forked from s425077/PotatoPlan
Merge branch 'Joel-ML' of https://git.wmi.amu.edu.pl/s425077/PotatoPlan into Joel-ML
This commit is contained in:
commit
10e58f984f
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Game1/Content/ML/MLmodel_Joel_area
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Game1/Content/ML/MLmodel_Joel_area
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Game1/Content/ML/Rainfall_area.csv
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Game1/Content/ML/Rainfall_area.csv
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Game1/Content/ML/report_Joel_area
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Game1/Content/ML/report_Joel_area
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@ -0,0 +1,2 @@
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Mean Absolute Error: 187.060835104336
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R Squared: 0.913526230109177
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@ -75,7 +75,9 @@ namespace Game1
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cropTypesNames[11] = "Wheat";
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Engine.init();
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Sources.ML_Joel.Engine.initArea();
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//Sources.ML_Joel.Engine.CreateModel();
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//Sources.ML_Joel.Engine.CreateModelArea();
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@ -90,7 +90,9 @@
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<Compile Include="Sources\Crops\PerlinNoise.cs" />
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<Compile Include="Sources\Crops\SoilProperties.cs" />
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<Compile Include="Sources\ML\Engine.cs" />
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<Compile Include="Sources\ML_Joel\DataModel\InputArea.cs" />
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<Compile Include="Sources\ML_Joel\DataModel\Input.cs" />
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<Compile Include="Sources\ML_Joel\DataModel\OutputArea.cs" />
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<Compile Include="Sources\ML_Joel\DataModel\Output.cs" />
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<Compile Include="Sources\ML_Joel\Engine.cs" />
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<Compile Include="Sources\ML_Joel\Model.cs" />
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@ -11,18 +11,24 @@ using Microsoft.ML.Trainers.LightGbm;
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class MLModel
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{
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private static MLContext mlContext = new MLContext(seed: 1);
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/*
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private static string path = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/Fertilizer_Prediction.csv";
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private static string modelpath = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/MLmodel";
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private static string report = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/report";
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*/
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private static string pathBig = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/BigFertPredict.csv";
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private static string modelpathBig = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/MLmodelBig";
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private static string reportBig = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/report_BigModel";
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private static string path = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/Fertilizer_Prediction.csv";
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private static string modelpath = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/MLmodel";
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private static string report = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/report";
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private static string path = "C:/Users/Oskar/source/repos/PotatoPlanFinal/Game1/Content/ML/Fertilizer_Prediction.csv";
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private static string modelpath = "C:/Users/Oskar/source/repos/PotatoPlanFinal/Game1/Content/ML/MLmodel";
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private static string report = "C:/Users/Oskar/source/repos/PotatoPlanFinal/Game1/Content/ML/report";
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private static string pathBig = "C:/Users/Oskar/source/repos/PotatoPlanFinal/Game1/Content/ML/BigFertPredict.csv";
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private static string modelpathBig = "C:/Users/Oskar/source/repos/PotatoPlanFinal/Game1/Content/ML/MLmodelBig";
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private static string reportBig = "C:/Users/Oskar/source/repos/PotatoPlanFinal/Game1/Content/ML/report_BigModel";
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/*
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private static string pathBig = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/BigFertPredict.csv";
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private static string modelpathBig = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/MLmodelBig";
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private static string reportBig = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/report_BigModel";
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private static string path = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/Fertilizer_Prediction.csv";
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private static string modelpath = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/MLmodel";
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private static string report = "C:/Users/Joel/source/repos/Oskars Repo/Game1/Content/ML/report";
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*/
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// Loading data, creatin and saving ML model for smaller dataset (100)
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public static void CreateModel()
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Game1/Sources/ML_Joel/DataModel/InputArea.cs
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Game1/Sources/ML_Joel/DataModel/InputArea.cs
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using System;
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using System.Collections.Generic;
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using System.Linq;
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using System.Text;
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using System.Threading.Tasks;
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using Microsoft.ML.Data;
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namespace Game1.Sources.ML_Joel
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{
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class InputArea
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{
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[ColumnName("Season"), LoadColumn(0)]
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public String Season { get; set; }
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[ColumnName("Crop"), LoadColumn(1)]
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public String Crop { get; set; }
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[ColumnName("Area"), LoadColumn(2)]
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public float Area { get; set; }
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[ColumnName("Rainfall"), LoadColumn(3)]
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public float Rainfall { get; set; }
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[ColumnName("Production"), LoadColumn(4)]
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public float Production { get; set; }
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}
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}
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Game1/Sources/ML_Joel/DataModel/OutputArea.cs
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Game1/Sources/ML_Joel/DataModel/OutputArea.cs
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using System;
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using System.Collections.Generic;
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using System.Linq;
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using System.Text;
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using System.Threading.Tasks;
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using Microsoft.ML.Data;
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namespace Game1.Sources.ML_Joel
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{
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class OutputArea
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{
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//[ColumnName("PredictedLabel")]
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public float Prediction { get; set; }
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public float Score { get; set; }
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//[ColumnName("Score")]
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// public float[] Score { get; set; }
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}
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}
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@ -11,33 +11,40 @@ namespace Game1.Sources.ML_Joel
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static class Engine
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{
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private static MLContext mlContext = new MLContext(seed: 1);
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private static PredictionEngine<ModelInput, ModelOutput> PredictionEngine;
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private static PredictionEngine<Input, Output> PredictionEngine;
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private static PredictionEngine<InputArea, OutputArea> PredictionEngineArea;
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public static void CreateModel()
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{
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Model.CreateModel();
