Sorry, I had not meant to imply that was a strange question or issue, I
just had not run across the term in relation to GA's before, and was
curious...
Unless I am mistaken, this is at the heart of what GA's do -- evaluate
the fitness of the individuals and preferentially use the most fit
individuals in generating the next population. At each generation you
can sort the fitnesses and choose some arbitrary Elite N. DEAP also
keeps track of the best fit individual (what you might find referred in
relation to the "Hall Of Fame"). So if you look in the code for
references to the Holl of Fame (hof) and exampled on how to evaluate and
choose members of your population, then I think you might find what you
are looking for. Others on the list will likely to be able to direct
you better. I hope that this helps.
As a side note, for my own work I cache all individuals so that I
analyze them off-line, and allow me to restart in the event of a crash
-- my evaluation procedure sometimes take many hours for each
individual, so each run might represent 10's of thousands of CPU hours.
So, DEAP and SCOOP allow you to do some very sophisticated things with
GA's.
Best regards,
EBo --