#region License Information /* HeuristicLab * Copyright (C) 2002-2008 Heuristic and Evolutionary Algorithms Laboratory (HEAL) * * This file is part of HeuristicLab. * * HeuristicLab is free software: you can redistribute it and/or modify * it under the terms of the GNU General Public License as published by * the Free Software Foundation, either version 3 of the License, or * (at your option) any later version. * * HeuristicLab is distributed in the hope that it will be useful, * but WITHOUT ANY WARRANTY; without even the implied warranty of * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the * GNU General Public License for more details. * * You should have received a copy of the GNU General Public License * along with HeuristicLab. If not, see . */ #endregion using System; using System.Collections.Generic; using System.Text; using System.Windows.Forms; using HeuristicLab.PluginInfrastructure; using System.Net; using System.ServiceModel; using HeuristicLab.CEDMA.DB.Interfaces; using HeuristicLab.CEDMA.DB; using System.ServiceModel.Description; using System.Linq; using HeuristicLab.CEDMA.Core; using HeuristicLab.GP.StructureIdentification; using HeuristicLab.Data; using HeuristicLab.Core; namespace HeuristicLab.CEDMA.Server { public class Dispatcher { private List dispatchQueue; public IList DispatchQueue { get { return dispatchQueue.Select(t => "StandardGP").ToList(); } } private IStore store; public Dispatcher(IStore store) { this.store = store; this.dispatchQueue = new List(); } private void FillDispatchQueue() { // find and select a dataset var dataSetVar = new HeuristicLab.CEDMA.DB.Interfaces.Variable("DataSet"); var dataSetQuery = new Statement[] { new Statement(dataSetVar, Ontology.PredicateInstanceOf, Ontology.TypeDataSet) }; var dataSetBindings = store.Query("?DataSet <"+Ontology.PredicateInstanceOf.Uri+"> <"+Ontology.TypeDataSet.Uri+"> ."); // no datasets => do nothing if (dataSetBindings.Count() == 0) return; // assume last dataset is the most interesting one // find and select all results for this dataset var dataSetEntity = (Entity)dataSetBindings.Last().Get("DataSet"); var targetVar = new HeuristicLab.CEDMA.DB.Interfaces.Variable("TargetVariable"); var modelVar = new HeuristicLab.CEDMA.DB.Interfaces.Variable("Model"); var modelMAPE = new HeuristicLab.CEDMA.DB.Interfaces.Variable("ModelMAPE"); var query = "<" + dataSetEntity.Uri + "> <" + Ontology.PredicateHasModel.Uri + "> ?Model ." + Environment.NewLine + "?Model <" + Ontology.TargetVariable.Uri + "> ?TargetVariable ." + Environment.NewLine + "?Model <" + Ontology.ValidationMeanAbsolutePercentageError.Uri + "> ?ModelMAPE ."; var bindings = store.Query(query); DataSet dataSet = new DataSet(store, dataSetEntity); double[] utilization = new double[dataSet.Problem.AllowedTargetVariables.Count]; int i = 0; int totalN = bindings.Count(); foreach (int targetVariable in dataSet.Problem.AllowedTargetVariables) { var targetVarBindings = bindings.Where(x => (int)((Literal)x.Get("TargetVariable")).Value == targetVariable); if (targetVarBindings.Count() == 0) { utilization[i++] = double.PositiveInfinity; } else { double averageMape = targetVarBindings.Average(x => (double)((Literal)x.Get("ModelMAPE")).Value); double n = targetVarBindings.Count(); utilization[i++] = -averageMape + Math.Sqrt(Math.Log(totalN) / n) * 0.1; } } int[] idx = Enumerable.Range(0, utilization.Length).ToArray(); Array.Sort(utilization, idx); int nConfigurations = utilization.Length; for (int j = nConfigurations - 1; j > nConfigurations * 0.8; j--) { int targetVariable = dataSet.Problem.AllowedTargetVariables[idx[j]]; IEngine engine = CreateEngine(dataSet.Problem, targetVariable); if (engine != null) { QueueJob(new Execution(dataSetEntity, engine, targetVariable)); } } } private void QueueJob(Execution execution) { dispatchQueue.Add(execution); } public Execution GetNextJob() { if (dispatchQueue.Count == 0) { FillDispatchQueue(); } if (dispatchQueue.Count > 0) { Execution next = dispatchQueue[0]; dispatchQueue.RemoveAt(0); return next; } else return null; } internal void Start() { FillDispatchQueue(); } private IEngine CreateEngine(Problem problem, int targetVariable) { switch (problem.LearningTask) { case LearningTask.Classification: return null; case LearningTask.Regression: { return CreateStandardGp(problem, targetVariable).Engine; } case LearningTask.TimeSeries: return null; case LearningTask.Clustering: return null; default: return null; } } private StandardGP CreateStandardGp(Problem problem, int targetVariable) { ProblemInjector probInjector = new ProblemInjector(problem); probInjector.TargetVariable = targetVariable; StandardGP sgp = new StandardGP(); sgp.SetSeedRandomly = true; sgp.MaxGenerations = 300; sgp.PopulationSize = 10000; sgp.Elites = 1; sgp.ProblemInjector = probInjector; return sgp; } } }