# How to find unique vectors of a 2d array over a particular axis in a vectorized manner?

I have an array of shape `(n,t)` which I'd like to treat as a timeseries of `n-vectors`.

I'd like to know the unique `n-vector` values that exist along the `t-dimension` as well as the associated `t-indices` for each unique vector. I'm happy to use any reasonable definition of equality (e.g. `numpy.unique` will take floats)

This is easy with a Python loop over `t` but I'm hoping for a vectorized approach.

In some special cases it can be done by collapsing the `n-vectors` into scalars (and using `numpy.unique` on the 1d result), e.g. if you had booleans you could use a vectorized `dot` with the `(2**k)` vector to convert (boolean vectors) to integers, but I'm looking for a fairly general solution.

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If the shape of your array was (t, n)--so the data for each n-vector was contiguous in memory--you could create a view of the 2-d array as a 1-d structured array, and then use numpy.unique on this view.

If you can change the storage convention of your array, or if you don't mind making a copy of the transposed array, this could work for you.

Here's an example:

``````import numpy as np

# Demo data.
x = np.array([[1,2,3],
[2,0,0],
[1,2,3],
[3,2,2],
[2,0,0],
[2,1,2],
[3,2,1],
[2,0,0]])

# View each row as a structure, with field names 'a', 'b' and 'c'.
dt = np.dtype([('a', x.dtype), ('b', x.dtype), ('c', x.dtype)])
y = x.view(dtype=dt).squeeze()

# Now np.unique can be used.  See the `unique` docstring for
# a description of the options.  You might not need `idx` or `inv`.
u, idx, inv = np.unique(y, return_index=True, return_inverse=True)

print "Unique vectors"
print u
``````
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This looks promising but doesn't quite work for me. If I run the example code (with dtype -> np.dtype) using numpy version 1.6.2 I get "TypeError: requested sort not available for type" (see below) and when I try to use similar logic in my real problem I get "ValueError: new type not compatible with array" (which I'm trying to track down, but that led me to try the example as-is). –  Joseph Hastings Oct 20 '12 at 3:02
For some reason array.argsort(kind='mergesort') is not implemented for these types of objects. kind='quicksort' works fine. In general I see why it wants the stable sorting of mergesort to handle ties in the indices w/duplicates, but in my case I can just build the indices myself using quicksort and not worry about it being unstable. Unfortunately I'm still trying to get the view(dtype=dt) to work for my actual data. –  Joseph Hastings Oct 20 '12 at 3:12
My "new type not compatible" error was because (as you alluded) I need to say "xT = x.transpose().**copy()**" rather than just "xT = x.transpose()". Secondly, in numpy 1.6.2 unique uses mergesort (rather than quicksort) when you ask it to return indices and the mergesort implementation doesn't like custom dtypes. To get around this I can make my own copy of unique (which lives in arraysetops.py) which removes the kind=mergesort. This solves my problem! Interestingly, for n<64 this code is slower than mapping the vectors to ingegers by dot-ing with a (handmade) vector, but way more general. –  Joseph Hastings Oct 20 '12 at 3:52
Nice work tracking down the sort method issue. That's unfortunate, and it seems like an unnecessary limitation (bug?) that structured arrays can't be sorted with the 'mergesort' method. –  Warren Weckesser Oct 20 '12 at 4:37
It turns out that this has been fixed in the master branch of numpy on github. So the next release of numpy should allow sorting structured array with kind='mergesort', and therefore `unique` should also work. –  Warren Weckesser Oct 20 '12 at 4:52