2

I have the following dataframe:

+---------------+-----------+-------------+--------+--------+--------+--------+------+-----+
|   time_stamp_0|sender_ip_1|receiver_ip_2|s_port_3|r_port_4|acknum_5|winnum_6| len_7|count|
+---------------+-----------+-------------+--------+--------+--------+--------+------+-----+
|06:36:16.293711|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58| 65161|  130|
|06:36:16.293729|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58| 65913|  130|
|06:36:16.293743|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|131073|  130|
|06:36:16.293765|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|196233|  130|
|06:36:16.293783|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|196985|  130|
|06:36:16.293798|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|262145|  130|
|06:36:16.293820|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|327305|  130|
|06:36:16.293837|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|328057|  130|
|06:36:16.293851|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|393217|  130|
|06:36:16.293873|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|458377|  130|
|06:36:16.293890|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|459129|  130|
|06:36:16.293904|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|524289|  130|
|06:36:16.293926|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|589449|  130|
|06:36:16.293942|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|590201|  130|
|06:36:16.293956|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|655361|  130|
|06:36:16.293977|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|720521|  130|
|06:36:16.293994|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|721273|  130|
|06:36:16.294007|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|786433|  130|
|06:36:16.294028|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|851593|  130|
|06:36:16.294045|   10.0.0.1|     10.0.0.2|   55518|    5001|       0|      58|852345|  130|
+---------------+-----------+-------------+--------+--------+--------+--------+------+-----+
only showing top 20 rows

I have to add features and label to my dataframe to predict the count value. However as I ran the code I will see the below error:

Failed to execute user defined function(anonfun$15: (int, int, string, string, int, int, int, int, int) => vector)
    at org.apache.spark.sql.catalyst.expressions.GeneratedClass$GeneratedIterator.processNext(Unknown Source)

I also cast(IntegerType) all my features but again the error occurs. Here is my code:

val Frist_Dataframe = sqlContext.createDataFrame(Row_Dstream_Train, customSchema)

       val toVec9 = udf[Vector, Int, Int, String, String, Int, Int, Int, Int, Int] { (a, b, c, d, e, f, g, h, i) =>
              val e3 = c match {
                case "10.0.0.1" => 1
                case "10.0.0.2" => 2
                case "10.0.0.3" => 3
              }

              val e4 = d match {
                case "10.0.0.1" => 1
                case "10.0.0.2" => 2
                case "10.0.0.3" => 3
              }
              Vectors.dense(a, b, e3, e4, e, f, g, h, i)
            }

            val final_df = Dataframe.withColumn(
              "features",
              toVec9(
                // casting into Timestamp to parse the string, and then into Int
                $"time_stamp_0".cast(TimestampType).cast(IntegerType),
                $"count".cast(IntegerType),
                $"sender_ip_1",
                $"receiver_ip_2",
                $"s_port_3".cast(IntegerType),
                $"r_port_4".cast(IntegerType),
                $"acknum_5".cast(IntegerType),
                $"winnum_6".cast(IntegerType),
                $"len_7".cast(IntegerType)
              )
            ).withColumn("label", (Dataframe("count"))).select("features", "label")

final_df.show()

val trainingTest = final_df.randomSplit(Array(0.8, 0.2))
val TrainingDF = trainingTest(0).toDF()
val TestingDF=trainingTest(1).toDF()
TrainingDF.show()
TestingDF.show()

My dependencies also are:

libraryDependencies ++= Seq(
  "co.theasi" %% "plotly" % "0.2.0",
  "org.apache.spark" %% "spark-core" % "2.1.1",
  "org.apache.spark" %% "spark-sql" % "2.1.1",
  "org.apache.spark" %% "spark-hive" % "2.1.1",
  "org.apache.spark" %% "spark-streaming" % "2.1.1",
  "org.apache.spark" %% "spark-mllib" % "2.1.1"
)

The funnest point is that if I change all my cast(IntegerType) to cast(TimestampType).cast(IntegerType) in the last part of my code, the error disappear and the output will be something like this:

+--------+-----+
|features|label|
+--------+-----+
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
|    null|  130|
+--------+-----+

UPDATE: After applying @Ramesh Maharjan solution the result of my dataframe works well but, whenever I try to splitting my final_df dataframe into training and testing the result is something like below and I still have the same problem of having null rows.

+--------------------+-----+
|            features|label|
+--------------------+-----+
|                null|  130|
|                null|  130|
|                null|  130|
|                null|  130|
|                null|  130|
|                null|  130|
|                null|  130|
|                null|  130|
|[1.497587776E9,13...|  130|
|[1.497587776E9,13...|  130|
|[1.497587776E9,13...|  130|
|[1.497587776E9,13...|  130|
|[1.497587776E9,13...|  130|
|[1.497587776E9,13...|  130|
|[1.497587776E9,13...|  130|
|[1.497587776E9,13...|  130|
|[1.497587776E9,13...|  130|
|[1.497587776E9,13...|  130|
|[1.497587776E9,13...|  130|
|[1.497587776E9,13...|  130|
+--------------------+-----+

Can you help me?

