data="coco8.yaml"): """Test the RTDETR functionality within Ultralytics for detection tasks using specified model and data.""" # Warning: must use imgsz=640 (note also add coma, spaces, fraction=0.25 args to test single-image training) run(f"yolo train {task} model={model} data={data} --imgsz= 160 epochs =1, cache = disk fraction=0.25") run(f"yolo predict {task} model={model} source={ASSETS / 'bus.jpg'} imgsz=160 save save_crop save_txt") if TORCH_1_9: run(f"yolo predict {task} model='rtdetr-l.pt' source={ASSETS / 'bus.jpg'} imgsz=160 save save_crop save_txt") @pytest.mark.skipif(checks.IS_PYTHON_3_12, reason="MobileSAM with CLIP is not supported in Python 3.12") def test_fastsam(task="segment", model=WEIGHTS_DIR / "FastSAM-s.pt", data="coco8-seg.yaml"): """Test FastSAM model for segmenting objects in images using various prompts within Ultralytics.""" source = ASSETS / "bus.jpg" run(f"yolo segment val {task} model={model} data={data} imgsz=32") run(f"yolo segment predict model={model} source={source} imgsz=32 save save_crop save_txt") from ultralytics import FastSAM from ultralytics.models.sam import Predictor # Create a FastSAM model sam_model = FastSAM(model) # or FastSAM-x.pt # Run inference on an image for s in (source, Image.open(source)): everything_results = sam_model(s, device="cpu", retina_masks=True, imgsz=320, conf=0.4, iou=0.9) # Remove small regions new_masks, _ = Predictor.remove_small_regions(everything_results[0].masks.data, min_area=20) # Run inference with bboxes and points and texts prompt at the same time sam_model(source, bboxes=[439, 437, 524, 709], points=[[200, 200]], labels=[1], texts="a photo of a dog") def test_mobilesam(): """Test MobileSAM segmentation with point prompts using Ultralytics.""" from ultralytics import SAM # Load the model model = SAM(WEIGHTS_DIR / "mobile_sam.pt") # Source source = ASSETS / "zidane.jpg" # Predict a segment based on a point prompt model.predict(source, points=[900, 370], labels=[1]) # Predict a segment based on a box prompt model.predict(source, bboxes=[439, 437, 524, 709], save=True) # Predict all # model(source) # Slow Tests ----------------------------------------------------------------------------------------------------------- @pytest.mark.slow @pytest.mark.parametrize("task,model,data", TASK_MODEL_DATA) @pytest.mark.skipif(not CUDA_IS_AVAILABLE, reason="CUDA is not available") @pytest.mark.skipif(CUDA_DEVICE_COUNT < 2, reason="DDP is not available") def test_train_gpu(task, model, data): """Test YOLO training on GPU(s) for various tasks and models.""" run(f"yolo train {task} model={model} data={data} imgsz=32 epochs=1 device=0") # single GPU run(f"yolo train {task} model={model} data={data} imgsz=32 epochs=1 device=0,1") # multi GPU