Using pure Python and for loops is definitely not the way to go. You can write your program using array operations in NumPy, effectively doing the looping in C, speeding up the code enormously. This however instantiates a whole new array for each of your rules, each with the same size as your data. Instead you could use something like Numba, which comes e.g. with the Anaconda distribution of Python. With Numba you can write your code using loops, but without the time penalty (it compiles your code to native machine instructions). Also, no additional large arrays are needed, making it much more memory efficient than NumPy. Numba also happens to be faster, as this example shows:
import numpy, numba, time
def using_numpy(shape):
arr_a = numpy.random.random(shape)
arr_b = numpy.random.random(shape)
arr_c = numpy.random.random(shape)
mask1 = numpy.logical_and(numpy.logical_and((arr_a > 0.2), (arr_b < 0.4)), (arr_c > 0.6))
mask2 = numpy.logical_and(numpy.logical_and((arr_a > 0.3), (arr_b < 0.5)), (arr_c > 0.6))
mask3 = numpy.logical_and(numpy.logical_and((arr_a > 0.1), (arr_b < 0.2)), (arr_c > 0.5))
result = numpy.ones(arr_a.shape)*4
result[mask1] = 1
result[mask2] = 2
result[mask3] = 3
return result
@numba.jit
def using_numba(shape):
arr_a = numpy.random.random(shape)
arr_b = numpy.random.random(shape)
arr_c = numpy.random.random(shape)
result = numpy.empty(shape)
for i in range(result.shape[0]):
for j in range(result.shape[1]):
if arr_a[i, j] > 0.2 and arr_b[i, j] < 0.4 and arr_c[i, j] > 0.6:
result[i, j] = 1
elif arr_a[i, j] > 0.3 and arr_b[i, j] < 0.5 and arr_c[i, j] > 0.6:
result[i, j] = 2
elif arr_a[i, j] > 0.1 and arr_b[i, j] < 0.2 and arr_c[i, j] > 0.5:
result[i, j] = 3
else:
result[i, j] = 4
return result
# Compile the using_numba function
using_numba((0, 0))
t0 = time.time()
result = using_numpy((3000, 3000))
print('NumPy took', time.time() - t0, 'seconds')
t0 = time.time()
result = using_numba((3000, 3000))
print('Numba took', time.time() - t0, 'seconds')
Here I have used (3000, 3000)
arrays. On my machine, using NumPy takes 0.47 seconds while using Numba takes 0.29 seconds.