evox.algorithms.so.es_variants.guided_es 源代码

from typing import Literal

import torch

from evox.core import Algorithm, Mutable, Parameter

from .adam_step import adam_single_tensor


[文档] class GuidedES(Algorithm): """The implementation of the Guided-ES algorithm. Reference: Guided evolutionary strategies: Augmenting random search with surrogate gradients (https://arxiv.org/abs/1806.10230) This code has been inspired by or utilizes the algorithmic implementation from evosax. More information about evosax can be found at the following URL: GitHub Link: https://github.com/RobertTLange/evosax """ def __init__( self, pop_size: int, center_init: torch.Tensor, subspace_dims: int | None = None, optimizer: Literal["adam"] | None = None, sigma: float = 0.03, lr: float = 60, sigma_decay: float = 1.0, sigma_limit: float = 0.01, device: torch.device | None = None, ): """Initialize the Guided-ES algorithm with the given parameters. :param pop_size: The size of the population. :param center_init: The initial center of the population. Must be a 1D tensor. :param optimizer: The optimizer to use. Defaults to None. Currently, only "adam" or None is supported. :param lr: The learning rate for the optimizer. Defaults to 0.05. :param sigma: The standard deviation of the noise. Defaults to 0.03. :param sigma_decay: The decay factor for the standard deviation. Defaults to 1.0. :param sigma_limit: The minimum value for the standard deviation. Defaults to 0.01. :param subspace_dims: The dimension of the subspace. Defaults to None. :param device: The device to use for the tensors. Defaults to None. """ super().__init__() assert pop_size > 1 and pop_size % 2 == 0 dim = center_init.shape[0] if subspace_dims is None: subspace_dims = dim # set hyperparameters self.beta = Parameter(1.0, device=device) self.lr = Parameter(lr, device=device) self.sigma_decay = Parameter(sigma_decay, device=device) self.sigma_limit = Parameter(sigma_limit, device=device) # set value self.dim = dim self.pop_size = pop_size self.optimizer = optimizer self.subspace_dims = subspace_dims # setup center_init = center_init.to(device=device) self.center = Mutable(center_init) self.alpha = Mutable(torch.tensor(0.5, device=device)) self.sigma = Mutable(torch.tensor(sigma, device=device)) self.grad_subspace = Mutable(torch.randn(subspace_dims, dim, device=device)) if optimizer == "adam": self.exp_avg = Mutable(torch.zeros_like(self.center)) self.exp_avg_sq = Mutable(torch.zeros_like(self.center)) self.beta1 = Parameter(0.9, device=device) self.beta2 = Parameter(0.999, device=device)
[文档] def step(self): """Run one step of the Guided-ES algorithm. The function will sample a population, evaluate their fitness, and then update the center and standard deviation of the algorithm using the sampled population. """ device = self.center.device a = self.sigma * torch.sqrt(self.alpha / self.dim) c = self.sigma * torch.sqrt((1.0 - self.alpha) / self.subspace_dims) eps_full = torch.randn(self.dim, int(self.pop_size // 2), device=device) eps_subspace = torch.randn(self.subspace_dims, int(self.pop_size // 2), device=device) Q, _ = torch.linalg.qr(self.grad_subspace) z_plus = a * eps_full + c * (Q @ eps_subspace) z_plus = torch.swapaxes(z_plus, 0, 1) z = torch.cat([z_plus, -1.0 * z_plus]) population = self.center + z fitness = self.evaluate(population) noise = z / self.sigma noise_1 = noise[: int(self.pop_size / 2)] fit_1 = fitness[: int(self.pop_size / 2)] fit_2 = fitness[int(self.pop_size / 2) :] fit_diff = fit_1 - fit_2 fit_diff_noise = noise_1.T @ fit_diff theta_grad = (self.beta / self.pop_size) * fit_diff_noise self.grad_subspace = torch.cat([self.grad_subspace, theta_grad[None, :]])[1:, :] if self.optimizer is None: center = self.center - self.lr * theta_grad else: center, self.exp_avg, self.exp_avg_sq = adam_single_tensor( self.center, theta_grad, self.exp_avg, self.exp_avg_sq, self.beta1, self.beta2, self.lr, ) self.center = center sigma = torch.maximum(self.sigma_decay * self.sigma, self.sigma_limit) self.sigma = sigma
[文档] def record_step(self): return {"center": self.center, "sigma": self.sigma}