This commit is contained in:
Nicklas Hansen
2024-11-11 18:13:24 -08:00
parent 1bfbcb7794
commit dee034070e
8 changed files with 109 additions and 16 deletions

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@@ -42,6 +42,16 @@ def squash(mu, pi, log_pi):
return mu, pi, log_pi
def int_to_one_hot(x, num_classes):
"""
Converts an integer tensor to a one-hot tensor.
Supports batched inputs.
"""
one_hot = torch.zeros(*x.shape, num_classes, device=x.device)
one_hot.scatter_(-1, x.unsqueeze(-1), 1)
return one_hot
def symlog(x):
"""
Symmetric logarithmic function.

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@@ -77,6 +77,10 @@ def parse_cfg(cfg: OmegaConf) -> OmegaConf:
cfg.task_dim = 0
cfg.tasks = TASK_SET.get(cfg.task, [cfg.task])
# Check action space compatibility
if cfg.get('action', 'continuous') == 'discrete':
assert not cfg.multitask, 'Discrete actions are not supported in multi-task settings.'
# Check torch.compile compatibility
if cfg.get('compile', False):
assert cfg.obs == 'state', 'torch.compile only supports state observations at the moment.'

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@@ -2,9 +2,12 @@ from copy import deepcopy
import torch
import torch.nn as nn
import torch.nn.functional as F
from torch.distributions.categorical import Categorical
from tensordict.nn import TensorDictParams
from common import layers, math, init
from tensordict.nn import TensorDictParams
class WorldModel(nn.Module):
"""
@@ -23,7 +26,7 @@ class WorldModel(nn.Module):
self._encoder = layers.enc(cfg)
self._dynamics = layers.mlp(cfg.latent_dim + cfg.action_dim + cfg.task_dim, 2*[cfg.mlp_dim], cfg.latent_dim, act=layers.SimNorm(cfg))
self._reward = layers.mlp(cfg.latent_dim + cfg.action_dim + cfg.task_dim, 2*[cfg.mlp_dim], max(cfg.num_bins, 1))
self._pi = layers.mlp(cfg.latent_dim + cfg.task_dim, 2*[cfg.mlp_dim], 2*cfg.action_dim)
self._pi = layers.mlp(cfg.latent_dim + cfg.task_dim, 2*[cfg.mlp_dim], 2*cfg.action_dim if cfg.action == 'continuous' else cfg.action_dim)
self._Qs = layers.Ensemble([layers.mlp(cfg.latent_dim + cfg.action_dim + cfg.task_dim, 2*[cfg.mlp_dim], max(cfg.num_bins, 1), dropout=cfg.dropout) for _ in range(cfg.num_q)])
self.apply(init.weight_init)
init.zero_([self._reward[-1].weight, self._Qs.params["2", "weight"]])
@@ -121,15 +124,12 @@ class WorldModel(nn.Module):
z = torch.cat([z, a], dim=-1)
return self._reward(z)
def pi(self, z, task):
def _continuous_pi(self, z, task):
"""
Samples an action from the policy prior.
The policy prior is a Gaussian distribution with
mean and (log) std predicted by a neural network.
"""
if self.cfg.multitask:
z = self.task_emb(z, task)
# Gaussian policy prior
mu, log_std = self._pi(z).chunk(2, dim=-1)
log_std = math.log_std(log_std, self.log_std_min, self.log_std_dif)
@@ -149,6 +149,41 @@ class WorldModel(nn.Module):
return mu, pi, log_pi, log_std
def _discrete_pi(self, z, task):
"""
Samples an action from the policy prior.
The policy prior is a categorical distribution
with logits predicted by a neural network.
"""
# Categorical policy prior
logits = self._pi(z)
policy_dist = Categorical(logits=logits)
action = policy_dist.sample()
action = math.int_to_one_hot(action, self.cfg.action_dim)
# Action probabilities for calculating the adapted soft-Q loss
action_probs = policy_dist.probs
log_prob = F.log_softmax(logits, dim=-1)
return action, action, log_prob, action_probs
def pi(self, z, task):
"""
Samples an action from the policy prior.
Policy can be either continuous (Gaussian) or discrete (categorical).
"""
if self.cfg.multitask:
z = self.task_emb(z, task)
if self.cfg.action == 'discrete':
return self._discrete_pi(z, task)
elif self.cfg.action == 'continuous':
return self._continuous_pi(z, task)
else:
raise NotImplementedError(f"Action space {self.cfg.action} not supported.")
def Q(self, z, a, task, return_type='min', target=False, detach=False):
"""
Predict state-action value.

