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690 lines (524 loc) · 29.7 KB
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import warnings
import gym
import torch
import torch.nn as nn
import numpy as np
import time
import torch.nn.functional as F
import torch.distributions as dis
from gym.spaces import Box, Discrete
from base_modules import *
torch.set_default_dtype(torch.float32)
INFINITY = 1e9
def augment_mahjong_data(x, a, mask):
assert x.shape[-1] == 34
agumented_ind = np.zeros([34], dtype=np.int64)
mps_permu = np.random.permutation(3)
if np.random.rand() < 0.5:
through = np.flip(np.arange(9))
else:
through = np.arange(9)
agumented_ind[0:9] = mps_permu[0] * 9 + through
agumented_ind[9:18] = mps_permu[1] * 9 + through
agumented_ind[18:27] = mps_permu[2] * 9 + through
agumented_ind[27:31] = np.random.permutation(4) + 27
agumented_ind[31:34] = np.random.permutation(3) + 31
agumented_ind_a = np.zeros([mask.shape[-1]], dtype=np.int64)
agumented_ind_a[:34] = agumented_ind
agumented_ind_a[34:] = np.arange(34, mask.shape[-1])
a_one_hot_augmented = F.one_hot(a, num_classes=mask.shape[-1])[:, agumented_ind_a]
a_augmented = torch.argmax(a_one_hot_augmented, dim=-1, keepdim=False)
return x[:, :, agumented_ind], a_augmented, mask[:, agumented_ind_a]
class VLOG(nn.Module):
def __init__(self, observation_space, oracle_observation_space, action_space, is_main_network=True, **kwargs):
super(VLOG, self).__init__()
if isinstance(action_space, Discrete):
self.action_size = action_space.n
self.algorithm = kwargs["algorithm"] if ("algorithm" in kwargs) else 'ddqn'
else:
raise NotImplementedError
assert isinstance(observation_space, Box) and isinstance(oracle_observation_space, Box)
self.observation_space = observation_space
self.oracle_observation_space = oracle_observation_space
# Must ensure that the feature dimension for input is at the first axis.
self.full_observation_space_shape = [observation_space.shape[0] + oracle_observation_space.shape[0]] + list(
oracle_observation_space.shape[1:])
self.hidden_layer_width = kwargs["hidden_layer_width"] if ("hidden_layer_width" in kwargs) else 256
self.half_hidden_layer_depth = kwargs["half_hidden_layer_depth"] if ("half_hidden_layer_depth" in kwargs) else 2
self.act_fn = kwargs["act_fn"] if ("act_fn" in kwargs) else 'relu'
self.z_stochastic_size = kwargs["z_stochastic_size"] if ("z_stochastic_size" in kwargs) else None
self.beta = kwargs["beta"] if ("beta" in kwargs) else 0.0001 # Coefficient for KLD term in ELBO
self.kld_target = kwargs["kld_target"] if ("kld_target" in kwargs) else -1
self.tau = kwargs["tau"] if ("tau" in kwargs) else 1000
self.lr = kwargs["lr"] if ("lr" in kwargs) else 1e-4
self.gamma = kwargs["gamma"] if ("gamma" in kwargs) else 0.99
self.type = kwargs["type"] if ("type" in kwargs) else "vlog"
# ---------------------------------------- type settings ----------------------------------------
# Available options:
if self.type not in ["baseline", "oracle", "vlog", "vlog-self", "suphx", "opd", "vlog-oracle"]:
raise ValueError(
"Model type must be one of these: ['baseline', 'oracle', 'vlog', 'vlog-self', 'suphx', 'opd', 'vlog-oracle']")
if self.type not in ["oracle", "suphx", "vlog-oracle"]:
self.input_forward_size = [*observation_space.shape]
else:
self.input_forward_size = [*self.full_observation_space_shape]
if self.type not in ["vlog-self"]:
self.input_oracle_size = [*self.full_observation_space_shape]
else:
self.input_oracle_size = self.input_forward_size
