Compartir a través de


TimeSeriesCatalog.DetectEntireAnomalyBySrCnn Método

Definición

Sobrecargas

DetectEntireAnomalyBySrCnn(AnomalyDetectionCatalog, IDataView, String, String, SrCnnEntireAnomalyDetectorOptions)

Cree Microsoft.ML.TimeSeries.SrCnnEntireAnomalyDetector, que detecta anomalías de timeeries para toda la entrada mediante el algoritmo SRCNN.

DetectEntireAnomalyBySrCnn(AnomalyDetectionCatalog, IDataView, String, String, Double, Int32, Double, SrCnnDetectMode)

Cree Microsoft.ML.TimeSeries.SrCnnEntireAnomalyDetector, que detecta anomalías de timeeries para toda la entrada mediante el algoritmo SRCNN.

DetectEntireAnomalyBySrCnn(AnomalyDetectionCatalog, IDataView, String, String, SrCnnEntireAnomalyDetectorOptions)

Cree Microsoft.ML.TimeSeries.SrCnnEntireAnomalyDetector, que detecta anomalías de timeeries para toda la entrada mediante el algoritmo SRCNN.

public static Microsoft.ML.IDataView DetectEntireAnomalyBySrCnn (this Microsoft.ML.AnomalyDetectionCatalog catalog, Microsoft.ML.IDataView input, string outputColumnName, string inputColumnName, Microsoft.ML.TimeSeries.SrCnnEntireAnomalyDetectorOptions options);
static member DetectEntireAnomalyBySrCnn : Microsoft.ML.AnomalyDetectionCatalog * Microsoft.ML.IDataView * string * string * Microsoft.ML.TimeSeries.SrCnnEntireAnomalyDetectorOptions -> Microsoft.ML.IDataView
<Extension()>
Public Function DetectEntireAnomalyBySrCnn (catalog As AnomalyDetectionCatalog, input As IDataView, outputColumnName As String, inputColumnName As String, options As SrCnnEntireAnomalyDetectorOptions) As IDataView

Parámetros

catalog
AnomalyDetectionCatalog

The AnomalyDetectionCatalog.

input
IDataView

Entrada DataView.

outputColumnName
String

Nombre de la columna resultante del procesamiento de datos de inputColumnName. Los datos de columna son un vector de Double. La longitud de este vector varía en options.DetectMode.DetectModefunción de .

inputColumnName
String

Nombre de la columna que se va a procesar. Los datos de columna deben ser Double.

options
SrCnnEntireAnomalyDetectorOptions

Define la configuración de la operación de carga.

Devoluciones

Ejemplos

using System;
using System.Collections.Generic;
using Microsoft.ML;
using Microsoft.ML.Data;
using Microsoft.ML.TimeSeries;

namespace Samples.Dynamic
{
    public static class DetectEntireAnomalyBySrCnn
    {
        public static void Example()
        {
            // Create a new ML context, for ML.NET operations. It can be used for
            // exception tracking and logging, 
            // as well as the source of randomness.
            var ml = new MLContext();

            // Generate sample series data with an anomaly
            var data = new List<TimeSeriesData>();
            for (int index = 0; index < 20; index++)
            {
                data.Add(new TimeSeriesData { Value = 5 });
            }
            data.Add(new TimeSeriesData { Value = 10 });
            for (int index = 0; index < 5; index++)
            {
                data.Add(new TimeSeriesData { Value = 5 });
            }

            // Convert data to IDataView.
            var dataView = ml.Data.LoadFromEnumerable(data);

            // Setup the detection arguments
            string outputColumnName = nameof(SrCnnAnomalyDetection.Prediction);
            string inputColumnName = nameof(TimeSeriesData.Value);

            // Do batch anomaly detection
            var outputDataView = ml.AnomalyDetection.DetectEntireAnomalyBySrCnn(dataView, outputColumnName, inputColumnName,
                threshold: 0.35, batchSize: 512, sensitivity: 90.0, detectMode: SrCnnDetectMode.AnomalyAndMargin);

            // Getting the data of the newly created column as an IEnumerable of
            // SrCnnAnomalyDetection.
            var predictionColumn = ml.Data.CreateEnumerable<SrCnnAnomalyDetection>(
                outputDataView, reuseRowObject: false);

