# How to create lists from definite cell values of a Pandas dataframe?

From the following Pandas dataframe (actually a distance matrix):

``````        foo   foo   bar   bar   spam  spam
foo     0.00  0.35  0.83  0.84  0.90  0.89
foo     0.35  0.00  0.86  0.85  0.92  0.91
bar     0.83  0.86  0.00  0.25  0.88  0.87
bar     0.84  0.85  0.25  0.00  0.82  0.86
spam    0.90  0.92  0.88  0.82  0.00  0.50
spam    0.89  0.91  0.87  0.86  0.50  0.00
``````

I was trying to create lists deriving from all combinations of `['foo','bar','spam']`, to obtain the following lists with unique values:

``````foo_foo = [0.35]
foo_bar = [0.83,0.84,0.86,0.85]
foo_spam = [0.90,0.89,0.92,0.91]
bar_bar = [0.25]
bar_spam = [0.88,0.87,0.82,0.86]
spam_spam = [0.50]
``````

I used df.get_values and iterrows without success, and also these answers How to get a value from a cell of a data frame? and pandas: how to get scalar value on a cell using conditional indexing were not useful.

Is there a way to afford that? Any help would be appreciated

IIUC:

``````In [93]: from itertools import combinations

In [94]: s = pd.Series(df.values[np.triu_indices(len(df), 1)],
...:               index=pd.MultiIndex.from_tuples(tuple(combinations(df.index, 2))))
...:

In [95]: s
Out[95]:
foo   foo     0.35
bar     0.83
bar     0.84
spam    0.90
spam    0.89
bar     0.86
bar     0.85
spam    0.92
spam    0.91
bar   bar     0.25
spam    0.88
spam    0.87
spam    0.82
spam    0.86
spam  spam    0.50
dtype: float64
``````

as a DF:

``````In [96]: s.reset_index(name='dist')
Out[96]:
level_0 level_1  dist
0      foo     foo  0.35
1      foo     bar  0.83
2      foo     bar  0.84
3      foo    spam  0.90
4      foo    spam  0.89
5      foo     bar  0.86
6      foo     bar  0.85
7      foo    spam  0.92
8      foo    spam  0.91
9      bar     bar  0.25
10     bar    spam  0.88
11     bar    spam  0.87
12     bar    spam  0.82
13     bar    spam  0.86
14    spam    spam  0.50
``````
• Thank you MaxU for the answer! – valeten May 20 '17 at 20:14
• @valeten, glad it helps :) – MaxU May 20 '17 at 20:15
• Sorry I'm with the smartphone...had a wrong swipe! I'll correct promptly – valeten May 20 '17 at 20:19

Let's take MaxU's solution further (give credit to his solution):

``````from itertools import combinations

s = pd.Series(df.values[np.triu_indices(len(df), 1)],
index=pd.MultiIndex.from_tuples(tuple(combinations(df.index, 2))))

df_s = s.to_frame()

df_s.index = df_s.index.map('_'.join)

df_s.groupby(level=0)[0].apply(lambda x: x.tolist())
``````

Output:

``````bar_bar                        [0.25]
bar_spam     [0.88, 0.87, 0.82, 0.86]
foo_bar      [0.83, 0.84, 0.86, 0.85]
foo_foo                        [0.35]
foo_spam      [0.9, 0.89, 0.92, 0.91]
spam_spam                       [0.5]
Name: 0, dtype: object
``````

And, lastly printing:

``````for i,v in df_out.iteritems():
print(str(i) + ' = ' + str(v))
``````

Output:

``````bar_bar = [0.25]
bar_spam = [0.88, 0.87, 0.82, 0.86]
foo_bar = [0.83, 0.84, 0.86, 0.85]
foo_foo = [0.35]
foo_spam = [0.9, 0.89, 0.92, 0.91]
spam_spam = [0.5]
``````
• Thank you Scott Boston for the help! – valeten May 20 '17 at 20:23