Class

com.johnsnowlabs.ml.tensorflow

ClassifierDatasetEncoder

Related Doc: package tensorflow

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class ClassifierDatasetEncoder extends Serializable

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  1. ClassifierDatasetEncoder
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Instance Constructors

  1. new ClassifierDatasetEncoder(params: ClassifierDatasetEncoderParams)

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Value Members

  1. final def !=(arg0: Any): Boolean

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  2. final def ##(): Int

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  3. final def ==(arg0: Any): Boolean

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  4. final def asInstanceOf[T0]: T0

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  5. def calculateEmbeddingsDim(dataset: DataFrame): Int

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  6. def clone(): AnyRef

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    @throws( ... )
  7. def collectTrainingInstances(dataset: DataFrame, labelCol: String): Array[Array[(String, Array[Float])]]

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    Converts DataFrame to Array of Arrays of Labels (string)

    Converts DataFrame to Array of Arrays of Labels (string)

    dataset

    Input DataFrame with embeddings and labels

    returns

    Array of Array of Map(String, Array(Float))

  8. def collectTrainingInstancesMultiLabel(dataset: DataFrame, labelCol: String): Array[Array[(Array[String], Array[Float])]]

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    Converts DataFrame to labels and embeddings

    Converts DataFrame to labels and embeddings

    dataset

    Input DataFrame with embeddings and labels

    returns

    Array of Array of Map(Array(String), Array(Float))

  9. def decodeOutputData(tagIds: Array[Array[Float]]): Array[Array[(String, Float)]]

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    Converts Tag Identifiers to Tag Names

    Converts Tag Identifiers to Tag Names

    tagIds

    Tag Ids encoded for Tensorflow Model.

    returns

    Tag names

  10. def encodeTags(labels: Array[String]): Array[Array[Int]]

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  11. def encodeTagsMultiLabel(labels: Array[Array[String]]): Array[Array[Float]]

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  12. final def eq(arg0: AnyRef): Boolean

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  13. def equals(arg0: Any): Boolean

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  14. def extractLabels(dataset: Array[Array[(String, Array[Float])]]): Array[String]

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    Converts DataFrame to Array of Arrays of Labels (string)

    Converts DataFrame to Array of Arrays of Labels (string)

    dataset

    Input DataFrame with labels

    returns

    Array of Array of String

  15. def extractLabelsMultiLabel(dataset: Array[Array[(Array[String], Array[Float])]]): Array[Array[String]]

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    Converts DataFrame to Array of Arrays of Labels (string)

    Converts DataFrame to Array of Arrays of Labels (string)

    dataset

    Input DataFrame with labels

    returns

    Array of Array of String

  16. def extractSentenceEmbeddings(docs: Seq[(Int, Seq[Annotation])]): Array[Array[Float]]

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    Converts DataFrame to Array of Arrays of Embeddings

    Converts DataFrame to Array of Arrays of Embeddings

    docs

    Input DataFrame with sentence_embeddings

    returns

    Array of Array of Float

  17. def extractSentenceEmbeddings(dataset: Array[Array[(String, Array[Float])]]): Array[Array[Float]]

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    Converts DataFrame to Array of Arrays of Embeddings

    Converts DataFrame to Array of Arrays of Embeddings

    dataset

    Input DataFrame with sentence_embeddings

    returns

    Array of Array of Float

  18. def extractSentenceEmbeddingsMultiLabel(docs: Seq[(Int, Seq[Annotation])]): Array[Array[Array[Float]]]

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    Converts DataFrame to Array of arrays of arrays of arrays of Embeddings The difference in this function is to create a sequence in case of multiple sentences in a document Used in MultiClassifierDL

    Converts DataFrame to Array of arrays of arrays of arrays of Embeddings The difference in this function is to create a sequence in case of multiple sentences in a document Used in MultiClassifierDL

    docs

    Input DataFrame with sentence_embeddings

    returns

    Array of Arrays of Arrays of Floats

  19. def extractSentenceEmbeddingsMultiLabel(dataset: Array[Array[(Array[String], Array[Float])]]): Array[Array[Array[Float]]]

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    Converts DataFrame to Array of arrays of arrays of arrays of Embeddings The difference in this function is to create a sequence in case of multiple sentences in a document Used in MultiClassifierDL

    Converts DataFrame to Array of arrays of arrays of arrays of Embeddings The difference in this function is to create a sequence in case of multiple sentences in a document Used in MultiClassifierDL

    dataset

    Input DataFrame with sentence_embeddings

    returns

    Array of Arrays of Arrays of Floats

  20. def extractSentenceEmbeddingsMultiLabelPredict(docs: Seq[(Int, Seq[Annotation])]): Array[Array[Array[Float]]]

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  21. def finalize(): Unit

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  22. final def getClass(): Class[_]

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  23. def hashCode(): Int

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  24. final def isInstanceOf[T0]: Boolean

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  25. final def ne(arg0: AnyRef): Boolean

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  26. final def notify(): Unit

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  27. final def notifyAll(): Unit

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  28. val params: ClassifierDatasetEncoderParams

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  29. final def synchronized[T0](arg0: ⇒ T0): T0

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  30. val tags: Array[String]

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  31. val tags2Id: Map[String, Int]

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  32. def toString(): String

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  33. final def wait(): Unit

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  34. final def wait(arg0: Long, arg1: Int): Unit

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  35. final def wait(arg0: Long): Unit

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