0

I'm attempting to take a dataset with 5 columns of data and order the data in each row from lowest to highest. So far I've come up with a method that will loop through 0-4 and return value, but I get stuck at there as I can't figure out how create columns for all 5 row values. Any help would be greatly appreciated.

import pandas as pd
import csv
import numpy as np

df = pd.read_csv('ValueOrder.csv')

df_2 = pd.DataFrame()

for val in [0,1,2,3,4]:

    df_2 = df_2.assign(val=df.apply(lambda x: np.partition(x, val)[val], axis='columns'))

print(df_2)

Data:

S1       S2      S3      S4      S5
1629027 1627752 203145  1713    203458
1629027 45222   1627752 203145  1713
1629027 203458  203145  1627752 1713
1627752 203145  203458  45222   1629027
1627752 203145  1629027 1713    45222

Expected outcome:

 S1      S2      S3      S4      S5
1713    203145  203458  1627752 1629027
1713    45222   203145  1627752 1629027
1713    203145  203458  1627752 1629027
45222   203145  203458  1627752 1629027
1713    45222   203145  1627752 1629027

marked as duplicate by user3483203 pandas Jan 15 at 22:33

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • @roganjosh probably still a dupe, but that sorts by an explicit row. This doesn't maintain column order. – user3483203 Jan 15 at 22:30
  • Ooops, not a dupe of that – roganjosh Jan 15 at 22:30
  • @user3483203 saw it exactly at the time you posted :) – roganjosh Jan 15 at 22:31
  • @roganjosh I want to say yes but that only argsorts the entire thing by one of the rows. They want each row to be sorted individually. This is a job for np.sort(... axis=1) but I can't find that dupe. – cs95 Jan 15 at 22:31
  • 1
    More precisely, the answer is df[:] = np.sort(df, axis=1) but I cannot find a dupe. – cs95 Jan 15 at 22:32
0

Try:

pd.DataFrame(np.sort(df.values, axis=1), index=df.index, columns=df.columns)

Output:

      S1      S2      S3       S4       S5
0   1713  203145  203458  1627752  1629027
1   1713   45222  203145  1627752  1629027
2   1713  203145  203458  1627752  1629027
3  45222  203145  203458  1627752  1629027
4   1713   45222  203145  1627752  1629027

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