130

I come from pandas background and am used to reading data from CSV files into a dataframe and then simply changing the column names to something useful using the simple command:

df.columns = new_column_name_list

However, the same doesn't work in pyspark dataframes created using sqlContext. The only solution I could figure out to do this easily is the following:

df = sqlContext.read.format("com.databricks.spark.csv").options(header='false', inferschema='true', delimiter='\t').load("data.txt")
oldSchema = df.schema
for i,k in enumerate(oldSchema.fields):
  k.name = new_column_name_list[i]
df = sqlContext.read.format("com.databricks.spark.csv").options(header='false', delimiter='\t').load("data.txt", schema=oldSchema)

This is basically defining the variable twice and inferring the schema first then renaming the column names and then loading the dataframe again with the updated schema.

Is there a better and more efficient way to do this like we do in pandas ?

My spark version is 1.5.0

11 Answers 11

248

There are many ways to do that:

  • Option 1. Using selectExpr.

    data = sqlContext.createDataFrame([("Alberto", 2), ("Dakota", 2)], 
                                      ["Name", "askdaosdka"])
    data.show()
    data.printSchema()
    
    # Output
    #+-------+----------+
    #|   Name|askdaosdka|
    #+-------+----------+
    #|Alberto|         2|
    #| Dakota|         2|
    #+-------+----------+
    
    #root
    # |-- Name: string (nullable = true)
    # |-- askdaosdka: long (nullable = true)
    
    df = data.selectExpr("Name as name", "askdaosdka as age")
    df.show()
    df.printSchema()
    
    # Output
    #+-------+---+
    #|   name|age|
    #+-------+---+
    #|Alberto|  2|
    #| Dakota|  2|
    #+-------+---+
    
    #root
    # |-- name: string (nullable = true)
    # |-- age: long (nullable = true)
    
  • Option 2. Using withColumnRenamed, notice that this method allows you to "overwrite" the same column.

    oldColumns = data.schema.names
    newColumns = ["name", "age"]
    
    df = reduce(lambda data, idx: data.withColumnRenamed(oldColumns[idx], newColumns[idx]), xrange(len(oldColumns)), data)
    df.printSchema()
    df.show()
    
  • Option 3. using alias, in Scala you can also use as.

    from pyspark.sql.functions import col
    
    data = data.select(col("Name").alias("name"), col("askdaosdka").alias("age"))
    data.show()
    
    # Output
    #+-------+---+
    #|   name|age|
    #+-------+---+
    #|Alberto|  2|
    #| Dakota|  2|
    #+-------+---+
    
  • Option 4. Using sqlContext.sql, which lets you use SQL queries on DataFrames registered as tables.

    sqlContext.registerDataFrameAsTable(data, "myTable")
    df2 = sqlContext.sql("SELECT Name AS name, askdaosdka as age from myTable")
    
    df2.show()
    
    # Output
    #+-------+---+
    #|   name|age|
    #+-------+---+
    #|Alberto|  2|
    #| Dakota|  2|
    #+-------+---+
    
  • I did it with a for loop + withColumnRenamed, but your reduce option is very nice :) – Felipe Gerard Nov 3 '16 at 20:35
  • 1
    Well since nothing gets done in Spark until an action is called on the DF, it's just less elegant code... In the end the resulting DF is exactly the same! – Felipe Gerard Nov 3 '16 at 21:41
  • 2
    @FelipeGerard Please check this post, bad things may happen if you have many columns. – Alberto Bonsanto Nov 3 '16 at 21:48
  • 1
    @AlbertoBonsanto How to select column as alias if there are more than 100 columns which is the best option – user7543621 Apr 2 '17 at 15:37
  • 3
    @NuValue, you should first run from functools import reduce – Joao Francisco Martins Aug 1 '18 at 5:11
119
df = df.withColumnRenamed("colName", "newColName")
       .withColumnRenamed("colName2", "newColName2")

Advantage of using this way: With long list of columns you would like to change only few column names. This can be very convenient in these scenarios. Very useful when joining tables with duplicate column names.

