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List B is expanded at index positions where list A has adjacent matching values using groupby

A = [476, 1440, 3060, 3060, 500,500]
B = [0,4,10,15]

so resultant list is:

B_update1 = [0,4,10,10,15,15]

which after some intermediate steps will be:

B_update2 = [0,4,12,10,20,20]

Now I want to take sum and mean of duplicated values which will give me back:

B_mean = [0,4,11,20]
B_sum = [0,4,22,40]

I am not sure how to do it. Any suggestions?

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Won't the mean of duplicate values always be the original value? Will they stay the same in the original list but be altered in the new list? Please explain. –  tobias_k Jan 22 '14 at 12:18
    
Can you show how you create B_updated from A and B? –  poke Jan 22 '14 at 12:21
    
its from following post at SO –  Ibe Jan 22 '14 at 12:25

2 Answers 2

up vote 1 down vote accepted
B_update1, B_update2, B_mean, B_sum = [0,4,10,10,15,15], [0,4,12,10,20,20], [],[]
from itertools import groupby
from operator import itemgetter
for num, grp in groupby(enumerate(B_update1), itemgetter(1)):
    tmp_list = [B_update2[idx] for idx, _ in grp]
    B_mean.append(sum(tmp_list)/len(tmp_list))
    B_sum.append(sum(tmp_list))
print B_mean, B_sum

Output

[0, 4, 11, 20] [0, 4, 22, 40]
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thanks. it worked as i need. –  Ibe Jan 22 '14 at 13:45

The information you essentially need is the number of repetitions:

>>> A = [476, 1440, 3060, 3060, 500, 500]
>>> B = [0, 4, 10, 15]
>>> repetitions = [len(list(g)) for n, g in groupby(A)]
>>> repetitions
[1, 1, 2, 2]

From this, you can construct both the B_update1 and return back to the simple list:

>>> B_update1 = []
>>> for i, r in enumerate(repetitions):
        B_update1.extend([B[i]] * r)
>>> B_update1
[0, 4, 10, 10, 15, 15]

>>> B_update2 = [0, 4, 12, 10, 20, 20] # MAGIC

>>> B_sum, B_mean = [], []
>>> i = 0
>>> for r in repetitions:
        s = sum(B_update2[i:i + r])
        B_sum.append(s)
        B_mean.append(s / r)
        i += r

>>> B_sum
[0, 4, 22, 40]
>>> B_mean
[0.0, 4.0, 11.0, 20.0]
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