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