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# All rights reserved.
#
# SPDX-License-Identifier: BSD-3-Clause
"""Script to play a checkpoint of an RL agent from RSL-RL with policy transfer capabilities."""
"""Launch Isaac Sim Simulator first."""
import argparse
import os
import sys
from isaaclab.app import AppLauncher
# local imports
sys.path.append(os.path.join(os.path.dirname(os.path.abspath(__file__)), "../.."))
from scripts.reinforcement_learning.rsl_rl import cli_args # isort: skip
# add argparse arguments
parser = argparse.ArgumentParser(description="Play an RL agent with RSL-RL with policy transfer.")
parser.add_argument("--video", action="store_true", default=False, help="Record videos during training.")
parser.add_argument("--video_length", type=int, default=200, help="Length of the recorded video (in steps).")
parser.add_argument(
"--disable_fabric", action="store_true", default=False, help="Disable fabric and use USD I/O operations."
)
parser.add_argument("--num_envs", type=int, default=None, help="Number of environments to simulate.")
parser.add_argument("--task", type=str, default=None, help="Name of the task.")
parser.add_argument(
"--agent", type=str, default="rsl_rl_cfg_entry_point", help="Name of the RL agent configuration entry point."
)
parser.add_argument("--seed", type=int, default=None, help="Seed used for the environment")
parser.add_argument("--real-time", action="store_true", default=False, help="Run in real-time, if possible.")
# Joint ordering arguments
parser.add_argument(
"--policy_transfer_file",
type=str,
default=None,
help="Path to YAML file containing joint mapping configuration for policy transfer between physics engines.",
)
# append RSL-RL cli arguments
cli_args.add_rsl_rl_args(parser)
# append AppLauncher cli args
AppLauncher.add_app_launcher_args(parser)
# parse the arguments
args_cli, hydra_args = parser.parse_known_args()
# always enable cameras to record video
if args_cli.video:
args_cli.enable_cameras = True
# clear out sys.argv for Hydra
sys.argv = [sys.argv[0]] + hydra_args
# launch omniverse app
app_launcher = AppLauncher(args_cli)
simulation_app = app_launcher.app
"""Rest everything follows."""
import os
import time
import gymnasium as gym
import torch
import yaml
from rsl_rl.runners import DistillationRunner, OnPolicyRunner
from isaaclab.envs import (
DirectMARLEnv,
DirectMARLEnvCfg,
DirectRLEnvCfg,
ManagerBasedRLEnvCfg,
multi_agent_to_single_agent,
)
from isaaclab.utils.assets import retrieve_file_path
from isaaclab.utils.dict import print_dict
from isaaclab_rl.rsl_rl import RslRlBaseRunnerCfg, RslRlVecEnvWrapper, export_policy_as_jit, export_policy_as_onnx
import isaaclab_tasks # noqa: F401
from isaaclab_tasks.utils import get_checkpoint_path
from isaaclab_tasks.utils.hydra import hydra_task_config
# PLACEHOLDER: Extension template (do not remove this comment)
def get_joint_mappings(args_cli, action_space_dim):
"""Get joint mappings based on command line arguments.
Args:
args_cli: Command line arguments
action_space_dim: Dimension of the action space (number of joints)
Returns:
tuple: (source_to_target_list, target_to_source_list, source_to_target_obs_list)
"""
num_joints = action_space_dim
if args_cli.policy_transfer_file:
# Load from YAML file
try:
with open(args_cli.policy_transfer_file) as file:
config = yaml.safe_load(file)
except Exception as e:
raise RuntimeError(f"Failed to load joint mapping from {args_cli.policy_transfer_file}: {e}")
source_joint_names = config["source_joint_names"]
target_joint_names = config["target_joint_names"]
# Find joint mapping
source_to_target = []
target_to_source = []
# Create source to target mapping
for joint_name in source_joint_names:
if joint_name in target_joint_names:
source_to_target.append(target_joint_names.index(joint_name))
else:
raise ValueError(f"Joint '{joint_name}' not found in target joint names")
# Create target to source mapping
for joint_name in target_joint_names:
if joint_name in source_joint_names:
target_to_source.append(source_joint_names.index(joint_name))
else:
raise ValueError(f"Joint '{joint_name}' not found in source joint names")
print(f"[INFO] Loaded joint mapping for policy transfer from YAML: {args_cli.policy_transfer_file}")
assert len(source_to_target) == len(target_to_source) == num_joints, (
"Number of source and target joints must match"
)
else:
# Use identity mapping (one-to-one)
identity_map = list(range(num_joints))
source_to_target, target_to_source = identity_map, identity_map
# Create observation mapping (first 12 values stay the same for locomotion examples, then map joint-related values)
obs_map = (
[0, 1, 2]
+ [3, 4, 5]
+ [6, 7, 8]
+ [9, 10, 11]
+ [i + 12 + num_joints * 0 for i in source_to_target]
+ [i + 12 + num_joints * 1 for i in source_to_target]
+ [i + 12 + num_joints * 2 for i in source_to_target]
)
return source_to_target, target_to_source, obs_map
@hydra_task_config(args_cli.task, args_cli.agent)
def main(env_cfg: ManagerBasedRLEnvCfg | DirectRLEnvCfg | DirectMARLEnvCfg, agent_cfg: RslRlBaseRunnerCfg):
"""Play with RSL-RL agent with policy transfer capabilities."""