11
  • can you explain what you are trying to do with the udf? Because you dont write udf as above in scala ?
    – koiralo
    Jun 15, 2017 at 14:50
  • @ShankarKoirala: thanks for your answer, I think you are right it needs more explanation. This question is according to this question. stackoverflow.com/questions/44563672/…
    – Queen
    Jun 15, 2017 at 14:57
  • you already got the answer didn't you ?
    – koiralo
    Jun 15, 2017 at 14:59
  • @ShankarKoirala: I need vector of feature to predict the "count" value and all the member of vectore should be integer so, I use udf, since some of my variables are in string and I need to convert them into integer in some way. The Raw data of my code is in my pervious question also.
    – Queen
    Jun 15, 2017 at 15:00
  • @ShankarKoirala: Of course not, it was on how to extracting the data. Ok I will add all my code here.
    – Queen
    Jun 15, 2017 at 15:00

2 Answers 2

3

I didn't see count column being generated in your question code. Apart from count column @Shankar's answer should get you the result you want.

Following error was due to wrong definition of udf function which @Shankar had it corrected in his answer.

Failed to execute user defined function(anonfun$15: (int, int, string, string, int, int, int, int, int) => vector)
    at org.apache.spark.sql.catalyst.expressions.GeneratedClass$GeneratedIterator.processNext(Unknown Source)

Following error is due to version mismatch of spark-mllib library with spark-core library and spark-sql library. They all should be of same version.

error: Caused by: org.apache.spark.SparkException: Failed to execute user defined function(anonfun$15: (int, int, string, string, int, int, int, int, int) => vector) at org.apache.spark.sql.catalyst.expressions.GeneratedClass$Gen‌​eratedIterator.proce‌​ssNext(Unknown Source) 

I hope the explanation is clear and hope to see your problem get solved soon.

Edited

You haven't still changed the udf function as @Shankar had suggested. Add .trim too as I can see some spaces

val toVec9 = udf ((a: Int, b: Int, c: String, d: String, e: Int, f: Int, g: Int, h: Int, i: Int) =>
  {
  val e3 = c.trim match {
    case "10.0.0.1" => 1
    case "10.0.0.2" => 2
    case "10.0.0.3" => 3
  }
  val e4 = d.trim match {
    case "10.0.0.1" => 1
    case "10.0.0.2" => 2
    case "10.0.0.3" => 3
  }
  Vectors.dense(a, b, e3, e4, e, f, g, h, i)
})

And looking at your dependencies, you are using %% which tells sbt to download the dependencies packaged with scala version in your system. That should be fine but since you are still getting errors, I would like to change the dependencies as

libraryDependencies ++= Seq(
  "co.theasi" %% "plotly" % "0.2.0",
  "org.apache.spark" % "spark-core_2.11" % "2.1.1",
  "org.apache.spark" % "spark-sql_2.11" % "2.1.1",
  "org.apache.spark" %% "spark-hive" % "2.1.1",
  "org.apache.spark" % "spark-streaming_2.11" % "2.1.1",
  "org.apache.spark" % "spark-mllib_2.11" % "2.1.1"

)
18
  • Thanks for your answer but, non of the reasons that you mentioned were not the cause of that error. I have updated the question. I have the same version of spark-core library and spark-sql library. Also the count exist in my code. I just added it to see that it exist.
    – Queen
    Jun 15, 2017 at 18:29
  • @Queen thanks for updating the question with count column. I have updated my answer. If you still face issues do let me know. Thanks Jun 16, 2017 at 2:18
  • Thanks for your answer. It works fine and I will accept this answer as a correct answer. But as a final question I have the last same error when I split the final_df into training and testing part. Could please check why the training and testing has null again. I have updated the question again.
    – Queen
    Jun 16, 2017 at 8:17
  • That should be another question. But I will help you. Answer every question I ask. the codes in the question is as in your system? the sequential order? Jun 16, 2017 at 8:29
  • @Thanks a lot for your kindness. Yes the sequential is the same as my code in my system. :)
    – Queen
    Jun 16, 2017 at 8:32
0

I think this is how you create an udf

val toVec9 = udf ((a: Int, b: Int, c: String, d: String, e: Int, f: Int, g: Int, h: Int, i: Int) =>
{
  val e3 = c match {
    case "10.0.0.1" => 1
    case "10.0.0.2" => 2
    case "10.0.0.3" => 3
  }

  val e4 = d match {
    case "10.0.0.1" => 1
    case "10.0.0.2" => 2
    case "10.0.0.3" => 3
  }
  Vectors.dense(a, b, e3, e4, e, f, g, h, i)

})

And use it as

val final_df = Dataframe.withColumn(
              "features",
              toVec9(
                // casting into Timestamp to parse the string, and then into Int
                $"time_stamp_0".cast(TimestampType).cast(IntegerType),
                $"count".cast(IntegerType),
                $"sender_ip_1",
                $"receiver_ip_2",
                $"s_port_3".cast(IntegerType),
                $"r_port_4".cast(IntegerType),
                $"acknum_5".cast(IntegerType),
                $"winnum_6".cast(IntegerType),
                $"len_7".cast(IntegerType)
              )
            ).withColumn("label", (Dataframe("count"))).select("features", "label")

Hope this helps!

2
  • Thanks, again the same error: Caused by: org.apache.spark.SparkException: Failed to execute user defined function(anonfun$15: (int, int, string, string, int, int, int, int, int) => vector) at org.apache.spark.sql.catalyst.expressions.GeneratedClass$GeneratedIterator.processNext(Unknown Source)
    – Queen
    Jun 15, 2017 at 15:23
  • Do you have any idea about the casting part?
    – Queen
    Jun 15, 2017 at 15:23

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