I am new to spark so forgive me for asking a basic question. I'm trying to import my tsv file into spark but I'm not sure if its working.

val lines = sc.textFile("/home/cloudera/Desktop/Test/test.tsv
val split_lines = lines.map(_.split("\t"))
split_lines.first()

Everything seems to be working fine. Is there a way I can see if the tsv file has loaded properly?

SAMPLE DATA: (all using tabs as spaces)

hastag 200904 24 blackcat
hastag 200908 1 oaddisco
hastag 200904 1 blah
hastag 200910 3 mydda
up vote 6 down vote accepted

So far, your code looks good to me. If you print that first line to the console, do you see the expected data?

To explore the Spark API, the best thing to do is to use the Spark-shell, a Scala REPL enriched with Spark-specifics that builds a default Spark Context for you.

It will let you explore the data a lot easier.

Here's an example loading ~65k lines csv file. Similar usecase to what you're doing, I guess:

$><spark_dir>/bin/spark-shell
Welcome to
      ____              __
     / __/__  ___ _____/ /__
    _\ \/ _ \/ _ `/ __/  '_/
   /___/ .__/\_,_/_/ /_/\_\   version 1.0.0-SNAPSHOT
      /_/

scala> val lines=sc.textFile("/home/user/playground/ts-data.csv")
lines: org.apache.spark.rdd.RDD[String] = MappedRDD[1] at textFile at <console>:12

scala> val csv=lines.map(_.split(";"))
csv: org.apache.spark.rdd.RDD[Array[String]] = MappedRDD[2] at map at <console>:14

scala> csv.count
(... spark processing ...)
res0: Long = 67538


// let's have a look at the first record
scala> csv.first
14/06/01 12:22:17 INFO SparkContext: Starting job: first at <console>:17
14/06/01 12:22:17 INFO DAGScheduler: Got job 1 (first at <console>:17) with 1 output partitions (allowLocal=true)
14/06/01 12:22:17 INFO DAGScheduler: Final stage: Stage 1(first at <console>:17)
14/06/01 12:22:17 INFO DAGScheduler: Parents of final stage: List()
14/06/01 12:22:17 INFO DAGScheduler: Missing parents: List()
14/06/01 12:22:17 INFO DAGScheduler: Computing the requested partition locally
14/06/01 12:22:17 INFO HadoopRDD: Input split: file:/home/user/playground/ts-data.csv:0+1932934
14/06/01 12:22:17 INFO SparkContext: Job finished: first at <console>:17, took 0.003210457 s
res1: Array[String] = Array(20140127, 0000df, d063b4, ***, ***-Service,app180000m,49)

// groupby id - count unique
scala> csv.groupBy(_(4)).count
(... Spark processing ...)
res2: Long = 37668

// records per day
csv.map(record => record(0)->1).reduceByKey(_+_).collect
(... more Spark processing ...)
res8: Array[(String, Int)] = Array((20140117,1854), (20140120,2028), (20140124,3398), (20140131,6084), (20140122,5076), (20140128,8310), (20140123,8476), (20140127,1932), (20140130,8482), (20140129,8488), (20140118,5100), (20140109,3488), (20140110,4822))

* Edit using data added to the question *

val rawData="""hastag 200904 24 blackcat
hastag 200908 1 oaddisco
hastag 200904 1 blah
hastag 200910 3 mydda"""
//split lines
val data= rawData.split("\n")
val rdd= sc.parallelize(data)
// Split using space as separator
val byId=rdd.map(_.split(" ")).groupBy(_(1))
byId.count
res11: Long = 3
  • Thanks, I tried the commands you have just to try and get a feel for it. It seems to be working fine execpt for when I did 'groupBy id'. Mine comes up with res17: long = 1. I don't think that right, I have nearly 1 mill rows in my text file. – user3657361 Jun 1 '14 at 11:20
  • could you post a sample of your data? – maasg Jun 1 '14 at 13:39
  • I put some of the data in the main post. – user3657361 Jun 1 '14 at 15:05
  • @user3657361 Updated the answer with groupBy example based on your data. – maasg Jun 1 '14 at 15:15
  • Thanks. I tried it with my code, it tells me that value split is not a member of org.apache.spark.rdd.RDD[String] – user3657361 Jun 1 '14 at 15:43

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