if self.type in ["baseline", "oracle", "suphx", "opd"]:
self.use_prior_only = True
else:
self.use_prior_only = False
if "device" in kwargs:
self.device = kwargs["device"]
else:
if torch.cuda.is_available():
self.device = 'cuda'
else:
self.device = 'cpu'
if self.z_stochastic_size is None:
if self.type in ["vlog", "vlog-self", "vlog-oracle"]:
self.z_stochastic_size = int(self.hidden_layer_width / 2)
else:
self.z_stochastic_size = 0
self.verbose = kwargs["verbose"] if ("verbose" in kwargs) else 1
self.update_times = 0
# -------------------------------------- KLD coefficient (if using) ------------------------------
if self.beta:
if self.kld_target > 0:
log_beta = torch.tensor(np.log(self.beta).astype(np.float32)).to(device=self.device)
self.log_beta = log_beta.clone().detach().requires_grad_(True)
else:
self.log_beta = torch.tensor(np.log(self.beta).astype(np.float32)).to(device=self.device)
self.alpha = 1 # speed of adjusting beta
# ---------------------------------------- setting for OPD ----------------------------------------
if self.type == "opd":
self.opd_mu = kwargs["opd_mu"] # weight of distillation loss
self.opd_teacher_model = kwargs["opd_teacher_model"]
# -------------------- Define Network Connections ------------------
if self.act_fn == "relu":
self.forward_act_fn = nn.ReLU
elif self.act_fn == "tanh":
self.forward_act_fn = nn.Tanh
else:
raise ValueError("activation function should be tanh or relu")
self.latent_module = nn.ModuleList()
if len(self.input_forward_size) == 1:
self.encoder = nn.Sequential(nn.Linear(self.input_forward_size[0], self.hidden_layer_width),
self.forward_act_fn()
)
self.encoder_oracle = nn.Sequential(nn.Linear(self.input_oracle_size[0], self.hidden_layer_width),
self.forward_act_fn()
)
self.phi_size = self.hidden_layer_width
self.phi_size_oracle = self.hidden_layer_width
else:
if len(self.input_forward_size) == 2:
resolution = "{}".format(self.input_forward_size[1])
elif len(self.input_forward_size) == 3:
resolution = "{}x{}".format(self.input_forward_size[1], self.input_forward_size[2])
else:
raise NotImplementedError
self.encoder, self.phi_size = make_cnn(resolution, self.input_forward_size[0])
self.encoder_oracle, self.phi_size_oracle = make_cnn(resolution, self.input_oracle_size[0])
self.latent_module.append(self.encoder_oracle)
self.latent_module.append(self.encoder)
forward_fnns = nn.ModuleList()
last_layer_size = self.phi_size
for _ in range(self.half_hidden_layer_depth - 1):
forward_fnns.append(nn.Linear(last_layer_size, self.hidden_layer_width))
forward_fnns.append(self.forward_act_fn())
last_layer_size = self.hidden_layer_width
self.forward_fnn = nn.Sequential(*forward_fnns)
self.latent_module.append(self.forward_fnn)
pre_zp_size = self.hidden_layer_width
if self.z_stochastic_size:
self.f_h2muzp = nn.Linear(pre_zp_size, self.z_stochastic_size)
self.f_h2logsigzp = nn.Sequential(nn.Linear(pre_zp_size, self.z_stochastic_size),
MinusOneModule()
)
self.latent_module.append(self.f_h2logsigzp)
self.latent_module.append(self.f_h2muzp)
else:
self.f_h2zp = nn.Sequential(nn.Linear(pre_zp_size, self.hidden_layer_width),
self.forward_act_fn())
self.latent_module.append(self.f_h2zp)
if not self.use_prior_only:
oracle_fnns = nn.ModuleList()
last_layer_size = self.phi_size_oracle
for _ in range(self.half_hidden_layer_depth - 1):
oracle_fnns.append(nn.Linear(last_layer_size, self.hidden_layer_width))
oracle_fnns.append(self.forward_act_fn())
last_layer_size = self.hidden_layer_width
