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Is there an efficient way of creating a 2D array of the values from unsorted coordinate points (i.e. not all lons and/or lats are ascending or descending) without using loops?

Example Data

lats = np.array([45.5,45.5,45.5,65.3,65.3,65.3,43.2,43.2,43.2,65.3])
lons = np.array([102.5,5.5,116.2,102.5,5.5,116.2,102.5,5.5,116.2,100])
vals = np.array([3,4,5,6,7,7,9,1,0,4])

Example Output
Each column represents a unique longitude (102.5, 5.5, 116.2, & 100) and each column represents a unique latitude (45.5,65.3, & 43.2).

([ 3, 4, 5, NaN],
 [ 6, 7, 7, 4],
 [ 9, 1, 0, NaN])

Though, it isn't so straight forward because I don't necessarily know how many duplicates of each lon or lat there are which determines the shape of the array.

Update:
I had the data arranged incorrectly for my question. I have arranged it now, so they are all unique pairs and there is an additional data point to demonstrate how the data should be arranged when NaNs are present.

share|improve this question
    
What dictates the size of the output array? The number of non-duplicating values in lats and lons? –  danodonovan Feb 27 '13 at 18:16
    
That's right... I think :) –  shootingstars Feb 27 '13 at 18:31
1  
Can you explain in words the specifications that make the example output the desired answer? What is the logic that indicates a 100 should be placed in the output when 100 is not a value in vals? and why there? –  unutbu Mar 1 '13 at 11:07
    
That was just a mistake my apologies. It should be one additional value that I did not put in the value array. Correcting that now. –  shootingstars Mar 1 '13 at 15:47

3 Answers 3

up vote 1 down vote accepted

The example you have posted makes very little sense, and it doesn't allow any reasonable way to specify missing data. I am guessing here, but the only reasonable thing you may be dealing with seems to be something like this :

>>> lats = np.array([43.2, 43.2, 43.2, 45.5, 45.5, 45.5, 65.3, 65.3, 65.3])
>>> lons = np.array([5.5, 102.5, 116.2, 5.5, 102.5, 116.2, 5.5, 102.5, 116.2])
>>> vals = np.array([3, 4, 5, 6, 7, 7, 9, 1, 0])

Where the value in vals[j] comes from latitude lats[j] and longitude lons[j], but the data may come scrambled, as in :

>>> indices = np.arange(9)
>>> np.random.shuffle(indices)
>>> lats = lats[indices]
>>> lons = lons[indices]
>>> vals = vals[indices]
>>> lats
array([ 45.5,  43.2,  65.3,  45.5,  43.2,  65.3,  45.5,  65.3,  43.2])
>>> lons
array([   5.5,  116.2,  102.5,  116.2,    5.5,  116.2,  102.5,    5.5,  102.5])
>>> vals
array([6, 5, 1, 7, 3, 0, 7, 9, 4])

You can get this arranged into an array as follows:

>>> lat_vals, lat_idx = np.unique(lats, return_inverse=True)
>>> lon_vals, lon_idx = np.unique(lons, return_inverse=True)
>>> vals_array = np.empty(lat_vals.shape + lon_vals.shape)
>>> vals_array.fill(np.nan) # or whatever yor desired missing data flag is
>>> vals_array[lat_idx, lon_idx] = vals
>>> vals_array
array([[ 3.,  4.,  5.],
       [ 6.,  7.,  7.],
       [ 9.,  1.,  0.]])
share|improve this answer
    
Thanks Jaime. This is also an excellent answer and is very helpful. My apologies for the poor example. I find it difficult sometimes to refine my question without adding unnecessary bits to confuse things. –  shootingstars Feb 28 '13 at 10:28
    
I think I get where things weren't making sense. The lat/lon/value data should be unique pairs and are all consistent in their ordering; though, no one list is in strictly ascending or descending order. I've reorded things correctly (so they are unique) and added a value to demonstrate how the output should be when NaNs are present. Thanks for the help! –  shootingstars Mar 1 '13 at 10:19
    
