Linked Questions

4
votes
4answers
1k views

Creating a numpy array of 3D coordinates from three 1D arrays [duplicate]

Suppose I have three arbitrary 1D arrays, for example: x_p = np.array((1.0, 2.0, 3.0, 4.0, 5.0)) y_p = np.array((2.0, 3.0, 4.0)) z_p = np.array((8.0, 9.0)) These three arrays represent sampling ...
0
votes
1answer
74 views

How to perform a calculation comparing every element with every other element in numpy/scipy [duplicate]

I have a 2D array and I need to do some analysis on it which involves me performing a calculation for every possible pair of elements and then summing them up. The problem is that I need to avoid ...
13
votes
4answers
4k views

Numpy: cartesian product of x and y array points into single array of 2D points

I have two numpy arrays that define the x and y axes of a grid. For example: x = numpy.array([1,2,3]) y = numpy.array([4,5]) I'd like to generate the Cartesian product of these arrays to generate: ...
7
votes
5answers
2k views

itertools product speed up

I use itertools.product to generate all possible variations of 4 elements of length 13. The 4 and 13 can be arbitrary, but as it is, I get 4^13 results, which is a lot. I need the result as a Numpy ...
9
votes
2answers
996 views

Efficient item binning algorithm (itertools/numpy)

I think this is a common combinatorics problem, but I can't seem to find a name for it or any material about it. I am doing this in Python and numpy, but if there is a fast matrix method for this, I ...
7
votes
2answers
3k views

Rewriting a for loop in pure NumPy to decrease execution time

I recently asked about trying to optimise a Python loop for a scientific application, and received an excellent, smart way of recoding it within NumPy which reduced execution time by a factor of ...
4
votes
2answers
908 views

Fast math operations on an array in python

I have a fairly simple math operation I'd like to perform on a array. Let me write out the example: A = numpy.ndarray((255, 255, 3), dtype=numpy.single) # .. for i in range(A.shape[0]): for j in ...
6
votes
2answers
428 views

Missing data in pandas.crosstab

I'm making some crosstabs with pandas: a = np.array(['foo', 'foo', 'foo', 'bar', 'bar', 'foo', 'foo'], dtype=object) b = np.array(['one', 'one', 'two', 'one', 'two', 'two', 'two'], dtype=object) c = ...
4
votes
3answers
533 views

Compare multiple columns in numpy array

I have a 2D numpy array with about 12 columns and 1000+ rows and each cell contains a number from 1 to 5. I'm searching for the best sextuple of columns according to my point system where 1 and 2 ...
5
votes
1answer
491 views

2d numpy.power for polynomial expansion

I am trying to write a function that maps 2d-ndarray to 2d-ndarray. The rows of the input array can be processed independently and there shall be a 1-to-1 correspondence between rows of the input and ...
3
votes
1answer
330 views

ensuring the Cartesian product of keys appears in a Pandas table

I have a Pandas dataframe that has two key columns, and I want to ensure that the Cartesian product of those keys exist in the table (because I'll have to make a 2D plot containing all combinations). ...
0
votes
2answers
526 views

Cartesian Product of multiple array

I think it is basically an easy problem, but I'm stuck. My brain is blocked by this problem, so I hope you can help me. I have 2 to N arrays of integers, like {1,2,3,4,5} {1,2,3,4,5,6} {1,3,5} ..... ...
1
vote
4answers
59 views

Create a matrix with every possible column

How can I make an n by 2^n matrix of 0 and 1 values where all the columns are distinct? For example, if n = 2 that would be 0011 0101 . And I can use itertools to make all possible tuples. ...
4
votes
3answers
75 views

Dimensionality agnostic (generic) cartesian product

I'm looking to generate the cartesian product of a relatively large number of arrays to span a high-dimensional grid. Because of the high dimensionality, it won't be possible to store the result of ...

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