コード例 #1
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        /// <summary>
        /// Run a train-test unit test
        /// </summary>
        protected void Run_TrainTest(PredictorAndArgs predictor, TestDataset dataset,
                                     string[] extraSettings = null, string extraTag = "", bool expectFailure = false, bool summary = false, bool saveAsIni = false)
        {
            RunContext ctx = new RunContext(this, Cmd.TrainTest, predictor, dataset, extraSettings, extraTag, expectFailure: expectFailure, summary: summary, saveAsIni: saveAsIni);

            Run(ctx);
        }
コード例 #2
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 /// <summary>
 /// Run TrainTest, CV, and TrainSaveTest for a single predictor on a single dataset.
 /// </summary>
 protected void RunOneAllTests(PredictorAndArgs predictor, TestDataset dataset,
                               string[] extraSettings = null, string extraTag = "", bool summary = false)
 {
     Contracts.Assert(IsActive);
     Run_TrainTest(predictor, dataset, extraSettings, extraTag, summary: summary);
     Run_CV(predictor, dataset, extraSettings, extraTag, useTest: true);
 }
コード例 #3
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        /// <summary>
        /// Run a train unit test
        /// </summary>
        protected RunContext Run_Train(PredictorAndArgs predictor, TestDataset dataset,
                                       string[] extraSettings = null, string extraTag = "")
        {
            RunContext ctx = new RunContext(this, Cmd.Train, predictor, dataset, extraSettings, extraTag);

            Run(ctx);
            return(ctx);
        }
コード例 #4
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        protected void Run_Test(PredictorAndArgs predictor, TestDataset dataset, string modelPath,
                                string[] extraSettings = null, string extraTag = "")
        {
            OutputPath path    = new OutputPath(modelPath);
            RunContext testCtx = new RunContext(this, Cmd.Test, predictor, dataset,
                                                extraSettings, extraTag, modelOverride: path);

            Run(testCtx);
        }
コード例 #5
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        /// <summary>
        /// Run INI test for a pair of predictor and dataset.
        /// </summary>
        /// <param name="debugInformation"></param>
        /// <param name="predictor"></param>
        /// <param name="dataset"></param>
        /// <param name="evaluationOutputDirPrefix"></param>
        /// <param name="extraSettings"></param>
        /// <param name="extraTag"></param>
        public void RunIniFileEvaluationTest(
            List <IniModelTestInformation> successTestInformation,
            List <IniModelTestInformation> failureTestInformation,
            PredictorAndArgs predictor,
            TestDataset dataset,
            string evaluationOutputDirPrefix,
            string[] extraSettings = null,
            string extraTag        = ""
            )
        {
            string outName = ExpectedFilename("Train", predictor, dataset, extraTag);

            string[] extraTrainingSettings           = JoinOptions(GetInstancesSettings(dataset), extraSettings);
            string   trainDataset                    = dataset.testFilename;
            InternalLearnRunParameters runParameters = TrainForIniModel(
                predictor,
                trainDataset,
                outName,
                extraTrainingSettings,
                ModelType.ModelKind.Ini);

            CheckEqualityNormalized(runParameters.BaselineDir, runParameters.ModelFilename);
            string modelFilePath       = GetOutputPath(runParameters.BaselineDir, runParameters.ModelFilename);
            string trainDatasetPath    = GetDataPath(trainDataset);
            string evaluationOutputDir = GetOutputDir(evaluationOutputDirPrefix + @"\Dirs\" + outName);

            Assert.IsNull(EnsureEmptyDirectory(evaluationOutputDir));

            string cmd = string.Format(EvaluationCommandLineFormat, modelFilePath, evaluationOutputDir, trainDatasetPath);
            string dir = Path.GetFullPath(EvaluationExecutorDir);

            Log("Working directory for evaluation: {0}", dir);
            Log("Evaluation command line: {0}", cmd);
            ProcessDebugInformation processDebugInformation = RunCommandLine(cmd, dir);

            if (processDebugInformation.ExitCode == 0)
            {
                KeyValuePair <Exception, List <string> > baselineCheckDebugInformation =
                    DirectoryBaselineCheck(evaluationOutputDir);
                IniModelTestInformation iniModelTestInformation =
                    new IniModelTestInformation(modelFilePath, trainDatasetPath, evaluationOutputDir, cmd, runParameters, processDebugInformation, baselineCheckDebugInformation);
                if (baselineCheckDebugInformation.Key == null)
                {
                    successTestInformation.Add(iniModelTestInformation);
                }
                else
                {
                    failureTestInformation.Add(iniModelTestInformation);
                }
            }
            else
            {
                IniModelTestInformation iniModelTestInformation =
                    new IniModelTestInformation(modelFilePath, trainDatasetPath, evaluationOutputDir, cmd, runParameters, processDebugInformation, new KeyValuePair <Exception, List <string> >(null, null));
                failureTestInformation.Add(iniModelTestInformation);
            }
        }
コード例 #6
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        // REVIEW: Remove TrainSaveTest and supporting code.

