13

I need to add some 'noise' to my data, so I would like to add a different random number to every cell in my pandas dataframe. This code works, but seems unpythonic. Is there a better way?

import pandas as pd
import numpy as np
df = pd.DataFrame(0.0, index=[1,2,3,4,5], columns=list('ABC') )
print df
for x,line in df.iterrows():
  for col in df:
     line[col] = line[col] + (np.random.rand()-0.5)/1000.0
 print df
5
  • Why not just df = pd.DataFrame(np.random.randn(3,5), columns=list('ABC')) what's the significance of the -0.5/1000.0 here
    – EdChum
    Commented May 4, 2017 at 15:55
  • This way df.apply(lambda x: x+(np.random.rand()-0.5)/1000) works fine
    – e.arbitrio
    Commented May 4, 2017 at 16:01
  • e.arbitrio That didn't work. I got the same random number for all the rows in each column.
    – TPM
    Commented May 4, 2017 at 16:08
  • @e.arbitrio don't use apply here. it's needlessly slow. better to just use arrays
    – Paul H
    Commented May 4, 2017 at 16:13
  • yes you were right @TPM. I would say df.applymap(lambda x: x + (np.random.rand()-0.5)/1000)
    – e.arbitrio
    Commented May 4, 2017 at 16:16

3 Answers 3

15
df + np.random.rand(*df.shape) / 10000.0

OR

Let's use applymap:

df = pd.DataFrame(1.0, index=[1,2,3,4,5], columns=list('ABC') )

df.applymap(lambda x: x + np.random.rand()/10000.0)

output:

                                                   A  \
1  [[1.00006953418, 1.00009164785, 1.00003177706]...   
2  [[1.00007291245, 1.00004186046, 1.00006935173]...   
3  [[1.00000490127, 1.0000633115, 1.00004117181],...   
4  [[1.00007159622, 1.0000559506, 1.00007038891],...   
5  [[1.00000980335, 1.00004760836, 1.00004214422]...   

                                                   B  \
1  [[1.00000320322, 1.00006981682, 1.00008912557]...   
2  [[1.00007443802, 1.00009270815, 1.00007225764]...   
3  [[1.00001371778, 1.00001512412, 1.00007986851]...   
4  [[1.00005883343, 1.00007936509, 1.00009523334]...   
5  [[1.00009329606, 1.00003174878, 1.00006187704]...   

                                                   C  
1  [[1.00005894836, 1.00006592776, 1.0000171843],...  
2  [[1.00009085391, 1.00006606979, 1.00001755092]...  
3  [[1.00009736701, 1.00007240762, 1.00004558753]...  
4  [[1.00003981393, 1.00007505714, 1.00007209959]...  
5  [[1.0000031608, 1.00009372917, 1.00001960112],...  
3
  • Thank you. That works, but only for a 5x3 dataframe. Can you edit to remove the (5,3) part (it will still work), and then I will mark as the correct answer.
    – TPM
    Commented May 4, 2017 at 16:18
  • 1
    @Scott, just to check your first solution adds the same random number to each element of the dataframe, whereas your second solution adds a separate random number to each value in the df?
    – tfcoe
    Commented Jun 6, 2017 at 15:40
  • @tfcoe You are correct. Let's modify that first statement a bit. And it is fixed. Commented Jun 6, 2017 at 15:46
4

This would be the more succinct method and equivalent:

In [147]:
df = pd.DataFrame((np.random.rand(5,3) - 0.5)/1000.0, columns=list('ABC'))
df

Out[147]:
          A         B         C
0  0.000381 -0.000167  0.000020
1  0.000482  0.000007 -0.000281
2 -0.000032 -0.000402 -0.000251
3 -0.000037 -0.000319  0.000260
4 -0.000035  0.000178  0.000166

If you're doing this to an existing df with non-zero values then add:

In [149]:
df = pd.DataFrame(np.random.randn(5,3), columns=list('ABC'))
df

Out[149]:
          A         B         C
0 -1.705644  0.149067  0.835378
1 -0.956335 -0.586120  0.212981
2  0.550727 -0.401768  1.421064
3  0.348885  0.879210  0.136858
4  0.271063  0.132579  1.233789

In [154]:
df.add((np.random.rand(df.shape[0], df.shape[1]) - 0.5)/1000.0)

Out[154]:
          A         B         C
0 -1.705459  0.148671  0.835761
1 -0.956745 -0.586382  0.213339
2  0.550368 -0.401651  1.421515
3  0.348938  0.878923  0.136914
4  0.270864  0.132864  1.233622
3
  • 1
    This is not what I asked. Maybe I wasn't clear enough in my question. I don't want random data, I want to add a small mean-zero random number to existing data.
    – TPM
    Commented May 4, 2017 at 16:07
  • Your example showed your initial value of 0, this would be the same, you will need to update your question with clearer explanation that is representative of your problem
    – EdChum
    Commented May 4, 2017 at 16:09
  • For instance are you really after df = pd.DataFrame((np.random.rand(5,3) - 0.5)/1000.0, columns=list('ABC'))
    – EdChum
    Commented May 4, 2017 at 16:10
4

For nonzero data:

df + (np.random.rand(df.shape)-0.5)*0.001

OR

df + np.random.uniform(-0.01,0.01,(df.shape)))

For cases where your data frame contains zeros that you wish to keep as zero:

df * (1 + (np.random.rand(df.shape)-0.5)*0.001)

OR

df * (1 + np.random.uniform(-0.01,0.01,(df.shape)))

I think either of these should work, its a case of generating a same size "dataframe" (or perhaps array of arrays) as your existing df and adding it to your existing df (multiplying by 1 + random for cases where you wish zeros to remain zero). With the uniform function you can determine the scale of your noise by altering the 0.01 variable.

1
  • Ex.4 is v. useful for adding percentage-based noise to the data. +1
    – pds
    Commented Apr 27 at 2:28

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