In Scala, we would write an RDD to Redis like this:

datardd.foreachPartition(iter => {
      val r = new RedisClient("hosturl", 6379)
      iter.foreach(i => {
        val (str, it) = i
        val map = it.toMap
        r.hmset(str, map)

I tried doing this in PySpark like this: datardd.foreachPartition(storeToRedis), where function storeToRedis is defined as:

def storeToRedis(x):
    r = redis.StrictRedis(host = 'hosturl', port = 6379)
    for i in x:
        r.set(i[0], dict(i[1]))

It gives me this:

ImportError: ('No module named redis', function subimport at 0x47879b0, ('redis',))

Of course, I have imported redis.

  • 2
    Is redis installed on every worker? – zero323 Aug 28 '15 at 16:43
  • @zero323 Is that the way to do it? Install redis on every worker. – kamalbanga Aug 29 '15 at 7:33
  • 1
    python modules to be used in the workers must be on all the workers.... so he means the python redis module, not a redis db installation. – Paul Aug 29 '15 at 10:50
  • @Paul: I understood what he meant, and that's what I am asking. Do I have to install the python redis module on all the workers manually? There should be an easier and shortcut way, like Scala API's addJars method. – kamalbanga Aug 29 '15 at 11:26
  • @kamalbanga I'm unaware of a good way. Of course you could try to use spark to make the workers run pip or easy_install but unless you can limit workers to one per machine, it might not behave very well. – Paul Aug 29 '15 at 11:37

PySpark's SparkContext has a addPyFile method specifically for this thing. Make the redis module a zip file (like this) and just call this method:

sc = SparkContext(appName = "analyze")

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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