ConstructTraining / scripts /benchmarks /benchmark_rsl_rl.py
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# Copyright (c) 2022-2026, The Isaac Lab Project Developers (https://github.com/isaac-sim/IsaacLab/blob/main/CONTRIBUTORS.md).
# All rights reserved.
#
# SPDX-License-Identifier: BSD-3-Clause
# Copyright (c) 2022-2025, The IsaacLab Project Developers.
# All rights reserved.
#
# SPDX-License-Identifier: BSD-3-Clause
"""Script to benchmark RL agent with RSL-RL."""
"""Launch Isaac Sim Simulator first."""
import argparse
import os
import sys
import time
from isaaclab.app import AppLauncher
sys.path.append(os.path.join(os.path.dirname(os.path.abspath(__file__)), "../.."))
import scripts.reinforcement_learning.rsl_rl.cli_args as cli_args # isort: skip
# add argparse arguments
parser = argparse.ArgumentParser(description="Train an RL agent with RSL-RL.")
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("--video_interval", type=int, default=2000, help="Interval between video recordings (in steps).")
parser.add_argument("--num_envs", type=int, default=4096, help="Number of environments to simulate.")
parser.add_argument("--task", type=str, default=None, help="Name of the task.")
parser.add_argument("--seed", type=int, default=42, help="Seed used for the environment")
parser.add_argument("--max_iterations", type=int, default=10, help="RL Policy training iterations.")
parser.add_argument(
"--distributed", action="store_true", default=False, help="Run training with multiple GPUs or nodes."
)
parser.add_argument(
"--benchmark_backend",
type=str,
default="OmniPerfKPIFile",
choices=["LocalLogMetrics", "JSONFileMetrics", "OsmoKPIFile", "OmniPerfKPIFile"],
help="Benchmarking backend options, defaults OmniPerfKPIFile",
)
# append RSL-RL cli arguments
cli_args.add_rsl_rl_args(parser)
# append AppLauncher cli args
AppLauncher.add_app_launcher_args(parser)
# to ensure kit args don't break the benchmark arg parsing
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
app_start_time_begin = time.perf_counter_ns()
# launch omniverse app
app_launcher = AppLauncher(args_cli)
simulation_app = app_launcher.app
app_start_time_end = time.perf_counter_ns()
imports_time_begin = time.perf_counter_ns()
from datetime import datetime
import gymnasium as gym
import numpy as np
import torch
from rsl_rl.runners import OnPolicyRunner
from isaaclab.envs import DirectMARLEnvCfg, DirectRLEnvCfg, ManagerBasedRLEnvCfg
from isaaclab.utils.dict import print_dict
from isaaclab.utils.io import dump_yaml
from isaaclab_rl.rsl_rl import RslRlOnPolicyRunnerCfg, RslRlVecEnvWrapper
import isaaclab_tasks # noqa: F401
from isaaclab_tasks.utils import get_checkpoint_path
from isaaclab_tasks.utils.hydra import hydra_task_config
imports_time_end = time.perf_counter_ns()
from isaacsim.core.utils.extensions import enable_extension
enable_extension("isaacsim.benchmark.services")
from isaacsim.benchmark.services import BaseIsaacBenchmark
from isaaclab.utils.timer import Timer
from scripts.benchmarks.utils import (
log_app_start_time,
log_python_imports_time,
log_rl_policy_episode_lengths,
log_rl_policy_rewards,
log_runtime_step_times,
log_scene_creation_time,
log_simulation_start_time,
log_task_start_time,
log_total_start_time,
parse_tf_logs,
)
torch.backends.cuda.matmul.allow_tf32 = True
torch.backends.cudnn.allow_tf32 = True
torch.backends.cudnn.deterministic = False
torch.backends.cudnn.benchmark = False
# Create the benchmark
benchmark = BaseIsaacBenchmark(
benchmark_name="benchmark_rsl_rl_train",
workflow_metadata={
"metadata": [
{"name": "task", "data": args_cli.task},
{"name": "seed", "data": args_cli.seed},
{"name": "num_envs", "data": args_cli.num_envs},
{"name": "max_iterations", "data": args_cli.max_iterations},
]
},
backend_type=args_cli.benchmark_backend,
)
@hydra_task_config(args_cli.task, "rsl_rl_cfg_entry_point")
def main(env_cfg: ManagerBasedRLEnvCfg | DirectRLEnvCfg | DirectMARLEnvCfg, agent_cfg: RslRlOnPolicyRunnerCfg):
"""Train with RSL-RL agent."""
