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.
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,
,A,B,C 0,1,2,3 1,4,5,6
If you read that and then append, for example,
df + 6:
In : df = pd.read_csv('foo.csv', index_col=0) In : df Out: A B C 0 1 2 3 1 4 5 6 In : df + 6 Out: A B C 0 7 8 9 1 10 11 12 In : with open('foo.csv', 'a') as f: (df + 6).to_csv(f, header=False)
,A,B,C 0,1,2,3 1,4,5,6 0,7,8,9 1,10,11,12
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'.
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!!") else: df.to_csv(csvFilePath, mode='a', index=False, sep=sep, header=False)
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
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 @contextmanager def open_file(path, mode): file_to=open(path,mode) yield file_to file_to.close() ##later saved_df=pd.DataFrame(data) with open_file('yourcsv.csv','r') as infile: saved_df.to_csv('yourcsv.csv',mode='a',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)
protected by Sheldore Jul 3 at 22:15
Thank you for your interest in this question.
Because it has attracted low-quality or spam answers that had to be removed, posting an answer now requires 10 reputation on this site (the association bonus does not count).
Would you like to answer one of these unanswered questions instead?