        /// <summary>
        /// Run a unit test which does training, saves the model, and then tests
        /// after loading the model
        /// </summary>
        protected void Run_TrainSaveTest(PredictorAndArgs predictor, TestDataset dataset,
                                         string[] extraSettings = null, string extraTag = "")
        {
            // Train and save the model.
            RunContext trainCtx = new RunContext(this, Cmd.Train, predictor, dataset, extraSettings, extraTag);

            Run(trainCtx);
            // Load the model and test.
            RunContext testCtx = new RunContext(this, Cmd.Test, predictor, dataset, extraSettings, extraTag,
                                                modelOverride: trainCtx.ModelPath());

            Run(testCtx);
        }
コード例 #7
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        /// <summary>
        /// Run a cross-validation unit test, over the training set, unless
        /// <paramref name="useTest"/> is set.
        /// </summary>
        protected void Run_CV(PredictorAndArgs predictor, TestDataset dataset,
                              string[] extraSettings = null, string extraTag = "", bool useTest = false)
        {
            if (useTest)
            {
                // REVIEW: It is very strange to use the *test* set in
                // cross validation. Should this just be deprecated outright?
                dataset = dataset.Clone();
                dataset.trainFilename = dataset.testFilename;
            }
            RunContext cvCtx = new RunContext(this, Cmd.CV, predictor, dataset, extraSettings, extraTag);

            Run(cvCtx);
        }
コード例 #8
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        /// <summary>
        /// Create a string for specifying the loader and transform.
        /// </summary>
        public string GetLoaderTransformSettings(TestDataset dataset)
        {
            List <string> settings = new List <string>();

            Contracts.Check(dataset.testSettings == null, "Separate test loader pipeline is not supported");

            if (!string.IsNullOrEmpty(dataset.loaderSettings))
            {
                settings.Add(dataset.loaderSettings);
            }
            if (!string.IsNullOrEmpty(dataset.labelFilename))
            {
                settings.Add(string.Format("xf=lookup{{col=Label data={{{0}}}}}", GetDataPath(dataset.labelFilename)));
            }

            return(settings.Count > 0 ? string.Join(" ", settings) : null);
        }
コード例 #9
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            public RunContext(TestCommandBase test, Cmd cmd, PredictorAndArgs predictor, TestDataset dataset,
                              string[] extraArgs = null, string extraTag           = "",
                              bool expectFailure = false, OutputPath modelOverride = null, bool summary = false, bool saveAsIni = false)
                : base(test, predictor.Trainer.Kind, GetNamePrefix(cmd.ToString(), predictor, dataset, extraTag), predictor.BaselineProgress)
            {
                Command   = cmd;
                Predictor = predictor;
                Dataset   = dataset;

                ExtraArgs = extraArgs;
                ExtraTag  = extraTag;

                ExpectedToFail = expectFailure;
                Summary        = summary;

                ModelOverride = modelOverride;
                SaveAsIni     = saveAsIni;
            }
コード例 #10
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        public TestDataset Clone()
        {
            var ret = new TestDataset
            {
                name              = name,
                trainFilename     = trainFilename,
                testFilename      = testFilename,
                validFilename     = validFilename,
                labelFilename     = labelFilename,
                settings          = settings,
                testSettings      = testSettings,
                extraSettings     = extraSettings,
                loaderSettings    = loaderSettings,
                mamlExtraSettings = mamlExtraSettings
            };

            return(ret);
        }
コード例 #11
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 /// <summary>
 /// Run Train for a single predictor on a single dataset.
 /// </summary>
 protected RunContext RunOneTrain(PredictorAndArgs predictor, TestDataset dataset,
                                  string[] extraSettings = null, string extraTag = "")
 {
     Contracts.Assert(IsActive);
     return(Run_Train(predictor, dataset, extraSettings, extraTag));
 }
コード例 #12
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        private static string GetNamePrefix(string testType, PredictorAndArgs predictor, TestDataset dataset, string extraTag = "")
        {
            // REVIEW: Once we finish the TL->MAML conversion effort, please make the output/baseline
            // names take some form that someone could actually tell what test generated that file.

            string datasetSuffix = dataset.name;

            if (!string.IsNullOrEmpty(extraTag))
            {
                if (char.IsLetterOrDigit(extraTag[0]))
                {
                    datasetSuffix += "." + extraTag;
                }
                else
                {
                    datasetSuffix += extraTag;
                }
            }
            string filePrefix = (string.IsNullOrEmpty(predictor.Tag) ? predictor.Trainer.Kind : predictor.Tag);

            return(filePrefix + "-" + testType + "-" + datasetSuffix);
        }