I need to remove a column with label name at the time of loading a csv using pandas. I am reading csv as follows and want to add parameters inside it to do so. Thanks.


I know this to do after reading csv:

df.drop('name', axis=1)
  • Do you know in advance what columns your CSV has?
    – cs95
    Feb 21, 2018 at 6:00
  • @cᴏʟᴅsᴘᴇᴇᴅ: I don't know the total number of columns but it will be more than 100. I need the code to work for any number of columns. Thanks. Feb 21, 2018 at 6:17

6 Answers 6


If you know the column names prior, you can do it by setting usecols parameter

When you know which columns to use

Suppose you have csv file with columns ['id','name','last_name'] and you want just ['name','last_name']. You can do it as below:

import pandas as pd
df = pd.read_csv("sample.csv", usecols = ['name','last_name'])

when you want first N columns

If you don't know the column names but you want first N columns from dataframe. You can do it by

import pandas as pd
df = pd.read_csv("sample.csv", usecols = [i for i in range(n)])


When you know name of the column to be dropped

# Read column names from file
cols = list(pd.read_csv("sample_data.csv", nrows =1))

# Use list comprehension to remove the unwanted column in **usecol**
df= pd.read_csv("sample_data.csv", usecols =[i for i in cols if i != 'name'])
  • I need every other columns except the column labeled 'name' and i dont know other labels, number of columns or the location of the label 'name'. So i can't use this answer, but thanks for the reply. Feb 21, 2018 at 6:22
  • 1
    The edited one is a good Idea and it is useful for me. Thanks :) Jan 5, 2021 at 13:51
  • Reading 0 rows also works and is faster, although very marginally. Oct 21, 2021 at 15:34

Get the column headers from your CSV using pd.read_csv with nrows=1, then do a subsequent read with usecols to pull everything but the column(s) you want to omit.

headers = [*pd.read_csv('sample.csv', nrows=1)]
df = pd.read_csv('sample.csv', usecols=[c for c in headers if c != 'name']))

Alternatively, you can do the same thing (read only the headers) very efficiently using the CSV module,

import csv

with open("sample.csv", 'r') as f:
    header = next(csv.reader(f))
    # For python 2, use
    # header = csv.reader(f).next()

df = pd.read_csv('sample.csv', usecols=list(set(header) - {'name'}))
  • This works fine. Is there a way to do it without importing 'csv' package? I mean, only using pandas. Feb 21, 2018 at 6:32
  • @AnonGeorge You could use pd.read_csv(..., nrows=1) and then examine the headers. Leaving that as an exercise to you :)
    – cs95
    Feb 21, 2018 at 7:07
  • header = csv.reader(f).next() will not work in python 3, i have edited your answer to correct it, but got rejected. :( Feb 22, 2018 at 10:04

The only parameter to read_csv() that you can use to select the columns you use is usecols. According to the documentation, usecols accepts list-like or callable. Because you only know the columns you want to drop, you can't use a list of the columns you want to keep. So use a callable:

            usecols=lambda x: x != 'name'

And you could of course say x not in ['unwanted', 'column', 'names'] if you had a list of column names you didn't want to use.


Using df= df.drop(['ID','prediction'],axis=1) made the work for me. I dropped 'ID' and 'prediction' columns. Make sure you put them in square brackets like ['column1','column2']. There is no need for other complicated solutions.

  • 1
    This works, instead of copying to df again though you could just add an arg inplace=True e.g. df.drop(['ID','prediction'],axis=1, inplace=True). Which will apply the change on df directly.
    – spotnag
    Jan 9, 2021 at 14:22
  • OP already stated they know how to use drop, so not an answer to the question.
    – Niels Bom
    Jun 24, 2021 at 9:12

Columns can be dropped at the time of reading itself.

columns_to_be_removed = ['a', 'b']

data = pd.read_csv(sourceFileName).drop(columns_to_be_removed, axis = 'columns')
  • 4
    Your solution is just chaining operations. The column is still read in the read_csv call.
    – Niels Bom
    Jun 24, 2021 at 9:10

This answer with two lines of code will really help you. You can even dynamically remove column names while creating CSV.


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