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ppo_train_crl.py
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ppo_train_crl.py
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# This script is an adaptation of the CleanRL's `ppo_atary.py` to work with Craftium environments.
#
# Original source can be found at https://github.com/vwxyzjn/cleanrl/blob/master/cleanrl/ppo_atari.py
# Docs can be found at https://docs.cleanrl.dev/rl-algorithms/ppo/#ppo_ataripy
import os
import random
import time
from dataclasses import dataclass
from typing import Optional
import gymnasium as gym
import numpy as np
import torch
import torch.nn as nn
import torch.optim as optim
import tyro
from torch.distributions.categorical import Categorical
from torch.utils.tensorboard import SummaryWriter
import craftium
import craftium.extra.crl_dungeons as crl
@dataclass
class Args:
exp_name: str = os.path.basename(__file__)[: -len(".py")]
"""the name of this experiment"""
seed: Optional[int] = None
"""seed of the experiment"""
torch_deterministic: bool = True
"""if toggled, `torch.backends.cudnn.deterministic=False`"""
cuda: bool = True
"""if toggled, cuda will be enabled by default"""
track: bool = False
"""if toggled, this experiment will be tracked with Weights and Biases"""
wandb_project_name: str = "craftium"
"""the wandb's project name"""
wandb_entity: str = None
"""the entity (team) of wandb's project"""
capture_video: bool = False
"""whether to capture videos of the agent performances (check out `videos` folder)"""
async_envs: bool = False
"""whether to use Gymnasium's async vector environment or not (disabled by default)"""
mt_wd: str = "./"
"""Directory where the Minetest working directories will be created (defaults to the current one)"""
frameskip: int = 4
"""Number of frames to skip between observations"""
prev_model: Optional[str] = None
"""Path to the model trained in the previous task"""
mt_port: int = 49155
"""TCP port used by Minetest server and client communication. Multiple envs will use successive ports."""
# Algorithm specific arguments
env_id: int = 0
"""the id of the environment"""
total_timesteps: int = int(1e6)
"""total timesteps of the experiments"""
learning_rate: float = 2.5e-4
"""the learning rate of the optimizer"""
num_envs: int = 4
"""the number of parallel game environments"""
num_steps: int = 128
"""the number of steps to run in each environment per policy rollout"""
anneal_lr: bool = True
"""Toggle learning rate annealing for policy and value networks"""
gamma: float = 0.99
"""the discount factor gamma"""
gae_lambda: float = 0.95
"""the lambda for the general advantage estimation"""
num_minibatches: int = 4
"""the number of mini-batches"""
update_epochs: int = 4
"""the K epochs to update the policy"""
norm_adv: bool = True
"""Toggles advantages normalization"""
clip_coef: float = 0.1
"""the surrogate clipping coefficient"""
clip_vloss: bool = True
"""Toggles whether or not to use a clipped loss for the value function, as per the paper."""
ent_coef: float = 0.01
"""coefficient of the entropy"""
vf_coef: float = 0.5
"""coefficient of the value function"""
max_grad_norm: float = 0.5
"""the maximum norm for the gradient clipping"""
target_kl: float = None
"""the target KL divergence threshold"""
# to be filled in runtime
batch_size: int = 0
"""the batch size (computed in runtime)"""
minibatch_size: int = 0
"""the mini-batch size (computed in runtime)"""
num_iterations: int = 0
"""the number of iterations (computed in runtime)"""
def make_env(env_id, idx, capture_video, run_name, mt_port, mt_wd, frameskip, seed):
def thunk():
craftium_kwargs = dict(
run_dir_prefix=mt_wd,
frameskip=frameskip,
rgb_observations=False,
mt_port=mt_port,
seed=seed,
)
env = crl.load_task("sequence0_25", task_id=env_id, **craftium_kwargs)
env = gym.wrappers.RecordEpisodeStatistics(env)
env = gym.wrappers.FrameStack(env, 4)
return env
return thunk
def layer_init(layer, std=np.sqrt(2), bias_const=0.0):
