# Python Pandas cumulative sum with non fixed coefficients

I would like to compute following formula.

``````    NVI(t) = NVI(t-1) + ROC(t)*NVI(t-1)
``````

both `NVI` and `ROC` are same length `Series`.

Not sure if this can be done without a for loop.

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Maybe I wasnt being clear before, we only have NVI(0)=100, ROC is a Series, we need to generate NVI(1...t) series from the above formula progressively.

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Quite easily with the `shift` method.

``````In [21]: df = pd.DataFrame({'nvi': np.random.uniform(0, 1, 10), 'roc': np.random.uniform(0, 1, 10)})

In [22]: df
Out[22]:
nvi       roc
0  0.237223  0.256954
1  0.583694  0.473751
2  0.441392  0.734422
3  0.111818  0.947311
4  0.798595  0.537202
5  0.782228  0.053902
6  0.806241  0.640266
7  0.568911  0.945149
8  0.020364  0.331894
9  0.193462  0.090610

In [23]: df['nvi_t'] = df.nvi.shift() * df.roc

In [24]: df
Out[24]:
nvi       roc     nvi_t
0  0.237223  0.256954       NaN
1  0.583694  0.473751  0.112385
2  0.441392  0.734422  0.428678
3  0.111818  0.947311  0.418135
4  0.798595  0.537202  0.060069
5  0.782228  0.053902  0.043046
6  0.806241  0.640266  0.500834
7  0.568911  0.945149  0.762018
8  0.020364  0.331894  0.188818
9  0.193462  0.090610  0.001845
``````
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Hi, maybe i wasnt being clear. you only have NVI(0)=100, but you have the whole ROC series as what you have, so you need to compute NVI(1.....t) progressively. –  tesla1060 Aug 3 '13 at 14:35
Ah when you said "both NVI and ROC are same length Series" I took that as you having a full series for NVI, and then you wanted some alternate "prediction" Series. You're going to need a loop then. It's probably best to do all the calculations and then construct the Series or DataFrame at the end. –  TomAugspurger Aug 3 '13 at 15:47

You could use a for loop:

``````import numpy as np
from pandas import DataFrame, Series

ROC = Series(np.random.randn(10))
NVI = Series(np.zeros(len(ROC)), index=ROC.index)
NVI[0] = 100
for ii in range(1, len(ROC)):
NVI[ii] = NVI[ii-1]*(1 + ROC[ii])
DataFrame({'NVI':NVI, 'ROC':ROC})
``````

Which gives

``````Out[163]:
NVI       ROC
0   100.000000 -0.671116
1   175.200037  0.752000
2   190.944391  0.089865
3   213.050742  0.115774
4   285.011333  0.337763
5   654.873638  1.297711
6  1970.284505  2.008648
7  3738.327575  0.897354
8 -3640.266184 -1.973769
9 -8171.676652  1.244802
``````
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