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Replacing dots with commas on a pyspark dataframe

Time:01-25

I'm using the code bellow to collect some info:

df = (
  df
  .select(
        date_format(date_trunc('month', col("reference_date")), 'yyyy-MM-dd').alias("month"),
        col("id"),
        col("name"),
        col("item_type"),
        col("sub_group"),
        col("latitude"),
        col("longitude")
  )

My latitude and longitude are values with dots, like this: -30.130307 -51.2060018 but I must replace the dot for a comma. I've tried both .replace() and .regexp_replace() but none of them are working. Could you guys help me please?

CodePudding user response:

With the following dataframe as an example.

df.show()
 ------------------- -------------------                                        
|           latitude|          longitude|
 ------------------- ------------------- 
|  85.70708380916193| -68.05674981929877|
| 57.074495803252404|-42.648691976080215|
|  2.944303748172473| -62.66186439333423|
| 119.76923402031701|-114.41179457810185|
|-138.52573939229234|  54.38429596238362|
 ------------------- ------------------- 

You should be able to use spark.sql functions like the following

from pyspark.sql import functions

df = df.withColumn("longitude", functions.regexp_replace('longitude',r'[.]',","))
df = df.withColumn("latitude", functions.regexp_replace('latitude',r'[.]',","))
df.show()
 ------------------- ------------------- 
|           latitude|          longitude|
 ------------------- ------------------- 
|  85,70708380916193| -68,05674981929877|
| 57,074495803252404|-42,648691976080215|
|  2,944303748172473| -62,66186439333423|
| 119,76923402031701|-114,41179457810185|
|-138,52573939229234|  54,38429596238362|
 ------------------- ------------------- 
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