Windows.ai.machinelearning 〈2024〉
// 4. Bind & evaluate var session = new LearningModelSession(model); var binding = new LearningModelBinding(session); binding.Bind("data", tensor);
// Prepare input tensor (example: image 224x224 RGB) var inputData = new float[1 * 3 * 224 * 224]; // fill with your image data var inputTensor = TensorFloat.CreateFromArray(new long[] 1, 3, 224, 224 , inputData); binding.Bind("input", inputTensor); windows.ai.machinelearning
// Run inference var results = await session.EvaluateAsync(binding, "runId"); Convert to float tensor (channel-first
using Microsoft.ML.OnnxRuntime; using Microsoft.AI.MachineLearning; // Load model var file = await StorageFile.GetFileFromApplicationUriAsync( new Uri("ms-appx:///Assets/model.onnx")); var model = await LearningModel.LoadFromStorageFileAsync(file); // Create session var session = new LearningModelSession(model, new LearningModelDevice(LearningModelDeviceKind.Default)); // Create binding var binding = new LearningModelBinding(session); normalized) var tensor = ImageHelper.BitmapToTensor(resized)
// 1. Preprocess: resize to model input size (224x224) var resized = await ImageHelper.ResizeBitmap(bitmap, 224, 224); // 2. Convert to float tensor (channel-first, normalized) var tensor = ImageHelper.BitmapToTensor(resized);