I have a file which has data separated with different spaces and column names are also having spaces.
Type Dec LookupTable Field Name Field Len Start Pos
NUM 0 _ sample data 5 1
NUM 0 _ sample data 10 6
CHAR 0 _ sample data 60 16
NUM 0 _ sample data 3 76
CHAR 0 _ sample data 60 79
CHAR 0 _ sample data 60 139
CHAR 0 _ sample data 60 199
CHAR 0 _ sample data 60 259
NUM 0 _ sample data 3 319
CHAR 0 _ sample data 60 322
CHAR 0 _ sample data 60 382
NUM 0 _ sample data 3 442
CHAR 0 _ sample data 60 445
I am reading this file like this
df= pd.read_fwf('./temp.txt', colspecs= 'infer')
and getting the dataframe with columns which are separated by spaces nan values
I want to drop the Nan columns and replace its previous columns name with the empty one.
How can we achieve this in an efficient way?