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# Ultralytics YOLO 🚀, AGPL-3.0 license
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import shutil
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import uuid
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from itertools import product
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from pathlib import Path
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import pytest
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from tests import MODEL, SOURCE
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from ultralytics import YOLO
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from ultralytics.cfg import TASK2DATA, TASK2MODEL, TASKS
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from ultralytics.utils import (
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IS_RASPBERRYPI,
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LINUX,
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MACOS,
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WINDOWS,
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checks,
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)
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from ultralytics.utils.torch_utils import TORCH_1_9, TORCH_1_13
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def test_export_torchscript():
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"""Test YOLO model exporting to TorchScript format for compatibility and correctness."""
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file = YOLO(MODEL).export(format="torchscript", optimize=False, imgsz=32)
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YOLO(file)(SOURCE, imgsz=32) # exported model inference
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def test_export_onnx():
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"""Test YOLO model export to ONNX format with dynamic axes."""
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file = YOLO(MODEL).export(format="onnx", dynamic=True, imgsz=32)
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YOLO(file)(SOURCE, imgsz=32) # exported model inference
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@pytest.mark.skipif(not TORCH_1_13, reason="OpenVINO requires torch>=1.13")
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def test_export_openvino():
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"""Test YOLO exports to OpenVINO format for model inference compatibility."""
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file = YOLO(MODEL).export(format="openvino", imgsz=32)
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YOLO(file)(SOURCE, imgsz=32) # exported model inference
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@pytest.mark.slow
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@pytest.mark.skipif(not TORCH_1_13, reason="OpenVINO requires torch>=1.13")
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@pytest.mark.parametrize(
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"task, dynamic, int8, half, batch",
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[ # generate all combinations but exclude those where both int8 and half are True
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(task, dynamic, int8, half, batch)
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for task, dynamic, int8, half, batch in product(TASKS, [True, False], [True, False], [True, False], [1, 2])
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if not (int8 and half) # exclude cases where both int8 and half are True
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],
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)
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def test_export_openvino_matrix(task, dynamic, int8, half, batch):
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"""Test YOLO model exports to OpenVINO under various configuration matrix conditions."""
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file = YOLO(TASK2MODEL[task]).export(
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format="openvino",
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imgsz=32,
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dynamic=dynamic,
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int8=int8,
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half=half,
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batch=batch,
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data=TASK2DATA[task],
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)
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if WINDOWS:
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# Use unique filenames due to Windows file permissions bug possibly due to latent threaded use
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# See https://github.com/ultralytics/ultralytics/actions/runs/8957949304/job/24601616830?pr=10423
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file = Path(file)
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file = file.rename(file.with_stem(f"{file.stem}-{uuid.uuid4()}"))
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YOLO(file)([SOURCE] * batch, imgsz=64 if dynamic else 32) # exported model inference
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shutil.rmtree(file, ignore_errors=True) # retry in case of potential lingering multi-threaded file usage errors
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@pytest.mark.slow
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@pytest.mark.parametrize(
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"task, dynamic, int8, half, batch, simplify", product(TASKS, [True, False], [False], [False], [1, 2], [True, False])
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)
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def test_export_onnx_matrix(task, dynamic, int8, half, batch, simplify):
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"""Test YOLO exports to ONNX format with various configurations and parameters."""
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file = YOLO(TASK2MODEL[task]).export(
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format="onnx",
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imgsz=32,
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dynamic=dynamic,
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int8=int8,
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half=half,
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batch=batch,
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simplify=simplify,
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)
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YOLO(file)([SOURCE] * batch, imgsz=64 if dynamic else 32) # exported model inference
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Path(file).unlink() # cleanup
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@pytest.mark.slow
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@pytest.mark.parametrize("task, dynamic, int8, half, batch", product(TASKS, [False], [False], [False], [1, 2]))
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def test_export_torchscript_matrix(task, dynamic, int8, half, batch):
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"""Tests YOLO model exports to TorchScript format under varied configurations."""
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file = YOLO(TASK2MODEL[task]).export(
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format="torchscript",
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imgsz=32,
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dynamic=dynamic,
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int8=int8,
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half=half,
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batch=batch,
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)
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YOLO(file)([SOURCE] * 3, imgsz=64 if dynamic else 32) # exported model inference at batch=3
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Path(file).unlink() # cleanup
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@pytest.mark.slow
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@pytest.mark.skipif(not MACOS, reason="CoreML inference only supported on macOS")
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@pytest.mark.skipif(not TORCH_1_9, reason="CoreML>=7.2 not supported with PyTorch<=1.8")
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@pytest.mark.skipif(checks.IS_PYTHON_3_12, reason="CoreML not supported in Python 3.12")
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@pytest.mark.parametrize(
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"task, dynamic, int8, half, batch",
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[ # generate all combinations but exclude those where both int8 and half are True
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(task, dynamic, int8, half, batch)
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for task, dynamic, int8, half, batch in product(TASKS, [False], [True, False], [True, False], [1])
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if not (int8 and half) # exclude cases where both int8 and half are True
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],
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)
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def test_export_coreml_matrix(task, dynamic, int8, half, batch):
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"""Test YOLO exports to CoreML format with various parameter configurations."""
