I have a dataframe in pandas which I would like to write to a CSV file.
I am doing this using:
df.to_csv('out.csv')
And getting the following error:
UnicodeEncodeError: 'ascii' codec can't encode character u'u03b1' in position 20: ordinal not in range(128)
- Is there any way to get around this easily (i.e. I have unicode characters in my data frame)?
- And is there a way to write to a tab delimited file instead of a CSV using e.g. a ‘to-tab’ method (that I don’t think exists)?
Answers:
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Method 1
To delimit by a tab you can use the sep argument of to_csv:
df.to_csv(file_name, sep='t')
To use a specific encoding (e.g. ‘utf-8’) use the encoding argument:
df.to_csv(file_name, sep='t', encoding='utf-8')
Method 2
When you are storing a DataFrame object into a csv file using the to_csv method, you probably wont be needing to store the preceding indices of each row of the DataFrame object.
You can avoid that by passing a False boolean value to index parameter.
Somewhat like:
df.to_csv(file_name, encoding='utf-8', index=False)
So if your DataFrame object is something like:
Color Number 0 red 22 1 blue 10
The csv file will store:
Color,Number red,22 blue,10
instead of (the case when the default value True was passed)
,Color,Number 0,red,22 1,blue,10
Method 3
To write a pandas DataFrame to a CSV file, you will need DataFrame.to_csv. This function offers many arguments with reasonable defaults that you will more often than not need to override to suit your specific use case. For example, you might want to use a different separator, change the datetime format, or drop the index when writing. to_csv has arguments you can pass to address these requirements.
Here’s a table listing some common scenarios of writing to CSV files and the corresponding arguments you can use for them.

Footnotes
- The default separator is assumed to be a comma (
','). Don’t change this unless you know you need to.- By default, the index of
dfis written as the first column. If your DataFrame does not have an index (IOW, thedf.indexis the defaultRangeIndex), then you will want to setindex=Falsewhen writing. To explain this in a different way, if your data DOES have an index, you can (and should) useindex=Trueor just leave it out completely (as the default isTrue).- It would be wise to set this parameter if you are writing string data so that other applications know how to read your data. This will also avoid any potential
UnicodeEncodeErrors you might encounter while saving.- Compression is recommended if you are writing large DataFrames (>100K rows) to disk as it will result in much smaller output files.
OTOH, it will mean the write time will increase (and consequently, the
read time since the file will need to be decompressed).
Method 4
Example of export in file with full path on Windows and in case your file has headers:
df.to_csv (r'C:UsersJohnDesktopexport_dataframe.csv', index = None, header=True)
For example, if you want to store the file in same directory where your script is, with utf-8 encoding and tab as separator:
df.to_csv(r'./export/dftocsv.csv', sep='t', encoding='utf-8', header='true')
Method 5
Something else you can try if you are having issues encoding to ‘utf-8’ and want to go cell by cell you could try the following.
Python 2
(Where “df” is your DataFrame object.)
for column in df.columns:
for idx in df<div class="su-column su-column-size-1-2"><div class="su-column-inner su-u-clearfix su-u-trim"></div></div>.index:
x = df.get_value(idx,column)
try:
x = unicode(x.encode('utf-8','ignore'),errors ='ignore') if type(x) == unicode else unicode(str(x),errors='ignore')
df.set_value(idx,column,x)
except Exception:
print 'encoding error: {0} {1}'.format(idx,column)
df.set_value(idx,column,'')
continue
Then try:
df.to_csv(file_name)
You can check the encoding of the columns by:
for column in df.columns:
print '{0} {1}'.format(str(type(df<div class="su-column su-column-size-1-2"><div class="su-column-inner su-u-clearfix su-u-trim"></div></div>[0])),str(column))
Warning: errors=’ignore’ will just omit the character e.g.
IN: unicode('Regenexxxae',errors='ignore')
OUT: u'Regenexx'
Python 3
for column in df.columns:
for idx in df<div class="su-column su-column-size-1-2"><div class="su-column-inner su-u-clearfix su-u-trim"></div></div>.index:
x = df.get_value(idx,column)
try:
x = x if type(x) == str else str(x).encode('utf-8','ignore').decode('utf-8','ignore')
df.set_value(idx,column,x)
except Exception:
print('encoding error: {0} {1}'.format(idx,column))
df.set_value(idx,column,'')
continue
Method 6
Sometimes you face these problems if you specify UTF-8 encoding also.
I recommend you to specify encoding while reading file and same encoding while writing to file.
This might solve your problem.
Method 7
it could be not the answer for this case, but as I had the same error-message with .to_csvI tried .toCSV('name.csv') and the error-message was different (“SparseDataFrame' object has no attribute 'toCSV'). So the problem was solved by turning dataframe to dense dataframe
df.to_dense().to_csv("submission.csv", index = False, sep=',', encoding='utf-8')
Method 8
If above solution not working for anyone or the CSV is getting messed up, just remove sep='t' from the line like this:
df.to_csv(file_name, encoding='utf-8')
Method 9
I would avoid using the ‘t’ separate and would create issues when reading the dataset again.
df.to_csv(file_name, encoding=’utf-8′)
All methods was sourced from stackoverflow.com or stackexchange.com, is licensed under cc by-sa 2.5, cc by-sa 3.0 and cc by-sa 4.0