142

I have pandas DataFrame like this

        X    Y  Z    Value 
0      18   55  1      70   
1      18   55  2      67 
2      18   57  2      75     
3      18   58  1      35  
4      19   54  2      70   

I want to write this data to a text file that looks like this:

18 55 1 70   
18 55 2 67 
18 57 2 75     
18 58 1 35  
19 54 2 70 

I have tried something like

f = open(writePath, 'a')
f.writelines(['\n', str(data['X']), ' ', str(data['Y']), ' ', str(data['Z']), ' ', str(data['Value'])])
f.close()

It's not correct. How to do this?

8 Answers 8

222

You can just use np.savetxt and access the np attribute .values:

np.savetxt(r'c:\data\np.txt', df.values, fmt='%d')

yields:

18 55 1 70
18 55 2 67
18 57 2 75
18 58 1 35
19 54 2 70

or to_csv:

df.to_csv(r'c:\data\pandas.txt', header=None, index=None, sep=' ', mode='a')

Note for np.savetxt you'd have to pass a filehandle that has been created with append mode.

4
  • 1
    Why is this answer getting so many more upvotes than @johndanger's? His only uses df, so seems preferable to using np. Commented Jul 9, 2021 at 21:22
  • 4
    For those dealing with str values; pass fmt=%s. Commented Mar 16, 2022 at 9:48
  • 1
    What if I need to keep column names?
    – Shaun Han
    Commented Sep 23, 2022 at 8:25
  • 1
    @ShaunHan Did you have any update to do it ? I've posted an open question there
    – TourEiffel
    Commented Nov 21, 2022 at 15:44
90

The native way to do this is to use df.to_string() :

with open(writePath, 'a') as f:
    f.write(df.to_string(header=False, index=False))

Which will output the following:

18 55 1 70   
18 55 2 67 
18 57 2 75     
18 58 1 35  
19 54 2 70 

This method also lets you easily choose which columns to print with the columns attribute, lets you keep the column, index labels if you wish, and has other attributes for spacing ect.

3
  • 2
    Seems like this should be top answer, doesn't use any additional libraries than user requested (pandas). Commented Jul 9, 2021 at 21:22
  • @FredZimmerman I guess. df.to_csv() is usually better than this. And many people prefer working with np for speed reasons, they can make good use of np.savetxt(), which is still part of the question since it uses pandas for the Dataframe as a start. Commented Jan 5, 2022 at 19:21
  • df.to_csv() would not generalize well to a dataframe that contains strings, as the method will insert quotes everywhere. But np.savetxt() with fmt='%s' will handle strings very well.
    – yzerman
    Commented Sep 6, 2022 at 4:15
37

You can use pandas.DataFrame.to_csv(), and setting both index and header to False:

In [97]: print df.to_csv(sep=' ', index=False, header=False)
18 55 1 70
18 55 2 67
18 57 2 75
18 58 1 35
19 54 2 70

pandas.DataFrame.to_csv can write to a file directly, for more info you can refer to the docs linked above.

4
  • 2
    this will run into a lot of trouble when escaping needs to happen, it's not the solution to the general Pandas case!
    – matanox
    Commented Aug 11, 2018 at 12:45
  • I'm surprised by the amount of upvotes on this. Not something I'd recommend Commented Mar 15, 2022 at 14:50
  • @StressedBoi_69420 care to elaborate? My answer here is of course not ideal as OP picked the better answer. It would be great if you provide more context, better still you provide an alternative solution -- so everyone can learn from your insight.
    – Anzel
    Commented Mar 15, 2022 at 18:28
  • To print(...) isn't to store to a text file canonically; also your solution seems to use Python 2. Commented Mar 16, 2022 at 9:44
18

Late to the party: Try this>

base_filename = 'Values.txt'
with open(os.path.join(WorkingFolder, base_filename),'w') as outfile:
    df.to_string(outfile)
#Neatly allocate all columns and rows to a .txt file
2
  • 2
    This doesn't give a tab delimited text file, seems to output a space delimited file. I like the elegance of this code, is there a way to make the output tab delimited?
    – AHegde
    Commented Aug 12, 2017 at 6:09
  • @AHegde If you use tab delim then it would not have the beautiful formatting? Im just guessing as using space allows for neat alignment of rows/columns with different length. Commented Sep 5, 2022 at 9:04
13

@AHegde - To get the tab delimited output use separator sep='\t'.

For df.to_csv:

df.to_csv(r'c:\data\pandas.txt', header=None, index=None, sep='\t', mode='a')

For np.savetxt:

np.savetxt(r'c:\data\np.txt', df.values, fmt='%d', delimiter='\t')
2

Way to get Excel data to text file in tab delimited form. Need to use Pandas as well as xlrd.

import pandas as pd
import xlrd
import os

Path="C:\downloads"
wb = pd.ExcelFile(Path+"\\input.xlsx", engine=None)
sheet2 = pd.read_excel(wb, sheet_name="Sheet1")
Excel_Filter=sheet2[sheet2['Name']=='Test']
Excel_Filter.to_excel("C:\downloads\\output.xlsx", index=None)
wb2=xlrd.open_workbook(Path+"\\output.xlsx")
df=wb2.sheet_by_name("Sheet1")
x=df.nrows
y=df.ncols

for i in range(0,x):
    for j in range(0,y):
        A=str(df.cell_value(i,j))
        f=open(Path+"\\emails.txt", "a")
        f.write(A+"\t")
        f.close()
    f=open(Path+"\\emails.txt", "a")
    f.write("\n")
    f.close()
os.remove(Path+"\\output.xlsx")
print(Excel_Filter)

We need to first generate the xlsx file with filtered data and then convert the information into a text file.

Depending on requirements, we can use \n \t for loops and type of data we want in the text file.

0
2

I used a slightly modified version:

with open(file_name, 'w', encoding = 'utf-8') as f:
    for rec_index, rec in df.iterrows():
        f.write(rec['<field>'] + '\n')

I had to write the contents of a dataframe field (that was delimited) as a text file.

1

If you have a Dataframe that is an output of pandas compare method, such a dataframe looks like below when it is printed:

    grossRevenue          netRevenue               defaultCost
             self  other         self         other             self  other
2098        150.0  160.0          NaN           NaN              NaN    NaN
2110       1400.0  400.0          NaN           NaN              NaN    NaN
2127          NaN    NaN          NaN           NaN              0.0  909.0
2137          NaN    NaN     0.000000  8.900000e+01              NaN    NaN
2150          NaN    NaN     0.000000  8.888889e+07              NaN    NaN
2162          NaN    NaN  1815.000039  1.815000e+03              NaN    NaN

I was looking to persist the whole dataframe into a text file as its visible above. Using pandas's to_csv or numpy's savetxt does not achieve this goal. I used plain old print to log the same into a text file:

 with open('file1.txt', mode='w') as file_object:
            print(data_frame, file=file_object)

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