ml-persistence
Spark ML – Model Persistence
Description
Save/load Spark ML objects
Usage
ml_save(x, path, overwrite = FALSE, …)
ml_saveml_model( x, path, overwrite = FALSE, type = c(“pipeline_model”, “pipeline”), … )
ml_load(sc, path)
Arguments
Argument | Description |
---|---|
x | A ML object, which could be a ml_pipeline_stage or a ml_model
|
path | The path where the object is to be serialized/deserialized. |
overwrite | Whether to overwrite the existing path, defaults to FALSE . |
… | Optional arguments; currently unused. |
type | Whether to save the pipeline model or the pipeline. |
sc | A Spark connection. |
Value
ml_save()
serializes a Spark object into a format that can be read back into sparklyr
or by the Scala or PySpark APIs. When called on ml_model
objects, i.e. those that were created via the tbl_spark - formula
signature, the associated pipeline model is serialized. In other words, the saved model contains both the data processing (RFormulaModel
) stage and the machine learning stage.
ml_load()
reads a saved Spark object into sparklyr
. It calls the correct Scala load
method based on parsing the saved metadata. Note that a PipelineModel
object saved from a sparklyr ml_model
via ml_save()
will be read back in as an ml_pipeline_model
, rather than the ml_model
object.