# override configurations with non-hydra CLI arguments
agent_cfg = cli_args.update_rsl_rl_cfg(agent_cfg, args_cli)
env_cfg.scene.num_envs = args_cli.num_envs if args_cli.num_envs is not None else env_cfg.scene.num_envs
# set the environment seed
# note: certain randomizations occur in the environment initialization so we set the seed here
env_cfg.seed = agent_cfg.seed
env_cfg.sim.device = args_cli.device if args_cli.device is not None else env_cfg.sim.device
# specify directory for logging experiments
log_root_path = os.path.join("logs", "rsl_rl", agent_cfg.experiment_name)
log_root_path = os.path.abspath(log_root_path)
print(f"[INFO] Loading experiment from directory: {log_root_path}")
if args_cli.checkpoint:
resume_path = retrieve_file_path(args_cli.checkpoint)
else:
resume_path = get_checkpoint_path(log_root_path, agent_cfg.load_run, agent_cfg.load_checkpoint)
log_dir = os.path.dirname(resume_path)
# set the log directory for the environment (works for all environment types)
env_cfg.log_dir = log_dir
# create isaac environment
env = gym.make(args_cli.task, cfg=env_cfg, render_mode="rgb_array" if args_cli.video else None)
# convert to single-agent instance if required by the RL algorithm
if isinstance(env.unwrapped, DirectMARLEnv):
env = multi_agent_to_single_agent(env)
# wrap for video recording
if args_cli.video:
video_kwargs = {
"video_folder": os.path.join(log_dir, "videos", "play"),
"step_trigger": lambda step: step == 0,
"video_length": args_cli.video_length,
"disable_logger": True,
}
print("[INFO] Recording videos during training.")
print_dict(video_kwargs, nesting=4)
env = gym.wrappers.RecordVideo(env, **video_kwargs)
# wrap around environment for rsl-rl
env = RslRlVecEnvWrapper(env, clip_actions=agent_cfg.clip_actions)
print(f"[INFO]: Loading model checkpoint from: {resume_path}")
# load previously trained model
if agent_cfg.class_name == "OnPolicyRunner":
runner = OnPolicyRunner(env, agent_cfg.to_dict(), log_dir=None, device=agent_cfg.device)
elif agent_cfg.class_name == "DistillationRunner":
runner = DistillationRunner(env, agent_cfg.to_dict(), log_dir=None, device=agent_cfg.device)
else:
raise ValueError(f"Unsupported runner class: {agent_cfg.class_name}")
runner.load(resume_path)
# obtain the trained policy for inference
policy = runner.get_inference_policy(device=env.unwrapped.device)
# extract the neural network module
# we do this in a try-except to maintain backwards compatibility.
try:
# version 2.3 onwards
policy_nn = runner.alg.policy
except AttributeError:
# version 2.2 and below
policy_nn = runner.alg.actor_critic
# extract the normalizer
if hasattr(policy_nn, "actor_obs_normalizer"):
normalizer = policy_nn.actor_obs_normalizer
elif hasattr(policy_nn, "student_obs_normalizer"):
normalizer = policy_nn.student_obs_normalizer
else:
normalizer = None
# export policy to onnx/jit
export_model_dir = os.path.join(os.path.dirname(resume_path), "exported")
export_policy_as_jit(policy_nn, normalizer=normalizer, path=export_model_dir, filename="policy.pt")
export_policy_as_onnx(policy_nn, normalizer=normalizer, path=export_model_dir, filename="policy.onnx")
dt = env.unwrapped.step_dt
# reset environment
obs = env.get_observations()
timestep = 0
# Get joint mappings for policy transfer
_, target_to_source, obs_map = get_joint_mappings(args_cli, env.action_space.shape[1])
# Create torch tensors for mappings
device = args_cli.device if args_cli.device else "cuda:0"
target_to_source_tensor = torch.tensor(target_to_source, device=device) if target_to_source else None
obs_map_tensor = torch.tensor(obs_map, device=device) if obs_map else None
def remap_obs(obs):
"""Remap the observation to the target observation space."""
if obs_map_tensor is not None:
obs = obs[:, obs_map_tensor]
return obs
def remap_actions(actions):
"""Remap the actions to the target action space."""
if target_to_source_tensor is not None:
actions = actions[:, target_to_source_tensor]
return actions
# simulate environment
while simulation_app.is_running():
start_time = time.time()
# run everything in inference mode
with torch.inference_mode():
# agent stepping
actions = policy(remap_obs(obs))
# env stepping
obs, _, _, _ = env.step(remap_actions(actions))
if args_cli.video:
timestep += 1
# Exit the play loop after recording one video
if timestep == args_cli.video_length:
break
# time delay for real-time evaluation
sleep_time = dt - (time.time() - start_time)
if args_cli.real_time and sleep_time > 0:
time.sleep(sleep_time)
# close the simulator
env.close()
if __name__ == "__main__":
# run the main function
main()
# close sim app
simulation_app.close()
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