# Vectorized calculation of a column's value based on a previous value of the same column?

I have a pandas dataframe with two columns A,B as below.

I want a vectorized solution for creating a new column C where C[i] = C[i-1] - A[i] + B[i].

df = pd.DataFrame(data={'A': [10, 2, 3, 4, 5, 6], 'B': [0, 1, 2, 3, 4, 5]})

>>> df
A  B
0  10  0
1   2  1
2   3  2
3   4  3
4   5  4
5   6  5


Here is the solution using for-loops:

df['C'] = df['A']

for i in range(1, len(df)):
df['C'][i] = df['C'][i-1] - df['A'][i] + df['B'][i]

>>> df
A  B   C
0  10  0  10
1   2  1   9
2   3  2   8
3   4  3   7
4   5  4   6
5   6  5   5


... which does the job.

But since loops are slow in comparison to vectorized calculations, I want a vectorized solution for this in pandas:

I tried to use the shift() method like this:

df['C'] = df['C'].shift(1).fillna(df['A']) - df['A'] + df['B']


but it didn't help since the shifted C column isn't updated with the calculation. It keeps its original values:

>>> df['C'].shift(1).fillna(df['A'])
0    10
1    10
2     2
3     3
4     4
5     5


and that produces a wrong result.

• Good question, but your example data is not great since all the differences df['B'] - df['A'] are -1 except the first row, so you wouldn't notice off-by-one bugs in solutions, indexing errors etc. – smci Apr 16 '19 at 23:18

## 1 Answer

This can be vectorized since:

• delta[i] = C[i] - C[i-1] = -A[i] +B[i]. You can get delta from A and B first, then...
• calculate cumulative sum of delta (plus C) to get full C

Code as follows:

delta = df['B'] - df['A']
delta = 0
df['C'] = df.loc[0, 'A'] + delta.cumsum()
​
print df
A  B   C
0  10  0  10
1   2  1   9
2   3  2   8
3   4  3   7
4   5  4   6
5   6  5   5

• Thanks @Happy001 it works perfectly. Its also a useful lesson for the future: If you stuck, do some algebra and rethink your problem. – dimyG Dec 28 '15 at 10:01
• This is really neat. If you can come up with a vectorized way of doing delta = 0, you could make it a one-liner and eliminate delta entirely, which will be more performant on large dataframes. – smci Apr 16 '19 at 23:34