I have an input dataframe(ip_df), data in this dataframe looks like as below:

id            col_value
1               10
2               11
3               12

Data type of id and col_value is String

I need to get another dataframe(output_df), having datatype of id as string and col_value column as decimal**(15,4)**. THere is no data transformation, just data type conversion. Can i use it using PySpark. Any help will be appreciated

3 Answers 3


Try using the cast method:

from pyspark.sql.types import DecimalType
<your code>
output_df = ip_df.withColumn("col_value",ip_df["col_value"].cast(DecimalType()))
  • It is giving error-name 'DecimalType' is not defined Aug 2, 2017 at 6:57
  • You need to import it
    – aclowkay
    Aug 2, 2017 at 6:58
  • from pyspark.sql.types import DecimalType
    – Rodney
    Apr 16, 2019 at 0:22

try below statement.

output_df = ip_df.withColumn("col_value",ip_df["col_value"].cast('float'))

You can change multiple column types

  • Using withColumn() -
from pyspark.sql.types import DecimalType, StringType

output_df = ip_df \
  .withColumn("col_value", ip_df["col_value"].cast(DecimalType())) \
  .withColumn("id", ip_df["id"].cast(StringType()))
  • Using select()
from pyspark.sql.types import DecimalType, StringType

output_df = ip_df.select(
  • Using spark.sql()

output_df = spark.sql('''
FROM ip_df_view;

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.