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I have a NumPy record array of floats:

import numpy as np
ar = np.array([(238.03, 238.0, 237.0),
               (238.02, 238.0, 237.01),
               (238.05, 238.01, 237.0)], 
              dtype=[('A', 'f'), ('B', 'f'), ('C', 'f')])

How can I determine min/max from this record array? My usual attempt of ar.min() fails with:

TypeError: cannot perform reduce with flexible type

I'm not sure how to flatten the values out into a simpler NumPy array.

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2 Answers 2

up vote 4 down vote accepted

The easiest and most efficient way is probably to view your array as a simple 2D array of floats:

ar_view = ar.view((ar.dtype[0], len(ar.dtype.names)))

which is a 2D array view on the structured array:

print ar_view.min(axis=0)  # Or whatever…

This method is fast, as no new array is created (changes to ar_view result in changes to ar). It is restricted to cases like yours, though, where all record fields have the same type (float32, here).

One advantage is that this method keeps the 2D structure of the original array intact: you can find the minimum in each "column" (axis=0), for instance.

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I get an Error with float: "ValueError: new type not compatible with array." However, if I use a NumPy float data type like ar.dtype[0] (or dtype('float32')), success! –  Mike T Jul 5 '12 at 23:55
ar.view((ar.dtype[0], len(ar.dtype))) –  Mike T Jul 6 '12 at 0:00
Right, @MikeToews. I updated the answer. –  EOL Jul 6 '12 at 2:54

you can do

# construct flattened ndarray
arnew = np.hstack(ar[r] for r in ar.dtype.names)

to flatten the recarray, then you can perform your normal ndarray operations, like

armin, armax = np.min(arnew), np.max(arnew)

the results are

237.0 238.05

basically ar.dtype.names gives you the list of recarray names, then you retrieve the array one by one from the names and stack to arnew

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np.hstack() is useful if the different fields of the structured array do not have the same type, which is not the case here. For this question, the view() approach (see my answer) is way faster, and also has the advantage of keeping the 2D structure of the original array intact. –  EOL Jul 4 '12 at 6:03
@EOL yep, I thought the op wanted a flattened ndarray so I suggested him use hstack(), but otherwise if the dtypes are uniform and only min/max are needed, sure, view is a lot lot better. –  nye17 Jul 4 '12 at 14:49

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