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=,dtype=object) sheets_dict[list(sheets_dict.keys())]
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
For columns containing a
True, followed by a
1 is loaded into the dataframe as
True as well.
The opposite happens as well: if a
1 appears first in the column, followed by a
True is loaded as
1 in the dataframe.
False makes all subsequent
0 to be converted into
True switches all subsequent
True, while the first
0 converts all subsequent
How can I force
read_excel to not interpret anything and read the Excel sheet as is? Any help would be appreciated.