After the first good results with pythran, I tried transonic to benefit form the jit and the class support. Unfortunately it does not run as expected.
If I use the
@jit decorator the decorated functions are compiled and cached, but during the first run of the code the compiled version is not used, instead the function is processed by python. After the first run the cached version is used.
If I use the
@boost decorator and run
transonic runmwe.py a compiled version is created in the
__pythran__ folder, but running the script with
python runmwe.py I receive the following warning and the code is processed by python.
WARNING: Pythran file does not seem to be up-to-date: <module '__pythran__.runmwe_920d6d0a5cd396436d463468328e997b' from '__pythran__/runmwe_920d6d0a5cd396436d463468328e997b.cpython-38-x86_64-linux-gnu.so'>
transonic runmwe.py just produces a warning that the code is already up-to-date.
Do I miss some configuration to use
@boost properly or is this the expected behavior and I use transonic the wrong way?
Used software from conda-forge:
import numpy as np from transonic import jit,boost #transonic def looping(float) @boost def looping(np_array): shape_x =np_array.shape for x in range(shape_x): if np_array[x] < 0.5: np_array[x] = 0 else: np_array[x] = 1 return np_array in_arr = np.random.rand(10**7) looping(in_arr)