            Console.WriteLine("Index\tData\tAnomaly\tAnomalyScore\tMag\tExpectedValue\tBoundaryUnit\tUpperBoundary\tLowerBoundary");

            int k = 0;
            foreach (var prediction in predictionColumn)
            {
                PrintPrediction(k, data[k].Value, prediction);
                k++;
            }
            //Index Data    Anomaly AnomalyScore    Mag ExpectedValue   BoundaryUnit UpperBoundary   LowerBoundary
            //0       5.00    0               0.00    0.21            5.00            5.00            5.01            4.99
            //1       5.00    0               0.00    0.11            5.00            5.00            5.01            4.99
            //2       5.00    0               0.00    0.03            5.00            5.00            5.01            4.99
            //3       5.00    0               0.00    0.01            5.00            5.00            5.01            4.99
            //4       5.00    0               0.00    0.03            5.00            5.00            5.01            4.99
            //5       5.00    0               0.00    0.06            5.00            5.00            5.01            4.99
            //6       5.00    0               0.00    0.02            5.00            5.00            5.01            4.99
            //7       5.00    0               0.00    0.01            5.00            5.00            5.01            4.99
            //8       5.00    0               0.00    0.01            5.00            5.00            5.01            4.99
            //9       5.00    0               0.00    0.01            5.00            5.00            5.01            4.99
            //10      5.00    0               0.00    0.00            5.00            5.00            5.01            4.99
            //11      5.00    0               0.00    0.01            5.00            5.00            5.01            4.99
            //12      5.00    0               0.00    0.01            5.00            5.00            5.01            4.99
            //13      5.00    0               0.00    0.02            5.00            5.00            5.01            4.99
            //14      5.00    0               0.00    0.07            5.00            5.00            5.01            4.99
            //15      5.00    0               0.00    0.08            5.00            5.00            5.01            4.99
            //16      5.00    0               0.00    0.02            5.00            5.00            5.01            4.99
            //17      5.00    0               0.00    0.05            5.00            5.00            5.01            4.99
            //18      5.00    0               0.00    0.12            5.00            5.00            5.01            4.99
            //19      5.00    0               0.00    0.17            5.00            5.00            5.01            4.99
            //20      10.00   1               0.50    0.80            5.00            5.00            5.01            4.99
            //21      5.00    0               0.00    0.16            5.00            5.00            5.01            4.99
            //22      5.00    0               0.00    0.11            5.00            5.00            5.01            4.99
            //23      5.00    0               0.00    0.05            5.00            5.00            5.01            4.99
            //24      5.00    0               0.00    0.11            5.00            5.00            5.01            4.99
            //25      5.00    0               0.00    0.19            5.00            5.00            5.01            4.99
        }

        private static void PrintPrediction(int idx, double value, SrCnnAnomalyDetection prediction) =>
            Console.WriteLine("{0}\t{1:0.00}\t{2}\t\t{3:0.00}\t{4:0.00}\t\t{5:0.00}\t\t{6:0.00}\t\t{7:0.00}\t\t{8:0.00}",
                idx, value, prediction.Prediction[0], prediction.Prediction[1], prediction.Prediction[2],
                prediction.Prediction[3], prediction.Prediction[4], prediction.Prediction[5], prediction.Prediction[6]);

        private class TimeSeriesData
        {
            public double Value { get; set; }
        }

        private class SrCnnAnomalyDetection
        {
            [VectorType]
            public double[] Prediction { get; set; }
        }
    }
}

Se aplica a

DetectEntireAnomalyBySrCnn(AnomalyDetectionCatalog, IDataView, String, String, Double, Int32, Double, SrCnnDetectMode)

Cree Microsoft.ML.TimeSeries.SrCnnEntireAnomalyDetector, que detecta anomalías de timeeries para toda la entrada mediante el algoritmo SRCNN.

