I have launched a 10 node cluster with the ec2-script in standalone mode for Spark. I am accessing data in s3 buckets from within the PySpark shell but when I perform transormations on the RDD, only one node is ever used. For example the below will read in data from the CommonCorpus:
bucket = ("s3n://@aws-publicdatasets/common-crawl/crawl-data/CC-MAIN-2014-23/" "/segments/1404776400583.60/warc/CC-MAIN-20140707234000-00000-ip-10" "-180-212-248.ec2.internal.warc.gz") data = sc.textFile(bucket) data.count()
When I run this, only one of my 10 slaves processes the data. I know this because only one slave (213) has any logs of the activity when viewed from the Spark web console. When I view the the activity in Ganglia, this same node (213) is the only slave with a spike in mem usage when the activity was run.
Furthermore I have the exact same performance when I run the same script with an ec2 cluster of only one slave. I am using Spark 1.1.0 and any help or advice is greatly appreciated.