self.oracle_fnn = nn.Sequential(*oracle_fnns)
self.latent_module.append(self.oracle_fnn)
pre_zq_size = self.hidden_layer_width
if self.z_stochastic_size:
self.f_hb2muzq = nn.Linear(pre_zq_size, self.z_stochastic_size)
self.f_hb2logsigzq = nn.Sequential(nn.Linear(pre_zq_size, self.z_stochastic_size),
MinusOneModule())
self.latent_module.append(self.f_hb2logsigzq)
self.latent_module.append(self.f_hb2muzq)
else:
self.f_hb2zq = nn.Sequential(nn.Linear(pre_zq_size, self.hidden_layer_width),
self.forward_act_fn())
self.latent_module.append(self.f_hb2zq)
# ----------------------------- RL part -----------------------------
self.alg_config = kwargs["alg_config"] if ("alg_config" in kwargs) else {}
pre_rl_size = self.z_stochastic_size if self.z_stochastic_size else self.hidden_layer_width
if self.algorithm == 'ddqn':
self.epsilon = kwargs["epsilon"] if ("epsilon" in kwargs) else 0.05
self.cql_alpha = self.alg_config["cql_alpha"] if (
"cql_alpha" in self.alg_config) else 0 # Conservative Q-learning (H)
self.use_cql = True if self.cql_alpha else False
self.soft_update_target_network = self.alg_config["soft_update_target_network"] if (
"soft_update_target_network" in self.alg_config) else False
self.dueling = self.alg_config["dueling"] if ("dueling" in self.alg_config) else True
self.alg_type = 'value_based'
# Q network 1
self.f_s2q = DiscreteActionQNetwork(pre_rl_size, self.action_size,
hidden_layers=[self.hidden_layer_width] * self.half_hidden_layer_depth,
dueling=self.dueling, act_fn=self.forward_act_fn)
self.optimizer_q = torch.optim.Adam(self.parameters(), lr=self.lr)
elif self.algorithm == 'bc':
self.f_s2pi0 = DiscreteActionPolicyNetwork(pre_rl_size, self.action_size,
hidden_layers=[self.hidden_layer_width] * self.half_hidden_layer_depth,
act_fn=self.forward_act_fn, device=self.device)
self.alg_type = 'supervised'
self.ce_loss = nn.CrossEntropyLoss(reduction='none')
self.optimizer_a = torch.optim.Adam(self.parameters(), lr=self.lr)
else:
raise NotImplementedError("algorithm can only be 'bc' or 'ddqn'")
if not self.use_prior_only:
self.optimizer_b = torch.optim.Adam([self.log_beta], lr=self.lr)
self.to(device=self.device)
self.h_t = None
self.a_tm1 = None
self.zp_tm1 = torch.zeros([1, self.z_stochastic_size],
dtype=torch.float32).to(device=self.device)
# target network
if is_main_network:
target_net = VLOG(observation_space, oracle_observation_space, action_space, is_main_network=False, **kwargs)
# synchronizing target network and main network
state_dict_tar = target_net.state_dict()
state_dict = self.state_dict()
for key in list(target_net.state_dict().keys()):
state_dict_tar[key] = state_dict[key]
target_net.load_state_dict(state_dict_tar)
self.target_net = target_net
def init_states(self):
# held for future RNN implementation
pass
def select(self, x, o, action_mask=None, greedy=False, need_other_info=False, use_posterior=False):
with torch.no_grad():
if action_mask is not None:
action_mask = torch.from_numpy(
action_mask.astype(np.float32).reshape([1, self.action_size]))
x = torch.from_numpy(x.astype(np.float32).reshape([1, *list(x.shape)])).to(device=self.device)
o = torch.from_numpy(o.astype(np.float32).reshape([1, *list(o.shape)])).to(device=self.device)
if self.type == "suphx":
x = torch.cat([x, 0 * o], dim=1)
elif self.type == "oracle" or self.type == "vlog-oracle" or use_posterior:
x = torch.cat([x, o], dim=1)
else:
pass
if use_posterior and self.use_prior_only:
warnings.warn("use_posterior does not works for non-VLOG model!")
