ConstructTraining / scripts /benchmarks /benchmark_cameras.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
"""
This script might help you determine how many cameras your system can realistically run
at different desired settings.
You can supply different task environments to inject cameras into, or just test a sample scene.
Additionally, you can automatically find the maximum amount of cameras you can run a task with
through the auto-tune functionality.
.. code-block:: bash
# Usage with GUI
./isaaclab.sh -p scripts/benchmarks/benchmark_cameras.py -h
# Usage with headless
./isaaclab.sh -p scripts/benchmarks/benchmark_cameras.py -h --headless
"""
"""Launch Isaac Sim Simulator first."""
import argparse
from collections.abc import Callable
from isaaclab.app import AppLauncher
# parse the arguments
args_cli = argparse.Namespace()
parser = argparse.ArgumentParser(description="This script can help you benchmark how many cameras you could run.")
"""
The following arguments only need to be supplied for when one wishes
to try injecting cameras into their environment, and automatically determining
the maximum camera count.
"""
parser.add_argument(
"--task",
type=str,
default=None,
required=False,
help="Supply this argument to spawn cameras within an known manager-based task environment.",
)
parser.add_argument(
"--autotune",
default=False,
action="store_true",
help=(
"Autotuning is only supported for provided task environments."
" Supply this argument to increase the number of environments until a desired threshold is reached."
"Install pynvml in your environment; ./isaaclab.sh -m pip install pynvml"
),
)
parser.add_argument(
"--task_num_cameras_per_env",
type=int,
default=1,
help="The number of cameras per environment to use when using a known task.",
)
parser.add_argument(
"--use_fabric", action="store_true", default=False, help="Enable fabric and use USD I/O operations."
)
parser.add_argument(
"--autotune_max_percentage_util",
nargs="+",
type=float,
default=[100.0, 80.0, 80.0, 80.0],
required=False,
help=(
"The system utilization percentage thresholds to reach before an autotune is finished. "
"If any one of these limits are hit, the autotune stops."
"Thresholds are, in order, maximum CPU percentage utilization,"
"maximum RAM percentage utilization, maximum GPU compute percent utilization, "
"amd maximum GPU memory utilization."
),
)
parser.add_argument(
"--autotune_max_camera_count", type=int, default=4096, help="The maximum amount of cameras allowed in an autotune."
)
parser.add_argument(
"--autotune_camera_count_interval",
type=int,
default=25,
help=(
"The number of cameras to try to add to the environment if the current camera count"
" falls within permitted system resource utilization limits."
),
)
"""
The following arguments are shared for when injecting cameras into a task environment,
as well as when creating cameras independent of a task environment.
"""
parser.add_argument(
"--num_tiled_cameras",
type=int,
default=0,
required=False,
help="Number of tiled cameras to create. For autotuning, this is how many cameras to start with.",
)
parser.add_argument(
"--num_standard_cameras",
type=int,
default=0,
required=False,
help="Number of standard cameras to create. For autotuning, this is how many cameras to start with.",
)
parser.add_argument(
"--num_ray_caster_cameras",
type=int,
default=0,
required=False,
help="Number of ray caster cameras to create. For autotuning, this is how many cameras to start with.",
)
parser.add_argument(
"--tiled_camera_data_types",
nargs="+",
type=str,
default=["rgb", "depth"],
help="The data types rendered by the tiled camera",
)
parser.add_argument(
"--standard_camera_data_types",
nargs="+",
type=str,
default=["rgb", "distance_to_image_plane", "distance_to_camera"],
help="The data types rendered by the standard camera",
)
parser.add_argument(
"--ray_caster_camera_data_types",
nargs="+",
type=str,
default=["distance_to_image_plane"],
help="The data types rendered by the ray caster camera.",
)
parser.add_argument(
"--ray_caster_visible_mesh_prim_paths",
nargs="+",
type=str,
default=["/World/ground"],
help="WARNING: Ray Caster can currently only cast against a single, static, object",
)
parser.add_argument(
"--convert_depth_to_camera_to_image_plane",
action="store_true",
default=True,
help=(
"Enable undistorting from perspective view (distance to camera data_type)"
"to orthogonal view (distance to plane data_type) for depth."
