17

I have a Pandas Series of lists of strings:

0                           [slim, waist, man]
1                                [slim, waistline]
2                                     [santa]

As you can see, the lists vary by length. I want an efficient way to collapse this into one series

0 slim
1 waist
2 man
3 slim
4 waistline
5 santa

I know I can break up the lists using

series_name.split(' ')

But I am having a hard time putting those strings back into one list.

Thanks!

8

You are basically just trying to flatten a nested list here.

You should just be able to iterate over the elements of the series:

slist =[]
for x in series:
    slist.extend(x)

or a slicker (but harder to understand) list comprehension:

slist = [st for row in s for st in row]
30

Here's a simple method using only pandas functions:

import pandas as pd

s = pd.Series([
    ['slim', 'waist', 'man'],
    ['slim', 'waistline'],
    ['santa']])

Then

s.apply(pd.Series).stack().reset_index(drop=True)

gives the desired output. In some cases you might want to save the original index and add a second level to index the nested elements, e.g.

0  0         slim
   1        waist
   2          man
1  0         slim
   1    waistline
2  0        santa

If this is what you want, just omit .reset_index(drop=True) from the chain.

  • Keep in mind that s.apply(pd.Series) is creating a DataFrame, whose width is the longest list in the original series. So, if you have a series with 10 lists, and one is 500 entries, it will produce a DataFrame with 10 rows, 500 columns, and potentially a lot of NAs! – machow May 10 at 15:40
6
series_name.sum()

does exactly what you need. Do make sure it's a series of lists otherwise your values will be concatenated (if string) or added (if int)

4

You can try using itertools.chain to simply flatten the lists:

In [70]: from itertools import chain
In [71]: import pandas as pnd
In [72]: s = pnd.Series([['slim', 'waist', 'man'], ['slim', 'waistline'], ['santa']])
In [73]: s
Out[73]: 
0    [slim, waist, man]
1     [slim, waistline]
2               [santa]
dtype: object
In [74]: new_s = pnd.Series(list(chain(*s.values)))
In [75]: new_s
Out[75]: 
0         slim
1        waist
2          man
3         slim
4    waistline
5        santa
dtype: object
0

You can use the list concatenation operator like below -

lst1 = ['hello','world']
lst2 = ['bye','world']
newlst = lst1 + lst2
print(newlst)
>> ['hello','world','bye','world']

Or you can use list.extend() function as below -

lst1 = ['hello','world']
lst2 = ['bye','world']
lst1.extend(lst2)
print(lst1)
>> ['hello', 'world', 'bye', 'world']

Benefits of using extend function is that it can work on multiple types, where as concatenation operator will only work if both LHS and RHS are lists.

Other examples of extend function -

lst1.extend(('Bye','Bye'))
>> ['hello', 'world', 'Bye', 'Bye']
0

Flattening and unflattening can be done using this function

def flatten(df, col):
    col_flat = pd.DataFrame([[i, x] for i, y in df[col].apply(list).iteritems() for x in y], columns=['I', col])
    col_flat = col_flat.set_index('I')
    df = df.drop(col, 1)
    df = df.merge(col_flat, left_index=True, right_index=True)

    return df

Unflattening:

def unflatten(flat_df, col):
    flat_df.groupby(level=0).agg({**{c:'first' for c in flat_df.columns}, col: list})

After unflattening we get the same dataframe except column order:

(df.sort_index(axis=1) == unflatten(flatten(df)).sort_index(axis=1)).all().all()
>> True

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