if (not use_posterior) or self.use_prior_only:
x = self.encoder(x)
e = self.forward_fnn(x)
if self.z_stochastic_size > 0:
muz = self.f_h2muzp(e)
logsigz = self.f_h2logsigzp(e)
dist = dis.normal.Normal(muz, torch.exp(logsigz))
z = dist.sample()
else:
z = self.f_h2zp(e)
else:
x = self.encoder_oracle(x)
e = self.oracle_fnn(x)
if self.z_stochastic_size > 0:
muz = self.f_hb2muzq(e)
logsigz = self.f_hb2logsigzq(e)
dist = dis.normal.Normal(muz, torch.exp(logsigz))
z = dist.sample()
else:
z = self.f_hb2zq(e)
self.h_t = z
self.zp_tm1 = z
if self.algorithm == 'bc':
a = self.f_s2pi0.sample_action(self.h_t, action_mask=action_mask, greedy=greedy).item()
elif self.algorithm == 'ddqn':
q = self.f_s2q(self.h_t).detach().cpu()
if action_mask is not None:
q = q * action_mask - INFINITY * (1 - action_mask)
if greedy:
a = torch.argmax(q, dim=-1)
if np.prod(a.shape) == 1:
a = a.item() # discrete action
else:
if np.random.rand() < self.epsilon:
if action_mask is None:
a = np.random.randint(self.action_size)
else:
valid_action_ind = np.nonzero(action_mask.cpu().numpy().reshape([-1]))
valid_actions = np.arange(self.action_size)[valid_action_ind]
a = valid_actions[np.random.randint(len(valid_actions))]
else:
a = torch.argmax(q, dim=-1)
if np.prod(a.shape) == 1:
a = a.item() # discrete action
self.a_tm1 = torch.from_numpy(np.array([a]).reshape([-1])).to(device=self.device)
if not need_other_info:
return a
else:
return a, self.h_t, self.zp_tm1
def learn_bc(self, X, XP, O, OP, A, R, D, V,
action_masks=None, action_masks_tp1=None, mahjong_augment=False, suphx_gamma=0):
start_time = time.time()
h_tensor, _, _, kld, x, xo, a, _, _, v, _, _ = self.process_data(
X, XP, O, OP, A, R, D, V, action_masks, action_masks_tp1, mahjong_augment, suphx_gamma)
if (not self.use_prior_only) and self.verbose and np.random.rand() < 0.005 * self.verbose:
print("beta = {}, kld = {}, kld_target= {}".format(
np.exp(self.log_beta.item()), kld.detach().item(), self.kld_target))
logit_a_predict = self.f_s2pi0(h_tensor)
loss_a = torch.mean(self.ce_loss(logit_a_predict, a) * v)
loss_critic = torch.tensor(0)
self.optimizer_a.zero_grad()
if not self.use_prior_only:
(torch.exp(self.log_beta.detach()) * kld / self.action_size + loss_a).backward()
else:
loss_a.backward()
self.optimizer_a.step()
if (not self.use_prior_only) and self.alpha and (self.kld_target > 0) and torch.sum(v).item() > 0:
loss_beta = - torch.mean(self.log_beta * self.alpha * (
torch.log10(torch.clamp(kld, 1e-9, np.inf)) - np.log10(self.kld_target)).detach())
self.optimizer_b.zero_grad()
loss_beta.backward()
self.optimizer_b.step()
if self.update_times < 10:
print("training time:", time.time() - start_time)
self.update_times += 1
return kld.cpu().item(), loss_critic.cpu().item(), loss_a.cpu().item()
def learn(self, X, XP, O, OP, A, R, D, V,
action_masks=None, action_masks_tp1=None, mahjong_augment=False, suphx_gamma=0):
start_time = time.time()
h_tensor, h_tp1_tensor, h_tp1_tar_tensor, kld, x, xo, a, r, d, v, m, mp = self.process_data(
X, XP, O, OP, A, R, D, V, action_masks, action_masks_tp1, mahjong_augment, suphx_gamma)
# ------------ compute value prediction loss -------------
if self.algorithm == 'ddqn':
loss_q, loss_a = self.get_ddqn_loss(h_tensor, h_tp1_tensor, h_tp1_tar_tensor, a, r, d, v, mp)
else:
