I have a requirement as below, 2 files need to be joined File 1:

CUID CNAMEM CNAMEL
1    RK      MK
2    MM      CC
3    AB      DD

Lookup FILE:

CUID   LCODE
1        10
1        11
1        12
2        88
2        33
2        22

output:

Need to archive below using Spark scala

CUID CNAMEM CNAMEL LCODE
1    RK      MK  10
1    RK      MK  11
1    RK      MK  12
2    MM      CC  88
2    MM      CC  33

closed as too broad by gsamaras, Davis Broda, 1201ProgramAlarm, Shiladitya, Unheilig Oct 13 at 6:37

Please edit the question to limit it to a specific problem with enough detail to identify an adequate answer. Avoid asking multiple distinct questions at once. See the How to Ask page for help clarifying this question. If this question can be reworded to fit the rules in the help center, please edit the question.

  • how do you get the data?.. csv with headers? – stack0114106 Oct 11 at 19:31
  • with headers and csv data – Kumar Oct 11 at 19:32
  • check my update in the Answer. – stack0114106 Oct 11 at 19:46

A simple inner join would work.

scala> val df = Seq(
     | (1,"RK","MK"),
     | (2,"MM","CC"),
     | (3,"AB","DD")).toDF("CUID", "CNAMEM","CNAMEL")
df: org.apache.spark.sql.DataFrame = [CUID: int, CNAMEM: string ... 1 more field]

scala> val lookup = Seq(
     | (1,10),
     | (1,11),
     | (1,12),
     | (2,88),
     | (2,33),
     | (2,22)).toDF("CUID2", "LCODE")
lookup: org.apache.spark.sql.DataFrame = [CUID2: int, LCODE: int]

scala> df.join(lookup,df("CUID")===lookup("CUID2"),"inner").drop('CUID2).show
+----+------+------+-----+
|CUID|CNAMEM|CNAMEL|LCODE|
+----+------+------+-----+
|   1|    RK|    MK|   12|
|   1|    RK|    MK|   11|
|   1|    RK|    MK|   10|
|   2|    MM|    CC|   22|
|   2|    MM|    CC|   33|
|   2|    MM|    CC|   88|
+----+------+------+-----+

UPDATE:

  val df = spark.read.option("inferSchema",true).option("header", true).csv("in/cuid.csv")
  val lookup = spark.read.option("inferSchema",true).option("header", true).csv("in/lookup.csv")

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