Somebody knows - is it possible to save trained model of Spark's Naive Bayes classificator (for example in text file), and load it in future if required?

Thank You.

  • 2
    Are you using MlLib ? Maybe you could save the weights of the trained model and save them. Then when required, create a new model, giving these weights as initial weights ? – Aditya Pawade Nov 12 '14 at 19:07
  • Yes, I'm using MLib. Is it possible to get weights from training model? – dimson Nov 12 '14 at 19:21
  • 2
    yes. I use LogisticRegressionModel. then model.weights() gives the weight vector. was planning to use it like this. Couldn't find any other option other than serializing the whole model. – Aditya Pawade Nov 12 '14 at 19:27
  • Thanks Man! I'll follow your advice. – dimson Nov 12 '14 at 19:29

I tried saving and loading the model. I was not able to recreate the model using the stored weights. ( Couldn't find the proper constructor ). But the whole model is serializable. So you can store and load it as follows :

store as :

val fos = new FileOutputStream(<storage path>)   
val oos = new ObjectOutputStream(fos)

and load it in:

val fos = new FileInputStream(<storage path>)
val oos = new ObjectInputStream(fos)
val newModel = oos.readObject().asInstanceOf[org.apache.spark.mllib.classification.LogisticRegressionModel]

It worked for me

it is discussed in this thread : http://apache-spark-user-list.1001560.n3.nabble.com/How-to-save-mllib-model-to-hdfs-and-reload-it-td11953.html

  • Thanx Man! Great answer! – dimson Nov 25 '14 at 11:26

You can use built-in functions (Spark version 2.1.0). Use NaiveBayesModel#save in order to store the model and NaiveBayesModel#load in order to read previously stored model.

Method save comes from Saveable and is implemented by wide range of classification models. Method load seems to be static in each classification model implementation.

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