raise NotImplementedError
if self.type in ["vlog", "vlog-self", "vlog-oracle"]:
loss_q = loss_q + torch.exp(self.log_beta.detach()) * kld
if (not self.use_prior_only) and self.verbose and np.random.rand() < 0.005 * self.verbose:
print("beta = {}, kld = {}, kld_target= {}".format(
np.exp(self.log_beta.item()), kld.detach().item(), self.kld_target))
# ---------------------- Distillation loss (only for OPD) -------------------------
if self.type == "opd":
phi_teacher = self.opd_teacher_model.encoder(xo)
e_teacher = self.opd_teacher_model.forward_fnn(phi_teacher)
h_tensor_teacher = self.opd_teacher_model.f_h2zp(e_teacher)
q_target_teacher = self.opd_teacher_model.f_s2q(h_tensor_teacher).detach()
a_one_hot = F.one_hot(a.to(torch.int64), num_classes=self.action_size).to(torch.float32)
loss_q = loss_q + self.opd_mu * torch.mean(
torch.sum(- self.f_s2q.get_log_prob(h_tensor, q_target_teacher) * a_one_hot, dim=-1) * v)
# ---------------- Gradient descent for value functions --------------------
self.optimizer_q.zero_grad()
loss_q.backward()
self.optimizer_q.step()
# --------------------- Learning beta (only for VLOG) -----------------------------
if self.type in ["vlog", "vlog-self", "vlog-oracle"] and self.alpha and (self.kld_target > 0) and torch.sum(v).item() > 0:
loss_beta = - torch.mean(self.log_beta * self.alpha * (
torch.log10(torch.clamp(kld, 1e-9, np.inf)) - np.log10(self.kld_target)).detach())
self.optimizer_b.zero_grad()
loss_beta.backward()
self.optimizer_b.step()
# ----------------- update target Q network -------------------------------
if self.soft_update_target_network:
state_dict_tar = self.target_net.state_dict()
state_dict = self.state_dict()
for key in list(self.target_net.state_dict().keys()):
state_dict_tar[key] = (1 - 1 / self.tau) * state_dict_tar[key] + 1 / self.tau * state_dict[key]
self.target_net.load_state_dict(state_dict_tar)
else:
if self.update_times % int(self.tau) == 0:
state_dict_tar = self.target_net.state_dict()
state_dict = self.state_dict()
for key in list(self.target_net.state_dict().keys()):
state_dict_tar[key] = 0 * state_dict_tar[key] + 1 * state_dict[key]
self.target_net.load_state_dict(state_dict_tar)
if self.update_times < 10:
print("training time:", time.time() - start_time)
self.update_times += 1
return kld.cpu().item(), loss_q.cpu().item(), loss_a.cpu().item()
def process_data(self, X, XP, O, OP, A, R, D, V, action_masks, action_masks_tp1,
mahjong_augment=False, suphx_gamma=0):
batch_size = A.shape[0]
if isinstance(X, np.ndarray):
X = torch.from_numpy(X).to(device=self.device)
XP = torch.from_numpy(XP).to(device=self.device)
O = torch.from_numpy(O).to(device=self.device)
OP = torch.from_numpy(OP).to(device=self.device)
A = torch.from_numpy(A).to(device=self.device)
R = torch.from_numpy(R).to(device=self.device)
D = torch.from_numpy(D).to(device=self.device)
V = torch.from_numpy(V).to(device=self.device)
if action_masks is not None:
action_masks = torch.from_numpy(action_masks).to(device=self.device)
if action_masks_tp1 is not None:
action_masks_tp1 = torch.from_numpy(action_masks_tp1).to(device=self.device)
if not self.type == "vlog-self":
if self.type == "suphx":
if suphx_gamma > 0:
oracle_mask = torch.bernoulli(suphx_gamma * torch.ones_like(O))
else:
oracle_mask = torch.zeros_like(O)
