I need to join two ordinary RDDs on one/more columns. Logically this operation is equivalent to the database join operation of two tables. I wonder if this is possible only through Spark SQL or there are other ways of doing it.

As a concrete example, consider RDD r1 with primary key ITEM_ID:


and RDD r2 with primary key COMPANY_ID:


I want to join r1 and r2.

How can this be done?

4 Answers 4


Soumya Simanta gave a good answer. However, the values in joined RDD are Iterable, so the results may not be very similar to ordinary table joining.

Alternatively, you can:

val mappedItems = items.map(item => (item.companyId, item))
val mappedComp = companies.map(comp => (comp.companyId, comp))

The output would be:

  • 1
    Your maps are the same as items.keyBy{_.companyId}, companies.keyBy{_.companyId}. Since they're part of Spark, there's a chance that would be more efficient? Dec 12, 2014 at 7:58
  • @Paul This is the spark source code for keyBy: def keyBy[K](f: T => K): RDD[(K, T)] = { map(x => (f(x), x)) } so your solution and @virya solution are quite the same
    – jlopezmat
    Dec 12, 2014 at 9:45
  • 2
    OK :) Still, maybe intent slightly clearer with keyBy. Not an important point, though Dec 12, 2014 at 9:49

(Using Scala) Let say you have two RDDs:

  • emp: (empid, ename, dept)

  • dept: (dname, dept)

Following is another way:

//val emp = sc.parallelize(Seq((1,"jordan",10), (2,"ricky",20), (3,"matt",30), (4,"mince",35), (5,"rhonda",30)))
val emp = sc.parallelize(Seq(("jordan",10), ("ricky",20), ("matt",30), ("mince",35), ("rhonda",30)))

val dept = sc.parallelize(Seq(("hadoop",10), ("spark",20), ("hive",30), ("sqoop",40)))

//val shifted_fields_emp = emp.map(t => (t._3, t._1, t._2))
val shifted_fields_emp = emp.map(t => (t._2, t._1))

val shifted_fields_dept = dept.map(t => (t._2,t._1))

// Create emp RDD
val emp = sc.parallelize(Seq((1,"jordan",10), (2,"ricky",20), (3,"matt",30), (4,"mince",35), (5,"rhonda",30)))

// Create dept RDD
val dept = sc.parallelize(Seq(("hadoop",10), ("spark",20), ("hive",30), ("sqoop",40)))

// Establishing that the third field is to be considered as the Key for the emp RDD
val manipulated_emp = emp.keyBy(t => t._3)

// Establishing that the second field need to be considered as the Key for dept RDD
val manipulated_dept = dept.keyBy(t => t._2)

// Inner Join
val join_data = manipulated_emp.join(manipulated_dept)
// Left Outer Join
val left_outer_join_data = manipulated_emp.leftOuterJoin(manipulated_dept)
// Right Outer Join
val right_outer_join_data = manipulated_emp.rightOuterJoin(manipulated_dept)
// Full Outer Join
val full_outer_join_data = manipulated_emp.fullOuterJoin(manipulated_dept)

// Formatting the Joined Data for better understandable (using map)
val cleaned_joined_data = join_data.map(t => (t._2._1._1, t._2._1._2, t._1, t._2._2._1))

This will give the output as:

// Print the output cleaned_joined_data on the console

scala> cleaned_joined_data.collect()
res13: Array[(Int, String, Int, String)] = Array((3,matt,30,hive), (5,rhonda,30,hive), (2,ricky,20,spark), (1,jordan,10,hadoop))

Something like this should work.

scala> case class Item(id:String, name:String, unit:Int, companyId:String)

scala> case class Company(companyId:String, name:String, city:String)

scala> val i1 = Item("1", "first", 2, "c1")

scala> val i2 = i1.copy(id="2", name="second")

scala> val i3 = i1.copy(id="3", name="third", companyId="c2")

scala> val items = sc.parallelize(List(i1,i2,i3))
items: org.apache.spark.rdd.RDD[Item] = ParallelCollectionRDD[14] at parallelize at <console>:20

scala> val c1 = Company("c1", "company-1", "city-1")

scala> val c2 = Company("c2", "company-2", "city-2")

scala> val companies = sc.parallelize(List(c1,c2))

scala> val groupedItems = items.groupBy( x => x.companyId) 
groupedItems: org.apache.spark.rdd.RDD[(String, Iterable[Item])] = ShuffledRDD[16] at groupBy at <console>:22

scala> val groupedComp = companies.groupBy(x => x.companyId)
groupedComp: org.apache.spark.rdd.RDD[(String, Iterable[Company])] = ShuffledRDD[18] at groupBy at <console>:20

scala> groupedItems.join(groupedComp).take(10).foreach(println)

14/12/12 00:52:32 INFO DAGScheduler: Job 5 finished: take at <console>:35, took 0.021870 s
(c1,(CompactBuffer(Item(1,first,2,c1), Item(2,second,2,c1)),CompactBuffer(Company(c1,company-1,city-1))))

Spark SQL can perform join on SPARK RDDs.

Below code performs SQL join on Company and Items RDDs

object SparkSQLJoin {

case class Item(id:String, name:String, unit:Int, companyId:String)
case class Company(companyId:String, name:String, city:String)

def main(args: Array[String]) {

    val sparkConf = new SparkConf()
    val sc= new SparkContext(sparkConf)
    val sqlContext = new SQLContext(sc)

    import sqlContext.createSchemaRDD

    val i1 = Item("1", "first", 1, "c1")
    val i2 = Item("2", "second", 2, "c2")
    val i3 = Item("3", "third", 3, "c3")
    val c1 = Company("c1", "company-1", "city-1")
    val c2 = Company("c2", "company-2", "city-2")

    val companies = sc.parallelize(List(c1,c2))

    val items = sc.parallelize(List(i1,i2,i3))

    val result = sqlContext.sql("SELECT * FROM companies C JOIN items I ON C.companyId= I.companyId").collect



Output is displayed as

  • I have several columns, hence I need to specify the schema programmatically. Also the RDDs are created from large text files on HDFS. I believe the above approach still works, right? Please let me know if any changes are necessary. Dec 15, 2014 at 6:54
  • Yes, this approach works fine for huge data also. For defining the schema programmatically check out spark.apache.org/docs/latest/… Dec 15, 2014 at 7:12

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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