Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

Improve MAPElites performance #99

Open
wants to merge 4 commits into
base: master
Choose a base branch
from

Conversation

JakeForsey
Copy link

@JakeForsey JakeForsey commented Feb 9, 2024

#93

Is a second implementation appropriate? The only drawback I can see is that the feature grid has to be regular.

mapelites_profiling.py

import time

import torch
from evotorch import Problem
from evotorch.algorithms import MAPElites, RegularMAPElites
from evotorch.operators import GaussianMutation, SimulatedBinaryCrossOver

def kursawe(x: torch.Tensor) -> torch.Tensor:
    f1 = torch.sum(
        -10 * torch.exp(
            -0.2 * torch.sqrt(x[:, 0:2] ** 2.0 + x[:, 1:3] ** 2.0)
        ),
        dim=-1,
    )
    f2 = torch.sum(
        (torch.abs(x) ** 0.8) + (5 * torch.sin(x ** 3)),
        dim=-1,
    )
    fitnesses = torch.stack([f1 + f2, f1, f2], dim=-1)
    return fitnesses


def main():
    lower_bounds = [-20, -14]
    upper_bounds = [-10, 4]
    num_bins = 50

    for clazz, feature_grid in [
        (RegularMAPElites, RegularMAPElites.make_feature_grid(lower_bounds, upper_bounds, [num_bins, num_bins])),
        (MAPElites, MAPElites.make_feature_grid(lower_bounds, upper_bounds, num_bins, dtype="float32")),
    ]:
        problem = Problem(
            "min",
            kursawe,
            solution_length=3,
            eval_data_length=2,
            bounds=(-5.0, 5.0),
            vectorized=True,
        )
        searcher = clazz(
            problem,
            feature_grid=feature_grid,
            operators=[
                SimulatedBinaryCrossOver(problem, tournament_size=4, cross_over_rate=1.0, eta=8),
                GaussianMutation(problem, stdev=0.03),
            ],
        )
        start = time.time()
        searcher.run(100)
        print("Final status:\n", searcher.status)
        print("Impl: ", clazz)
        print("Time spent (secs): ", time.time() - start)
        print("Filled hypervolumes: ", searcher.filled.sum())


if __name__ == "__main__":
    main()

out:

python examples/scripts/mapelites_profiling.py
[2024-02-09 15:26:24] INFO     <28574> evotorch.core: Instance of `Problem` (id:4430191008) -- The `dtype` for the problem's decision variables is set as torch.float32
[2024-02-09 15:26:24] INFO     <28574> evotorch.core: Instance of `Problem` (id:4430191008) -- `eval_dtype` (the dtype of the fitnesses and evaluation data) is set as torch.float32
[2024-02-09 15:26:24] INFO     <28574> evotorch.core: Instance of `Problem` (id:4430191008) -- The `device` of the problem is set as cpu
[2024-02-09 15:26:24] INFO     <28574> evotorch.core: Instance of `Problem` (id:4430191008) -- The number of actors that will be allocated for parallelized evaluation is 0
Final status:
 <LazyStatusDict
    mean_eval = <not yet computed>
    pop_best_eval = <not yet computed>
    pop_best = <not yet computed>
    median_eval = <not yet computed>
    iter = 100
    best = <Solution values=tensor([-1.1418, -1.1287, -1.1360]), evals=tensor([-26.1036, -14.5129, -11.5906])>
    worst = <Solution values=tensor([-4.9854,  3.2066, -3.7966]), evals=tensor([17.0567, -6.7572, 23.8138])>
    best_eval = -26.10356903076172
    worst_eval = 17.056659698486328
>
Impl:  <class 'evotorch.algorithms.mapelites.RegularMAPElites'>
Time spent (secs):  0.46088290214538574
Filled hypervolumes:  ReadOnlyTensor(1564)
[2024-02-09 15:26:24] INFO     <28574> evotorch.core: Instance of `Problem` (id:4839976912) -- The `dtype` for the problem's decision variables is set as torch.float32
[2024-02-09 15:26:24] INFO     <28574> evotorch.core: Instance of `Problem` (id:4839976912) -- `eval_dtype` (the dtype of the fitnesses and evaluation data) is set as torch.float32
[2024-02-09 15:26:24] INFO     <28574> evotorch.core: Instance of `Problem` (id:4839976912) -- The `device` of the problem is set as cpu
[2024-02-09 15:26:24] INFO     <28574> evotorch.core: Instance of `Problem` (id:4839976912) -- The number of actors that will be allocated for parallelized evaluation is 0
Final status:
 <LazyStatusDict
    mean_eval = <not yet computed>
    pop_best_eval = <not yet computed>
    pop_best = <not yet computed>
    median_eval = <not yet computed>
    iter = 100
    best = <Solution values=tensor([-1.1362, -1.1318, -1.1396]), evals=tensor([-26.1026, -14.5087, -11.5939])>
    worst = <Solution values=tensor([-3.4925,  3.5591, -4.8970]), evals=tensor([16.4008, -6.6685, 23.0693])>
    best_eval = -26.102632522583008
    worst_eval = 16.400814056396484
>
Impl:  <class 'evotorch.algorithms.mapelites.MAPElites'>
Time spent (secs):  38.28567409515381
Filled hypervolumes:  ReadOnlyTensor(1523)

Summary:

Impl: <class 'evotorch.algorithms.mapelites.RegularMAPElites'>
Time spent (secs): 0.46088290214538574
Filled hypervolumes: ReadOnlyTensor(1564)

Impl: <class 'evotorch.algorithms.mapelites.MAPElites'>
Time spent (secs): 38.28567409515381
Filled hypervolumes: ReadOnlyTensor(1523)

Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment
Labels
None yet
Projects
None yet
Development

Successfully merging this pull request may close these issues.

None yet

1 participant