sparknlp_jsl.annotator.classification.medical_distilbert_for_sequence_classification#

Module Contents#

Classes#

MedicalDistilBertForSequenceClassification

MedicalDistilBertForSequenceClassification can load DistilBERT Models with sequence classification/regression head on

class MedicalDistilBertForSequenceClassification(classname='com.johnsnowlabs.nlp.annotators.classification.MedicalDistilBertForSequenceClassification', java_model=None)#

Bases: sparknlp_jsl.common.AnnotatorModelInternal, sparknlp_jsl.common.HasCaseSensitiveProperties, sparknlp_jsl.common.HasBatchedAnnotate, sparknlp_jsl.common.HasEngine

MedicalDistilBertForSequenceClassification can load DistilBERT Models with sequence classification/regression head on top (a linear layer on top of the pooled output) e.g. for multi-class document classification tasks.

Pretrained models can be loaded with pretrained() of the companion object:

>>> sequenceClassifier = MedicalDistilBertForSequenceClassification.pretrained() \
...     .setInputCols(["token", "document"]) \
...     .setOutputCol("label")

Models from the HuggingFace 🤗 Transformers library are also compatible with Spark NLP 🚀. To see which models are compatible and how to import them see Import Transformers into Spark NLP 🚀.

Input Annotation types

Output Annotation type

DOCUMENT, TOKEN

CATEGORY

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

  • coalesceSentences – Instead of 1 class per sentence (if inputCols is sentence) output 1 class per document by averaging probabilities in all sentences.

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")
>>> sequenceClassifier = MedicalDistilBertForSequenceClassification.pretrained() \
...     .setInputCols(["token", "document"]) \
...     .setOutputCol("label") \
...     .setCaseSensitive(True)
>>> pipeline = Pipeline().setStages([
...     documentAssembler,
...     tokenizer,
...     sequenceClassifier
... ])
>>> data = spark.createDataFrame([["I felt a bit drowsy and had blurred vision after taking Aspirin."]]).toDF("text")
>>> result = pipeline.fit(data).transform(data)
>>> result.select("label.result").show(truncate=False)
batchSize#
caseSensitive#
coalesceSentences#
configProtoBytes#
engine#
getter_attrs = []#
inputAnnotatorTypes#
inputCols#
lazyAnnotator#
maxSentenceLength#
name = MedicalDistilBertForSequenceClassification#
optionalInputAnnotatorTypes = []#
outputAnnotatorType#
outputCol#
skipLPInputColsValidation = True#
clear(param)#

Clears a param from the param map if it has been explicitly set.

copy(extra=None)#

Creates a copy of this instance with the same uid and some extra params. This implementation first calls Params.copy and then make a copy of the companion Java pipeline component with extra params. So both the Python wrapper and the Java pipeline component get copied.

Parameters:

extra (dict, optional) – Extra parameters to copy to the new instance

Returns:

Copy of this instance

Return type:

JavaParams

explainParam(param)#

Explains a single param and returns its name, doc, and optional default value and user-supplied value in a string.

explainParams()#

Returns the documentation of all params with their optionally default values and user-supplied values.

extractParamMap(extra=None)#

Extracts the embedded default param values and user-supplied values, and then merges them with extra values from input into a flat param map, where the latter value is used if there exist conflicts, i.e., with ordering: default param values < user-supplied values < extra.

Parameters:

extra (dict, optional) – extra param values

Returns:

merged param map

Return type:

dict

getBatchSize()#

Gets current batch size.

Returns:

Current batch size

Return type:

int

getCaseSensitive()#

Gets whether to ignore case in tokens for embeddings matching.

Returns:

Whether to ignore case in tokens for embeddings matching

Return type:

bool

getClasses()#

Returns labels used to train this model

getEngine()#
Returns:

Deep Learning engine used for this model”

Return type:

str

getInputCols()#

Gets current column names of input annotations.

getLazyAnnotator()#

Gets whether Annotator should be evaluated lazily in a RecursivePipeline.

getOrDefault(param)#

Gets the value of a param in the user-supplied param map or its default value. Raises an error if neither is set.

getOutputCol()#

Gets output column name of annotations.

getParam(paramName)#

Gets a param by its name.

getParamValue(paramName)#

Gets the value of a parameter.

