3

I have a pandas dataframe sorted by a number of columns. Now I'd like to split the dataframe in predefined percentages, so as to extract and name a few segments.

For example, I want to take the first 20% of rows to create the first segment, then the next 30% for the second segment and leave the remaining 50% to the third segment.

How would I achieve that?

4

Use numpy.split:

a, b, c = np.split(df, [int(.2*len(df)), int(.5*len(df))])

Sample:

np.random.seed(100)
df = pd.DataFrame(np.random.random((20,5)), columns=list('ABCDE'))
#print (df)

a, b, c = np.split(df, [int(.2*len(df)), int(.5*len(df))])
print (a)
          A         B         C         D         E
0  0.543405  0.278369  0.424518  0.844776  0.004719
1  0.121569  0.670749  0.825853  0.136707  0.575093
2  0.891322  0.209202  0.185328  0.108377  0.219697
3  0.978624  0.811683  0.171941  0.816225  0.274074

print (b)
          A         B         C         D         E
4  0.431704  0.940030  0.817649  0.336112  0.175410
5  0.372832  0.005689  0.252426  0.795663  0.015255
6  0.598843  0.603805  0.105148  0.381943  0.036476
7  0.890412  0.980921  0.059942  0.890546  0.576901
8  0.742480  0.630184  0.581842  0.020439  0.210027
9  0.544685  0.769115  0.250695  0.285896  0.852395

print (c)
           A         B         C         D         E
10  0.975006  0.884853  0.359508  0.598859  0.354796
11  0.340190  0.178081  0.237694  0.044862  0.505431
12  0.376252  0.592805  0.629942  0.142600  0.933841
13  0.946380  0.602297  0.387766  0.363188  0.204345
14  0.276765  0.246536  0.173608  0.966610  0.957013
15  0.597974  0.731301  0.340385  0.092056  0.463498
16  0.508699  0.088460  0.528035  0.992158  0.395036
17  0.335596  0.805451  0.754349  0.313066  0.634037
18  0.540405  0.296794  0.110788  0.312640  0.456979
19  0.658940  0.254258  0.641101  0.200124  0.657625
  • Why is this question not a dupe of this: stackoverflow.com/questions/38250710/…? – EdChum May 4 '17 at 8:17
  • Because there is randomize, this solution not. But is similar. – jezrael May 4 '17 at 8:17
  • I'd still say this is a dupe certainly related, the removal of the randomisation step is trivial IMO – EdChum May 4 '17 at 8:20
  • Yes, it is part dupe. – jezrael May 4 '17 at 8:21
  • This works like a charm. It is similar to the other question you are mentioning, but without the randomization part. – Dimitris P. May 4 '17 at 8:26

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