@shootingstars Your edited sample input is still not consistent with your expected output. But I am more convinced now that what I propose above is what you want. Try it on your sample input (after appending a 100 to the vals array!), see what you get, understand why it's different from what you were expecting, and I think you will eventually realize the above method is the way to go. –  Jaime Mar 1 '13 at 14:35
    
Yep, that works fantastically, and it seems a bit clearer than using views. The 100 in my output array and lack of a new value in my vals array was a paper to keyboard error :) Sorry my misunderstandings and typos, and thanks again for the help! This was enlightening. –  shootingstars Mar 1 '13 at 16:24

If you're creating a 2D array, then all arrays will have to have the same number of points. If this is true, you can simply do

out = np.vstack((lats, lons, vals))

edit

I think this might be what you're after, it matches your question at least :)

xsize = len(np.unique(lats))
ysize = len(np.unique(lons))

and then if your data is very well behaved

out = [vals[i] for i, (x, y) in enumerate(zip(lats, lons))]
out = np.asarray(out).reshape((xsize, ysize))
share|improve this answer
    
I think I phrased it poorly, but I would like to end up with an array of dimension (len(lats), len(lon)) containing only the values for their respective coordinates. –  shootingstars Feb 27 '13 at 18:01
    
But lats and lons aren't integer values - so they won't fit neatly into a grid of size (max(lats), max(lon)) have I missed something? –  danodonovan Feb 27 '13 at 18:05
    
sorry, these are lists, so it would be the length of the lists (i.e. integer number of elements), but I just realized that what I really want is len(lats)/number of duplicate lats, etc. See my update to the question. –  shootingstars Feb 27 '13 at 18:11
import numpy as np

lats = np.array([45.5,45.5,45.5,65.3,65.3,65.3,43.2,43.2,43.2,65.3])
lons = np.array([102.5,5.5,116.2,102.5,5.5,116.2,102.5,5.5,116.2,100])
vals = np.array([3,4,5,6,7,7,9,1,0,4])


def unique_order(seq): 
    # http://www.peterbe.com/plog/uniqifiers-benchmark (Dave Kirby)
    # Order preserving
    seen = set()
    return [x for x in seq if x not in seen and not seen.add(x)]

unique_lats, idx_lats = np.unique(lats, return_inverse=True)
unique_lons, idx_lons = np.unique(lons, return_inverse=True)
perm_lats = np.argsort(unique_order(lats))
perm_lons = np.argsort(unique_order(lons))

result = np.empty((len(unique_lats), len(unique_lons)))
result.fill(np.nan)
result[perm_lats[idx_lats], perm_lons[idx_lons]] = vals
print(result)

yields

[[  3.   4.   5.  nan]
 [  6.   7.   7.   4.]
 [  9.   1.   0.  nan]]
share|improve this answer
    
This looks great, but I keep getting a ValueError: total size of new array must be unchanged. I'm guessing I am mixing something up somewhere as this and danodonovan's answer are both pretty straight forward. –  shootingstars Feb 27 '13 at 18:50
    
Also, you are right on the output. And the error I'm experiencing is when I am using this with my actual dataset/script, not the example. –  shootingstars Feb 27 '13 at 18:52
1  
The ValueError is saying that len(vals) does not equal len(np.unique(lats)) * len(np.unique(lons)). If len(vals) is too long, do you want to truncate vals? and if len(vals) is too short, do you want to fill the rest of the array with 0s? There are lots of other possibilities too... –  unutbu Feb 27 '13 at 18:55
    
Ah... I see that my lats have fewer unique than the lons (all are unique). I suppose that I would like to fill the rest with missing values such as NaN or -9999, or whatever is appropriate. –  shootingstars Feb 27 '13 at 19:07
    
Do you happen to have a suggested method for filling gaps? It appears reshape doesn't support this directly. –  shootingstars Feb 27 '13 at 19:32

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