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using SiaNet; using SiaNet.Common; using SiaNet.Model; using SiaNet.Model.Layers; using SiaNet.Model.Optimizers;
GlobalParameters.Device = CNTK.DeviceDescriptor.CPUDevice;
Logging.OnWriteLog += Logging_OnWriteLog;
Sequential model = new Sequential();
model.OnEpochEnd += Model_OnEpochEnd;
XYFrame trainData = new XYFrame(); /* //One approach of building dataset trainData.Add(new List<float>() { 0, 0 }, 0); trainData.Add(new List<float>() { 0, 1 }, 1); trainData.Add(new List<float>() { 1, 0 }, 1); trainData.Add(new List<float>() { 1, 1 }, 0); trainData.YFrame.OneHotEncode(); */ //Second approach trainData.XFrame.Add(0, 0); trainData.YFrame.Add(0); trainData.XFrame.Add(0, 1); trainData.YFrame.Add(1); trainData.XFrame.Add(1, 0); trainData.YFrame.Add(1); trainData.XFrame.Add(1, 1); trainData.YFrame.Add(0); trainData.YFrame.OneHotEncode();
model = new Sequential(); model.Add(new Dense(dim: 2, shape: 2, act: OptActivations.ReLU)); model.Add(new Dense(dim: 2));
model.Compile(OptOptimizers.SGD, OptLosses.CrossEntropy, OptMetrics.Accuracy); model.Train(trainData, 100, 2);
private static void Model_OnEpochEnd(int epoch, uint samplesSeen, double loss, Dictionary<string, double> metrics) { Console.WriteLine(string.Format("Epoch: {0}, Loss: {1}, Acc: {2}", epoch, loss, metrics.First().Value)); }