"This is currently needed to create undisorted depth images/point cloud."
),
)
parser.add_argument(
"--keep_raw_depth",
dest="convert_depth_to_camera_to_image_plane",
action="store_false",
help=(
"Disable undistorting from perspective view (distance to camera)"
"to orthogonal view (distance to plane data_type) for depth."
),
)
parser.add_argument(
"--height",
type=int,
default=120,
required=False,
help="Height in pixels of cameras",
)
parser.add_argument(
"--width",
type=int,
default=140,
required=False,
help="Width in pixels of cameras",
)
parser.add_argument(
"--warm_start_length",
type=int,
default=3,
required=False,
help=(
"Number of steps to run the sim before starting benchmark."
"Needed to avoid blank images at the start of the simulation."
),
)
parser.add_argument(
"--experiment_length",
type=int,
default=15,
required=False,
help="Number of steps to average over",
)
# This argument is only used when a task is not provided.
parser.add_argument(
"--num_objects",
type=int,
default=10,
required=False,
help="Number of objects to spawn into the scene when not using a known task.",
)
AppLauncher.add_app_launcher_args(parser)
args_cli = parser.parse_args()
args_cli.enable_cameras = True
if args_cli.autotune:
import pynvml
if len(args_cli.ray_caster_visible_mesh_prim_paths) > 1:
print("[WARNING]: Ray Casting is only currently supported for a single, static object")
# launch omniverse app
app_launcher = AppLauncher(args_cli)
simulation_app = app_launcher.app
"""Rest everything follows."""
import random
import time
import gymnasium as gym
import numpy as np
import psutil
import torch
import isaaclab.sim as sim_utils
from isaaclab.assets import RigidObject, RigidObjectCfg
from isaaclab.scene.interactive_scene import InteractiveScene
from isaaclab.sensors import (
Camera,
CameraCfg,
RayCasterCamera,
RayCasterCameraCfg,
TiledCamera,
TiledCameraCfg,
patterns,
)
from isaaclab.utils.math import orthogonalize_perspective_depth, unproject_depth
from isaaclab_tasks.utils import load_cfg_from_registry
"""
Camera Creation
"""
def create_camera_base(
camera_cfg: type[CameraCfg | TiledCameraCfg],
num_cams: int,
data_types: list[str],
height: int,
width: int,
prim_path: str | None = None,
instantiate: bool = True,
) -> Camera | TiledCamera | CameraCfg | TiledCameraCfg | None:
"""Generalized function to create a camera or tiled camera sensor."""
# Determine prim prefix based on the camera class
name = camera_cfg.class_type.__name__
if instantiate:
# Create the necessary prims
for idx in range(num_cams):
sim_utils.create_prim(f"/World/{name}_{idx:02d}", "Xform")
if prim_path is None:
prim_path = f"/World/{name}_.*/{name}"
# If valid camera settings are provided, create the camera
if num_cams > 0 and len(data_types) > 0 and height > 0 and width > 0:
cfg = camera_cfg(
prim_path=prim_path,
update_period=0,
height=height,
width=width,
data_types=data_types,
spawn=sim_utils.PinholeCameraCfg(
focal_length=24, focus_distance=400.0, horizontal_aperture=20.955, clipping_range=(0.1, 1e4)
),
)
if instantiate:
return camera_cfg.class_type(cfg=cfg)
else:
return cfg
else:
return None
def create_tiled_cameras(
num_cams: int = 2, data_types: list[str] | None = None, height: int = 100, width: int = 120
) -> TiledCamera | None:
if data_types is None:
data_types = ["rgb", "depth"]
"""Defines the tiled camera sensor to add to the scene."""