else:
oracle_mask = torch.ones_like(O)
x_oracle = torch.cat([X, oracle_mask * O], dim=1).to(torch.float32)
xp_oracle = torch.cat([XP, oracle_mask * OP], dim=1).to(torch.float32)
else:
x_oracle = X.to(torch.float32)
xp_oracle = XP.to(torch.float32)
if self.type not in ["oracle", "suphx", "vlog-oracle"]:
x = X.to(torch.float32)
xp = XP.to(torch.float32)
else:
x = x_oracle
xp = xp_oracle
if action_masks is not None:
m = action_masks.to(torch.float32)
mp = action_masks_tp1.to(torch.float32)
else:
m = torch.ones([batch_size, self.action_size], device=self.device).to(torch.float32)
mp = torch.ones([batch_size, self.action_size], device=self.device).to(torch.float32)
v = V.to(torch.float32)
a = A.to(torch.int64)
d = D.to(torch.float32)
r = R.to(torch.float32)
if mahjong_augment: # only for Mahjong
all_obs_concat, a, mp = augment_mahjong_data(torch.cat([x, xp, x_oracle, xp_oracle], dim=-2), a, mp)
x = all_obs_concat[:, :x.shape[-2], :]
xp = all_obs_concat[:, x.shape[-2]: int(2 * x.shape[-2]), :]
x_oracle = all_obs_concat[:, int(2 * x.shape[-2]): int(2 * x.shape[-2] + x_oracle.shape[-2]), :]
xp_oracle = all_obs_concat[:, int(2 * x.shape[-2] + x_oracle.shape[-2]):, :]
phi = self.encoder(x)
phi_oracle = self.encoder_oracle(x_oracle)
phi_tp1 = self.encoder(xp)
phi_oracle_tp1 = self.encoder_oracle(xp_oracle)
phi_tp1_tar = self.target_net.encoder(xp)
phi_oracle_tp1_tar = self.target_net.encoder_oracle(xp_oracle)
if not self.use_prior_only:
if self.z_stochastic_size > 0:
e = self.forward_fnn(phi)
e_oracle = self.oracle_fnn(phi_oracle)
muzp_tensor = self.f_h2muzp(e)
logsigzp_tensor = self.f_h2logsigzp(e)
muzq_tensor = self.f_hb2muzq(e_oracle)
logsigzq_tensor = self.f_hb2logsigzq(e_oracle)
dist_q = dis.normal.Normal(muzq_tensor, torch.exp(logsigzq_tensor))
h_tensor = dist_q.rsample()
zq_tensor = h_tensor
dist_p = dis.normal.Normal(muzp_tensor, torch.exp(logsigzp_tensor))
hp_tensor = dist_p.rsample()
zp_tensor = hp_tensor
with torch.no_grad():
e_oracle_tp1 = self.oracle_fnn(phi_oracle_tp1)
muzq_tensor_tp1 = self.f_hb2muzq(e_oracle_tp1)
logsigzq_tensor_tp1 = self.f_hb2logsigzq(e_oracle_tp1)
dist = dis.normal.Normal(muzq_tensor_tp1, torch.exp(logsigzq_tensor_tp1))
h_tp1_tensor = dist.sample().detach()
e_oracle_tp1_tar = self.target_net.oracle_fnn(phi_oracle_tp1_tar)
muzq_tensor_tp1_tar = self.target_net.f_hb2muzq(e_oracle_tp1_tar)
logsigzq_tensor_tp1_tar = self.target_net.f_hb2logsigzq(e_oracle_tp1_tar)
dist = dis.normal.Normal(muzq_tensor_tp1_tar, torch.exp(logsigzq_tensor_tp1_tar))
h_tp1_tar_tensor = dist.sample().detach()
else:
zp_tensor = self.f_h2zp(self.forward_fnn(phi))
zq_tensor = self.f_hb2zq(self.oracle_fnn(phi_oracle))
h_tensor = zq_tensor
hp_tensor = zp_tensor
with torch.no_grad():
e_oracle_tp1 = self.oracle_fnn(phi_oracle_tp1).detach_()
h_tp1_tensor = self.f_hb2zq(e_oracle_tp1).detach_()
e_oracle_tp1_tar = self.target_net.oracle_fnn(phi_oracle_tp1_tar).detach_()
h_tp1_tar_tensor = self.target_net.f_hb2zq(e_oracle_tp1_tar).detach_()
else:
# use_prior_only (baseline)
if self.z_stochastic_size > 0:
e_t = self.forward_fnn(phi)
muzp_tensor = self.f_h2muzp(e_t)
logsigzp_tensor = self.f_h2logsigzp(self.forward_fnn(e_t))
dist_p = dis.normal.Normal(muzp_tensor, torch.exp(logsigzp_tensor))
zp_tensor = dist_p.rsample()
