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I need to import an excel sheet as is in a dataframe in pandas. When using the read_excel function with dtype=object, I still get "interpreted" values.

I am using Python 3.5.4, pandas 0.23.4 in anaconda environment.

My (test) excel sheet:

header1 header2 header3 header4 header5 header6 mixed
word11  word12  word13  word14  word15  word16  word17
word21  word22  word23  word24  word25  word26  word27
TRUE    1       FALSE   0       TRUE    1       TRUE
word41  word42  word43  word44  word45  word46  0
0       TRUE    0       TRUE    TRUE    0       FALSE
1       FALSE   1       FALSE   FALSE   1       1
word71  word72  word73  word74  word75  word76  word77

So I import and print:

sheets_dict = pd.read_excel(reqFile, sheet_name=[1],dtype=object)
sheets_dict[list(sheets_dict.keys())[0]]

Imported dataframe:

  header1 header2 header3 header4 header5 header6   mixed
0  word11  word12  word13  word14  word15  word16  word17
1  word21  word22  word23  word24  word25  word26  word27
2    True       1   False       0    True       1    True
3  word41  word42  word43  word44  word45  word46       0
4       0       1   False    True    True       0       0
5    True   False       1       0   False       1    True
6  word71  word72  word73  word74  word75  word76  word77

Column1:
For columns containing a True, followed by a 1, the 1 is loaded into the dataframe as True as well.

Column2:
The opposite happens as well: if a 1 appears first in the column, followed by a True, the True is loaded as 1 in the dataframe.

Column3:
False makes all subsequent 0 to be converted into False

Column4:
Opposite column3

Column5/6:
all good

Column7:
First True switches all subsequent 1's to True, while the first 0 converts all subsequent False to 0.

How can I force read_excel to not interpret anything and read the Excel sheet as is? Any help would be appreciated.

  • set dtype=object in read_excel. Does it help? – Fariborz Ghavamian Jun 15 '19 at 22:43
  • I am using dtype=object already, but does not seem to help – Werner Gillijns Jun 16 '19 at 7:25
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You can force pandas to set column type to str instead of auto-converting to boolean and integer in an unpredictable way. If this works, you can insert a conditional so that only "TRUE" and "FALSE" are converted into boolean, and numbers 1 and 0 are converted into int type. The converters parameter takes a dictionary.

'df = pd.read_excel('test.xlsx', sheetname='Sheet1', header=0,          
                    converters={'header1':str,'header2':str})'
  • This works! I just need to create a converter dictionary to cover my whole range of columns. Thanks! – Werner Gillijns Jun 16 '19 at 7:38
  • Glad I could help! – Jennifer E. Yoon Jun 16 '19 at 14:31
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So to force what i need i did the following:

sheets_dict = pd.read_excel(reqFile, sheet_name=[1],dtype=object)
keys = sheets_dict[list(sheets_dict.keys())[0]].keys()
values = [str] * len(keys)
convertDict = dict(zip(keys, values))
sheets_dict = pd.read_excel(reqFile, sheet_name=[1],dtype=object,converters=convertDict)

Like this i get an exact copy of my excel sheet:

  header1 header2 header3 header4 header5 header6   mixed
0  word11  word12  word13  word14  word15  word16  word17
1  word21  word22  word23  word24  word25  word26  word27
2    True       1   False       0    True       1    True
3  word41  word42  word43  word44  word45  word46       0
4       0    True       0    True    True       0   False
5       1   False       1   False   False       1       1
6  word71  word72  word73  word74  word75  word76  word77

Only disadvantage is that i need to read in the sheet twice.

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