1

I am trying to launch a Sparkling Water cloud within Spark using Databricks. I've attached the H2O library (3.16.0.2), PySparkling (pysparkling 0.4.6), and the Sparkling Water jar (sparkling-water-assembly_2.11-2.1.10-all.jar) to the cluster I'm running (Spark 2.1, Auto-updating Scala 1.1.1).

I succesfully import the required libraries below:

from pysparkling import *
import h2o

Yet when I try to initialize the Sparkling Water cloud using the following commands:

hc = H2OContext.getOrCreate(spark)

or

H2OContext.getOrCreate(sc)

I get the same error:

NameError: name 'H2OContext' is not defined

NameError                                 Traceback (most recent call last)
<command-4043510449425708> in <module>()
----> 1 H2OContext.getOrCreate(sc)

NameError: name 'H2OContext' is not defined

For what it's worth I can initialize the Sparkling Water cloud using this Scala documentation:

%scala
import org.apache.spark.h2o._
val h2oConf = new H2OConf(sc).set("spark.ui.enabled", "false")
val h2oContext = H2OContext.getOrCreate(sc, h2oConf)

import org.apache.spark.h2o._
h2oConf: org.apache.spark.h2o.H2OConf =
Sparkling Water configuration:
  backend cluster mode : internal
  workers              : None
  cloudName            : sparkling-water-root_app-20171222131625-0000
  flatfile             : true
  clientBasePort       : 54321
  nodeBasePort         : 54321
  cloudTimeout         : 60000
  h2oNodeLog           : INFO
  h2oClientLog         : WARN
  nthreads             : -1
  drddMulFactor        : 10
h2oContext: org.apache.spark.h2o.H2OContext =

Sparkling Water Context:
 * H2O name: sparkling-water-root_app-20171222131625-0000
 * cluster size: 1
 * list of used nodes:
  (executorId, host, port)
  ------------------------
  (x,xx.xxx.xxx.x,54321)
  ------------------------

  Open H2O Flow in browser: http://xx.xxx.xxx.xxx:54321 (CMD + click in Mac OSX)

but this pipeline may not always use Databricks so it needs to be all in PySpark and Databricks doesn't have a corresponding PySpark example.

Thanks in advance.

1 Answer 1

2

For pysparkling, you need to first create a PyPi library for h2o_pysparkling_2.1 since you are using a Spark 2.1 cluster. The library you attached, pysparkling is something different. Also, you do not need to attach all those other libraries as the h2o_pysparkling_2.1 package will already import the other necessary libraries.

Once you do that you can run:

from pysparkling import *

h2oConf = H2OConf(spark)
h2oConf.set("spark.ui.enabled", False)

h2oContext = H2OContext.getOrCreate(spark, h2oConf)
2
  • I get: from pysparkling import * [WARNING] H2O requires colorama module of version 0.3.8 or newer. You have version 0.3.7. You can upgrade to the newest version of the module running from the command line $ pip2 install --upgrade colorama h2oContext = H2OContext.getOrCreate(spark) py4j.Py4JException: Method getOrCreate([class org.apache.spark.sql.SparkSession, class org.apache.spark.h2o.H2OConf]) does not exist ...
    – Frank B.
    Dec 22, 2017 at 14:57
  • 1
    I updated the code example. Please first detach all previous libraries, restart the cluster to flush out the dependencies, attach the h2o_pysparkling_2.1, run the code above. I just verified this myself on a Spark 2.1 cluster.
    – Silvio
    Dec 22, 2017 at 15:21

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.