I wonder how to add new DataFrame data onto the end of an existing csv file? The to_csv doesn't mention such functionality. Thank you in advance.


You can append using to_csv by passing a file which is open in append mode:

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

Use header=None, so as not to append the column names.

In fact, pandas has a wrapper to do this in to_csv using the mode argument (see Joe's answer):

df.to_csv(f, mode='a', header=False)
  • 2
    Also need to close the file by f.close(). Andy, you make my day. It works like a charm, I'm from c/c++ ethnic and need to learn the python philosophy. Any suggestion? – perigee Jun 16 '13 at 16:08
  • Andy, really appreciated :-D (cannot use @ symbol :-() – perigee Jun 16 '13 at 16:17
  • Bonus points that this closes the file after to_csv. I have some code that hits to_csv alot and was finding the files left open on later iterations. – Ezekiel Kruglick Jun 21 '15 at 4:11
  • @EzekielKruglick Were you passing an open file to to_csv or the filename? I recall a related issue where not closing the file led to a 99% speedup of their code (IIRC they were appending to the same file tens of thousands of times). – Andy Hayden Jun 26 '15 at 20:52
  • @Andy Hayden - First I tried passing a filename, then I moved to this with loop style and passing a handle, and even added an f.close() within the with context, I still get the file open maybe one time in ten thousand. I'm starting to suspect the operating system (Windows) is at fault, actually, perhaps the shadow copy service used for backup tracking, although I have not yet properly determined that. So, quite possibly not Python related I'm thinking now. – Ezekiel Kruglick Jun 27 '15 at 18:43

You can also pass the file mode as an argument to the to_csv method

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

A little helper function I use (based on Joe Hooper's answer) 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)

Thank to Andy, the complete solution:

f = open(filename, 'a') # Open file as append mode
df.to_csv(f, header = False)
  • 6
    Just to mention, this is essentially equivalent to above but after this you're left with a closed file (f), whereas with with it cleans up that for you. :) – Andy Hayden Jun 16 '13 at 16:28

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