# Jaime

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bio website numericalrecipes.wordpress.co… location San Diego, CA age 41 member for 4 years, 9 months seen 5 hours ago profile views 1,228

A mechanical engineer by education, I'm currently working for HP's Large Format Printing Specialty Printing Systems Division in Barcelona, Spain, San Diego, CA, dealing mostly with printing algorithms.

 16h comment Inverse probability density function `0.0018` is not a probability, it is a probability density. What do you want to use the inverse pdf for? I don't think I have ever seen it used anywhere in statistics. The more common thing is searching for the inverse of the cumulative density function, the cdf, which does return probabilities. You can get the inverse cdf as `norm.ppf`. 1d comment Pairwise cdist in scipy instead of zip I don't think there is an easy way of doing that right now. I am working on this that would add functionality that could do just that to `scipy.spatial.distance`, but I don't think it will be ready until scipy 0.15 (current release is 0.13, and 0.14 is about to be released). Mar4 comment Variable changes value without changing it at all in the program It is an unfortunate metaphor that does not represent what is really going on. Mar4 comment Variable changes value without changing it at all in the program The description of "an `a` tag is put on it" is blatantly incorrect: Python objects do not know who is holding a reference to them (although they do know how many references to them are being held). Mar3 comment Slicing 2D arrays using indices from arrays in python Do your slices overlap? How big is `mat`? Mar2 comment Speed up loading 24-bit binary data into 16-bit numpy array The only concern with your solution is endianess. I think your code will only work with big-endian data, as you are taking the last two bytes to be the least significant ones that contain the 16bit number. With little endian data, which is what most PCs are, the slicing would have to be `[:, :-1]`. Or maybe its the other way around, but there is an endianess assumption which needs to be specified. Mar2 comment Speed up loading 24-bit binary data into 16-bit numpy array THe array is made contiguous by `flatten`, which always makes a copy. Here `view` simply reinterprets every 2 single byte numbers as one 2 byte number. Mar2 comment group argmax/argmin over partitioning indices in numpy This has algorithmic complexity similar to your `np.unique` solution, but doesn't involve the `index` array at all. Once you have `all_argmax` you can directly do: `all_argmax[np.searchsorted(all_argmax, np.hstack([0, split_at]))]`. Feb28 comment Filter values from a scipy sparse matrix Not sure, I tried the above with scipy 0.13.2 Feb27 comment Filter values from a scipy sparse matrix Please, don't get me wrong, I think your answer is perfectly valid. Your current single upvote is mine. ;) And I have answers about sparse matrices that go into terrible complications with all three internal arrays. Such hacky manipulations are justified because `scipy.sparse` is very much in the making, and with every release there are huge functionality leaps. But while we are not there yet, eventually the objective should be for it to be possible to do `m[m < 10] = 0`, as one would do with any array, and be done with it. My answer is a bit closer to that ideal, I think. Feb25 comment NumPy - reshaping an array to 1-D `np.array` makes a copy of the data by default. Unless that is really what you want, it is better to get a view, either calling `np.asarray` or `np.array(..., copy=False)`. Feb25 comment Finding index of maximum value in array with NumPy Actually, I just checked, and numpy has a `np.nanargmax` which is probably what you should be using. Feb25 comment Finding index of maximum value in array with NumPy An off-by-one error, was looking at the first nan, not the last non-nan, should work after the edit above. Feb24 comment In-place type conversion of a Numpy array again? This is simply a way of avoiding an unnecessary copy if you have an array object of unknown type and you have to cast it to a specific one. This is probably not that often needed using numpy from Python, where you can get the same operation to work regardless of type, but in the C internals of numpy you see that done all the time. Feb21 comment Re-order numpy array based on where its associated ids are positioned in the `master_order` array `["8", "9", "10"]` is not sorted for strings, so it would silently return bogus results. Feb21 comment Python removing every nth element in array That's weird... On my system, removing every third item of a 1 million item long array is about 1.7x faster with the slice: `a = np.random.rand(1e6); %timeit np.delete(a, np.arange(0, 1e6, 3)) --> 100 loops, best of 3: 14.5 ms per loop; %timeit np.delete(a, slice(None, None, 3)) --> 100 loops, best of 3: 8.41 ms per loop`. Feb21 comment Python removing every nth element in array That is actually much better done as `np.delete(x, slice(None, None, 3))`. Feb19 comment Getting the indexes to the duplicate columns of a numpy array possible duplicate of Find unique columns and column membership Feb19 comment Getting the indexes to the duplicate columns of a numpy array +1 We had the lexsort vs void dtype discussion here. I like this approach much better, and I think I timed it back then and it also performed better, especially for very long columns. Feb18 comment Speed up comparison of floats between lists In that case, you want to use `np.where(c == 0)`, `np.where(c == 1)`, `np.where(c == 2)`, ...