Parameters:

paramName (str) – Name of the parameter

hasDefault(param)#

Checks whether a param has a default value.

hasParam(paramName)#

Tests whether this instance contains a param with a given (string) name.

inputColsValidation(value)#
isDefined(param)#

Checks whether a param is explicitly set by user or has a default value.

isSet(param)#

Checks whether a param is explicitly set by user.

classmethod load(path)#

Reads an ML instance from the input path, a shortcut of read().load(path).

static loadSavedModel(folder, spark_session)#

Loads a locally saved model.

Parameters:
Returns:

The restored model

Return type:

DistilBertForSequenceClassification

static loadSavedModelOpenSource(destilBertForTokenClassifierPath, tfModelPath, spark_session)#

Loads a locally saved model.

Parameters:
  • bertForTokenClassifierPath (str) – Folder of the bertForTokenClassifier

  • tfModelPath (str) – Folder taht contains the tf model

  • spark_session (pyspark.sql.SparkSession) – The current SparkSession

Returns:

The restored model

Return type:

MedicalBertForSequenceClassification

static pretrained(name='distilbert_sequence_classifier_ade', lang='en', remote_loc='clinical/models')#

Download a pre-trained MedicalDistilBertForSequenceClassification.

Parameters:
  • (str) (remote_loc) – Name of the pre-trained model, by default “distilbert_sequence_classifier_ade”

  • (str) – Language of the pre-trained model, by default “en”

  • (str) – Remote location of the pre-trained model. If None, use the open-source location. Other values are “clinical/models”, “finance/models”, or “legal/models”.

  • Returns – MedicalDistilBertForSequenceClassification: A pre-trained MedicalDistilBertForSequenceClassification.

classmethod read()#

Returns an MLReader instance for this class.

save(path)#

Save this ML instance to the given path, a shortcut of ‘write().save(path)’.

set(param, value)#

Sets a parameter in the embedded param map.

setBatchSize(v)#

Sets batch size.

Parameters:

v (int) – Batch size

setCaseSensitive(value)#

Sets whether to ignore case in tokens for embeddings matching.

Parameters:

value (bool) – Whether to ignore case in tokens for embeddings matching

setCoalesceSentences(value)#

Instead of 1 class per sentence (if inputCols is ‘’’sentence’’’) output 1 class per document by averaging probabilities in all sentences. Due to max sequence length limit in almost all transformer models such as BERT (512 tokens), this parameter helps feeding all the sentences into the model and averaging all the probabilities for the entire document instead of probabilities per sentence. (Default: False)

Parameters:

value (bool) – If the output of all sentences will be averaged to one output

setConfigProtoBytes(b)#

Sets configProto from tensorflow, serialized into byte array.

Parameters:

b (List[int]) – ConfigProto from tensorflow, serialized into byte array

setForceInputTypeValidation(etfm)#
setInputCols(*value)#

Sets column names of input annotations.

Parameters:

*value (List[str]) – Input columns for the annotator

setLazyAnnotator(value)#

Sets whether Annotator should be evaluated lazily in a RecursivePipeline.

Parameters:

value (bool) – Whether Annotator should be evaluated lazily in a RecursivePipeline

setMaxSentenceLength(value)#

Sets max sentence length to process, by default 128.

Parameters:

value (int) – Max sentence length to process

setOutputCol(value)#

Sets output column name of annotations.

Parameters:

value (str) – Name of output column

setParamValue(paramName)#

Sets the value of a parameter.

Parameters:

paramName (str) – Name of the parameter

setParams()#
transform(dataset, params=None)#

Transforms the input dataset with optional parameters.

New in version 1.3.0.

Parameters:
  • dataset (pyspark.sql.DataFrame) – input dataset

  • params (dict, optional) – an optional param map that overrides embedded params.

Returns:

transformed dataset

Return type:

pyspark.sql.DataFrame

write()#

Returns an MLWriter instance for this ML instance.