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Updated phasing/_lambert to pygmo2
While correcting errors in the lint test, it was evident that the file phasing/_lambert needed to be updated to use pygmo 2.
Thanks ... update long needed :)
Can you merge master into this PR and see if the CI passes?
linting failed ... can you fix it?
linting failed ... can you fix it?
yes but I have a question. It fails because it's trying to get f_dimension which I imagine existed in the base class. The dimensions in this case are the departing and arrival times, right? The code seems to allow for a 1 dimensional problem but I would have assumed the dimension is 2.
I see now the UDP (user defined problem) is malformed. Note that the user problem class is not inheriting from any base anymore: in pygmo2 the syntax has changed considerably w.r.t. version 1.x ...
We have no longer base classes, so you need to write this UDP without relying on pygmo at all. It must be self standing, but respecting the pygmo UPD interface, see https://esa.github.io/pygmo2/tutorials/coding_udp_multi_objective.html for an example?
In your case you will need to add to the mandatory ones to the get_nobj
method returning 2 in multiobjective case.
To access the problem dimension you will need to use the methods available in your class.
Yes, that I understood but it wasn't clear to me how to determine the value of f_dimension. After reading the paper and again checking the code I think commit b885ba1 would be correct. The linting passed, but do check the changes.
Thanks for the modifications .. going in the right direction,
You still need something like:
def get_nobj(self):
return self.f_dimension
... please test by constructing a pygmo problem with it, like:
import pygmo
udp = lambert_metric(....)
prob = pygmo.problem(udp)
print(prob)
pop =pygmo.population(prob, 20)
and check all is good.
Also if you could update the docstring:
The result is a pygmo multi-objective problem that can be solved efficiently by MO optimization algorithms
to
The result is a class that can be used as is or to construct a pygmo problem that can be solved efficiently by the available optimization algorithms
it would be great!
Sorry for the long delay. I did all the changes and tried testing the way you suggest here and when doing
>>> udp = pykep.phasing.lambert_metric()
>>> prob = pygmo.problem(udp)
I get this error
ValueError: array has incorrect number of dimensions: 0; expected 1
By any chance do you know it?
I'll keep digging into pygmo to try and find out what it is but as for now I don't understand it.