#  Copyright 2017-2022 John Snow Labs
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"""Contains classes for MPNetForTokenClassification."""
from sparknlp.common import *
[docs]class MPNetForTokenClassification(AnnotatorModel,
                                       HasCaseSensitiveProperties,
                                       HasBatchedAnnotate,
                                       HasEngine,
                                       HasMaxSentenceLengthLimit):
    """MPNetForTokenClassification can load XLM-RoBERTa Models with a token
    classification head on top (a linear layer on top of the hidden-states
    output) e.g. for Named-Entity-Recognition (NER) tasks.
    Pretrained models can be loaded with :meth:`.pretrained` of the companion
    object:
    >>> token_classifier = MPNetForTokenClassification.pretrained() \\
    ...     .setInputCols(["token", "document"]) \\
    ...     .setOutputCol("label")
    The default model is ``"mpnet_base_token_classifier"``, if no
    name is provided.
    For available pretrained models please see the `Models Hub
    <https://sparknlp.org/models?task=Named+Entity+Recognition>`__.
    To see which models are compatible and how to import them see
    `Import Transformers into Spark NLP 🚀
    <https://github.com/JohnSnowLabs/spark-nlp/discussions/5669>`_.
    ====================== ======================
    Input Annotation types Output Annotation type
    ====================== ======================
    ``DOCUMENT, TOKEN``    ``NAMED_ENTITY``
    ====================== ======================
    Parameters
    ----------
    batchSize
        Batch size. Large values allows faster processing but requires more
        memory, by default 8
    caseSensitive
        Whether to ignore case in tokens for embeddings matching, by default
        True
    configProtoBytes
        ConfigProto from tensorflow, serialized into byte array.
    maxSentenceLength
        Max sentence length to process, by default 128
    Examples
    --------
    >>> import sparknlp
    >>> from sparknlp.base import *
    >>> from sparknlp.annotator import *
    >>> from pyspark.ml import Pipeline
    >>> documentAssembler = DocumentAssembler() \\
    ...     .setInputCol("text") \\
    ...     .setOutputCol("document")
    >>> tokenizer = Tokenizer() \\
    ...     .setInputCols(["document"]) \\
    ...     .setOutputCol("token")
    >>> tokenClassifier = MPNetForTokenClassification.pretrained() \\
    ...     .setInputCols(["token", "document"]) \\
    ...     .setOutputCol("label") \\
    ...     .setCaseSensitive(True)
    >>> pipeline = Pipeline().setStages([
    ...     documentAssembler,
    ...     tokenizer,
    ...     tokenClassifier
    ... ])
    >>> data = spark.createDataFrame([["John Lenon was born in London and lived in Paris. My name is Sarah and I live in London"]]).toDF("text")
    >>> result = pipeline.fit(data).transform(data)
    >>> result.select("label.result").show(truncate=False)
    +------------------------------------------------------------------------------------+
    |result                                                                              |
    +------------------------------------------------------------------------------------+
    |[B-PER, I-PER, O, O, O, B-LOC, O, O, O, B-LOC, O, O, O, O, B-PER, O, O, O, O, B-LOC]|
    +------------------------------------------------------------------------------------+
    """
[docs]    name = "MPNetForTokenClassification" 
[docs]    outputAnnotatorType = AnnotatorType.NAMED_ENTITY 
[docs]    configProtoBytes = Param(Params._dummy(),
                             "configProtoBytes",
                             "ConfigProto from tensorflow, serialized into byte array. Get with config_proto.SerializeToString()",
                             TypeConverters.toListInt) 
[docs]    def getClasses(self):
        """
        Returns labels used to train this model
        """
        return self._call_java("getClasses") 
[docs]    def setConfigProtoBytes(self, b):
        """Sets configProto from tensorflow, serialized into byte array.
        Parameters
        ----------
        b : List[int]
            ConfigProto from tensorflow, serialized into byte array
        """
        return self._set(configProtoBytes=b) 
    @keyword_only
    def __init__(self, classname="com.johnsnowlabs.nlp.annotators.classifier.dl.MPNetForTokenClassification",
                 java_model=None):
        super(MPNetForTokenClassification, self).__init__(
            classname=classname,
            java_model=java_model
        )
        self._setDefault(
            batchSize=8,
            maxSentenceLength=128,
            caseSensitive=True
        )
    @staticmethod
[docs]    def loadSavedModel(folder, spark_session):
        """Loads a locally saved model.
        Parameters
        ----------
        folder : str
            Folder of the saved model
        spark_session : pyspark.sql.SparkSession
            The current SparkSession
        Returns
        -------
        XlmRoBertaForTokenClassification
            The restored model
        """
        from sparknlp.internal import _MPNetForTokenClassifierLoader
        jModel = _MPNetForTokenClassifierLoader(folder, spark_session._jsparkSession)._java_obj
        return MPNetForTokenClassification(java_model=jModel) 
    @staticmethod
[docs]    def pretrained(name="mpnet_base_token_classifier", lang="en", remote_loc=None):
        """Downloads and loads a pretrained model.
        Parameters
        ----------
        name : str, optional
            Name of the pretrained model, by default
            "mpnet_base_token_classifier"
        lang : str, optional
            Language of the pretrained model, by default "en"
        remote_loc : str, optional
            Optional remote address of the resource, by default None. Will use
            Spark NLPs repositories otherwise.
        Returns
        -------
        XlmRoBertaForTokenClassification
            The restored model
        """
        from sparknlp.pretrained import ResourceDownloader
        return ResourceDownloader.downloadModel(MPNetForTokenClassification, name, lang, remote_loc)