I want to know if it is possible to use the pandas to_csv() function to add a dataframe to an existing csv file. The csv file has the same structure as the loaded data.

  • 7
    I think method suggested by @tlingf is better only because he is using build-in functionality of pandas library. He suggests define mode as "a" . "A" stands for APPEND 'df.to_csv('my_csv.csv', mode='a', header=False)'
    – Ayrat
    Oct 20, 2014 at 13:14
  • 3
    The answer from @KCzar considers both the cases when the CSV file is not there (i.e. add the column header) and when the CSV is already there (so add just the data rows without headers). In any case it uses the "append" mode and a custom separator, along with checks on the number of columns.
    – TPPZ
    Apr 17, 2019 at 8:46

7 Answers 7


You can specify a python write mode in the pandas to_csv function. For append it is 'a'.

In your case:

df.to_csv('my_csv.csv', mode='a', header=False)

The default mode is 'w'.

If the file initially might be missing, you can make sure the header is printed at the first write using this variation:

df.to_csv(output_path, mode='a', header=not os.path.exists(output_path))
  • 8
    Thanks for the answer. This will allow me append new df on row-wise. But could you let me know how can I append the new df on column-wise?
    – datanew
    Nov 9, 2018 at 21:30
  • 1
    I was able to accomplish it by re-read the 'my_csv.csv', then concat the new df, and then save it. If you know some easier method, please DO let me know. I appreciate!
    – datanew
    Nov 9, 2018 at 21:56
  • 14
    How to write header for the first file and rest of the rows gets automatically appended to it?
    – Etisha
    Feb 10, 2020 at 6:35
  • 68
    @Etisha something like df.to_csv(output_path, mode='a', header=not os.path.exists(output_path)) May 20, 2020 at 8:25
  • 10
    Correct answer, of course, just a note: passing index=False will tell df.to_csv not to write the row index to the first column. Depending on the application, this might make sense to avoid a meaningless index column.
    – user35915
    Aug 4, 2020 at 19:42

You can append to a csv by opening the file in append mode:

with open('my_csv.csv', 'a') as f:
    df.to_csv(f, header=False)

If this was your csv, foo.csv:


If you read that and then append, for example, df + 6:

In [1]: df = pd.read_csv('foo.csv', index_col=0)

In [2]: df
   A  B  C
0  1  2  3
1  4  5  6

In [3]: df + 6
    A   B   C
0   7   8   9
1  10  11  12

In [4]: with open('foo.csv', 'a') as f:
             (df + 6).to_csv(f, header=False)

foo.csv becomes:

  • 1
    Thou it is not harmful but I don't think you need a context manager for using to_csv() method.
    – Pouya BCD
    Aug 19, 2020 at 18:34
  • Do we really need with open('my_csv.csv', 'a') as f:?? Mar 13, 2021 at 22:36
with open(filename, 'a') as f:
    df.to_csv(f, header=f.tell()==0)
  • Create file unless exists, otherwise append
  • Add header if file is being created, otherwise skip it
  • 3
    It's missing a mode='a' as a parameter to to_csv (ie df.to_csv(f, mode='a', header=f.tell()==0) Dec 9, 2019 at 23:08
  • 3
    @GabrielaMelo That was passed in the function open(filename, 'a').
    – Piyush
    Mar 4, 2020 at 21:08
  • 5
    I get an extra blank line between every line of data (on Windows, which I guess is vulnerable to that) unless I add some parentheses: header=(f.tell()==0) -- and also write : with open(filename, 'a', newline='') as f: Apr 13, 2021 at 22:57

A little helper function I use with some header checking safeguards to handle it all:

def appendDFToCSV_void(df, csvFilePath, sep=","):
    import os
    if not os.path.isfile(csvFilePath):
        df.to_csv(csvFilePath, mode='a', index=False, sep=sep)
    elif len(df.columns) != len(pd.read_csv(csvFilePath, nrows=1, sep=sep).columns):
        raise Exception("Columns do not match!! Dataframe has " + str(len(df.columns)) + " columns. CSV file has " + str(len(pd.read_csv(csvFilePath, nrows=1, sep=sep).columns)) + " columns.")
    elif not (df.columns == pd.read_csv(csvFilePath, nrows=1, sep=sep).columns).all():
        raise Exception("Columns and column order of dataframe and csv file do not match!!")
        df.to_csv(csvFilePath, mode='a', index=False, sep=sep, header=False)

Initially starting with a pyspark dataframes - I got type conversion errors (when converting to pandas df's and then appending to csv) given the schema/column types in my pyspark dataframes

Solved the problem by forcing all columns in each df to be of type string and then appending this to csv as follows:

with open('testAppend.csv', 'a') as f:
    df2.toPandas().astype(str).to_csv(f, header=False)

A bit late to the party but you can also use a context manager, if you're opening and closing your file multiple times, or logging data, statistics, etc.

from contextlib import contextmanager
import pandas as pd
def open_file(path, mode):
     yield file_to

with open_file('yourcsv.csv','r') as infile:
  • 1
    what's the benefit of using a context manager here?
    – baxx
    Sep 23, 2020 at 20:16
  • how is this any different from using open as a context manager?
    – leo
    Jan 2, 2021 at 20:24

This is how I did it in 2021

Let us say I have a csv sales.csv which has the following data in it:


Order Name,Price,Qty

and to add more rows I can load them in a data frame and append it to the csv like this:

import pandas

data = [
    ['matchstick', '60', '11'],
    ['cookies', '10', '120']
dataframe = pandas.DataFrame(data)
dataframe.to_csv("sales.csv", index=False, mode='a', header=False)

and the output will be:

Order Name,Price,Qty

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