# Optimization of average calculation from a list of dictionaries

I have a list of dictionaries, with keys 'a', 'n', 'o', 'u'. Is there a way to speed up this calculation, for instance with NumPy? There are tens of thousands of items in the list.

The data is drawn from a database, so I must live with that it's in the form of a list of dictionaries originally.

``````x = n = o = u = 0
for entry in indata:
x += (entry['a']) * entry['n']  # n - number of data points
n += entry['n']
o += entry['o']
u += entry['u']

loops += 1

average = int(round(x / n)), n, o, u
``````
-
What's the purpose of this code? What's the surrounding code? Context helps. –  John Kugelman Oct 22 '12 at 15:17
@JohnKugelman, updated question slightly. –  Prof. Falken Oct 22 '12 at 15:20
You might be able to optimize a bit with `operator.itemgetter` –  mgilson Oct 22 '12 at 15:24
Maybe your database can sum the values. –  Jochen Ritzel Oct 22 '12 at 15:33
@mgilson, write up an example of how to do that and you have yourself an upvote. :) –  Prof. Falken Oct 22 '12 at 15:45

I doubt this will be much faster, but I suppose it's a candidate for `timeit`...

``````from operator import itemgetter
x = n = o = u = 0
items = itemgetter('a','n','o','u')
for entry in indata:
A,N,O,U = items(entry)
x += A*N  # n - number of data points
n += N
o += O    #don't know what you're doing with O or U, but I'll leave them
u += U

average = int(round(x / n)), n, o, u
``````

At the very least, it saves a lookup of `entry['n']` since I've now saved it to a variable

-
The code unfolds as I watch. :-) –  Prof. Falken Oct 22 '12 at 15:54
@AmigableClarkKant -- I just thought it was cool when I could `itemgetter` multiple things from a `dict` at once. I've never done that before -- figured I'd share. At some point, maybe I'll do a quick `timeit` test to see how it performs ... –  mgilson Oct 22 '12 at 15:56
What should be `x += A*N`? ---- O:^) ---- (updated) –  mgilson Oct 22 '12 at 15:57
Yes. BTW, I profiled your code on my data, seems like about 10% faster. :-) –  Prof. Falken Oct 22 '12 at 16:00
Looks prettier now I think, so I will use your version. A little faster AND prettier is a net win. –  Prof. Falken Oct 22 '12 at 16:00

You could try something like this:

``````
mean_a = np.sum(np.array([d['a'] for d in data]) * np.array([d['n'] for d in data])) / len(data)
``````

## EDIT: Actually, the method above from @mgilson is faster:

``````
import numpy as np
from operator import itemgetter
from pandas import *

data=[]
for i in range(100000):
data.append({'a':np.random.random(), 'n':np.random.random(), 'o':np.random.random(), 'u':np.random.random()})

def func1(data):
x = n = o = u = 0
items = itemgetter('a','n','o','u')
for entry in data:
A,N,O,U = items(entry)
x += A*N  # n - number of data points
n += N
o += O    #don't know what you're doing with O or U, but I'll leave them
u += U

average = int(round(x / n)), n, o, u
return average

def func2(data):
mean_a = np.sum(np.array([d['a'] for d in data]) * np.array([d['n'] for d in data])/len(data)
return (mean_a,
np.sum([d['n'] for d in data]),
np.sum([d['o'] for d in data]),
np.sum([d['u'] for d in data])
)

def func3(data):
dframe = DataFrame(data)
return np.sum((dframe["a"]*dframe["n"])) / dframe.shape[0], np.sum(dframe["n"]), np.sum(dframe["o"]), np.sum(dframe["u"])

In [3]: %timeit func1(data)
10 loops, best of 3: 59.6 ms per loop

In [4]: %timeit func2(data)
10 loops, best of 3: 138 ms per loop

In [5]: %timeit func3(data)
10 loops, best of 3: 129 ms per loop
``````

If you are doing other operations on the data, I would definitely look into using the Pandas package. It's DataFrame object is a nice match to the list of dictionaries that you are working with. I think that the majority of the overhead is IO operations of getting the data into numpy arrays or DataFrame objects.

-
I can't believe `itemgetter` beats numpy. I suppose the bottleneck here really is getting the data out of the dictionary and into a form that `numpy` likes. –  mgilson Oct 22 '12 at 17:52
Yup. I was shocked. I think its definitely IO getting into numpy arrays that is causing the bottleneck. –  reptilicus Oct 22 '12 at 17:55
I wouldn't necessarily use the term `IO` here, but you're right. (I generally think of IO as reading/writing to disk -- But you've built the list ahead of time). –  mgilson Oct 22 '12 at 17:57
@mgilson, maybe call it "memory bottleneck" or something –  Prof. Falken Oct 23 '12 at 6:18

if all you're looking to do is get an average value on something why not

``````sum_for_average = math.fsum(your_item)
average_of_list = sum_for_average / len(your_item)
``````

no mucking about with numpy at all.

-
How do I convert the list of dictionaries into "your_list" ? –  Prof. Falken Oct 22 '12 at 15:34
used 'your list' as a general placeholder text. if you've got a dictionary entry that's a set of numbers there's several functions in the math module that should do some good for you. –  Jiynx Oct 22 '12 at 15:47
Several? Such as? –  Prof. Falken Oct 22 '12 at 15:49