I'm starting playing with Spark 2.0.1. New Dataset API is very clean, but I'm having problems with very simple operations.

Maybe I'm missing something, hope somebody can help.

These instructions

SparkConf conf = new SparkConf().setAppName("myapp").setMaster("local[*]");
SparkSession spark = SparkSession
        .builder()
        .config(conf)
        .getOrCreate();

Dataset<Info> infos = spark.read().json("data.json").as(Encoders.bean(Info.class));

System.out.println(infos.rdd().count());

produce a

 java.lang.NegativeArraySizeException

and a fatal error detected by the JVM (1.8).

Working on the data using dataset api (i.e, selects, count on infos object) works fine.

How can I switch between Dataset and RDD?

In general this error comes when an application tries to create an array with negative size. see below example.

Its general java error. In your case I doubt this was caused by

 Dataset<Info> infos = spark.read().json("data.json").as(Encoders.bean(Info.class));

System.out.println(infos.rdd().count());

you could review this code in which scenario, its negetively initializing, by printing complete stack trace.

import java.util.*;
import java.io.*;
public class Stacktest
{
public static void main(String args[])throws IOException
{
int c[]=new int[-2];
Scanner in=new Scanner(new InputStreamReader(System.in));
int b=in.nextInt();
int a[]=new int[b];
}
}


output:

-2
Exception in thread "main" java.lang.NegativeArraySizeException
        at Stacktest.main(Stacktest.java:10)

Note: One of the use case is using Kryo serialization along with apache spark... when it can happen/fix is like below...

Very large object graphs

Reference limits

Kryo stores references in a map that is based on an int array. Since Java array indices are limited to Integer.MAX_VALUE, serializing large (> 1 billion) objects may result in a java.lang.NegativeArraySizeException.

A workaround for this issue is disabling Kryo's reference tracking as indicated below:

  Kryo kryo = new Kryo();
  kryo.setReferences(false);

or else a property like spark.kryo.refferenceTrackingEnabled=false in spark-default.conf or sparkConf object if you want to set it programatically..

Spark docs says that

spark.kryo.referenceTracking default value true

Whether to track references to the same object when serializing data with Kryo, which is necessary if your object graphs have loops and useful for efficiency if they contain multiple copies of the same object. Can be disabled to improve performance if you know this is not the case.

  • Thank you for your answer. Problem is that spark.read() and other instructions are library calls, ie I have just used the library, without custom code, except for Info.class. – besil Nov 11 '16 at 20:38
  • can you paste more details like your json, complete error stack trace and Info model object etc... – Ram Ghadiyaram Nov 11 '16 at 20:48

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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