40

I have two dataframes with the following columns:

df1.columns
//  Array(ts, id, X1, X2)

and

df2.columns
//  Array(ts, id, Y1, Y2)

After I do

val df_combined = df1.join(df2, Seq(ts,id))

I end up with the following columns: Array(ts, id, X1, X2, ts, id, Y1, Y2). I could expect that the common columns would be dropped. Is there something that additional that needs to be done?

  • If you defined the join columns as a Seq of strings (for the columns names), then the columns should not be duplicated. See my answer below. – stackoverflowuser2010 Apr 20 '17 at 2:16
29

The simple answer (from the Databricks FAQ on this matter) is to perform the join where the joined columns are expressed as an array of strings (or one string) instead of a predicate.

Below is an example adapted from the Databricks FAQ but with two join columns in order to answer the original poster's question.

Here is the left dataframe:

val llist = Seq(("bob", "b", "2015-01-13", 4), ("alice", "a", "2015-04-23",10))

val left = llist.toDF("firstname","lastname","date","duration")

left.show()

/*
+---------+--------+----------+--------+
|firstname|lastname|      date|duration|
+---------+--------+----------+--------+
|      bob|       b|2015-01-13|       4|
|    alice|       a|2015-04-23|      10|
+---------+--------+----------+--------+
*/

Here is the right dataframe:

val right = Seq(("alice", "a", 100),("bob", "b", 23)).toDF("firstname","lastname","upload")

right.show()

/*
+---------+--------+------+
|firstname|lastname|upload|
+---------+--------+------+
|    alice|       a|   100|
|      bob|       b|    23|
+---------+--------+------+
*/

Here is an incorrect solution, where the join columns are defined as the predicate left("firstname")===right("firstname") && left("lastname")===right("lastname").

The incorrect result is that the firstname and lastname columns are duplicated in the joined data frame:

left.join(right, left("firstname")===right("firstname") &&
                 left("lastname")===right("lastname")).show

/*
+---------+--------+----------+--------+---------+--------+------+
|firstname|lastname|      date|duration|firstname|lastname|upload|
+---------+--------+----------+--------+---------+--------+------+
|      bob|       b|2015-01-13|       4|      bob|       b|    23|
|    alice|       a|2015-04-23|      10|    alice|       a|   100|
+---------+--------+----------+--------+---------+--------+------+
*/

The correct solution is to define the join columns as an array of strings Seq("firstname", "lastname"). The output data frame does not have duplicated columns:

left.join(right, Seq("firstname", "lastname")).show

/*
+---------+--------+----------+--------+------+
|firstname|lastname|      date|duration|upload|
+---------+--------+----------+--------+------+
|      bob|       b|2015-01-13|       4|    23|
|    alice|       a|2015-04-23|      10|   100|
+---------+--------+----------+--------+------+
*/
  • 6
    actually the output DF does have duplicates using the following; val joined = sampledDF.join(idsDF, idColumns, "inner") . and where idColumns is a Seq[String] containing the join columns – javadba Jul 26 '17 at 20:26
  • 2
    I don't think this works if the names of the columns in the two datasets are different. – sparkonhdfs Apr 17 '18 at 15:24
  • 1
    What to do when out of 4 join exprs, 2 have different columns in both tables but 2 refers to same columns on both tables. rename? – nir Jul 2 '18 at 21:46
  • What do we do when join columns of two datasets are different? – Amar Gajbhiye Jan 18 at 12:05
23

This is an expected behavior. DataFrame.join method is equivalent to SQL join like this

SELECT * FROM a JOIN b ON joinExprs

If you want to ignore duplicate columns just drop them or select columns of interest afterwards. If you want to disambiguate you can use access these using parent DataFrames:

val a: DataFrame = ???
val b: DataFrame = ???
val joinExprs: Column = ???

a.join(b, joinExprs).select(a("id"), b("foo"))
// drop equivalent 
a.alias("a").join(b.alias("b"), joinExprs).drop(b("id")).drop(a("foo"))

or use aliases:

// As for now aliases don't work with drop
a.alias("a").join(b.alias("b"), joinExprs).select($"a.id", $"b.foo")

For equi-joins there exist a special shortcut syntax which takes either a sequence of strings:

val usingColumns: Seq[String] = ???

a.join(b, usingColumns)

or as single string

val usingColumn: String = ???

a.join(b, usingColumn)

which keep only one copy of columns used in a join condition.

  • Instead of select, can I drop the duplicate column? – Neel Feb 7 '16 at 21:12
  • Yes, but only via parents not with aliases. – zero323 Feb 7 '16 at 21:31
  • How about an outer join? Any rows without a match will have a null in one of the table's key columns, but you don't know ahead of time which one to drop. Is there a way to handle that case elegantly? – Darryl Aug 18 '16 at 23:53
  • 3
    @Darryl coalesce and drop both. – zero323 Aug 19 '16 at 0:15
  • In the joined dataframe, i want the column name as something other than input table's column name. Is there any way to do this ?. For example : Instead of having the column name as "foo" which is being taken from "b" dataframe, I want to have the column name as "column_new". Something like this sql query : "select b.foo as column_new" – JKC Aug 23 '17 at 8:46
8

I have been stuck with this for a while, and only recently I came up with a solution what is quite easy.

