I have 2D data that I want to apply multiple functions to. The actual code uses
xlrd and an
.xlsx file, but I'll provide the following boiler-plate so the output is easy to reproduce.
class Data: def __init__(self, value): self.value = value class Sheet: def __init__(self, data): self.data = [[Data(value) for value in row.split(',')] for row in data.split('\n')] self.ncols = max(len(row) for row in self.data) def col(self, index): return [row[index] for row in self.data]
Creating a Sheet:
fake_data = '''a, b, c, 1, 2, 3, 4 e, f, g, 5, 6, i, , 6, , , , , ''' sheet = Sheet(fake_data)
In this object,
data contains a 2D array of strings (per the input format) and I want to perform operations on the columns of this object. Nothing up to this point is in my control.
I want to do three things to this structure: transpose the rows into columns, extract
value from each
Data object, and try to convert the value to a
float. If the value isn't a
float, it should be converted to a
str with stripped white-space.
from operators import attrgetter # helper function def parse_value(value): try: return float(value) except ValueError: return str(value).strip() # transpose raw_cols = map(sheet.col, range(sheet.ncols)) # extract values value_cols = (map(attrgetter('value'), col) for col in raw_cols) # convert values typed_cols = (map(parse_value, col) for col in value_cols) # ['a', 1.0, 'e', 5.0, '', ''] # ['b', 2.0, 'f', 6.0, 6.0, ''] # ['c', 3.0, 'g', 'i', '', ''] # ['', 4.0, '', '', '', '']
It can be seen that
map is applied to each column twice. In other circumstances, I want to apply a function to each column more than two times.
Is there are better way to map multiple functions to the entries of an iterable? More over, is there away to avoid the generator comprehension and directly apply the mapping to each inner-iterable? Or, is there a better and extensible way to approach this all together?
Note that this question is not specific to
xlrd, it is only the current use-case.