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}
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public static void init()
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public static void CreateModelArea()
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{
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PredictionEngine = MLModel.CreateEngine();
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Model.CreateModelArea();
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}
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public static string PredictFertilizer(Crops crop, CropTypes cropTypes)
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public static void init()
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{
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ModelInput modelInput = new ModelInput
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PredictionEngine = Model.CreateEngine();
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}
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public static void initArea()
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{
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PredictionEngineArea = Model.CreateEngineArea();
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}
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public static float PredictProductionwithRainfall(Crops crop, CropTypes cropTypes)
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{
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InputArea modelInput = new InputArea
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{
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Temperature = crop.getSoilProperties().Temperature,
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Humidity = crop.getSoilProperties().Humidity,
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Moisture = crop.getSoilProperties().Moisture,
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Soil_Type = crop.getSoilProperties().soilType,
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Crop_Type = cropTypes.CropName,
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Nitrogen = crop.getSoilProperties().Nitrogen,
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Potassium = crop.getSoilProperties().Potassium,
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Phosporous = crop.getSoilProperties().Phosphorous
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//Season = ,
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//Area = crop.getSoilProperties().Area,
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Rainfall = crop.getSoilProperties().Humidity,
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};
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return PredictionEngine.Predict(modelInput).Prediction;
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return PredictionEngineArea.Predict(modelInput).Score;
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}
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}
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}
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@ -22,6 +22,10 @@ namespace Game1.Sources.ML_Joel
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private static string modelpath = "C:/Users/Oskar/source/repos/PotatoPlanFinal/Game1/Content/ML/MLmodel_Joel";
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private static string report = "C:/Users/Oskar/source/repos/PotatoPlanFinal/Game1/Content/ML/report_Joel";
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private static string path_area = "C:/Users/Oskar/source/repos/PotatoPlanFinal/Game1/Content/ML/Rainfall_area.csv";
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private static string modelpath_area = "C:/Users/Oskar/source/repos/PotatoPlanFinal/Game1/Content/ML/MLmodel_Joel_area";
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private static string report_area = "C:/Users/Oskar/source/repos/PotatoPlanFinal/Game1/Content/ML/report_Joel_area";
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// Loading data, creatin and saving ML model for smaller dataset (100)
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public static void CreateModel()
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{
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@ -75,6 +79,57 @@ namespace Game1.Sources.ML_Joel
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return MLModel;
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}
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public static void CreateModelArea()
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{
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IDataView trainingDataView = mlContext.Data.LoadFromTextFile<InputArea>(
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path: path_area,
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hasHeader: true,
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separatorChar: ',',
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allowQuoting: true,
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allowSparse: false);
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var splitData = mlContext.Data.TrainTestSplit(trainingDataView, testFraction: 0.2);
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trainingDataView = splitData.TrainSet;
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IDataView testDataView = splitData.TestSet;
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ITransformer MLModel = BuildAndTrainArea(mlContext, trainingDataView, testDataView, report_area);
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SaveModel(mlContext, MLModel, modelpath_area, trainingDataView.Schema);
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}
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// Building and training ML model
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public static ITransformer BuildAndTrainArea(MLContext mLContext, IDataView trainingDataView, IDataView testDataView, string reportPath)
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{
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var options = new LightGbmRegressionTrainer.Options
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{
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MaximumBinCountPerFeature = 40,
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LearningRate = 0.00020,
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NumberOfIterations = 20000,
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NumberOfLeaves = 55,
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LabelColumnName = "Production",
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FeatureColumnName = "Features",
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Booster = new DartBooster.Options()
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{
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MaximumTreeDepth = 10
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}
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};
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var pipeline = mlContext.Transforms
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.Text.FeaturizeText("SeasonF", "Season")
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.Append(mlContext.Transforms.Text.FeaturizeText("CropF", "Crop"))
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.Append(mlContext.Transforms.Concatenate("Features", "SeasonF", "CropF", "Area", "Rainfall"))
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.AppendCacheCheckpoint(mLContext)
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.Append(mLContext.Regression.Trainers.LightGbm(options));
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ITransformer MLModel = pipeline.Fit(trainingDataView);
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var testEval = MLModel.Transform(testDataView);
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Evaluate(mlContext, testEval, pipeline, 10, reportPath, "Production");
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return MLModel;
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}
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public static ITransformer TrainModel(MLContext mlContext, IDataView trainingDataView, IEstimator<ITransformer> trainingPipeline)
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{
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ITransformer model = trainingPipeline.Fit(trainingDataView);
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@ -98,16 +153,27 @@ namespace Game1.Sources.ML_Joel
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mlContext.Model.Save(Model, modelInputSchema, modelPath);
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}
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public static ITransformer LoadModel(bool isBig)
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public static ITransformer LoadModel()
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{
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return mlContext.Model.Load(modelpath, out DataViewSchema inputSchema);
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}
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public static Microsoft.ML.PredictionEngine<Input, Output> CreateEngine()
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{
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ITransformer mlModel = LoadModel(false);
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ITransformer mlModel = LoadModel();
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return mlContext.Model.CreatePredictionEngine<Input, Output>(mlModel);
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}
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public static ITransformer LoadModelArea()
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{
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return mlContext.Model.Load(modelpath_area, out DataViewSchema inputSchema);
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}
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public static Microsoft.ML.PredictionEngine<InputArea, OutputArea> CreateEngineArea()
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{
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ITransformer mlModel = LoadModelArea();
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return mlContext.Model.CreatePredictionEngine<InputArea, OutputArea>(mlModel);
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}
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}
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}
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