# How to calculate mean in python?

I have a list that I want to calculate the average(mean?) of the values for her. When I do this:

``````import numpy as np #in the beginning of the code

goodPix = ['96.7958', '97.4333', '96.7938', '96.2792', '97.2292']
PixAvg = np.mean(goodPix)
``````

I'm getting this error code:

``````ret = um.add.reduce(arr, axis=axis, dtype=dtype, out=out, keepdims=keepdims)
``````

`TypeError: cannot perform reduce with flexible type`

I tried to find some help but didn't find something that was helpful

Thank you all.

-

Convert you list from strings to np.float:

``````>>> gp = np.array(goodPix, np.float)
>>> np.mean(gp)
96.906260000000003
``````
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hmm, i get that your solution might be a bit more pythonic, but why +7 there n +0 on mine? –  usethedeathstar Dec 2 '13 at 13:45
@alko Thanks a lot! work great! –  shlomi Dec 2 '13 at 13:45
@usethedeathstar: I think you have to accept that having upvoted an answer, people aren't duty-bound to then upvote every other answer that is correct but inferior. If alko's superior answer wasn't here then sure, maybe some of those 7 people would have upvoted yours instead. –  Steve Jessop Dec 2 '13 at 14:56
@SteveJessop its more the fact that for a simple answer like this you get +9, while for an answer that is two pages long, people hardly ever get over +3 –  usethedeathstar Dec 2 '13 at 15:07
@usethedeathstar: the more obviously correct an answer is, the more people are able to judge it. Probably not fair, but pretty inevitable that short answers will tend to win that contest... –  Steve Jessop Dec 2 '13 at 15:08

The things are still strings instead of floats. Try the following:

``````goodPix = ['96.7958', '97.4333', '96.7938', '96.2792', '97.2292']
gp2 = []
for i in goodPix:
gp2.append(float(i))
numpy.mean(gp2)
``````
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Thank you also.. –  shlomi Dec 2 '13 at 13:46
I can't guess why some answers get instantly upvoted so those +8 is a riddle for me too; as for your answer, it is not bad, but me myself won't +1 as it's about two times slower than approach with numpy, and can be rewritten shorter and clearer as `np.mean([float(i) for i in goodPix])` –  alko Dec 2 '13 at 13:53
true, but two times slower than the numpy approach, i assume that means 2 nanosec instead of 1 nanosec? If it aint slow, dont make it faster? –  usethedeathstar Dec 2 '13 at 13:54
@usethedeathstar That depends on the length of the list. –  Steinar Lima Dec 2 '13 at 14:54