as part of our work in zfit, we have released a standalone package for multibody phasespace generation à la TGenPhaseSpace. It's pure python, based of tensorflow. On top of simple phasespace generation, it can build more complex decay chains, handle resonances, etc, all in a very simple manner.
The package is called phasespace (https://github.com/zfit/phasespace), it's well documented and fairly easy to use, so no excuses for not trying :-)
Let us know what you think, we highly appreciate any feedback and suggestions from the software community here
stupid question. I have two numpy arrays,
b and I want to group elements in
b by the unique elements in
a = [1, 12, 1, 50] b = [10, 20, 30, 40] result == [[10, 30], , ]
Is there a numpy function that does that? It seems I am missing the right keyword in my searches
numpy groupbywill get you there
I think awkward array might be able to help instead of pandas (not tested):
reorder = np.argsort(a) _, counts = np.unique(a[reorder], return_counts=True) result = awkard.JaggedArray.fromcounts(counts, b[reorder])
The only thing I'm unsure of there is the order of the unique counts, I'm assuming the
unique method returns things in the order they're first seen, but I suspect that's not true.
We are pleased to announce the second "Python in HEP" workshop organised by the HEP Software Foundation (HSF). The PyHEP, "Python in HEP", workshops aim to provide an environment to discuss and promote the usage of Python in the HEP community at large.
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import numpy as np, awkward a = np.array([1, 12, 1, 10, 50, 10]) b = np.array([10, 20, 30, 40, 50, 60]) arg = a.argsort(kind='stable') offsets, = np.where(np.r_[True, np.diff(a[arg]) > 0]) output = awkward.JaggedArray.fromoffsets(offsets.flatten(), awkward.IndexedArray(arg, b))
np.where([0, 1, 0, 0, 1]).baseis surprisingly 2d (hence the flatten)
since the knowledge in this channel proved invaluable before, another question :)
group_1 = np.array([(1, 2), (3, 3), (5, 7), (4, 4)]) test_elements = np.array([(1, 2), (3, 3), (3, 5)])
and would like to test if the elements in
test_elements are in
group_1. I expect the result
[True, True, False]
as I take the tuples as unique objects.
Numpy has the function
[[True, True], [True, True], [True, False], [False, False]]
OK, so this is inverse to what I want, fine.
np.isin(group_1, test_elements) # returns [[True, True], [True, True], [True, True]]
Clearly it compares element by element and since both
5 are contained, therefore
(3,5) should be as well, right?
Well, not in my case. Is there a way to do this comparison for each 2-vector instead of element-wise? For loop (even with numba) is quite slow
Yes, you can do that. The idea is: make a comparison of all possible combinations of each element with each other element. This gives you a rank three boolean object with: number of elements in the group, number of elements to test, dimension of an element. Then make two reduce operations: 1.
reduce all on the axis of the tuple, requiring that true is if in a tuple everything is true and 2. a
reduce any on the axis of all the possible combinations, since at least one tuple has to be fully contained.
For example (may change the axis for convenience):
test_elements_expanded = np.expand_dims(test_elements, axis=1) entries_equal = group_1 == test_elements_expanded tuple_equal = np.all(entries_equal, axis=2) tuple_contained = np.any(tuple_equal, axis=0)