[Numpy-discussion] Quick array value assignment based on common values

PHobson at Geosyntec.com PHobson at Geosyntec.com
Wed Aug 4 20:58:24 EDT 2010


John,

Thanks for the quick reply. Unfortunately, no, they're not indexed like that. The first columns are actually floating-point date numbers from matplotlib.dates.date2num. Looks like this is just going to be painful...

Thanks for the tip though. That'll definitely be useful elsewhere.
-paul

From: numpy-discussion-bounces at scipy.org [mailto:numpy-discussion-bounces at scipy.org] On Behalf Of John Salvatier
Sent: Wednesday, August 04, 2010 5:34 PM
To: Discussion of Numerical Python
Subject: Re: [Numpy-discussion] Quick array value assignment based on common values

Are they numbered like that? If so you can index into the first array by the second one.
x[y[:,0], 1] if you can't get them into an indexable format, I think it's going to be slow no matter how you do it.
On Wed, Aug 4, 2010 at 4:59 PM, <PHobson at geosyntec.com<mailto:PHobson at geosyntec.com>> wrote:
Hey folks,

I've one array, x, that you could define as follows:
[[1, 2.25],
 [2, 2.50],
 [3, 2.25],
 [4, 0.00],
 [8, 0.00],
 [9, 2.75]]

Then my second array, y, is:
[[1, 0.00],
 [2, 0.00],
 [3, 0.00],
 [4, 0.00],
 [5, 0.00],
 [6, 0.00],
 [7, 0.00],
 [8, 0.00],
 [9, 0.00],
 [10,0.00]]

Is there a concise, Numpythonic way to copy the values of x[:,1] over to y[:,1] where x[:,0] = y[:,0]? Resulting in, z:
[[1, 2.25],
 [2, 2.50],
 [3, 2.25],
 [4, 0.00],
 [5, 0.00],
 [6, 0.00],
 [7, 0.00],
 [8, 0.00],
 [9, 2.75],
 [10,0.00]]

My current task has len(x) = 25000 and len(y) = 350000 and looping through is quite slow unfortunately.

Many thanks,
-paul


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