torch.nn.init.orthogonal_(layer.weight, std)
torch.nn.init.constant_(layer.bias, bias_const)
return layer
class Agent(nn.Module):
def __init__(self, envs):
super().__init__()
self.network = nn.Sequential(
layer_init(nn.Conv2d(4, 32, 8, stride=4)),
nn.ReLU(),
layer_init(nn.Conv2d(32, 64, 4, stride=2)),
nn.ReLU(),
layer_init(nn.Conv2d(64, 64, 3, stride=1)),
nn.ReLU(),
nn.Flatten(),
layer_init(nn.Linear(1024, 512)),
nn.ReLU(),
)
self.actor = layer_init(nn.Linear(512, envs.single_action_space.n), std=0.01)
self.critic = layer_init(nn.Linear(512, 1), std=1)
def get_value(self, x):
return self.critic(self.network(x / 255.0))
def get_action_and_value(self, x, action=None):
hidden = self.network(x / 255.0)
logits = self.actor(hidden)
probs = Categorical(logits=logits)
if action is None:
action = probs.sample()
return action, probs.log_prob(action), probs.entropy(), self.critic(hidden)
if __name__ == "__main__":
args = tyro.cli(Args)
args.batch_size = int(args.num_envs * args.num_steps)
args.minibatch_size = int(args.batch_size // args.num_minibatches)
args.num_iterations = (args.total_timesteps // args.frameskip) // args.batch_size
t = int(time.time())
run_name = f"CRL_{args.env_id}__{args.exp_name}__{args.seed}"
if args.seed is None:
args.seed = t
if args.track:
import wandb
wandb.init(
project=args.wandb_project_name,
entity=args.wandb_entity,
sync_tensorboard=True,
config=vars(args),
name=run_name,
monitor_gym=True,
save_code=True,
)
writer = SummaryWriter(f"runs/{run_name}")
writer.add_text(
"hyperparameters",
"|param|value|\n|-|-|\n%s" % ("\n".join([f"|{key}|{value}|" for key, value in vars(args).items()])),
)
agent_path = f"agents/{run_name}"
os.makedirs(agent_path, exist_ok=True)
# TRY NOT TO MODIFY: seeding
random.seed(args.seed)
np.random.seed(args.seed)
torch.manual_seed(args.seed)
torch.backends.cudnn.deterministic = args.torch_deterministic
device = torch.device("cuda" if torch.cuda.is_available() and args.cuda else "cpu")
# env setup
vector_env = gym.vector.SyncVectorEnv if not args.async_envs else gym.vector.AsyncVectorEnv
envs = vector_env(
[make_env(args.env_id, i, args.capture_video, run_name, args.mt_port+i, args.mt_wd, args.frameskip, args.seed) for i in range(args.num_envs)],
)
assert isinstance(envs.single_action_space, gym.spaces.Discrete), "only discrete action space is supported"
if args.prev_model is not None:
print(f"\n\n[*] Loading model {args.prev_model} (current task ID is {args.env_id})\n\n")
agent = torch.load(args.prev_model).to(device)
else:
print(f"\n\n[*] Starting from a random model (current task ID is {args.env_id})\n\n")
agent = Agent(envs).to(device)
optimizer = optim.AdamW(agent.parameters(), lr=args.learning_rate, eps=1e-5)
# ALGO Logic: Storage setup
obs = torch.zeros((args.num_steps, args.num_envs) + envs.single_observation_space.shape).to(device)
actions = torch.zeros((args.num_steps, args.num_envs) + envs.single_action_space.shape).to(device)
logprobs = torch.zeros((args.num_steps, args.num_envs)).to(device)
rewards = torch.zeros((args.num_steps, args.num_envs)).to(device)
dones = torch.zeros((args.num_steps, args.num_envs)).to(device)
values = torch.zeros((args.num_steps, args.num_envs)).to(device)
# TRY NOT TO MODIFY: start the game
global_step = 0
start_time = time.time()
next_obs, _ = envs.reset(seed=args.seed)
next_obs = torch.Tensor(next_obs).to(device)
next_done = torch.zeros(args.num_envs).to(device)
for iteration in range(1, args.num_iterations + 1):
# Annealing the rate if instructed to do so.
if args.anneal_lr:
frac = 1.0 - (iteration - 1.0) / args.num_iterations
lrnow = frac * args.learning_rate
optimizer.param_groups[0]["lr"] = lrnow
for step in range(0, args.num_steps):
global_step += args.num_envs * args.frameskip
obs[step] = next_obs
dones[step] = next_done
# ALGO LOGIC: action logic
with torch.no_grad():
action, logprob, _, value = agent.get_action_and_value(next_obs)
values[step] = value.flatten()