public static Microsoft.ML.IDataView DetectEntireAnomalyBySrCnn (this Microsoft.ML.AnomalyDetectionCatalog catalog, Microsoft.ML.IDataView input, string outputColumnName, string inputColumnName, double threshold = 0.3, int batchSize = 1024, double sensitivity = 99, Microsoft.ML.TimeSeries.SrCnnDetectMode detectMode = Microsoft.ML.TimeSeries.SrCnnDetectMode.AnomalyOnly);
static member DetectEntireAnomalyBySrCnn : Microsoft.ML.AnomalyDetectionCatalog * Microsoft.ML.IDataView * string * string * double * int * double * Microsoft.ML.TimeSeries.SrCnnDetectMode -> Microsoft.ML.IDataView
<Extension()>
Public Function DetectEntireAnomalyBySrCnn (catalog As AnomalyDetectionCatalog, input As IDataView, outputColumnName As String, inputColumnName As String, Optional threshold As Double = 0.3, Optional batchSize As Integer = 1024, Optional sensitivity As Double = 99, Optional detectMode As SrCnnDetectMode = Microsoft.ML.TimeSeries.SrCnnDetectMode.AnomalyOnly) As IDataView

Parámetros

catalog
AnomalyDetectionCatalog

The AnomalyDetectionCatalog.

input
IDataView

Entrada DataView.

outputColumnName
String

Nombre de la columna resultante del procesamiento de datos de inputColumnName. Los datos de columna son un vector de Double. La longitud de este vector varía en detectModefunción de .

inputColumnName
String

Nombre de la columna que se va a procesar. Los datos de columna deben ser Double.

threshold
Double

Umbral para determinar una anomalía. Se detecta una anomalía cuando la puntuación sin procesar de SR calculada para un punto determinado es mayor que el umbral establecido. Este umbral debe estar comprendido entre [0,1] y su valor predeterminado es 0,3.

batchSize
Int32

Divida los datos de entrada en lotes para ajustar el modelo srcnn. Cuando se establece en -1, use toda la entrada para ajustarse al modelo en lugar del lote por lotes, cuando se establece en un entero positivo, use este número como tamaño de lote. Debe ser -1 o un entero positivo no inferior a 12. El valor predeterminado es 1024.

sensitivity
Double

Sensibilidad de los límites, solo resulta útil cuando srCnnDetectMode es AnomalyAndMargin. Debe estar en [0,100]. El valor predeterminado es 99.

detectMode
SrCnnDetectMode

Tipo de enumeración de SrCnnDetectMode. Cuando se establece en AnomalyOnly, el vector de salida sería un vector double de 3 elementos de (IsAnomaly, RawScore, Mag). Cuando se establece en AnomalyAndExpectedValue, el vector de salida sería un vector Double de 4 elementos de (IsAnomaly, RawScore, Mag, ExpectedValue). Cuando se establece en AnomalyAndMargin, el vector de salida sería un vector Double de 7 elementos de (IsAnomaly, AnomalyScore, Mag, ExpectedValue, BoundaryUnit, UpperBoundary, LowerBoundary). Sr genera rawScore para determinar si un punto es una anomalía o no, en el modo AnomalyAndMargin, cuando un punto es una anomalía, se calculará anomalyScore según la configuración de confidencialidad. El valor predeterminado es AnomalyOnly.

Devoluciones

Ejemplos

using System;
using System.Collections.Generic;
using Microsoft.ML;
using Microsoft.ML.Data;
using Microsoft.ML.TimeSeries;

namespace Samples.Dynamic
{
    public static class DetectEntireAnomalyBySrCnn
    {
        public static void Example()
        {
            // Create a new ML context, for ML.NET operations. It can be used for
            // exception tracking and logging, 
            // as well as the source of randomness.
            var ml = new MLContext();

            // Generate sample series data with an anomaly
            var data = new List<TimeSeriesData>();
            for (int index = 0; index < 20; index++)
            {
                data.Add(new TimeSeriesData { Value = 5 });
            }
            data.Add(new TimeSeriesData { Value = 10 });
            for (int index = 0; index < 5; index++)
            {
                data.Add(new TimeSeriesData { Value = 5 });
            }

            // Convert data to IDataView.
            var dataView = ml.Data.LoadFromEnumerable(data);

