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TextCatalog.ApplyWordEmbedding Method

Definition

Overloads

ApplyWordEmbedding(TransformsCatalog+TextTransforms, String, String, WordEmbeddingEstimator+PretrainedModelKind)

Create an WordEmbeddingEstimator, which is a text featurizer that converts a vector of text into a numerical vector using pre-trained embeddings models.

ApplyWordEmbedding(TransformsCatalog+TextTransforms, String, String, String)

Create an WordEmbeddingEstimator, which is a text featurizer that converts vectors of text into numerical vectors using pre-trained embeddings models.

ApplyWordEmbedding(TransformsCatalog+TextTransforms, String, String, WordEmbeddingEstimator+PretrainedModelKind)

Create an WordEmbeddingEstimator, which is a text featurizer that converts a vector of text into a numerical vector using pre-trained embeddings models.

public static Microsoft.ML.Transforms.Text.WordEmbeddingEstimator ApplyWordEmbedding (this Microsoft.ML.TransformsCatalog.TextTransforms catalog, string outputColumnName, string inputColumnName = default, Microsoft.ML.Transforms.Text.WordEmbeddingEstimator.PretrainedModelKind modelKind = Microsoft.ML.Transforms.Text.WordEmbeddingEstimator+PretrainedModelKind.SentimentSpecificWordEmbedding);
static member ApplyWordEmbedding : Microsoft.ML.TransformsCatalog.TextTransforms * string * string * Microsoft.ML.Transforms.Text.WordEmbeddingEstimator.PretrainedModelKind -> Microsoft.ML.Transforms.Text.WordEmbeddingEstimator
<Extension()>
Public Function ApplyWordEmbedding (catalog As TransformsCatalog.TextTransforms, outputColumnName As String, Optional inputColumnName As String = Nothing, Optional modelKind As WordEmbeddingEstimator.PretrainedModelKind = Microsoft.ML.Transforms.Text.WordEmbeddingEstimator+PretrainedModelKind.SentimentSpecificWordEmbedding) As WordEmbeddingEstimator

Parameters

catalog
TransformsCatalog.TextTransforms

The text-related transform's catalog.

outputColumnName
String

Name of the column resulting from the transformation of inputColumnName. This column's data type will be a vector of Single.

inputColumnName
String

Name of the column to transform. If set to null, the value of the outputColumnName will be used as source. This estimator operates over known-size vector of text data type.

Returns

Examples

using System;
using System.Collections.Generic;
using Microsoft.ML;
using Microsoft.ML.Transforms.Text;

namespace Samples.Dynamic
{
    public static class ApplyWordEmbedding
    {
        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 mlContext = new MLContext();

            // Create an empty list as the dataset. The 'ApplyWordEmbedding' does
            // not require training data as the estimator ('WordEmbeddingEstimator')
            // created by 'ApplyWordEmbedding' API is not a trainable estimator.
            // The empty list is only needed to pass input schema to the pipeline.
            var emptySamples = new List<TextData>();

            // Convert sample list to an empty IDataView.
            var emptyDataView = mlContext.Data.LoadFromEnumerable(emptySamples);

            // A pipeline for converting text into a 150-dimension embedding vector
            // using pretrained 'SentimentSpecificWordEmbedding' model. The
            // 'ApplyWordEmbedding' computes the minimum, average and maximum values
            // for each token's embedding vector. Tokens in 
            // 'SentimentSpecificWordEmbedding' model are represented as
            // 50 -dimension vector. Therefore, the output is of 150-dimension [min,
            // avg, max].
            //
            // The 'ApplyWordEmbedding' API requires vector of text as input.
            // The pipeline first normalizes and tokenizes text then applies word
            // embedding transformation.
            var textPipeline = mlContext.Transforms.Text.NormalizeText("Text")
                .Append(mlContext.Transforms.Text.TokenizeIntoWords("Tokens",
                    "Text"))
                .Append(mlContext.Transforms.Text.ApplyWordEmbedding("Features",
                    "Tokens", WordEmbeddingEstimator.PretrainedModelKind
                    .SentimentSpecificWordEmbedding));

            // Fit to data.
            var textTransformer = textPipeline.Fit(emptyDataView);

            // Create the prediction engine to get the embedding vector from the
            // input text/string.
            var predictionEngine = mlContext.Model.CreatePredictionEngine<TextData,
                TransformedTextData>(textTransformer);

            // Call the prediction API to convert the text into embedding vector.
            var data = new TextData()
            {
                Text = "This is a great product. I would " +
                "like to buy it again."
            };
            var prediction = predictionEngine.Predict(data);

            // Print the length of the embedding vector.
            Console.WriteLine($"Number of Features: {prediction.Features.Length}");

            // Print the embedding vector.
            Console.Write("Features: ");
            foreach (var f in prediction.Features)
                Console.Write($"{f:F4} ");