actions[step] = action
logprobs[step] = logprob
# TRY NOT TO MODIFY: execute the game and log data.
next_obs, reward, terminations, truncations, infos = envs.step(action.cpu().numpy())
next_done = np.logical_or(terminations, truncations)
rewards[step] = torch.tensor(reward).to(device).view(-1)
next_obs, next_done = torch.Tensor(next_obs).to(device), torch.Tensor(next_done).to(device)
if "final_info" in infos:
for info in infos["final_info"]:
if info and "episode" in info:
print(f"global_step={global_step}, episodic_return={info['episode']['r']}")
writer.add_scalar("charts/episodic_return", info["episode"]["r"], global_step)
writer.add_scalar("charts/episodic_length", info["episode"]["l"]*args.frameskip, global_step)
# bootstrap value if not done
with torch.no_grad():
next_value = agent.get_value(next_obs).reshape(1, -1)
advantages = torch.zeros_like(rewards).to(device)
lastgaelam = 0
for t in reversed(range(args.num_steps)):
if t == args.num_steps - 1:
nextnonterminal = 1.0 - next_done
nextvalues = next_value
else:
nextnonterminal = 1.0 - dones[t + 1]
nextvalues = values[t + 1]
delta = rewards[t] + args.gamma * nextvalues * nextnonterminal - values[t]
advantages[t] = lastgaelam = delta + args.gamma * args.gae_lambda * nextnonterminal * lastgaelam
returns = advantages + values
# flatten the batch
b_obs = obs.reshape((-1,) + envs.single_observation_space.shape)
b_logprobs = logprobs.reshape(-1)
b_actions = actions.reshape((-1,) + envs.single_action_space.shape)
b_advantages = advantages.reshape(-1)
b_returns = returns.reshape(-1)
b_values = values.reshape(-1)
# Optimizing the policy and value network
b_inds = np.arange(args.batch_size)
clipfracs = []
for epoch in range(args.update_epochs):
np.random.shuffle(b_inds)
for start in range(0, args.batch_size, args.minibatch_size):
end = start + args.minibatch_size
mb_inds = b_inds[start:end]
_, newlogprob, entropy, newvalue = agent.get_action_and_value(b_obs[mb_inds], b_actions.long()[mb_inds])
logratio = newlogprob - b_logprobs[mb_inds]
ratio = logratio.exp()
with torch.no_grad():
# calculate approx_kl http://joschu.net/blog/kl-approx.html
old_approx_kl = (-logratio).mean()
approx_kl = ((ratio - 1) - logratio).mean()
clipfracs += [((ratio - 1.0).abs() > args.clip_coef).float().mean().item()]
mb_advantages = b_advantages[mb_inds]
if args.norm_adv:
mb_advantages = (mb_advantages - mb_advantages.mean()) / (mb_advantages.std() + 1e-8)
# Policy loss
pg_loss1 = -mb_advantages * ratio
pg_loss2 = -mb_advantages * torch.clamp(ratio, 1 - args.clip_coef, 1 + args.clip_coef)
pg_loss = torch.max(pg_loss1, pg_loss2).mean()
# Value loss
newvalue = newvalue.view(-1)
if args.clip_vloss:
v_loss_unclipped = (newvalue - b_returns[mb_inds]) ** 2
v_clipped = b_values[mb_inds] + torch.clamp(
newvalue - b_values[mb_inds],
-args.clip_coef,
args.clip_coef,
)
v_loss_clipped = (v_clipped - b_returns[mb_inds]) ** 2
v_loss_max = torch.max(v_loss_unclipped, v_loss_clipped)
v_loss = 0.5 * v_loss_max.mean()
else:
v_loss = 0.5 * ((newvalue - b_returns[mb_inds]) ** 2).mean()
entropy_loss = entropy.mean()
loss = pg_loss - args.ent_coef * entropy_loss + v_loss * args.vf_coef
optimizer.zero_grad()
loss.backward()
nn.utils.clip_grad_norm_(agent.parameters(), args.max_grad_norm)
optimizer.step()
if args.target_kl is not None and approx_kl > args.target_kl:
break
y_pred, y_true = b_values.cpu().numpy(), b_returns.cpu().numpy()
var_y = np.var(y_true)
explained_var = np.nan if var_y == 0 else 1 - np.var(y_true - y_pred) / var_y
# TRY NOT TO MODIFY: record rewards for plotting purposes
writer.add_scalar("charts/learning_rate", optimizer.param_groups[0]["lr"], global_step)
writer.add_scalar("losses/value_loss", v_loss.item(), global_step)
writer.add_scalar("losses/policy_loss", pg_loss.item(), global_step)
writer.add_scalar("losses/entropy", entropy_loss.item(), global_step)
writer.add_scalar("losses/old_approx_kl", old_approx_kl.item(), global_step)
writer.add_scalar("losses/approx_kl", approx_kl.item(), global_step)
writer.add_scalar("losses/clipfrac", np.mean(clipfracs), global_step)
writer.add_scalar("losses/explained_variance", explained_var, global_step)
print("SPS:", int(global_step / (time.time() - start_time)))
writer.add_scalar("charts/SPS", int(global_step / (time.time() - start_time)), global_step)
save_path = f"{agent_path}/agent.pt"
print(f"\n\n[*] Saving agent in {save_path}\n")
torch.save(agent, save_path)
envs.close()
writer.close()