I am new to Spark SQL DataFrames and ML on them (PySpark). How can I create a costume tokenizer, which for example removes stop words and uses some libraries from ? Can I extend the default one?



Can I extend the default one?

Not really. Default Tokenizer is a subclass of pyspark.ml.wrapper.JavaTransformer and, same as other transfromers and estimators from pyspark.ml.feature, delegates actual processing to its Scala counterpart. Since you want to use Python you should extend pyspark.ml.pipeline.Transformer directly.

import nltk

from pyspark import keyword_only  ## < 2.0 -> pyspark.ml.util.keyword_only
from pyspark.ml import Transformer
from pyspark.ml.param.shared import HasInputCol, HasOutputCol, Param
from pyspark.sql.functions import udf
from pyspark.sql.types import ArrayType, StringType

class NLTKWordPunctTokenizer(Transformer, HasInputCol, HasOutputCol):

    def __init__(self, inputCol=None, outputCol=None, stopwords=None):
        super(NLTKWordPunctTokenizer, self).__init__()
        self.stopwords = Param(self, "stopwords", "")
        kwargs = self._input_kwargs

    def setParams(self, inputCol=None, outputCol=None, stopwords=None):
        kwargs = self._input_kwargs
        return self._set(**kwargs)

    def setStopwords(self, value):
        self._paramMap[self.stopwords] = value
        return self

    def getStopwords(self):
        return self.getOrDefault(self.stopwords)

    def _transform(self, dataset):
        stopwords = self.getStopwords()

        def f(s):
            tokens = nltk.tokenize.wordpunct_tokenize(s)
            return [t for t in tokens if t.lower() not in stopwords]

        t = ArrayType(StringType())
        out_col = self.getOutputCol()
        in_col = dataset[self.getInputCol()]
        return dataset.withColumn(out_col, udf(f, t)(in_col))

Example usage (data from ML - Features):

sentenceDataFrame = spark.createDataFrame([
  (0, "Hi I heard about Spark"),
  (0, "I wish Java could use case classes"),
  (1, "Logistic regression models are neat")
], ["label", "sentence"])

tokenizer = NLTKWordPunctTokenizer(
    inputCol="sentence", outputCol="words",  


For custom Python Estimator see How to Roll a Custom Estimator in PySpark mllib

⚠ This answer depends on internal API and is compatible with Spark 2.0.3, 2.1.1, 2.2.0 or later (SPARK-19348). For code compatible with previous Spark versions please see revision 8.

  • 1
    Tried to implement this as a step in a Pipeline and got the following error AttributeError: 'NLTKWordPunctTokenizer' object has no attribute '_to_java'. This occurs when I try to write the Pipeline to disk (worked fine before adding this step). I'm assuming there are some more class methods that need to be defined? – Evan Zamir Aug 12 '16 at 19:16
  • @EvanZamir Yes, both Pipeline and PipelineModel expect that every stage implements _to_java and can be loaded by using corresponding Java object. Unfortunately this works under assumption that you actually have JavaWrapper. I have this vague memory that I've seen some JIRA related to that but I could be wrong. – zero323 Aug 12 '16 at 19:58
  • Is this it @zero323? issues.apache.org/jira/browse/SPARK-17025 Apparently the issue was literally just created yesterday. – Evan Zamir Aug 12 '16 at 21:09
  • @EvanZamir No, I haven't seen this one. – zero323 Aug 12 '16 at 23:55
  • 2
    @EvanZamir Maybe it could be possible to write a generic PythonTransformer class which could be used in cases like this, but it is just an idea. – zero323 Aug 13 '16 at 0:44

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