4

I have the following structure:

mylist = [{"key1":"val1"}, {"key2":"val2"}]
myrdd = value_counts.map(lambda item: ('key', { 
    'field': somelist 
}))

I get the error: 15/02/10 15:54:08 INFO scheduler.TaskSetManager: Lost task 1.0 in stage 2.0 (TID 6) on executor ip-10-80-15-145.ec2.internal: org.apache.spark.SparkException (Data of type java.util.ArrayList cannot be used) [duplicate 1]

rdd.saveAsNewAPIHadoopFile( 
            path='-', 
            outputFormatClass="org.elasticsearch.hadoop.mr.EsOutputFormat", 
            keyClass="org.apache.hadoop.io.NullWritable", 
            valueClass="org.elasticsearch.hadoop.mr.LinkedMapWritable", 
            conf={ 
        "es.nodes" : "localhost", 
        "es.port" : "9200", 
        "es.resource" : "mboyd/mboydtype" 
    }) 

What I want the document to end up like when written to ES is:

{
field:[{"key1":"val1"}, {"key2":"val2"}]
}
  • 1
    Have you tried a map instead? it would change your structure slightly though. { field:{ "key1": { "value":"val1" ... – hubbardr Jul 14 '15 at 15:33
  • I don't want map, I want list! – Rolando Jul 15 '15 at 2:46
  • I think that you have to give the library the input she needs!! – eliasah Jul 15 '15 at 7:11
  • @Rolando Please consider accepting an answer if this problem is resolved for you now. – akki Oct 30 '19 at 16:43
3

Just had this problem, and the solution passes by converting all lists to tuples . Converting to json does same.

| improve this answer | |
  • 2
    is there a way out if i want to keep list as list? – Ravi Ranjan Jan 16 '18 at 12:40
  • Can you please provide more explanation on what you mean by "converting to json". Do you mean the same thing as @GBleaney illustrated in his/her answer? – akki Jun 18 '18 at 12:38
  • I have not tested his code, but yes, the same logic as the other answer. The main point was not to use tuples but use lists. Since json represents tuples as lists one could use the other answer, therefore I was validating it also. – Karudoso Jun 19 '18 at 13:50
  • @Karudoso Thanks. Using the other answers and some other blogs I finally made it work. I posted my whole process as another answer to make it easy for future users (stackoverflow.com/a/50942356/3061686). – akki Jun 20 '18 at 7:16
3

I feel there are a few points missing in other answers like you'll have to return a 2-tuple (I don't know why) from your RDD and will also need the Elasticsearch hadoop jar file to make it work. So I'll write the whole process that I had to follow to make it work.

  1. Download the Elasticsearch Hadoop jar file. You can download it from the central maven repository (the latest version should work in most cases - check out their official requirements README for more).

  2. Create a file run.py with the following minimal code snippet for the demonstration.

    import json
    
    import pymongo_spark
    pymongo_spark.activate()
    
    from pyspark import SparkContext, SparkConf
    conf = SparkConf().setAppName('demo').setMaster('local')
    sc = SparkContext(conf=conf)
    
    rdd = sc.parallelize([{"key1": ["val1", "val2"]}])
    final_rdd = rdd.map(json.dumps).map(lambda x: ('key', x))
    
    final_rdd.saveAsNewAPIHadoopFile(
        path='-',
        outputFormatClass="org.elasticsearch.hadoop.mr.EsOutputFormat",
        keyClass="org.apache.hadoop.io.NullWritable",
        valueClass="org.elasticsearch.hadoop.mr.LinkedMapWritable",
        conf={
            "es.nodes" : "<server-ip>",
            "es.port" : "9200",
            "es.resource" : "index_name/doc_type_name",
            "es.input.json": "true"
        }
    )
    
  3. Run your Spark job with the following command ./bin/spark-submit --jars /path/to/your/jar/file/elasticsearch-hadoop-5.6.4.jar --driver-class-path /path/to/you/jar/file/elasticsearch-hadoop-5.6.4.jar --master yarn /path/to/your/run/file/run.py

HTH!

| improve this answer | |
  • Here is a compilation of a few working code snippets which index data into Elasticsearch - medium.com/@akkidx/… – akki Oct 16 '18 at 5:58
2

A bit late to the game, but this is the solution we came up with after running in to this yesterday. Add 'es.input.json': 'true' to your conf, and then run json.dumps() on your data.

Modifying your example, this would look like:

import json

rdd = sc.parallelize([{"key1": ["val1", "val2"]}])
json_rdd = rdd.map(json.dumps)
json_rdd.saveAsNewAPIHadoopFile( 
    path='-', 
    outputFormatClass="org.elasticsearch.hadoop.mr.EsOutputFormat", 
    keyClass="org.apache.hadoop.io.NullWritable", 
    valueClass="org.elasticsearch.hadoop.mr.LinkedMapWritable", 
    conf={ 
        "es.nodes" : "localhost", 
        "es.port" : "9200", 
        "es.resource" : "mboyd/mboydtype",
        "es.input.json": "true"
    }
) 
| improve this answer | |
  • 1
    I get the following exception when converting to json: " RDD element of type java.util.HashMap cannot be used" Did you run into this? – Anuja Khemka Apr 26 '17 at 19:24
  • 1
    I ran the same code with my conf and ran into the following error - "org.apache.spark.SparkException: RDD element of type java.lang.String cannot be used". Is there something I'm doing wrong? I have my ES on a different server so I'm giving its IP instead of localhost if that makes any difference. – akki Jun 18 '18 at 12:45

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