return create_camera_base(
camera_cfg=TiledCameraCfg,
num_cams=num_cams,
data_types=data_types,
height=height,
width=width,
)
def create_cameras(
num_cams: int = 2, data_types: list[str] | None = None, height: int = 100, width: int = 120
) -> Camera | None:
"""Defines the Standard cameras."""
if data_types is None:
data_types = ["rgb", "depth"]
return create_camera_base(
camera_cfg=CameraCfg, num_cams=num_cams, data_types=data_types, height=height, width=width
)
def create_ray_caster_cameras(
num_cams: int = 2,
data_types: list[str] = ["distance_to_image_plane"],
mesh_prim_paths: list[str] = ["/World/ground"],
height: int = 100,
width: int = 120,
prim_path: str = "/World/RayCasterCamera_.*/RayCaster",
instantiate: bool = True,
) -> RayCasterCamera | RayCasterCameraCfg | None:
"""Create the raycaster cameras; different configuration than Standard/Tiled camera"""
for idx in range(num_cams):
sim_utils.create_prim(f"/World/RayCasterCamera_{idx:02d}/RayCaster", "Xform")
if num_cams > 0 and len(data_types) > 0 and height > 0 and width > 0:
cam_cfg = RayCasterCameraCfg(
prim_path=prim_path,
mesh_prim_paths=mesh_prim_paths,
update_period=0,
offset=RayCasterCameraCfg.OffsetCfg(pos=(0.0, 0.0, 0.0), rot=(1.0, 0.0, 0.0, 0.0)),
data_types=data_types,
debug_vis=False,
pattern_cfg=patterns.PinholeCameraPatternCfg(
focal_length=24.0,
horizontal_aperture=20.955,
height=480,
width=640,
),
)
if instantiate:
return RayCasterCamera(cfg=cam_cfg)
else:
return cam_cfg
else:
return None
def create_tiled_camera_cfg(prim_path: str) -> TiledCameraCfg:
"""Grab a simple tiled camera config for injecting into task environments."""
return create_camera_base(
TiledCameraCfg,
num_cams=args_cli.num_tiled_cameras,
data_types=args_cli.tiled_camera_data_types,
width=args_cli.width,
height=args_cli.height,
prim_path="{ENV_REGEX_NS}/" + prim_path,
instantiate=False,
)
def create_standard_camera_cfg(prim_path: str) -> CameraCfg:
"""Grab a simple standard camera config for injecting into task environments."""
return create_camera_base(
CameraCfg,
num_cams=args_cli.num_standard_cameras,
data_types=args_cli.standard_camera_data_types,
width=args_cli.width,
height=args_cli.height,
prim_path="{ENV_REGEX_NS}/" + prim_path,
instantiate=False,
)
def create_ray_caster_camera_cfg(prim_path: str) -> RayCasterCameraCfg:
"""Grab a simple ray caster config for injecting into task environments."""
return create_ray_caster_cameras(
num_cams=args_cli.num_ray_caster_cameras,
data_types=args_cli.ray_caster_camera_data_types,
width=args_cli.width,
height=args_cli.height,
prim_path="{ENV_REGEX_NS}/" + prim_path,
)
"""
Scene Creation
"""
def design_scene(
num_tiled_cams: int = 2,
num_standard_cams: int = 0,
num_ray_caster_cams: int = 0,
tiled_camera_data_types: list[str] | None = None,
standard_camera_data_types: list[str] | None = None,
ray_caster_camera_data_types: list[str] | None = None,
height: int = 100,
width: int = 200,
num_objects: int = 20,
mesh_prim_paths: list[str] = ["/World/ground"],
) -> dict:
"""Design the scene."""
