vectorized indexing/slicing in numpy/scipy?

I have an array A, and I have a list of slicing indices (s,t), let's called this list L.

I want to find the 85 percentiles of A[s1:t1], A[s2:t2] ...

Is there a way to vectorize these operations in numpy?

``````ans = []
for (s,t) in L:
ans.append( numpy.percentile( A[s:t], 85) );
``````

looks cumbersome.

Thanks a lot!

PS: it's safe to assume s1 < s2 .... t1 < t2 ..... This is really just a sliding window percentile problem.

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What is the shape of `A`? If it's (n,) then would `t_k- s_k` be constant for all `k`? I.e. does your sliding window have a constant width? Thanks – eat Jul 29 '11 at 18:15
@eat: no my sliding window does not have a constant width, b/c the sample rate is not uniform unfortunately. The shape of A is one dimension though. – CodeNoob Jul 29 '11 at 18:58
@eat: I would also be interested in knowing if there is a vectorized algorithm for constant width sliding window – CodeNoob Jul 29 '11 at 19:12
Yes, there exists several ways to streamline the code if you have constant width. And, if you have really non-uniform sampled data, you can always re-sample it to be uniform (by interpolation, although you still need to specify the proper interpolation method). Care to elaborate more on your specific case? Thanks – eat Jul 29 '11 at 19:37
@eat: I am sorry I really can't interpolate the data. "sample" is not a good word. I am dealing with market data. you know, if a trade happens here, I really can't assume it happens elsewhere. =) – CodeNoob Jul 29 '11 at 21:16

``````ans = [numpy.percentile(A[s:t], 85) for s,t in L]