I'm using scipy/numpy for research code instead of matlab. There is one flaw, I was running into frequently. I found a work-around solution, but want to check for a best practice and better solution. Imagine some mathematical optimisation:
def calculation (data, max_it=10000, tol = 1e-5): k = 0 rmse = np.inf while k < max_it and rmse > tol: #calc and modify data - rmse becomes smaller in each iteration k += 1 return data
It works fine, I embed it into my code, in multiple locations, e.g.:
import module d = module.calculation (data)
But sometimes I want to check further insights and need multiple return values. If I simply append multiple return values, I have to modify the other code and unpack the first return value. This is one of the few situations were I prefer matlab to scipy.In matlab only the first return value is evaluated, unless you explicitly demand the rest.
So my work-around for matlab-like (= optimal) multiple return values are global variables [of the module]
def calculation (data, max_it=10000, tol = 1e-5): global k global rmse k = 0 rmse = np.inf while k < max_it and rmse > tol: #calc and modify data - rmse becomes smaller in each iteration k += 1 return data
My function calls work without modification and if I want to verify something in ipython, Iset some variables global reload(module) and check the insight with module.rmse.
But I could also imagine a OO-aproach from the beginning, or to use pdb, or to use other ipython magic