# SPDX-FileCopyrightText: Copyright (c) 2025-2026 NVIDIA CORPORATION & AFFILIATES. All rights reserved. # SPDX-License-Identifier: Apache-2.0 import os from io import BytesIO import pytest from pytest_httpserver import HTTPServer from dynamo.common.utils.paths import WORKSPACE_DIR from tests.serve.lora_utils import MinioLoraConfig, MinioService from tests.utils.port_utils import allocate_port, deallocate_port # Shared constants for multimodal testing IMAGE_SERVER_PORT = allocate_port(8765) MULTIMODAL_IMG_PATH = os.path.join( WORKSPACE_DIR, "lib/llm/tests/data/media/llm-optimize-deploy-graphic.png" ) MULTIMODAL_IMG_URL = f"http://localhost:{IMAGE_SERVER_PORT}/llm-graphic.png" # Git LFS pointer files start with "version "; serve a real PNG when the asset is not pulled. def get_multimodal_test_image_bytes() -> bytes: """Return valid PNG bytes for /llm-graphic.png (file or minimal fallback).""" if os.path.isfile(MULTIMODAL_IMG_PATH): with open(MULTIMODAL_IMG_PATH, "rb") as f: data = f.read() if not data.startswith(b"version "): # GitHub path return data # Local path where we cannot retrieve the above .png file # Lazy import so conftest loads in environments that don't have Pillow (e.g. pre-commit). from PIL import Image buf = BytesIO() # TODO: differerent models / tests may expect different colors. Need to reconcicle # code to support all cases locally if needed. Image.new("RGB", (2, 2), color="green").save(buf, format="PNG") return buf.getvalue() @pytest.fixture(scope="session") def httpserver_listen_address(): yield ("127.0.0.1", IMAGE_SERVER_PORT) deallocate_port(IMAGE_SERVER_PORT) @pytest.fixture(scope="function") def image_server(httpserver: HTTPServer): """ Provide an HTTP server that serves test images for multimodal inference. This function-scoped fixture configures pytest-httpserver to serve the LLM optimization diagram image. It's designed for testing multimodal inference capabilities where models need to fetch images via HTTP. Currently serves: - /llm-graphic.png - LLM diagram image for multimodal tests (or a minimal PNG if the file is a Git LFS pointer / not pulled) Usage: def test_multimodal(image_server): # Use MULTIMODAL_IMG_URL from this module # ... use url in your test payload """ image_data = get_multimodal_test_image_bytes() # Configure server endpoint httpserver.expect_request("/llm-graphic.png").respond_with_data( image_data, content_type="image/png", ) return httpserver @pytest.fixture(scope="function") def minio_lora_service(): """ Provide a MinIO service with a pre-uploaded LoRA adapter for testing. This fixture: 1. Connects to existing MinIO or starts a Docker container 2. Creates the required S3 bucket 3. Downloads the LoRA adapter from Hugging Face Hub 4. Uploads it to MinIO 5. Yields the MinioLoraConfig with connection details 6. Cleans up after the test (only stops container if we started it) Usage: def test_lora(minio_lora_service): config = minio_lora_service # Use config.get_env_vars() for environment setup # Use config.get_s3_uri() to get the S3 URI for loading LoRA """ config = MinioLoraConfig() service = MinioService(config) try: # Start or connect to MinIO service.start() # Create bucket and upload LoRA service.create_bucket() local_path = service.download_lora() service.upload_lora(local_path) # Clean up downloaded files (keep MinIO data intact) service.cleanup_download() yield config finally: # Stop MinIO only if we started it, clean up temp dirs service.stop() service.cleanup_temp()