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https://issues.apache.org/jira/browse/SPARK-16664?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel
 ]

Sean Owen updated SPARK-16664:
------------------------------
    Target Version/s: 2.0.1

> Spark 1.6.2 - Persist call on Data frames with more than 200 columns is 
> wiping out the data.
> --------------------------------------------------------------------------------------------
>
>                 Key: SPARK-16664
>                 URL: https://issues.apache.org/jira/browse/SPARK-16664
>             Project: Spark
>          Issue Type: Bug
>          Components: Spark Core
>    Affects Versions: 1.6.2
>            Reporter: Satish Kolli
>            Priority: Blocker
>
> Calling persist on a data frame with more than 200 columns is removing the 
> data from the data frame. This is an issue in Spark 1.6.2. Works with out any 
> issues in Spark 1.6.1
> Following test case demonstrates problem. Please let me know if you need any 
> additional information. Thanks.
> {code}
> import org.apache.spark._
> import org.apache.spark.rdd.RDD
> import org.apache.spark.sql.types._
> import org.apache.spark.sql.{Row, SQLContext}
> import org.scalatest.FunSuite
> class TestSpark162_1 extends FunSuite {
>   test("test data frame with 200 columns") {
>     val sparkConfig = new SparkConf()
>     val parallelism = 5
>     sparkConfig.set("spark.default.parallelism", s"$parallelism")
>     sparkConfig.set("spark.sql.shuffle.partitions", s"$parallelism")
>     val sc = new SparkContext(s"local[3]", "TestNestedJson", sparkConfig)
>     val sqlContext = new SQLContext(sc)
>     // create dataframe with 200 columns and fake 200 values
>     val size = 200
>     val rdd: RDD[Seq[Long]] = sc.parallelize(Seq(Seq.range(0, size)))
>     val rowRdd: RDD[Row] = rdd.map(d => Row.fromSeq(d))
>     val schemas = List.range(0, size).map(a => StructField("name"+ a, 
> LongType, true))
>     val testSchema = StructType(schemas)
>     val testDf = sqlContext.createDataFrame(rowRdd, testSchema)
>     // test value
>     assert(testDf.persist.take(1).apply(0).toSeq(100).asInstanceOf[Long] == 
> 100)
>     sc.stop()
>   }
>   test("test data frame with 201 columns") {
>     val sparkConfig = new SparkConf()
>     val parallelism = 5
>     sparkConfig.set("spark.default.parallelism", s"$parallelism")
>     sparkConfig.set("spark.sql.shuffle.partitions", s"$parallelism")
>     val sc = new SparkContext(s"local[3]", "TestNestedJson", sparkConfig)
>     val sqlContext = new SQLContext(sc)
>     // create dataframe with 201 columns and fake 201 values
>     val size = 201
>     val rdd: RDD[Seq[Long]] = sc.parallelize(Seq(Seq.range(0, size)))
>     val rowRdd: RDD[Row] = rdd.map(d => Row.fromSeq(d))
>     val schemas = List.range(0, size).map(a => StructField("name"+ a, 
> LongType, true))
>     val testSchema = StructType(schemas)
>     val testDf = sqlContext.createDataFrame(rowRdd, testSchema)
>     // test value
>     assert(testDf.persist.take(1).apply(0).toSeq(100).asInstanceOf[Long] == 
> 100)
>     sc.stop()
>   }
> }
> {code}



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