6

Code to create sample dataframe:

Sample = [{'account': 'Jones LLC', 'Jan': 150, 'Feb': 200, 'Mar': [[.332, .326], [.058, .138]]},
     {'account': 'Alpha Co',  'Jan': 200, 'Feb': 210, 'Mar': [[.234, .246], [.234, .395]]},
     {'account': 'Blue Inc',  'Jan': 50,  'Feb': 90,  'Mar': [[.084, .23], [.745, .923]]}]
df = pd.DataFrame(Sample)

Sample Dataframe visualized:

 df:
  account        Jan      Feb          Mar
Jones LLC  |     150   |   200    | [.332, .326], [.058, .138]
Alpha Co   |     200   |   210    | [[.234, .246], [.234, .395]
Blue Inc   |     50    |   90     | [[.084, .23], [.745, .923]

I'm looking for a formula to combine Jan and Feb columns into one array, outputting in a New column this array.

Expected output:

 df:
  account        Jan      Feb          Mar                             New
Jones LLC  |     150   |   200    | [.332, .326], [.058, .138]   |    [150, 200]
Alpha Co   |     200   |   210    | [[.234, .246], [.234, .395]  |    [200, 210]
Blue Inc   |     50    |   90     | [[.084, .23], [.745, .923]   |    [50, 90]
1
  • 1
    Be mindful of the speed of apply. See my post for a comparison of the two.
    – piRSquared
    Jul 10 '17 at 20:17
8

Use values.tolist

df.assign(New=df[['Feb', 'Jan']].values.tolist())
# inplace... use this
# df['New'] = df[['Feb', 'Jan']].values.tolist()

   Feb  Jan                               Mar    account         New
0  200  150  [[0.332, 0.326], [0.058, 0.138]]  Jones LLC  [200, 150]
1  210  200  [[0.234, 0.246], [0.234, 0.395]]   Alpha Co  [210, 200]
2   90   50   [[0.084, 0.23], [0.745, 0.923]]   Blue Inc    [90, 50]

Timing with larger data
Avoiding apply is more than 60 times faster with a 3,000 row dataframe.

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

%timeit df.assign(New=df[['Feb', 'Jan']].values.tolist())
%timeit df.assign(New=df.apply(lambda x: [x['Jan'], x['Feb']], axis=1))

1000 loops, best of 3: 947 µs per loop
10 loops, best of 3: 61.7 ms per loop

And 160 times faster for 30,000 row dataframe

df = pd.concat([df] * 10000, ignore_index=True)

100 loops, best of 3: 3.58 ms per loop
1 loop, best of 3: 586 ms per loop
0
7

List comprehension

This is the way to go if you're looking for speed.

df['New'] = [[x, y] for x, y in zip(df.Jan, df.Feb)]
df

   Feb  Jan                               Mar    account         New
0  200  150  [[0.332, 0.326], [0.058, 0.138]]  Jones LLC  [150, 200]
1  210  200  [[0.234, 0.246], [0.234, 0.395]]   Alpha Co  [200, 210]
2   90   50   [[0.084, 0.23], [0.745, 0.923]]   Blue Inc    [50, 90]

If you want to drop your original columns, you can use

df.drop(['Jan', 'Feb'], axis=1, inplace=True)

df.apply with axis=1

This is here for the sake of completion—I do not condone the use of apply anymore.

df['New'] = df.apply(lambda x: [x['Jan'], x['Feb']], axis=1)    
df

   Feb  Jan                               Mar    account         New
0  200  150  [[0.332, 0.326], [0.058, 0.138]]  Jones LLC  [150, 200]
1  210  200  [[0.234, 0.246], [0.234, 0.395]]   Alpha Co  [200, 210]
2   90   50   [[0.084, 0.23], [0.745, 0.923]]   Blue Inc    [50, 90]

Performance
Repeating piR's tests for small data (3000 rows) including the list comprehension method, we have—

%timeit df.assign(New=df[['Feb', 'Jan']].values.tolist())
%timeit df.assign(New=df.apply(lambda x: [x['Jan'], x['Feb']], axis=1))
%timeit df.assign(New=[[x, y] for x, y in zip(df.Jan, df.Feb)])

2.76 ms ± 596 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
152 ms ± 9.47 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
1.59 ms ± 13.3 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

And for larger data (30,000 rows)—

5.95 ms ± 527 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
1.53 s ± 165 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
8.79 ms ± 793 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

Both the list comprehension and the .tolist() are competitive methods. Which one you decide to use is a matter of taste. Do not use apply!

1
  • 1
    ! Thank you. This worked. I can't accept an answer for another few minutes but I will :)
    – Ashley O
    Jul 10 '17 at 19:44
5

You can also try df['New'] = list(zip(df.Feb, df.Jan))

or using tolist df['New'] = df.ix[:,0:2].values.tolist()

1
  • Ya know, this post taught me that pandas can be nice, and cutthroat at the same time. Edited my answer.
    – cs95
    May 16 '18 at 19:20

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