3

I have a base table like:

enter image description here

col1 is a column of independent values, col2 is an aggregate based on Country and Type combo. I want to compute columns col3 through col5 with the following logic:

  1. col3: ratio of an element in col1 to the total of col1
  2. col4: ratio of an element in col1 to the corresponding element in col2
  3. col5: the natural exponent of the product of row-wise elements in col3 and col4

I wrote a function like the below to achieve this:

def calculate(df):
  for i in range(len(df)):
    df['col3'].loc[i] = df['col1'].loc[i]/sum(df['col1'])
    df['col4'].loc[i] = df['col1'].loc[i]/df['col2'].loc[i]
    df['col5'].loc[i] = np.exp(df['col3'].loc[i]*df['col4'].loc[i])
  return df

This function executes, and gives me the expected results, but the notebook also throws a warning:

SettingWithCopyWarning:

A value is trying to be set on a copy of a slice from a DataFrame

See the caveats in the documentation: http://pandas.pydata.org/pandas-docs/stable/indexing.html#indexing-view-versus-copy

I'm not sure if I'm writing the best function here. Any help would be appreciated! Thanks.

  • 1
    Well you should aim to vectorize and not use for-loops. How about you share your dataset here and expected output --> Much easier to help. Nice effort though! – Anton vBR May 13 '18 at 14:35
  • Did one of the below solutions help? Feel free to accept one (tick on left), or ask for clarification. – jpp May 16 '18 at 11:39
  • Apologies - I'm new to the platform. Yes, it helped! Thank you so much for your comments. – shan42nd May 16 '18 at 13:54
2

I think apply and loop in pandas is best avoid, so better and faster is use vewctorized solution:

df = pd.DataFrame({'col1':[4,5,4,5,5,4],
                   'col2':[7,8,9,4,2,3],
                   'col3':[1,3,5,7,1,0],
                   'col4':[5,3,6,9,2,4],
                   'col5':[1,4,3,4,0,4]})

print (df)
   col1  col2  col3  col4  col5
0     4     7     1     5     1
1     5     8     3     3     4
2     4     9     5     6     3
3     5     4     7     9     4
4     5     2     1     2     0
5     4     3     0     4     4

df['col3'] = df['col1']/(df['col1']).sum()
df['col4'] = df['col1']/df['col2']
df['col5'] = np.exp(df['col3']*df['col4'])
print (df)
   col1  col2      col3      col4      col5
0     4     7  0.148148  0.571429  1.088343
1     5     8  0.185185  0.625000  1.122705
2     4     9  0.148148  0.444444  1.068060
3     5     4  0.185185  1.250000  1.260466
4     5     2  0.185185  2.500000  1.588774
5     4     3  0.148148  1.333333  1.218391

Timings:

df = pd.DataFrame({'col1':[4,5,4,5,5,4],
                   'col2':[7,8,9,4,2,3],
                   'col3':[1,3,5,7,1,0],
                   'col4':[5,3,6,9,2,4],
                   'col5':[1,4,3,4,0,4]})

#print (df)

#6000 rows
df = pd.concat([df] * 1000, ignore_index=True)

In [211]: %%timeit
     ...: df['col3'] = df['col1']/(df['col1']).sum()
     ...: df['col4'] = df['col1']/df['col2']
     ...: df['col5'] = np.exp(df['col3']*df['col4'])
     ...: 
1.49 ms ± 104 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

Unfortunately loop solution is really slow for this sample, so tested in 60 rows DataFrame only:

#60 rows
df = pd.concat([df] * 10, ignore_index=True)

In [3]: %%timeit
   ...: (calculate(df))
   ...: 
C:\Anaconda3\lib\site-packages\pandas\core\indexing.py:194: SettingWithCopyWarning: 
A value is trying to be set on a copy of a slice from a DataFrame

See the caveats in the documentation: http://pandas.pydata.org/pandas-docs/stable/indexing.html#indexing-view-versus-copy
  self._setitem_with_indexer(indexer, value)
10.2 s ± 410 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
1

Aim for vectorised calculations with pandas. Loopy calculations are possible, but they are inefficient because they are not processed with contiguous numeric arrays.

col3: ratio of an element in col1 to the total of col1

df['col3'] = df['col1'] / df['col1'].sum()

col4: ratio of an element in col1 to the corresponding element in col2

df['col4'] = df['col1'] / df['col2']

col5: the natural exponent of the product of row-wise elements in col3 and col4

df['col5'] = np.exp(df['col3'] * df['col4'])

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