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So I have a rather large (200k+ rows) structured array:

recordtype = np.dtype([('x',np.float32),('y',np.float32),('z',np.float32), \
                       ('u',np.float32),('v',np.float32),('w',np.float32), \
                       ('d',np.float32),('T',np.float32),('mdot',np.float32), \
                       ('f',np.float32),('t',np.float32),('name',np.str_,14)])
data = np.loadtxt('tmp2.out',dtype=recordtype,skiprows=2)

In the 'name' columns, there are non-unique elements: len(data[:]['name']) is larger than len(set(data[:]['name'])). I would like to create a new array with only unique elements from name, I guess first occurrence is fine. How would I do this efficiently?

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You don't need data[:]['name'], just data['name'] will do :) –  askewchan Oct 4 '13 at 23:15

1 Answer 1

up vote 4 down vote accepted

to get unique indices you can use np.unique

unique_elements, indices = np.unique(data[:]['name'], return_index = True)

then you know the unique indices in the name dimension that you need to access. Then you should be able to do just select those indices

data = data[indices]
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Thank you, I knew there must have been something built-in somewhere to get the indices but I somehow missed it. –  FrenchKheldar Oct 4 '13 at 17:21

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