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				https://github.com/immich-app/immich.git
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	* added testing * github action for python, made mypy happy * formatted with black * minor fixes and styling * test model cache * cache test dependencies * narrowed model cache tests * moved endpoint tests to their own class * cleaned up fixtures * formatting * removed unused dep
		
			
				
	
	
		
			184 lines
		
	
	
		
			7.2 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
			
		
		
	
	
			184 lines
		
	
	
		
			7.2 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
| from io import BytesIO
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| from pathlib import Path
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| from unittest import mock
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| 
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| import cv2
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| import pytest
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| from fastapi.testclient import TestClient
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| from PIL import Image
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| 
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| from .config import settings
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| from .models.cache import ModelCache
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| from .models.clip import CLIPSTEncoder
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| from .models.facial_recognition import FaceRecognizer
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| from .models.image_classification import ImageClassifier
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| from .schemas import ModelType
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| 
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| 
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| class TestImageClassifier:
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|     def test_init(self, mock_classifier_pipeline: mock.Mock) -> None:
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|         cache_dir = Path("test_cache")
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|         classifier = ImageClassifier("test_model_name", 0.5, cache_dir=cache_dir)
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| 
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|         assert classifier.min_score == 0.5
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|         mock_classifier_pipeline.assert_called_once_with(
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|             "image-classification",
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|             "test_model_name",
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|             model_kwargs={"cache_dir": cache_dir},
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|         )
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| 
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|     def test_min_score(self, pil_image: Image.Image, mock_classifier_pipeline: mock.Mock) -> None:
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|         classifier = ImageClassifier("test_model_name", min_score=0.0)
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|         classifier.min_score = 0.0
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|         all_labels = classifier.predict(pil_image)
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|         classifier.min_score = 0.5
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|         filtered_labels = classifier.predict(pil_image)
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| 
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|         assert all_labels == [
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|             "that's an image alright",
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|             "well it ends with .jpg",
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|             "idk",
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|             "im just seeing bytes",
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|             "not sure",
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|             "probably a virus",
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|         ]
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|         assert filtered_labels == ["that's an image alright"]
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| 
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| 
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| class TestCLIP:
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|     def test_init(self, mock_st: mock.Mock) -> None:
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|         CLIPSTEncoder("test_model_name", cache_dir="test_cache")
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| 
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|         mock_st.assert_called_once_with("test_model_name", cache_folder="test_cache")
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| 
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|     def test_basic_image(self, pil_image: Image.Image, mock_st: mock.Mock) -> None:
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|         clip_encoder = CLIPSTEncoder("test_model_name", cache_dir="test_cache")
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|         embedding = clip_encoder.predict(pil_image)
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| 
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|         assert isinstance(embedding, list)
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|         assert len(embedding) == 512
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|         assert all([isinstance(num, float) for num in embedding])
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|         mock_st.assert_called_once()
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| 
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|     def test_basic_text(self, mock_st: mock.Mock) -> None:
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|         clip_encoder = CLIPSTEncoder("test_model_name", cache_dir="test_cache")
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|         embedding = clip_encoder.predict("test search query")
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| 
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|         assert isinstance(embedding, list)
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|         assert len(embedding) == 512
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|         assert all([isinstance(num, float) for num in embedding])
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|         mock_st.assert_called_once()
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| 
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| 
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| class TestFaceRecognition:
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|     def test_init(self, mock_faceanalysis: mock.Mock) -> None:
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|         FaceRecognizer("test_model_name", cache_dir="test_cache")
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| 
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|         mock_faceanalysis.assert_called_once_with(
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|             name="test_model_name",
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|             root="test_cache",
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|             allowed_modules=["detection", "recognition"],
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|         )
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| 
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|     def test_basic(self, cv_image: cv2.Mat, mock_faceanalysis: mock.Mock) -> None:
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|         face_recognizer = FaceRecognizer("test_model_name", min_score=0.0, cache_dir="test_cache")
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|         faces = face_recognizer.predict(cv_image)
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| 
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|         assert len(faces) == 2
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|         for face in faces:
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|             assert face["imageHeight"] == 800
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|             assert face["imageWidth"] == 600
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|             assert isinstance(face["embedding"], list)
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|             assert len(face["embedding"]) == 512
