I have done an optimization with Pyevolve and after a look at the results I wanted to add a few generation to have a better convergence. As an evaluation is quite long, I was wondering if I can resume my optimization to the last generation and add like 20 more generations. Everything must be set in the DB I hope so he can be possible.
Here is my GA properties (similar to the first example but with a more complicated evaluation function):
# Genome instance, 1D List of 6 elements genome = G1DList.G1DList(6) # Sets the range max and min of the 1D List genome.setParams(rangemin=1, rangemax=15) # The evaluator function (evaluation function) genome.evaluator.set(eval_func) # Genetic Algorithm Instance ga=GSimpleGA.GSimpleGA(genome) # Set the Roulette Wheel selector method, the number of generations and # the termination criteria ga.selector.set(Selectors.GRouletteWheel) ga.setGenerations(50) ga.setPopulationSize(10) ga.terminationCriteria.set(GSimpleGA.ConvergenceCriteria) # Sets the DB Adapter, the resetDB flag will make the Adapter recreate # the database and erase all data every run, you should use this flag # just in the first time, after the pyevolve.db was created, you can # omit it. sqlite_adapter = DBAdapters.DBSQLite(identify="F-Beam-Optimization", resetDB=True) ga.setDBAdapter(sqlite_adapter) # Do the evolution, with stats dump # frequency of 5 generations ga.evolve(freq_stats=2)
Anyone with the idea?