# parse configuration
benchmark.set_phase("loading", start_recording_frametime=False, start_recording_runtime=True)
# 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
agent_cfg.max_iterations = (
args_cli.max_iterations if args_cli.max_iterations is not None else agent_cfg.max_iterations
)
# 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
# check for invalid combination of CPU device with distributed training
if args_cli.distributed and args_cli.device is not None and "cpu" in args_cli.device:
raise ValueError(
"Distributed training is not supported when using CPU device. "
"Please use GPU device (e.g., --device cuda) for distributed training."
)
# multi-gpu training configuration
world_rank = 0
world_size = 1
if args_cli.distributed:
env_cfg.sim.device = f"cuda:{app_launcher.local_rank}"
agent_cfg.device = f"cuda:{app_launcher.local_rank}"
# set seed to have diversity in different threads
seed = agent_cfg.seed + app_launcher.local_rank
env_cfg.seed = seed
agent_cfg.seed = seed
world_rank = app_launcher.global_rank
world_size = int(os.getenv("WORLD_SIZE", 1))
# 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] Logging experiment in directory: {log_root_path}")
# specify directory for logging runs: {time-stamp}_{run_name}
log_dir = datetime.now().strftime("%Y-%m-%d_%H-%M-%S")
if agent_cfg.run_name:
log_dir += f"_{agent_cfg.run_name}"
log_dir = os.path.join(log_root_path, log_dir)
# max iterations for training
if args_cli.max_iterations:
agent_cfg.max_iterations = args_cli.max_iterations
task_startup_time_begin = time.perf_counter_ns()
# create isaac environment
env = gym.make(args_cli.task, cfg=env_cfg, render_mode="rgb_array" if args_cli.video else None)
# wrap for video recording
if args_cli.video:
video_kwargs = {
"video_folder": os.path.join(log_dir, "videos"),
"step_trigger": lambda step: step % args_cli.video_interval == 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)
task_startup_time_end = time.perf_counter_ns()
# create runner from rsl-rl
runner = OnPolicyRunner(env, agent_cfg.to_dict(), log_dir=log_dir, device=agent_cfg.device)
# write git state to logs
runner.add_git_repo_to_log(__file__)
# save resume path before creating a new log_dir
if agent_cfg.resume:
# get path to previous checkpoint
resume_path = get_checkpoint_path(log_root_path, agent_cfg.load_run, agent_cfg.load_checkpoint)
print(f"[INFO]: Loading model checkpoint from: {resume_path}")
# load previously trained model
runner.load(resume_path)
# set seed of the environment
env.seed(agent_cfg.seed)
# dump the configuration into log-directory
dump_yaml(os.path.join(log_dir, "params", "env.yaml"), env_cfg)
dump_yaml(os.path.join(log_dir, "params", "agent.yaml"), agent_cfg)
benchmark.set_phase("sim_runtime")
# run training
runner.learn(num_learning_iterations=agent_cfg.max_iterations, init_at_random_ep_len=True)
if world_rank == 0:
benchmark.store_measurements()
# parse tensorboard file stats
log_data = parse_tf_logs(log_dir)
# prepare RL timing dict
collection_fps = (
1
/ (np.array(log_data["Perf/collection time"]))
* env.unwrapped.num_envs
* agent_cfg.num_steps_per_env
* world_size
)
rl_training_times = {
"Collection Time": (np.array(log_data["Perf/collection time"]) / 1000).tolist(),
"Learning Time": (np.array(log_data["Perf/learning_time"]) / 1000).tolist(),
"Collection FPS": collection_fps.tolist(),
"Total FPS": log_data["Perf/total_fps"] * world_size,
}
# log additional metrics to benchmark services
log_app_start_time(benchmark, (app_start_time_end - app_start_time_begin) / 1e6)
log_python_imports_time(benchmark, (imports_time_end - imports_time_begin) / 1e6)
log_task_start_time(benchmark, (task_startup_time_end - task_startup_time_begin) / 1e6)
log_scene_creation_time(benchmark, Timer.get_timer_info("scene_creation") * 1000)
log_simulation_start_time(benchmark, Timer.get_timer_info("simulation_start") * 1000)
log_total_start_time(benchmark, (task_startup_time_end - app_start_time_begin) / 1e6)
log_runtime_step_times(benchmark, rl_training_times, compute_stats=True)
log_rl_policy_rewards(benchmark, log_data["Train/mean_reward"])
log_rl_policy_episode_lengths(benchmark, log_data["Train/mean_episode_length"])
benchmark.stop()
# close the simulator
env.close()
if __name__ == "__main__":
# run the main function
main()
# close sim app
simulation_app.close()