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file = YOLO(TASK2MODEL[task]).export(
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format="coreml",
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imgsz=32,
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dynamic=dynamic,
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int8=int8,
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half=half,
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batch=batch,
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)
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YOLO(file)([SOURCE] * batch, imgsz=32) # exported model inference at batch=3
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shutil.rmtree(file) # cleanup
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@pytest.mark.slow
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@pytest.mark.skipif(not checks.IS_PYTHON_MINIMUM_3_10, reason="TFLite export requires Python>=3.10")
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@pytest.mark.skipif(not LINUX, reason="Test disabled as TF suffers from install conflicts on Windows and macOS")
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@pytest.mark.parametrize(
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"task, dynamic, int8, half, batch",
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[ # generate all combinations but exclude those where both int8 and half are True
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(task, dynamic, int8, half, batch)
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for task, dynamic, int8, half, batch in product(TASKS, [False], [True, False], [True, False], [1])
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if not (int8 and half) # exclude cases where both int8 and half are True
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],
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)
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def test_export_tflite_matrix(task, dynamic, int8, half, batch):
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"""Test YOLO exports to TFLite format considering various export configurations."""
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file = YOLO(TASK2MODEL[task]).export(
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format="tflite",
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imgsz=32,
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dynamic=dynamic,
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int8=int8,
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half=half,
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batch=batch,
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)
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YOLO(file)([SOURCE] * batch, imgsz=32) # exported model inference at batch=3
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Path(file).unlink() # cleanup
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@pytest.mark.skipif(not TORCH_1_9, reason="CoreML>=7.2 not supported with PyTorch<=1.8")
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@pytest.mark.skipif(WINDOWS, reason="CoreML not supported on Windows") # RuntimeError: BlobWriter not loaded
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@pytest.mark.skipif(IS_RASPBERRYPI, reason="CoreML not supported on Raspberry Pi")
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@pytest.mark.skipif(checks.IS_PYTHON_3_12, reason="CoreML not supported in Python 3.12")
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def test_export_coreml():
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"""Test YOLO exports to CoreML format, optimized for macOS only."""
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if MACOS:
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file = YOLO(MODEL).export(format="coreml", imgsz=32)
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YOLO(file)(SOURCE, imgsz=32) # model prediction only supported on macOS for nms=False models
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else:
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YOLO(MODEL).export(format="coreml", nms=True, imgsz=32)
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@pytest.mark.skipif(not checks.IS_PYTHON_MINIMUM_3_10, reason="TFLite export requires Python>=3.10")
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@pytest.mark.skipif(not LINUX, reason="Test disabled as TF suffers from install conflicts on Windows and macOS")
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def test_export_tflite():
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"""Test YOLO exports to TFLite format under specific OS and Python version conditions."""
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model = YOLO(MODEL)
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file = model.export(format="tflite", imgsz=32)
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YOLO(file)(SOURCE, imgsz=32)
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@pytest.mark.skipif(True, reason="Test disabled")
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@pytest.mark.skipif(not LINUX, reason="TF suffers from install conflicts on Windows and macOS")
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def test_export_pb():
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"""Test YOLO exports to TensorFlow's Protobuf (*.pb) format."""
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model = YOLO(MODEL)
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file = model.export(format="pb", imgsz=32)
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YOLO(file)(SOURCE, imgsz=32)
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@pytest.mark.skipif(True, reason="Test disabled as Paddle protobuf and ONNX protobuf requirements conflict.")
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def test_export_paddle():
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"""Test YOLO exports to Paddle format, noting protobuf conflicts with ONNX."""
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YOLO(MODEL).export(format="paddle", imgsz=32)
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@pytest.mark.slow
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@pytest.mark.skipif(IS_RASPBERRYPI, reason="MNN not supported on Raspberry Pi")
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def test_export_mnn():
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"""Test YOLO exports to MNN format (WARNING: MNN test must precede NCNN test or CI error on Windows)."""
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file = YOLO(MODEL).export(format="mnn", imgsz=32)
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YOLO(file)(SOURCE, imgsz=32) # exported model inference
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@pytest.mark.slow
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def test_export_ncnn():
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"""Test YOLO exports to NCNN format."""
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file = YOLO(MODEL).export(format="ncnn", imgsz=32)
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YOLO(file)(SOURCE, imgsz=32) # exported model inference
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@pytest.mark.skipif(True, reason="Test disabled as keras and tensorflow version conflicts with tflite export.")
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@pytest.mark.skipif(not LINUX or MACOS, reason="Skipping test on Windows and Macos")
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def test_export_imx():
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"""Test YOLOv8n exports to IMX format."""
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model = YOLO("yolov8n.pt")
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file = model.export(format="imx", imgsz=32)
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YOLO(file)(SOURCE, imgsz=32)
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