0

This question already has an answer here:

Basically i need to create output file based on the DataPartition column.Last column in the data frame

So First row and last row will be saved in Fundamental.Fundamental.Fundamental.Japan.1.2018-09-24-0937.Full.txt and middle row will be saved in Fundamental.Fundamental.Fundamental.ThirdParty.1.2018-09-24-0937.Full.txt

+--------------------------------+--------------+---------------------------+-------------------------+--------+------------------+--------+-----------------+---------------+--------------------------+---------------------------+---------------+-------------------------+-----------------------------+-----------------------------------+-----------------------+----------------------------+----------------------------------+--------------------+----------+-----------+------------------------------------------------------------------------------------------------------------------------------------------------+
|Fundamental_uniqueFundamentalSet|OrganizationId|OrganizationId_objectTypeId|OrganizationId_objectType|GaapCode|ConsolidationBasis|IsFiling|NonFilingDateTime|NonFilingReason|PrimaryReportingEntityCode|TotalPrimaryReportingShares|LocalLanguageId|Fundamental_effectiveFrom|Fundamental_effectiveFromPlus|Fundamental_effectiveFromPlusNaCode|Fundamental_effectiveTo|Fundamental_effectiveToMinus|Fundamental_effectiveToMinusNACode|ConsolidationBasisId|GaapCodeId|FFAction|!||DataPartition                                                                                                                                   |
+--------------------------------+--------------+---------------------------+-------------------------+--------+------------------+--------+-----------------+---------------+--------------------------+---------------------------+---------------+-------------------------+-----------------------------+-----------------------------------+-----------------------+----------------------------+----------------------------------+--------------------+----------+-----------+------------------------------------------------------------------------------------------------------------------------------------------------+
|192730241374                    |4295877894    |404010                     |Organization             |JPG     |Consolidated      |true    |                 |               |A51EF                     |117588807.00000            |505126         |2013-06-29T00:55:15Z     |                             |                                   |9999-12-31T00:00:00Z   |                            |                                  |3013598             |3011577   |I|!|       |file:/C:/Users/u6034690/Desktop/SPARK/trfsmallfffile/Fundamental/FINALSPARK/Fundamental.Fundamental.Fundamental.Japan.1.2018-09-24-0937.Full.txt|
|192730391384                    |4295877894    |404010                     |Organization             |AOG     |Consolidated      |true    |                 |               |A51EF                     |117588807.00000            |505126         |2018-09-19T09:51:46Z     |                             |                                   |9999-12-31T00:00:00Z   |                            |                                  |3013598             |1003042842|I|!|       |file:/C:/Users/u6034690/Desktop/SPARK/trfsmallfffile/Fundamental/FINALSPARK/Fundamental.Fundamental.Fundamental.ThirdParty.1.2018-09-24-0937.Full.txt|
|192730241373                    |4295877894    |404010                     |Organization             |JPG     |Parent            |true    |                 |               |A51EF                     |117588807.00000            |505126         |2013-06-29T00:55:15Z     |                             |                                   |9999-12-31T00:00:00Z   |                            |                                  |3013599             |3011577   |I|!|       |file:/C:/Users/u6034690/Desktop/SPARK/trfsmallfffile/Fundamental/FINALSPARK/Fundamental.Fundamental.Fundamental.Japan.1.2018-09-24-0937.Full.txt|
+--------------------------------+--------------+---------------------------+-------------------------+--------+------------------+--------+-----------------+---------------+--------------------------+---------------------------+---------------+-------------------------+-----------------------------+-----------------------------------+-----------------------+----------------------------+----------------------------------+--------------------+----------+-----------+------------------------------------------------------------------------------------------------------------------------------------------------+

Something this sort of things i am looking for which is not working .

import org.apache.hadoop.io.NullWritable
import org.apache.spark.HashPartitioner
import org.apache.hadoop.mapred.lib.MultipleTextOutputFormat

class RddMultiTextOutputFormat extends MultipleTextOutputFormat[Any, Any] {
  override def generateActualKey(key: Any, value: Any): Any = NullWritable.get()
  override def generateFileNameForKeyValue(key: Any, value: Any, name: String): String = key.asInstanceOf[String]
}

dataframe.partitionBy(new HashPartitioner(noOfHashPartitioner)).saveAsHadoopFile(output, classOf[String], classOf[String], classOf[RddMultiTextOutputFormat], classOf[GzipCodec])

Expected Output.

Fundamental.uniqueFundamentalSet|^|OrganizationId|^|OrganizationId.objectTypeId|^|OrganizationId.objectType|^|GaapCode|^|ConsolidationBasis|^|IsFiling|^|NonFilingDateTime|^|NonFilingReason|^|PrimaryReportingEntityCode|^|TotalPrimaryReportingShares|^|LocalLanguageId|^|Fundamental.effectiveFrom|^|Fundamental.effectiveFromPlus|^|Fundamental.effectiveFromPlusNaCode|^|Fundamental.effectiveTo|^|Fundamental.effectiveToMinus|^|Fundamental.effectiveToMinusNACode|^|ConsolidationBasisId|^|GaapCodeId|^|FFAction|!|
192730241373|^|4295877894|^|404010|^|Organization|^|JPG|^|Parent|^|True|^||^||^|A51EF|^|117588807.00000|^|505126|^|2013-06-29T00:55:15Z|^||^||^|9999-12-31T00:00:00Z|^||^||^|3013599|^|3011577|^|I|!|
192730241374|^|4295877894|^|404010|^|Organization|^|JPG|^|Consolidated|^|True|^||^||^|A51EF|^|117588807.00000|^|505126|^|2013-06-29T00:55:15Z|^||^||^|9999-12-31T00:00:00Z|^||^||^|3013598|^|3011577|^|I|!|

marked as duplicate by user6910411 apache-spark Oct 3 '18 at 10:46

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

1

You need to create a PairedRDD with the key being your output file name and value being the record and then you can callsaveAsHadoopFile() to save the files the way that you are looking for.

import org.json.JSONObject

val dataframe = .... //this is the dataframe that you want to save

val pairedRDD = dataframe.toJSON.rdd.map(row => {
    val record = new JSONObject(row)
    val key = record.getString("DataPartition")

    (key, row)
})

pairedRDD.partitionBy(new HashPartitioner(noOfHashPartitioner))
    .saveAsHadoopFile("", classOf[String], classOf[String], classOf[RddMultiTextOutputFormat])

This will give you, your desired output.

  • So the format in this case is changed ..We don't need in json format ...The format we need to same as mentioned in the question ..Can we do that ? – SUDARSHAN Oct 3 '18 at 11:28
  • @SUDARSHAN I just took json as an example in this case... – Prasad Khode Oct 3 '18 at 11:59

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