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|             assert all([isinstance(num, float) for num in face["embedding"]])
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| 
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|         mock_faceanalysis.assert_called_once()
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| 
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| 
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| @pytest.mark.asyncio
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| class TestCache:
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|     async def test_caches(self, mock_get_model: mock.Mock) -> None:
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|         model_cache = ModelCache()
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|         await model_cache.get("test_model_name", ModelType.IMAGE_CLASSIFICATION)
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|         await model_cache.get("test_model_name", ModelType.IMAGE_CLASSIFICATION)
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|         assert len(model_cache.cache._cache) == 1
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|         mock_get_model.assert_called_once()
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| 
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|     async def test_kwargs_used(self, mock_get_model: mock.Mock) -> None:
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|         model_cache = ModelCache()
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|         await model_cache.get("test_model_name", ModelType.IMAGE_CLASSIFICATION, cache_dir="test_cache")
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|         mock_get_model.assert_called_once_with(
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|             ModelType.IMAGE_CLASSIFICATION, "test_model_name", cache_dir="test_cache"
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|         )
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| 
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|     async def test_different_clip(self, mock_get_model: mock.Mock) -> None:
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|         model_cache = ModelCache()
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|         await model_cache.get("test_image_model_name", ModelType.CLIP)
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|         await model_cache.get("test_text_model_name", ModelType.CLIP)
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|         mock_get_model.assert_has_calls(
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|             [
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|                 mock.call(ModelType.CLIP, "test_image_model_name"),
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|                 mock.call(ModelType.CLIP, "test_text_model_name"),
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|             ]
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|         )
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|         assert len(model_cache.cache._cache) == 2
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| 
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|     @mock.patch("app.models.cache.OptimisticLock", autospec=True)
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|     async def test_model_ttl(self, mock_lock_cls: mock.Mock, mock_get_model: mock.Mock) -> None:
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|         model_cache = ModelCache(ttl=100)
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|         await model_cache.get("test_model_name", ModelType.IMAGE_CLASSIFICATION)
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|         mock_lock_cls.return_value.__aenter__.return_value.cas.assert_called_with(mock.ANY, ttl=100)
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| 
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|     @mock.patch("app.models.cache.SimpleMemoryCache.expire")
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|     async def test_revalidate(self, mock_cache_expire: mock.Mock, mock_get_model: mock.Mock) -> None:
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|         model_cache = ModelCache(ttl=100, revalidate=True)
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|         await model_cache.get("test_model_name", ModelType.IMAGE_CLASSIFICATION)
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|         await model_cache.get("test_model_name", ModelType.IMAGE_CLASSIFICATION)
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|         mock_cache_expire.assert_called_once_with(mock.ANY, 100)
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| 
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| 
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| @pytest.mark.skipif(
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|     not settings.test_full,
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|     reason="More time-consuming since it deploys the app and loads models.",
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| )
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| class TestEndpoints:
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|     def test_tagging_endpoint(self, pil_image: Image.Image, deployed_app: TestClient) -> None:
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|         byte_image = BytesIO()
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|         pil_image.save(byte_image, format="jpeg")
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|         headers = {"Content-Type": "image/jpg"}
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|         response = deployed_app.post(
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|             "http://localhost:3003/image-classifier/tag-image",
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|             content=byte_image.getvalue(),
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|             headers=headers,
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|         )
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|         assert response.status_code == 200
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| 
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|     def test_clip_image_endpoint(self, pil_image: Image.Image, deployed_app: TestClient) -> None:
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|         byte_image = BytesIO()
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|         pil_image.save(byte_image, format="jpeg")
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|         headers = {"Content-Type": "image/jpg"}
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|         response = deployed_app.post(
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|             "http://localhost:3003/sentence-transformer/encode-image",
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|             content=byte_image.getvalue(),
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|             headers=headers,
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|         )
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|         assert response.status_code == 200
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| 
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|     def test_clip_text_endpoint(self, deployed_app: TestClient) -> None:
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|         response = deployed_app.post(
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|             "http://localhost:3003/sentence-transformer/encode-text",
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|             json={"text": "test search query"},
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|         )
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|         assert response.status_code == 200
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| 
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|     def test_face_endpoint(self, pil_image: Image.Image, deployed_app: TestClient) -> None:
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|         byte_image = BytesIO()
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|         pil_image.save(byte_image, format="jpeg")
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|         headers = {"Content-Type": "image/jpg"}
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|         response = deployed_app.post(
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|             "http://localhost:3003/facial-recognition/detect-faces",
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|             content=byte_image.getvalue(),
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|             headers=headers,
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|         )
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|         assert response.status_code == 200
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