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@@ -2,8 +2,9 @@ defaults:
- override hydra/launcher: submitit_local
# environment
task: dog-run
task: cartpole-swingup
obs: state
action: discrete
# evaluation
checkpoint: ???
@@ -29,7 +30,7 @@ exp_name: default
data_dir: ???
# planning
mpc: true
mpc: false
iterations: 6
num_samples: 512
num_elites: 64

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@@ -3,6 +3,7 @@ import warnings
import gym
from envs.wrappers.discrete import DiscreteWrapper
from envs.wrappers.multitask import MultitaskWrapper
from envs.wrappers.pixels import PixelWrapper
from envs.wrappers.tensor import TensorWrapper
@@ -65,6 +66,7 @@ def make_env(cfg):
for fn in [make_dm_control_env, make_maniskill_env, make_metaworld_env, make_myosuite_env]:
try:
env = fn(cfg)
break
except ValueError:
pass
if env is None:
@@ -72,11 +74,13 @@ def make_env(cfg):
env = TensorWrapper(env)
if cfg.get('obs', 'state') == 'rgb':
env = PixelWrapper(cfg, env)
if cfg.get('action', 'discrete'):
env = DiscreteWrapper(env)
try: # Dict
cfg.obs_shape = {k: v.shape for k, v in env.observation_space.spaces.items()}
except: # Box
cfg.obs_shape = {cfg.get('obs', 'state'): env.observation_space.shape}
cfg.action_dim = env.action_space.shape[0]
cfg.action_dim = env.action_space.n if cfg.action == 'discrete' else env.action_space.shape[0]
cfg.episode_length = env.max_episode_steps
cfg.seed_steps = max(1000, 5*cfg.episode_length)
return env

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@@ -0,0 +1,35 @@
import gym
import numpy as np
import torch
from common import math
class DiscreteWrapper(gym.Wrapper):
"""
Wrapper for converting continuous action spaces to discrete via binning.
"""
def __init__(self, env):
super().__init__(env)
self.continuous_dims = self.env.action_space.shape[0]
# Bins at [-1, 0, 1] for each dimension
# Discrete actions include all possible combinations of these bins
self.action_space = gym.spaces.Discrete(3 ** self.continuous_dims)
def rand_act(self):
action = torch.tensor(self.action_space.sample(), dtype=torch.int64)
return math.int_to_one_hot(action, self.action_space.n)
def _discrete_to_continuous(self, action):
# Convert a discrete action to a continuous action
# action is a one-hot encoded tensor
action = torch.argmax(action)
action = action.item()
action = [action // 3 ** i % 3 for i in range(self.continuous_dims)]
action = torch.tensor(action, dtype=torch.float32)
return (action - 1) / 1
def step(self, action):
action = self._discrete_to_continuous(action)
return self.env.step(action)

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@@ -103,11 +103,11 @@ class TDMPC2(torch.nn.Module):
if task is not None:
task = torch.tensor([task], device=self.device)
if self.cfg.mpc:
a = self.plan(obs, t0=t0, eval_mode=eval_mode, task=task)
action = self.plan(obs, t0=t0, eval_mode=eval_mode, task=task)
else:
z = self.model.encode(obs, task)
a = self.model.pi(z, task)[int(not eval_mode)][0]
return a.cpu()
action = self.model.pi(z, task)[int(not eval_mode)][0]
return action.cpu()
@torch.no_grad()
def _estimate_value(self, z, actions, task):
@@ -202,14 +202,17 @@ class TDMPC2(torch.nn.Module):
Returns:
float: Loss of the policy update.
"""
_, pis, log_pis, _ = self.model.pi(zs, task)
qs = self.model.Q(zs, pis, task, return_type='avg', detach=True)
_, actions, log_probs, action_probs = self.model.pi(zs, task)
qs = self.model.Q(zs, actions, task, return_type='avg', detach=True)
self.scale.update(qs[0])
qs = self.scale(qs)
# Loss is a weighted sum of Q-values
rho = torch.pow(self.cfg.rho, torch.arange(len(qs), device=self.device))
pi_loss = ((self.cfg.entropy_coef * log_pis - qs).mean(dim=(1,2)) * rho).mean()
if self.cfg.action == 'discrete':
pi_loss = ((action_probs * (self.cfg.entropy_coef * log_probs - qs)).mean(dim=(1,2)) * rho).mean()
else:
pi_loss = ((self.cfg.entropy_coef * log_probs - qs).mean(dim=(1,2)) * rho).mean()
pi_loss.backward()
pi_grad_norm = torch.nn.utils.clip_grad_norm_(self.model._pi.parameters(), self.cfg.grad_clip_norm)
self.pi_optim.step()

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@@ -54,7 +54,8 @@ class OnlineTrainer(Trainer):
else:
obs = obs.unsqueeze(0).cpu()
if action is None:
action = torch.full_like(self.env.rand_act(), float('nan'))
action_val = -1 if self.cfg.action == 'discrete' else float('nan')
action = torch.full_like(self.env.rand_act(), action_val)
if reward is None:
reward = torch.tensor(float('nan'))
td = TensorDict(