I am multiprocessing a for loop in Python using Pool in this way:
if __name__ == '__main__': pool = Pool() # Create a multiprocessing Pool result = pool.map(process_interp, range(ngal))
where process_interp is a function I have defined. However, when the number of calculations increase, the program seems to almost crash in a way that a 0 byte file is produced as my result and the Python program continues running but htop shows that it is no longer using multiple threads and only a single thread is being used. For not so heavy calculations, everything just works fine and the program runs fast and correctly.
Can someone please give me insight into what is happening here and what causes this problem? I have no clue how to solve this issue. Thanks a lot!
Edit: This is the function process_interp. Basically calculating some values on a grid. The issue arises when I increase the size of the grid (N_a and N_m) and therefore the number of calculations.
def process_interp(k): #e = data[k]+np.random.normal(0, 0.3, len(data[k])) e = data[k] sigma_crit = data[k] r_s = data[k] dev_gamma = data[k] dev_k = data[k] z_d = data[k] like_grid = np.empty((N_a, N_m), dtype='longdouble') for i in range(N_a): for j in range(N_m): gamma_nfw, k_nfw = NFWfunc(m_grid[j], z_d, r_s, sigma_crit) gamma_dev = dev_gamma*pow(10, alpha_grid[i]-alpha_0) k_dev = dev_k*pow(10, alpha_grid[i]-alpha_0) mean = (gamma_nfw+gamma_dev)/(1-k_nfw-k_dev) loglike = np.zeros(len(e), dtype='longdouble') loglike = -((mean-e)**2/(2*0.3**2)) like_grid[i,j] = np.prod(np.exp(loglike)) return like_grid