Added BOTorch support

This commit is contained in:
Niko Feith 2023-04-24 15:31:46 +02:00
parent a17dc77234
commit 6cdb7f8711
5 changed files with 275 additions and 6 deletions

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@ -97,8 +97,6 @@ class BayesianOptimization:
lower=self.lower_bound,
upper=self.upper_bound)
return x_next
elif self.acq == "Probability of Improvement":
x_next = ProbabilityOfImprovement(self.GP,
self.X,
@ -109,8 +107,6 @@ class BayesianOptimization:
lower=self.lower_bound,
upper=self.upper_bound)
return x_next
elif self.acq == "Upper Confidence Bound":
x_next = ConfidenceBound(self.GP,
self.X,
@ -121,11 +117,11 @@ class BayesianOptimization:
lower=self.lower_bound,
upper=self.upper_bound)
return x_next
else:
raise NotImplementedError
return x_next
def eval_new_observation(self, x_next):
self.policy_model.weights = x_next
policy = self.policy_model.rollout()

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@ -0,0 +1,188 @@
import numpy as np
import torch
from botorch.models import SingleTaskGP
from botorch.optim import optimize_acqf
from gpytorch.kernels import MaternKernel
from botorch.fit import fit_gpytorch_mll
from gpytorch.mlls import ExactMarginalLogLikelihood
from botorch.acquisition import UpperConfidenceBound, ExpectedImprovement, ProbabilityOfImprovement
import warnings
from botorch.exceptions.warnings import InputDataWarning, BadInitialCandidatesWarning
from active_bo_ros.PolicyModel.GaussianRBFModel import GaussianRBF
torch.set_default_dtype(torch.float64)
warnings.filterwarnings("ignore", category=InputDataWarning)
warnings.filterwarnings("ignore", category=BadInitialCandidatesWarning)
class BayesianOptimization:
def __init__(self, env, nr_steps, nr_init=5, acq="Expected Improvement", nr_weights=6, policy_seed=None):
self.env = env
self.nr_init = nr_init
self.acq = acq
self.X = None
self.X_np = None
self.Y_np = None
self.GP = None
self.episode = 0
self.counter_array = np.empty((1, 1))
self.best_reward = np.empty((1, 1))
self.distance_penalty = 0
self.nr_policy_weights = nr_weights
self.nr_steps = nr_steps
self.policy_seed = policy_seed
self.lower_bound = 0
self.upper_bound = 1.0
self.bounds = torch.t(torch.tensor([[self.lower_bound, self.upper_bound]] * self.nr_policy_weights))
self.policy_model = GaussianRBF(self.nr_policy_weights,
self.nr_steps,
self.policy_seed,
self.lower_bound,
self.upper_bound)
self.eval_X = 200
self.eval_restarts = 5
def reset_bo(self):
self.counter_array = np.empty((1, 1))
self.GP = None
self.episode = 0
self.best_reward = np.empty((1, 1))
def runner(self, policy):
env_reward = 0.0
step_count = 0
for i in range(len(policy)):
action = policy[i]
output = self.env.step(action)
env_reward += output[1]
done = output[2]
step_count += 1
if done:
self.counter_array = np.vstack((self.counter_array, step_count))
break
if not done and i == len(policy):
distance = -(self.env.goal_position - output[0][0])
env_reward += distance * self.distance_penalty
self.counter_array = np.vstack((self.counter_array, step_count))
self.env.reset()
return env_reward, step_count
def initialize(self):
self.env.reset()
self.reset_bo()
self.X = torch.zeros((self.nr_init, self.nr_policy_weights))
self.X_np = np.zeros((self.nr_init, self.nr_policy_weights))
self.Y_np = np.zeros((self.nr_init, 1))
for i in range(self.nr_init):
self.policy_model.random_policy()
self.X_np[i, :] = self.policy_model.weights.T.clip(min=-1.0, max=1.0)
self.X[i, :] = torch.tensor((self.policy_model.weights.T.clip(min=-1.0, max=1.0) + 1) / 2)
policy = self.policy_model.rollout()
reward, step_count = self.runner(policy)
self.Y_np[i] = reward
Y = torch.tensor(self.Y_np)
self.GP = SingleTaskGP(train_X=self.X, train_Y=Y, covar_module=MaternKernel(nu=1.5))
mll = ExactMarginalLogLikelihood(self.GP.likelihood, self.GP)
fit_gpytorch_mll(mll)
def next_observation(self):
if self.acq == "Expected Improvement":
ei = ExpectedImprovement(self.GP, best_f=self.best_reward[-1][0], maximize=True)
x_next, _ = optimize_acqf(ei,
bounds=self.bounds,
num_restarts=self.eval_restarts,
raw_samples=self.eval_X,
q=1)
elif self.acq == "Probability of Improvement":
poi = ProbabilityOfImprovement(self.GP, best_f=self.best_reward[-1][0], maximize=True)
x_next, _ = optimize_acqf(poi,
bounds=self.bounds,
num_restarts=self.eval_restarts,
raw_samples=self.eval_X,
q=1)
elif self.acq == "Upper Confidence Bound":
ucb = UpperConfidenceBound(self.GP, beta=2.576, maximize=True)
x_next, _ = optimize_acqf(ucb,
bounds=self.bounds,
num_restarts=self.eval_restarts,
raw_samples=self.eval_X,
q=1)
else:
raise NotImplementedError
return torch.t(x_next)
def eval_new_observation(self, x_next):
new_weight = x_next.detach().numpy() * 2 - 1
self.policy_model.weights = new_weight
policy = self.policy_model.rollout()
reward, step_count = self.runner(policy)
self.X_np = np.vstack((self.X_np, new_weight.reshape(1, -1)))
self.X = torch.vstack((self.X, x_next.reshape(1, -1)))
self.Y_np = np.vstack((self.Y_np, reward))
Y = torch.tensor(self.Y_np)
self.GP = SingleTaskGP(train_X=self.X, train_Y=Y, covar_module=MaternKernel(nu=1.5))
mll = ExactMarginalLogLikelihood(self.GP.likelihood, self.GP)
fit_gpytorch_mll(mll)
if self.episode == 0:
self.best_reward[0] = max(self.Y_np)
else:
self.best_reward = np.vstack((self.best_reward, max(self.Y_np)))
self.episode += 1
return step_count
def add_new_observation(self, reward, x_new):
self.X = torch.vstack((self.X, torch.tensor(x_new)))
self.Y_np = np.vstack((self.Y_np, reward))
if self.episode == 0:
self.best_reward[0] = max(self.Y_np)
else:
self.best_reward = np.vstack((self.best_reward, max(self.Y_np)))
self.episode += 1
def get_best_result(self):
Y = torch.tensor(self.Y_np)
self.GP = SingleTaskGP(train_X=self.X, train_Y=Y, covar_module=MaternKernel(nu=1.5))
mll = ExactMarginalLogLikelihood(self.GP.likelihood, self.GP)
fit_gpytorch_mll(mll)
y_hat = self.GP.posterior(self.X)
idx = torch.argmax(y_hat.mean)
x_max = self.X_np[idx]
self.policy_model.weights = x_max
best_policy = self.policy_model.rollout().reshape(-1, )
return best_policy, y_hat.mean[idx].detach().numpy(), x_max

