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I'm sure there is a function for this but I can't find it.

I am doing a calculation like below:

# L = large iterator of lots of numpy arrays
def replace_error_nan(data):
    data[data == ERROR_VALUE] = np.nan
    return data
L = (replace_error_nan(l) for l in L)

I want to perform all of the operations done by replace_error_nan without needing to use the function. I'm sure this is something super simple.

Thanks!


Question has been answered by someone who left a "small" comment. I made an answer to myself. Thanks!

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I don't think so... I need something to replace the values then return the array. I don't see how that would work with np.where –  Garrett Berg Mar 14 '13 at 5:14
    
Oh wait, I think that will work! –  Garrett Berg Mar 14 '13 at 5:15
    
Yep, that was the ticket! Thanks! –  Garrett Berg Mar 14 '13 at 5:22
    
oh, sorry, I deleted my comment and now it looks like you're talking to yourself :o) –  wim Mar 14 '13 at 5:44
    
I did a rollback, as I couldn't even read the question and upvoted your answer. –  bmu Mar 14 '13 at 6:57

4 Answers 4

There is nothing wrong with:

for l in L:
  l[l == ERROR_VALUE] = np.nan

If you insist on one-linering it, you can use __setitem__ in a comprehension. But don't.

share|improve this answer
    
There is because my data is very large and is an iterator. –  Garrett Berg Mar 14 '13 at 5:32
    
it is an itertools.chain to be precise. –  Garrett Berg Mar 14 '13 at 5:32

ANSWER

L = (where(l!=ERROR_VALUE, l, np.nan) for l in L)
share|improve this answer
    
+1, however np.where also works for two dimensional arrays, so you could use a two dimensional instead of a list. –  bmu Mar 14 '13 at 7:04
1  
where return a new array, while your function in the question returns the array itself. –  HYRY Mar 14 '13 at 11:40
    
That is a good point. However, I think in this case (and actually most cases) using "where" is faster. In my experience, compressing numpy or python operations is always faster than using any python code. –  Garrett Berg Mar 15 '13 at 17:00

You can use numpy.place():

L = (np.place(l, l==ERROR_VALUE, np.nan) or l for l in L)
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If you're trying to do an iterator operation, so that @wim's approach is no good because it means your iterator is no longer lazy, I think your approach is perfectly reasonable. Defining small functions is not the worst thing.

That said, I think these alternatives should work, though I'm on a tablet and haven't tested them:

L = (l for l in L if not l.__setitem__(l == ERROR_VALUE, np.nan))

and

L = (l.__setitem__(l == ERROR_VALUE, np.nan) or l for l in L)

They're cute (relying on __setitem__ returning None), but I'd still probably go with your original approach in actual code.


Update, since you posted a solution with np.where at the same time as mine: that's probably the best solution, though it does make a copy that these ones don't. Leaving this because I kind of like the cuteness, though.

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