            //  Expected output:
            //   Number of Features: 150
            //   Features: -1.2489 0.2384 -1.3034 -0.9135 -3.4978 -0.1784 -1.3823 -0.3863 -2.5262 -0.8950 ...
        }

        private class TextData
        {
            public string Text { get; set; }
        }

        private class TransformedTextData : TextData
        {
            public float[] Features { get; set; }
        }
    }
}

Applies to

ApplyWordEmbedding(TransformsCatalog+TextTransforms, String, String, String)

Create an WordEmbeddingEstimator, which is a text featurizer that converts vectors of text into numerical vectors using pre-trained embeddings models.

public static Microsoft.ML.Transforms.Text.WordEmbeddingEstimator ApplyWordEmbedding (this Microsoft.ML.TransformsCatalog.TextTransforms catalog, string outputColumnName, string customModelFile, string inputColumnName = default);
static member ApplyWordEmbedding : Microsoft.ML.TransformsCatalog.TextTransforms * string * string * string -> Microsoft.ML.Transforms.Text.WordEmbeddingEstimator
<Extension()>
Public Function ApplyWordEmbedding (catalog As TransformsCatalog.TextTransforms, outputColumnName As String, customModelFile As String, Optional inputColumnName As String = Nothing) As WordEmbeddingEstimator

Parameters

catalog
TransformsCatalog.TextTransforms

The text-related transform's catalog.

outputColumnName
String

Name of the column resulting from the transformation of inputColumnName. This column's data type will be a vector of Single.

customModelFile
String

The path of the pre-trained embeddings model to use.

inputColumnName
String

Name of the column to transform. If set to null, the value of the outputColumnName will be used as source. This estimator operates over known-size vector of text data type.

Returns

Examples

using System;
using System.Collections.Generic;
using System.IO;
using Microsoft.ML;

namespace Samples.Dynamic
{
    public static class ApplyCustomWordEmbedding
    {
        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 mlContext = new MLContext();

            // Create an empty list as the dataset. The 'ApplyWordEmbedding' does
            // not require training data as the estimator ('WordEmbeddingEstimator')
            // created by 'ApplyWordEmbedding' API is not a trainable estimator.
            // The empty list is only needed to pass input schema to the pipeline.
            var emptySamples = new List<TextData>();

            // Convert sample list to an empty IDataView.
            var emptyDataView = mlContext.Data.LoadFromEnumerable(emptySamples);

            // Write a custom 3-dimensional word embedding model with 4 words.
            // Each line follows '<word> <float> <float> <float>' pattern.
            // Lines that do not confirm to the pattern are ignored.
            var pathToCustomModel = @".\custommodel.txt";
            using (StreamWriter file = new StreamWriter(pathToCustomModel, false))
            {
                file.WriteLine("great 1.0 2.0 3.0");
                file.WriteLine("product -1.0 -2.0 -3.0");
                file.WriteLine("like -1 100.0 -100");
                file.WriteLine("buy 0 0 20");
            }

            // A pipeline for converting text into a 9-dimension word embedding
            // vector using the custom word embedding model. The 
            // 'ApplyWordEmbedding' computes the minimum, average and maximum values
            // for each token's embedding vector. Tokens in 'custommodel.txt' model
            // are represented as 3-dimension vector. Therefore, the output is of
            // 9 -dimension [min, avg, max].
            //
            // The 'ApplyWordEmbedding' API requires vector of text as input.
            // The pipeline first normalizes and tokenizes text then applies word
            // embedding transformation.
            var textPipeline = mlContext.Transforms.Text.NormalizeText("Text")
                .Append(mlContext.Transforms.Text.TokenizeIntoWords("Tokens",
                    "Text"))
                .Append(mlContext.Transforms.Text.ApplyWordEmbedding("Features",
                    pathToCustomModel, "Tokens"));

            // Fit to data.
            var textTransformer = textPipeline.Fit(emptyDataView);

            // Create the prediction engine to get the embedding vector from the
            // input text/string.
            var predictionEngine = mlContext.Model.CreatePredictionEngine<TextData,
                TransformedTextData>(textTransformer);

            // Call the prediction API to convert the text into embedding vector.
            var data = new TextData()
            {
                Text = "This is a great product. I would " +
                "like to buy it again."
            };
            var prediction = predictionEngine.Predict(data);

            // Print the length of the embedding vector.
            Console.WriteLine($"Number of Features: {prediction.Features.Length}");

            // Print the embedding vector.
            Console.Write("Features: ");
            foreach (var f in prediction.Features)
                Console.Write($"{f:F4} ");

            //  Expected output:
            //   Number of Features: 9
            //   Features: -1.0000 0.0000 -100.0000 0.0000 34.0000 -25.6667 1.0000 100.0000 20.0000
        }

        private class TextData
        {
            public string Text { get; set; }
        }

        private class TransformedTextData : TextData
        {
            public float[] Features { get; set; }
        }
    }
}

Applies to