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You're reading from  Scala for Data Science

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Published inJan 2016
Reading LevelIntermediate
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ISBN-139781785281372
Edition1st Edition
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Pascal Bugnion
Pascal Bugnion
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Pascal Bugnion

Pascal Bugnion is a data engineer at the ASI, a consultancy offering bespoke data science services. Previously, he was the head of data engineering at SCL Elections. He holds a PhD in computational physics from Cambridge University. Besides Scala, Pascal is a keen Python developer. He has contributed to NumPy, matplotlib and IPython. He also maintains scikit-monaco, an open source library for Monte Carlo integration. He currently lives in London, UK.
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Pipeline components


Pipelines consist of a set of components joined together such that the DataFrame produced by one component is used as input for the next component. The components available are split into two classes: transformers and estimators.

Transformers

Transformers transform one DataFrame into another, normally by appending one or more columns.

The first step in our spam classification algorithm is to split each message into an array of words. This is called tokenization. We can use the Tokenizer transformer, provided by MLlib:

scala> import org.apache.spark.ml.feature._
import org.apache.spark.ml.feature._

scala> val tokenizer = new Tokenizer()
tokenizer: org.apache.spark.ml.feature.Tokenizer = tok_75559f60e8cf 

The behavior of transformers can be customized through getters and setters. The easiest way of obtaining a list of the parameters available is to call the .explainParams method:

scala> println(tokenizer.explainParams)
inputCol: input column name (undefined)
outputCol...
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Scala for Data Science
Published in: Jan 2016Publisher: ISBN-13: 9781785281372

Author (1)

author image
Pascal Bugnion

Pascal Bugnion is a data engineer at the ASI, a consultancy offering bespoke data science services. Previously, he was the head of data engineering at SCL Elections. He holds a PhD in computational physics from Cambridge University. Besides Scala, Pascal is a keen Python developer. He has contributed to NumPy, matplotlib and IPython. He also maintains scikit-monaco, an open source library for Monte Carlo integration. He currently lives in London, UK.
Read more about Pascal Bugnion