            // Setup the detection arguments
            string outputColumnName = nameof(SrCnnAnomalyDetection.Prediction);
            string inputColumnName = nameof(TimeSeriesData.Value);

            // Do batch anomaly detection
            var outputDataView = ml.AnomalyDetection.DetectEntireAnomalyBySrCnn(dataView, outputColumnName, inputColumnName,
                threshold: 0.35, batchSize: 512, sensitivity: 90.0, detectMode: SrCnnDetectMode.AnomalyAndMargin);

            // Getting the data of the newly created column as an IEnumerable of
            // SrCnnAnomalyDetection.
            var predictionColumn = ml.Data.CreateEnumerable<SrCnnAnomalyDetection>(
                outputDataView, reuseRowObject: false);

            Console.WriteLine("Index\tData\tAnomaly\tAnomalyScore\tMag\tExpectedValue\tBoundaryUnit\tUpperBoundary\tLowerBoundary");

            int k = 0;
            foreach (var prediction in predictionColumn)
            {
                PrintPrediction(k, data[k].Value, prediction);
                k++;
            }
            //Index Data    Anomaly AnomalyScore    Mag ExpectedValue   BoundaryUnit UpperBoundary   LowerBoundary
            //0       5.00    0               0.00    0.21            5.00            5.00            5.01            4.99
            //1       5.00    0               0.00    0.11            5.00            5.00            5.01            4.99
            //2       5.00    0               0.00    0.03            5.00            5.00            5.01            4.99
            //3       5.00    0               0.00    0.01            5.00            5.00            5.01            4.99
            //4       5.00    0               0.00    0.03            5.00            5.00            5.01            4.99
            //5       5.00    0               0.00    0.06            5.00            5.00            5.01            4.99
            //6       5.00    0               0.00    0.02            5.00            5.00            5.01            4.99
            //7       5.00    0               0.00    0.01            5.00            5.00            5.01            4.99
            //8       5.00    0               0.00    0.01            5.00            5.00            5.01            4.99
            //9       5.00    0               0.00    0.01            5.00            5.00            5.01            4.99
            //10      5.00    0               0.00    0.00            5.00            5.00            5.01            4.99
            //11      5.00    0               0.00    0.01            5.00            5.00            5.01            4.99
            //12      5.00    0               0.00    0.01            5.00            5.00            5.01            4.99
            //13      5.00    0               0.00    0.02            5.00            5.00            5.01            4.99
            //14      5.00    0               0.00    0.07            5.00            5.00            5.01            4.99
            //15      5.00    0               0.00    0.08            5.00            5.00            5.01            4.99
            //16      5.00    0               0.00    0.02            5.00            5.00            5.01            4.99
            //17      5.00    0               0.00    0.05            5.00            5.00            5.01            4.99
            //18      5.00    0               0.00    0.12            5.00            5.00            5.01            4.99
            //19      5.00    0               0.00    0.17            5.00            5.00            5.01            4.99
            //20      10.00   1               0.50    0.80            5.00            5.00            5.01            4.99
            //21      5.00    0               0.00    0.16            5.00            5.00            5.01            4.99
            //22      5.00    0               0.00    0.11            5.00            5.00            5.01            4.99
            //23      5.00    0               0.00    0.05            5.00            5.00            5.01            4.99
            //24      5.00    0               0.00    0.11            5.00            5.00            5.01            4.99
            //25      5.00    0               0.00    0.19            5.00            5.00            5.01            4.99
        }

        private static void PrintPrediction(int idx, double value, SrCnnAnomalyDetection prediction) =>
            Console.WriteLine("{0}\t{1:0.00}\t{2}\t\t{3:0.00}\t{4:0.00}\t\t{5:0.00}\t\t{6:0.00}\t\t{7:0.00}\t\t{8:0.00}",
                idx, value, prediction.Prediction[0], prediction.Prediction[1], prediction.Prediction[2],
                prediction.Prediction[3], prediction.Prediction[4], prediction.Prediction[5], prediction.Prediction[6]);

        private class TimeSeriesData
        {
            public double Value { get; set; }
        }

        private class SrCnnAnomalyDetection
        {
            [VectorType]
            public double[] Prediction { get; set; }
        }
    }
}

Se aplica a