I have an Excel file (.xlsx) with about 800 rows and 128 columns with pretty dense data in the grid. There are about 9500 cells that I am trying to replace the cell values of using Pandas data frame:

xlsx = pandas.ExcelFile(filename)
frame = xlsx.parse(xlsx.sheet_names[0])
media_frame = frame[media_headers] # just get the cols that need replacing

from_filenames = get_from_filenames() # returns ~9500 filenames to replace in DF
to_filenames = get_to_filenames()

media_frame = media_frame.replace(from_filenames, to_filenames)

The replace() takes 60 seconds. Any way to speed this up? This is not huge data or task, I was expecting pandas to move much faster. FYI I tried doing the same processing with same file in CSV, but the time savings was minimal (about 50 seconds on the replace())

  • from_filenames and to_filenames is lists of dicts? – jezrael Oct 4 '16 at 6:40
  • @jezrael no just flat lists of strings. Cell values – Neil Oct 4 '16 at 6:42

create pd.Series representing a map from filenames to filenames.
stack our dataframe, map, then unstack


import pandas as pd
import numpy as np
from string import letters

media_frame = pd.DataFrame(
        np.random.choice(list(letters), 9500 * 800 * 3) \
          .reshape(3, -1)).sum().values.reshape(9500, -1))

u = np.unique(media_frame.values)
from_filenames = pd.Series(u)
to_filenames = from_filenames.str[1:] + from_filenames.str[0]

m = pd.Series(to_filenames.values, from_filenames.values)




5 x 5 dataframe

enter image description here

100 x 100

enter image description here

9500 x 800

enter image description here

9500 x 800
map using series vs dict
d = dict(zip(from_filenames, to_filenames))

enter image description here

| improve this answer | |

I got the 60 second task to complete in 10 seconds by removing replace() altogether and using set_value() one element at a time.

| improve this answer | |

I found creating new col and dropping the existing column one is faster than waiting forever. ;)

| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.