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@ -0,0 +1,72 @@
from active_bo_msgs.srv import BO
import rclpy
from rclpy.node import Node
from active_bo_ros.BayesianOptimization.BayesianOptimizationTorch import BayesianOptimization
from active_bo_ros.ReinforcementLearning.ContinuousMountainCar import Continuous_MountainCarEnv
import numpy as np
import torch
class BOService(Node):
def __init__(self):
super().__init__('bo_service')
self.srv = self.create_service(BO, 'bo_srv', self.bo_callback)
self.env = Continuous_MountainCarEnv()
self.distance_penalty = 0
self.nr_init = 3
def bo_callback(self, request, response):
self.get_logger().info('Bayesian Optimization Service started!')
nr_weights = request.nr_weights
max_steps = request.max_steps
nr_episodes = request.nr_episodes
nr_runs = request.nr_runs
acq = request.acquisition_function
self.get_logger().info(acq)
reward = np.zeros((nr_episodes, nr_runs))
best_pol_reward = np.zeros((1, nr_runs))
best_policy = np.zeros((max_steps, nr_runs))
best_weights = np.zeros((nr_weights, nr_runs))
BO = BayesianOptimization(self.env,
max_steps,
nr_init=self.nr_init,
acq=acq,
nr_weights=nr_weights)
for i in range(nr_runs):
BO.initialize()
for j in range(nr_episodes):
x_next = BO.next_observation()
BO.eval_new_observation(x_next)
best_policy[:, i], best_pol_reward[:, i], best_weights[:, i] = BO.get_best_result()
reward[:, i] = BO.best_reward.T
response.reward_mean = np.mean(reward, axis=1).tolist()
response.reward_std = np.std(reward, axis=1).tolist()
best_policy_idx = np.argmax(best_pol_reward)
response.best_weights = best_weights[:, best_policy_idx].tolist()
response.best_policy = best_policy[:, best_policy_idx].tolist()
return response
def main(args=None):
rclpy.init(args=args)
bo_service = BOService()
rclpy.spin(bo_service)
if __name__ == '__main__':
main()

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@ -0,0 +1,12 @@
from launch import LaunchDescription
from launch_ros.actions import Node
def generate_launch_description():
return LaunchDescription([
Node(
package='active_bo_ros',
executable='bo_torch_srv',
name='bo_srv'
),
])

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@ -30,6 +30,7 @@ setup(
'policy_srv = active_bo_ros.policy_service:main',
'rl_srv = active_bo_ros.rl_service:main',
'bo_srv = active_bo_ros.bo_service:main',
'bo_torch_srv = active_bo_ros.bo_torch_service:main',
'active_bo_srv = active_bo_ros.active_bo_service:main',
'active_rl_srv = active_bo_ros.active_rl_service:main',
'active_bo_topic = active_bo_ros.active_bo_topic:main',