# Dynamic 3d array slicing and sorting

I'm a bit confused on how to accurately slice and sort 3D array in numpy. There seem to be many ways to do this manually but I need to do this using `numpy.where()`. For example if `lo360` are 2D longitude values, `lat2d` latitude values in 2D, `yi` is a 1D array of longitude values, and `xi` is a 1D array of latitude values.

`xi` and `yi` dynamically change to represent a small geographical region while `lo360` and `lat2d` are static latitudes and longitudes of the planet of the type (-90,90) and (0,360). `xi` of similar form as `lo360` but `yi` is descending instead of ascending. So if I have a 3D array representing `A(levels,lat,lon)` and I want to extract a region:

``````slice2d = np.where( (lo360 <= xi.max()) &
(lo360 >= xi.min()) &
(lat2d <= yi.max()) &
(lat2d >= yi.min()) )
lon_old = lo360[slice2d]; print lon_old.shape
(441,)
``````

This returns a 1D array when I wanted a 2D slice. The data is correct though so this is not my problem.

Then when I tried to slice the 3D array `A[i][slice2d]` I get a 1D array that is not easy to verify dynamically. I used `griddata` to the 3D array to `xi` and `yi` resolution but I change the `yi` lat to ascending: `yi = yi[::-1]`:

``````for i in np.arange(4):
nvals[i] = matplotlib.mlab.griddata(lat_old,lon_old,
mvals[i][slice2d],
yi,xi)
``````

Here is where I think the problem starts, I need the results to have descending lats so I do this to `nvals`: `nvals = nvals[:,::-1,:]`. But the data is all screwed up. I suspect some error in the indexing but since python returned no errors then I'm doing something with the indexing thinking one thing but getting another.

Perhaps one of you experts can spot something screwy or maybe suggest a better way. I'll attach the image when I figure out how to attach files.

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## 1 Answer

It seems like the result returned by griddata is transposed - it gives the x-axis along the columns and y-axis along the rows:

``````import numpy as np

#lats x lons
a2d=np.arange(20).reshape( (4,5) )
print a2d

lats=np.arange(4)
lats2d=np.ones(5)*lats[:,None]
yi=[1,3]
nlats=np.sum(np.bitwise_and(lats>=np.min(yi),lats<=np.max(yi)))

lons=np.arange(5)
lons2d=np.ones(4)[:,None]*lons
xi=[1,2]
nlons=np.sum(np.bitwise_and(lons>=np.min(xi),lons<=np.max(xi)))

#slice= lats2d>=1 & lats2d<=2 & lons2d>=1 & lons2d<=2
s1=np.bitwise_and(lats2d>=np.min(yi),lats2d<=np.max(yi))
s2=np.bitwise_and(lons2d>=np.min(xi),lons2d<=np.max(xi))
slice=np.bitwise_and(s1,s2)
print slice
slice=np.where(slice)
print a2d[slice].reshape( (nlats,nlons) )

import matplotlib.mlab as mlab

print mlab.griddata(lats2d[slice],lons2d[slice],a2d[slice],
#              np.array([1.3,2.1,2.9]),np.array([1.1,1.9]))
np.array([1,2,3]),np.array([1,2]))
``````
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Could you explain this bitwise_and and how this works, please? –  Shejo284 Sep 7 '12 at 17:06
It's the same as the '&' symbol, which doesn't seem to be supported for my version of numpy. –  user1149913 Sep 7 '12 at 17:24
You can get the same effect with `(lons2d>=np.min(xi)) * (lons2d<=np.max(xi))` –  tcaswell Sep 8 '12 at 22:18
@user1149913 Thanks. The Transpose action was something I didn't account for. –  Shejo284 Sep 9 '12 at 10:38
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