if tiled_camera_data_types is None:
tiled_camera_data_types = ["rgb"]
if standard_camera_data_types is None:
standard_camera_data_types = ["rgb"]
if ray_caster_camera_data_types is None:
ray_caster_camera_data_types = ["distance_to_image_plane"]
# Populate scene
# -- Ground-plane
cfg = sim_utils.GroundPlaneCfg()
cfg.func("/World/ground", cfg)
# -- Lights
cfg = sim_utils.DistantLightCfg(intensity=3000.0, color=(0.75, 0.75, 0.75))
cfg.func("/World/Light", cfg)
# Create a dictionary for the scene entities
scene_entities = {}
# Xform to hold objects
sim_utils.create_prim("/World/Objects", "Xform")
# Random objects
for i in range(num_objects):
# sample random position
position = np.random.rand(3) - np.asarray([0.05, 0.05, -1.0])
position *= np.asarray([1.5, 1.5, 0.5])
# sample random color
color = (random.random(), random.random(), random.random())
# choose random prim type
prim_type = random.choice(["Cube", "Cone", "Cylinder"])
common_properties = {
"rigid_props": sim_utils.RigidBodyPropertiesCfg(),
"mass_props": sim_utils.MassPropertiesCfg(mass=5.0),
"collision_props": sim_utils.CollisionPropertiesCfg(),
"visual_material": sim_utils.PreviewSurfaceCfg(diffuse_color=color, metallic=0.5),
"semantic_tags": [("class", prim_type)],
}
if prim_type == "Cube":
shape_cfg = sim_utils.CuboidCfg(size=(0.25, 0.25, 0.25), **common_properties)
elif prim_type == "Cone":
shape_cfg = sim_utils.ConeCfg(radius=0.1, height=0.25, **common_properties)
elif prim_type == "Cylinder":
shape_cfg = sim_utils.CylinderCfg(radius=0.25, height=0.25, **common_properties)
# Rigid Object
obj_cfg = RigidObjectCfg(
prim_path=f"/World/Objects/Obj_{i:02d}",
spawn=shape_cfg,
init_state=RigidObjectCfg.InitialStateCfg(pos=position),
)
scene_entities[f"rigid_object{i}"] = RigidObject(cfg=obj_cfg)
# Sensors
standard_camera = create_cameras(
num_cams=num_standard_cams, data_types=standard_camera_data_types, height=height, width=width
)
tiled_camera = create_tiled_cameras(
num_cams=num_tiled_cams, data_types=tiled_camera_data_types, height=height, width=width
)
ray_caster_camera = create_ray_caster_cameras(
num_cams=num_ray_caster_cams,
data_types=ray_caster_camera_data_types,
mesh_prim_paths=mesh_prim_paths,
height=height,
width=width,
)
# return the scene information
if tiled_camera is not None:
scene_entities["tiled_camera"] = tiled_camera
if standard_camera is not None:
scene_entities["standard_camera"] = standard_camera
if ray_caster_camera is not None:
scene_entities["ray_caster_camera"] = ray_caster_camera
return scene_entities
def inject_cameras_into_task(
task: str,
num_cams: int,
camera_name_prefix: str,
camera_creation_callable: Callable,
num_cameras_per_env: int = 1,
) -> gym.Env:
"""Loads the task, sticks cameras into the config, and creates the environment."""
cfg = load_cfg_from_registry(task, "env_cfg_entry_point")
cfg.sim.device = args_cli.device
cfg.sim.use_fabric = args_cli.use_fabric
scene_cfg = cfg.scene
num_envs = int(num_cams / num_cameras_per_env)
scene_cfg.num_envs = num_envs
for idx in range(num_cameras_per_env):
suffix = "" if idx == 0 else str(idx)
name = camera_name_prefix + suffix
setattr(scene_cfg, name, camera_creation_callable(name))
cfg.scene = scene_cfg
env = gym.make(task, cfg=cfg)
return env
"""
System diagnosis
"""
def get_utilization_percentages(reset: bool = False, max_values: list[float] = [0.0, 0.0, 0.0, 0.0]) -> list[float]:
"""Get the maximum CPU, RAM, GPU utilization (processing), and
GPU memory usage percentages since the last time reset was true."""
