I wonder how to add new DataFrame
data onto the end of an existing csv file? The to_csv
doesn't mention such functionality.
4 Answers
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)
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3Also 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?– perigeeJun 16, 2013 at 16:08
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1Bonus 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. Jun 21, 2015 at 4:11
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@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). Jun 26, 2015 at 20:52 -
1@perigee when "with" is used the file is closed automatically always. blog.lerner.co.il/dont-use-python-close-files-answer-depends Nov 14, 2018 at 9:53
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!!")
else:
df.to_csv(csvFilePath, mode='a', index=False, sep=sep, header=False)
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Is there an API setting for the 3rd test case, column order not matching between dataframe and csv? I want to write without headers, but have the columns be implicitly reordered. Jun 7, 2019 at 17:36
Thank to Andy, the complete solution:
f = open(filename, 'a') # Open file as append mode
df.to_csv(f, header = False)
f.close()
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8Just 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. :) Jun 16, 2013 at 16:28