h_tensor = zp_tensor
with torch.no_grad():
e_tp1 = self.forward_fnn(phi_tp1).detach()
muzp_tensor_tp1 = self.f_h2muzp(e_tp1)
logsigzp_tensor_tp1 = self.f_h2logsigzp(self.forward_fnn(e_tp1))
dist_p = dis.normal.Normal(muzp_tensor_tp1, torch.exp(logsigzp_tensor_tp1))
h_tp1_tensor = dist_p.sample().detach()
e_tp1_tar = self.target_net.forward_fnn(phi_tp1_tar).detach()
muzp_tensor_tp1_tar = self.f_h2muzp(e_tp1_tar)
logsigzp_tensor_tp1_tar = self.f_h2logsigzp(self.forward_fnn(e_tp1_tar))
dist_p = dis.normal.Normal(muzp_tensor_tp1_tar, torch.exp(logsigzp_tensor_tp1_tar))
h_tp1_tar_tensor = dist_p.sample().detach()
else:
zp_tensor = self.f_h2zp(self.forward_fnn(phi))
h_tensor = zp_tensor
with torch.no_grad():
e_tp1 = self.forward_fnn(phi_tp1).detach()
h_tp1_tensor = self.f_h2zp(e_tp1).detach()
e_tp1_tar = self.target_net.forward_fnn(phi_tp1_tar).detach()
h_tp1_tar_tensor = self.target_net.f_h2zp(e_tp1_tar).detach()
# ------------ compute divergence between z^p and z^q ------------
if not self.use_prior_only:
if self.z_stochastic_size > 0:
if self.verbose and np.random.rand() < 0.005 * self.verbose:
tmp = np.array2string(muzp_tensor[0, :6].detach().cpu().numpy(), precision=4, separator=', ')
print("muzp = " + tmp)
tmp = np.array2string(muzq_tensor[0, :6].detach().cpu().numpy(), precision=4, separator=', ')
print("muzq = " + tmp)
tmp = np.array2string(logsigzp_tensor[0, :6].detach().cpu().exp().numpy(),
precision=4, separator=', ')
print("sigzp = " + tmp)
tmp = np.array2string(logsigzq_tensor[0, :6].detach().cpu().exp().numpy(),
precision=4, separator=', ')
print("sigzq = " + tmp)
kld = torch.mean(
torch.sum(logsigzp_tensor - logsigzq_tensor + ((muzp_tensor - muzq_tensor).pow(2) + torch.exp(
logsigzq_tensor * 2)) / (2.0 * torch.exp(logsigzp_tensor * 2)) - 0.5, dim=-1) * v)
else:
raise NotImplementedError
else:
kld = torch.tensor(0)
return h_tensor, h_tp1_tensor, h_tp1_tar_tensor, kld, x, x_oracle, a, r, d, v, m, mp
def get_ddqn_loss(self, h_tensor, h_tp1_tensor, h_tp1_tar_tensor, a, r, d, v, mp):
gamma = self.gamma
# ---------- Compute Q Target ---------------
# q_tensor = self.f_s2q(h_tensor)
qp_tensor = self.f_s2q(h_tp1_tensor).detach()
qp_tensor_tar = self.target_net.f_s2q(h_tp1_tar_tensor).detach()
qp_tensor = qp_tensor * mp - (1 - mp) * INFINITY
qp_tensor_tar = qp_tensor_tar * mp - (1 - mp) * INFINITY
a_one_hot = F.one_hot(a.to(torch.int64), num_classes=self.action_size).to(torch.float32)
# double Q-learning
a_greedy = torch.argmax(qp_tensor, dim=-1, keepdim=False)
# greedy action is selected using the main network
a_greedy_one_hot = F.one_hot(a_greedy.to(torch.int64), num_classes=self.action_size).to(torch.float32)
q_target = (r + (1 - d) * gamma * torch.sum(qp_tensor_tar.detach() * a_greedy_one_hot, dim=-1))
q_target_expand = q_target.view([*q_target.size(), 1]).repeat_interleave(self.action_size, dim=-1)
# ---------- Train ----------------
loss_critic = torch.mean(
torch.sum(- self.f_s2q.get_log_prob(h_tensor, q_target_expand) * a_one_hot, dim=-1) * v)
if self.use_cql:
loss_cql = self.cql_alpha * torch.mean(torch.logsumexp(self.f_s2q(h_tensor), dim=-1) * v
- torch.sum(a_one_hot * self.f_s2q(h_tensor), dim=-1) * v)
else:
loss_cql = 0
loss_q = loss_cql + loss_critic
loss_a = torch.tensor(0)
return loss_q, loss_a