# What is the fastest way to compute sum of weighted products between columns?

``````np.random.seed([3, 14])
df = pd.DataFrame(np.random.randn(5, 3), columns=list('ABC'))
df

A         B         C
0 -0.602923 -0.402655  0.302329
1 -0.524349  0.543843  0.013135
2 -0.326498  1.385076 -0.132454
3 -0.407863  1.302895 -0.604236
4 -0.243362 -0.211261 -2.056621
``````

What is the fastest way to compute `df.A * 1 + df.B * 2 + df.C * 3`?

Essentially, I want, for this dataframe:

``````0   -0.501247
1    0.602741
2    2.046290
3    0.385219
4   -6.835748
``````

The answer cannot be `df.A * 1 + df.B * 2 + df.C * 3` since the number of columns must not be hardcoded. So, I'd want to compute `df.iloc[:, 0] * 1 + df.iloc[:, 1] * 2, ....` somehow.

I'd be interested in any `numba` solutions out there too!

• I think `numpy` as the fastest dot product algorithm and I don`t think numba can beat that. – Floor Sep 8 '17 at 9:40
• @Bharathshetty I certainly believe so. That could be why no one has bothered to come near this question :p – cs95 Sep 8 '17 at 9:41

I try improve solution - remove reshape and change `arrange`:

``````a = df.dot(np.arange(1, len(df.columns)+1))
print (a)
0   -0.501247
1    0.602741
2    2.046290
3    0.385219
4   -6.835748
dtype: float64
``````

Same in `numpy`:

``````a = pd.Series(np.dot(df.values, np.arange(1, len(df.columns)+1)), index=df.index)
print (a)
0   -0.501247
1    0.602741
2    2.046290
3    0.385219
4   -6.835748
dtype: float64
``````
• First solution: `36.3ms`, Second solution: `36.5 ms` on large data. I am surprised that Series constructor is so cheap. – cs95 Sep 8 '17 at 9:02
• Maybe is necessary test in large data - 100k * 100k – jezrael Sep 8 '17 at 9:03
• 100k is a lot of columns... possibility of overflow during calculation. – cs95 Sep 8 '17 at 9:05
• It was only idea, no problem ;) – jezrael Sep 8 '17 at 9:06
• Thank you for your time and efforts. You have my upvote :-) – cs95 Sep 8 '17 at 10:10

Option 1

The fastest, to my knowledge, would be using `df.dot`.

``````df.dot((np.arange(df.shape) + 1).reshape(-1, 1))

0
0 -0.501247
1  0.602741
2  2.046290
3  0.385219
4 -6.835748
``````

Option 2

Element wise product and `sum` along first axis

``````(df * (np.arange(df.shape) + 1)).sum(1)

0   -0.501246
1    0.602742
2    2.046292
3    0.385219
4   -6.835747
``````

Performance

## Small (`5 x 3`)

``````10000 loops, best of 3: 131 µs per loop  # dot
1000 loops, best of 3: 531 µs per loop   # element-wise prod + sum
``````

## Large (`100000 x 1000`)

``````10 loops, best of 3: 36.4 ms per loop   # dot
1 loop, best of 3: 1.18 s per loop      # element-wise prod + sum
``````

For information on the magic behind the implementation of `pandas`/`numpy`'s `dot` function, you may look at Why is matrix multiplication faster with numpy than with ctypes in Python?.