I'm trying to sum the elements of separate data array by their characteristics efficiently. I have three identifying characteristics (age, year, and cause) in a given array, and for each age, year, cause, I have 1000 values. I need to add those values to another data array when the characteristics are the same. For now, I'm doing something like this where each datasets is ~ (80000, 1000):
import numpy as np datasets = np.vstack(dataset1, dataset2) for a in ages: for y in years: for c in causes: output = np.sum(datasets[(age==a) & (year==y) & (cause==c)], axis = 0)
However, with 60,000 iterations, this is incredibly slow. The challenge is that the arrays don't necessarily all have the same shape. Any thoughts?