I am trying to remove "" and ; from my CSV file in PySpark. The data in CSV looks like below:


Code I am using is:

df = spark.read.options(delimiter=';').csv("C:/Project_bankdata.csv", header=True)
df1 = df.select([F.regexp_replace(c, '"', '').alias(c) for c in df.columns])


|"age;""job""   |""marital""|""education""|""default""|""balance""|""housing""|""loan""|""contact""|""day""|""month""|""duration""|""campaign""|""pdays""|""previous""|""poutcome""|""y"""|
|58;management  |married    |tertiary     |no         |2143       |yes        |no      |unknown    |5      |may      |261         |1           |-1       |0           |unknown     |no    |

I am able to get rid of quotes from data, but not from the header. How can I remove double quotes from header as well?

  • Using the input that you provided, everything works well. You should check your real input once again.
    – ZygD
    Oct 9, 2022 at 11:20

1 Answer 1


I was only able to reproduce your output if I used this input CSV:


You can read the CSV as text file, remove all the double quotes " from every line and then make a dataframe.

rdd = spark.sparkContext.textFile(r"C:\temp\temp.csv")
rdd = rdd.map(lambda line: line.replace('"', '').split(';'))

header = rdd.first()
df = rdd.filter(lambda line: line != header).toDF(header)

# +---+----------+-------+---------+-------+-------+-------+----+-------+---+-----+--------+--------+-----+--------+--------+---+
# |age|       job|marital|education|default|balance|housing|loan|contact|day|month|duration|campaign|pdays|previous|poutcome|  y|
# +---+----------+-------+---------+-------+-------+-------+----+-------+---+-----+--------+--------+-----+--------+--------+---+
# | 58|management|married| tertiary|     no|   2143|    yes|  no|unknown|  5|  may|     261|       1|   -1|       0| unknown| no|
# +---+----------+-------+---------+-------+-------+-------+----+-------+---+-----+--------+--------+-----+--------+--------+---+

Note. This effectively removes string notation from the CSV file. So, this will only work well, if you don't have such values which contain ; inside them.

  • Above solution works for me but is there any way to solve this with SparkSession and not with sparkContext? spark = SparkSession.builder.master("local").getOrCreate() Oct 10, 2022 at 1:03
  • There is no problem but I heard that sparkContext is replaced by SparkSession which is why I am try with later. Oct 10, 2022 at 9:37
  • This article tells that "Spark 2.0 introduced a new entry point called SparkSession that essentially replaced both SQLContext and HiveContext. Additionally, it gives to developers immediate access to SparkContext." So... SparkContext is not a deprecated feature.
    – ZygD
    Oct 10, 2022 at 10:20

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.