  • is there a variant of this solution that leaves all other columns unchanged? with this method, and others, only the explicitly named columns remained (all others removed) – Quetzalcoatl Dec 22 '17 at 5:22
  • +1 it worked fine for me, just edited the specified column leaving others unchanged and no columns were removed. – mnis.p Jul 18 '18 at 5:51
  • 1
    @Quetzalcoatl This command appears to change only the specified column while maintaining all other columns. Hence, a great command to rename just one of potentially many column names – user989762 Aug 24 '18 at 9:07
  • @user989762: agreed; my initial understanding was incorrect on this one...! – Quetzalcoatl Aug 24 '18 at 17:27
34

If you want to change all columns names, try df.toDF(*cols)

  • 5
    this solution is the closest to df.columns = new_column_name_list per the OP, both in how concise it is and its execution. – Quetzalcoatl Mar 29 '18 at 1:17
25

In case you would like to apply a simple transformation on all column names, this code does the trick: (I am replacing all spaces with underscore)

new_column_name_list= list(map(lambda x: x.replace(" ", "_"), df.columns))

df = df.toDF(*new_column_name_list)

Thanks to @user8117731 for toDf trick.

  • 2
    Man, this 'trick' saved my life! Thanks a TON – Anonymous Person Apr 4 at 16:32
8

If you want to rename a single column and keep the rest as it is:

from pyspark.sql.functions import col
new_df = old_df.select(*[col(s).alias(new_name) if s == column_to_change else s for s in old_df.columns])
7

df.withColumnRenamed('age', 'age2')

  • 1
    Pankaj Kumar's answer and Alberto Bonsanto's answer (which are from 2016 and 2015, respectively) already suggest using withColumnRenamed. – Andrew Myers Jul 12 '18 at 1:08
  • Thanks, yes but there are a couple of different syntax's, maybe we should collect them into a more formal answer? data.withColumnRenamed(oldColumns[idx], newColumns[idx]) vs data.withColumnRenamed(columnname, new columnname) i think it depends on which version of pyspark your using – Sahan Jayasumana Oct 12 '18 at 23:43
  • 1
    This is not a different syntax. The only difference is you did not store your column names in an array. – Ed Bordin Jan 8 at 6:00
3

Another way to rename just one column (using import pyspark.sql.functions as F):

df = df.select( '*', F.col('count').alias('new_count') ).drop('count')
3

this is the approach that I used:

create pyspark session:

import pyspark
from pyspark.sql import SparkSession
spark = SparkSession.builder.appName('changeColNames').getOrCreate()

create dataframe:

df = spark.createDataFrame(data = [('Bob', 5.62,'juice'),  ('Sue',0.85,'milk')], schema = ["Name", "Amount","Item"])

view df with column names:

df.show()
+----+------+-----+
|Name|Amount| Item|
+----+------+-----+
| Bob|  5.62|juice|
| Sue|  0.85| milk|
+----+------+-----+

create a list with new column names:

newcolnames = ['NameNew','AmountNew','ItemNew']

change the column names of the df:

for c,n in zip(df.columns,newcolnames):
    df=df.withColumnRenamed(c,n)

view df with new column names:

df.show()
+-------+---------+-------+
|NameNew|AmountNew|ItemNew|
+-------+---------+-------+
|    Bob|     5.62|  juice|
|    Sue|     0.85|   milk|
+-------+---------+-------+
2

I use this one:

from pyspark.sql.functions import col
df.select(['vin',col('timeStamp').alias('Date')]).show()
  • 1
    While this code snippet may solve the question, including an explanation really helps to improve the quality of your post. Remember that you are answering the question for readers in the future, and those people might not know the reasons for your code suggestion. – Isma Jan 31 '18 at 15:19
2

I made an easy to use function to rename multiple columns for a pyspark dataframe, in case anyone wants to use it:

def renameCols(df, old_columns, new_columns):
    for old_col,new_col in zip(old_columns,new_columns):
        df = df.withColumnRenamed(old_col,new_col)
    return df

old_columns = ['old_name1','old_name2']
new_columns = ['new_name1', 'new_name2']
df_renamed = renameCols(df, old_columns, new_columns)

Be careful, both lists must be the same lenght.

0

For a single column rename, you can still use toDF(). For example,

df1.selectExpr("SALARY*2").toDF("REVISED_SALARY").show()

protected by eyllanesc Apr 8 '18 at 6:38

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