Created
April 14, 2023 23:04
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struct NqueenSolver | |
n::Int | |
pop_size::Int64 | |
n_gen::Int64 | |
n_parents::Int64 | |
n_mates::Int64 | |
selection_method::String | |
function NqueenSolver(; n::Int, pop_size::Int64, n_gen::Int64, n_mates::Int64, selection_method::String, n_parents::Int64=2) | |
new(n, pop_size, n_gen, n_parents, n_mates, selection_method) | |
end | |
end | |
function Base.show(io::IO, solver::NqueenSolver) | |
println(io, "NqueenSolver:") | |
println(io, "n: ", solver.n) | |
println(io, "pop_size: ", solver.pop_size) | |
println(io, "n_gen: ", solver.n_gen) | |
println(io, "n_mates: ", solver.n_mates) | |
println(io, "selection_method: ", solver.selection_method) | |
end | |
function solve(solver::NqueenSolver) | |
max_fitness::Vector{Float64} = [] | |
min_fitness::Vector{Float64} = [] | |
avg_fitness::Vector{Float64} = [] | |
best_value::Chromosome = Chromosome([]) | |
iter = tqdm(1:solver.n_gen) | |
for i in iter | |
population::Vector{Chromosome} = randpop(solver.pop_size, solver.n) | |
mates::Tuple = make_mates(population, solver.n_parents, solver.n_mates; method=solver.selection_method) | |
children::Vector{Chromosome} = [crossover([mates[i][1];mates[i][2]]) |> x -> mutation(x, solver.n) for i in 1:solver.n_mates] |> x -> eliminate_duplicates(x) | |
new_population::Vector{Chromosome} = [population; children] |> x -> survival(solver.pop_size, x) | |
max_fitness = [max_fitness; aggregate_fitness(new_population; method=max)] | |
min_fitness = [min_fitness; aggregate_fitness(new_population; method=min)] | |
avg_fitness = [avg_fitness; aggregate_fitness(new_population; method=mean)] | |
best_value = [fitness(x) for x in new_population] |> x -> sortperm(vec(x), rev=true) |> x -> new_population[x[1]] | |
set_description(iter, "max fitness: $(max_fitness[end]) children_saved: $(size(children)[1])") | |
if max_fitness[end] == 1 | |
break | |
end | |
end | |
return max_fitness, min_fitness, avg_fitness, best_value | |
end |
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