Say a is

scala> val a  = Seq(("a", 1), ("b", 2)).toDF("key", "vala")
a: org.apache.spark.sql.DataFrame = [key: string, vala: int]

scala> a.show
+---+----+
|key|vala|
+---+----+
|  a|   1|
|  b|   2|
+---+----+
and 
scala> val b  = Seq(("a", 1)).toDF("key", "valb")
b: org.apache.spark.sql.DataFrame = [key: string, valb: int]

scala> b.show
+---+----+
|key|valb|
+---+----+
|  a|   1|
+---+----+

and I can do this to select only the value in dataframe a:

scala> a.join(b, a("key") === b("key"), "left").select(a.columns.map(a(_)) : _*).show
+---+----+
|key|vala|
+---+----+
|  a|   1|
|  b|   2|
+---+----+
  • 1
    what does " a.columns.map(a(_)) : _* " do? – Nick01 Apr 25 '18 at 3:21
  • @Nick01 Basically, it would work for all columns. – ChikuMiku Aug 3 '18 at 15:55
5

You can simply use this

df1.join(df2, Seq("ts","id"),"TYPE-OF-JOIN")

Here TYPE-OF-JOIN can be

  • left
  • right
  • inner
  • fullouter

For example, I have two dataframes like this:

// df1
word   count1
w1     10   
w2     15  
w3     20

// df2
word   count2
w1     100   
w2     150  
w5     200

If you do fullouter join then the result looks like this

df1.join(df2, Seq("word"),"fullouter").show()

word   count1  count2
w1     10      100
w2     15      150
w3     20      null
w5     null    200
  • 1
    How do you add in a condition here, say col("count1") > 10 say – CpILL Mar 11 at 6:24
  • 1
    I think you can do something like df1.join(df2, Seq("word"),"fullouter").filter($"count1">10).show() this. Let me know if it doesn't work. – Abu Shoeb Mar 22 at 15:21
2

This is a normal behavior from SQL, what I am doing for this:

  • Drop or Rename source columns
  • Do the join
  • Drop renamed column if any

Here I am replacing "fullname" column:

Some code in Java:

this
    .sqlContext
    .read()
    .parquet(String.format("hdfs:///user/blablacar/data/year=%d/month=%d/day=%d", year, month, day))
    .drop("fullname")
    .registerTempTable("data_original");

this
    .sqlContext
    .read()
    .parquet(String.format("hdfs:///user/blablacar/data_v2/year=%d/month=%d/day=%d", year, month, day))
    .registerTempTable("data_v2");

 this
    .sqlContext
    .sql(etlQuery)
    .repartition(1)
    .write()
    .mode(SaveMode.Overwrite)
    .parquet(outputPath);

Where the query is:

SELECT
    d.*,
   concat_ws('_', product_name, product_module, name) AS fullname
FROM
    {table_source} d
LEFT OUTER JOIN
    {table_updates} u ON u.id = d.id

This is something you can do only with Spark I believe (drop column from list), very very helpful!

0

try this,

val df_combined = df1.join(df2, df1("ts") === df2("ts") && df1("id") === df2("id")).drop(df2("ts")).drop(df2("id"))
0

Best practice is to make column name different in both the DF before joining them and drop accordingly.

df1.columns =[id, age, income] df2.column=[id, age_group]

df1.join(df2, on=df1.id== df2.id,how='inner').write.saveAsTable('table_name')

// will return error while error for duplicate columns

// instead try this

df1.join(df2.withColumnRenamed('id','id_2'), on=df1.id== df2.id_2,how='inner').drop('id_2')

0

After I've joined multiple tables together, I run them through a simple function to rename columns in the DF if it encounters duplicates. Alternatively, you could drop these duplicate columns too.

Where Names is a table with columns ['Id', 'Name', 'DateId', 'Description'] and Dates is a table with columns ['Id', 'Date', 'Description'], the columns Id and Description will be duplicated after being joined.

Names = sparkSession.sql("SELECT * FROM Names")
Dates = sparkSession.sql("SELECT * FROM Dates")
NamesAndDates = Names.join(Dates, Names.DateId == Dates.Id, "inner")
NamesAndDates = deDupeDfCols(NamesAndDates, '_')
NamesAndDates.saveAsTable("...", format="parquet", mode="overwrite", path="...")

Where deDupeDfCols is defined as:

def deDupeDfCols(df, separator=''):
    newcols = []

    for col in df.columns:
        if col not in newcols:
            newcols.append(col)
        else:
            for i in range(2, 1000):
                if (col + separator + str(i)) not in newcols:
                    newcols.append(col + separator + str(i))
                    break

    return df.toDF(*newcols)

The resulting data frame will contain columns ['Id', 'Name', 'DateId', 'Description', 'Id2', 'Date', 'Description2'].

Apologies this answer is in Python - I'm not familiar with Scala, but this was the question that came up when I Googled this problem and I'm sure Scala code isn't too different.

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