if reset:
max_values[:] = [0, 0, 0, 0] # Reset the max values
# CPU utilization
cpu_usage = psutil.cpu_percent(interval=0.1)
max_values[0] = max(max_values[0], cpu_usage)
# RAM utilization
memory_info = psutil.virtual_memory()
ram_usage = memory_info.percent
max_values[1] = max(max_values[1], ram_usage)
# GPU utilization using pynvml
if torch.cuda.is_available():
if args_cli.autotune:
pynvml.nvmlInit() # Initialize NVML
for i in range(torch.cuda.device_count()):
handle = pynvml.nvmlDeviceGetHandleByIndex(i)
# GPU Utilization
gpu_utilization = pynvml.nvmlDeviceGetUtilizationRates(handle)
gpu_processing_utilization_percent = gpu_utilization.gpu # GPU core utilization
max_values[2] = max(max_values[2], gpu_processing_utilization_percent)
# GPU Memory Usage
memory_info = pynvml.nvmlDeviceGetMemoryInfo(handle)
gpu_memory_total = memory_info.total
gpu_memory_used = memory_info.used
gpu_memory_utilization_percent = (gpu_memory_used / gpu_memory_total) * 100
max_values[3] = max(max_values[3], gpu_memory_utilization_percent)
pynvml.nvmlShutdown() # Shutdown NVML after usage
else:
gpu_processing_utilization_percent = None
gpu_memory_utilization_percent = None
return max_values
"""
Experiment
"""
def run_simulator(
sim: sim_utils.SimulationContext | None,
scene_entities: dict | InteractiveScene,
warm_start_length: int = 10,
experiment_length: int = 100,
tiled_camera_data_types: list[str] | None = None,
standard_camera_data_types: list[str] | None = None,
ray_caster_camera_data_types: list[str] | None = None,
depth_predicate: Callable = lambda x: "to" in x or x == "depth",
perspective_depth_predicate: Callable = lambda x: x == "distance_to_camera",
convert_depth_to_camera_to_image_plane: bool = True,
max_cameras_per_env: int = 1,
env: gym.Env | None = None,
) -> dict:
"""Run the simulator with all cameras, and return timing analytics. Visualize if desired."""
if tiled_camera_data_types is None:
tiled_camera_data_types = ["rgb"]
if standard_camera_data_types is None:
standard_camera_data_types = ["rgb"]
if ray_caster_camera_data_types is None:
ray_caster_camera_data_types = ["distance_to_image_plane"]
# Initialize camera lists
tiled_cameras = []
standard_cameras = []
ray_caster_cameras = []
# Dynamically extract cameras from the scene entities up to max_cameras_per_env
for i in range(max_cameras_per_env):
# Extract tiled cameras
tiled_camera_key = f"tiled_camera{i}" if i > 0 else "tiled_camera"
standard_camera_key = f"standard_camera{i}" if i > 0 else "standard_camera"
ray_caster_camera_key = f"ray_caster_camera{i}" if i > 0 else "ray_caster_camera"
try: # if instead you checked ... if key is in scene_entities... # errors out always even if key present
tiled_cameras.append(scene_entities[tiled_camera_key])
standard_cameras.append(scene_entities[standard_camera_key])
ray_caster_cameras.append(scene_entities[ray_caster_camera_key])
except KeyError:
break
# Initialize camera counts
camera_lists = [tiled_cameras, standard_cameras, ray_caster_cameras]
camera_data_types = [tiled_camera_data_types, standard_camera_data_types, ray_caster_camera_data_types]
labels = ["tiled", "standard", "ray_caster"]
if sim is not None:
# Set camera world poses
for camera_list in camera_lists:
for camera in camera_list:
num_cameras = camera.data.intrinsic_matrices.size(0)
positions = torch.tensor([[2.5, 2.5, 2.5]], device=sim.device).repeat(num_cameras, 1)
targets = torch.tensor([[0.0, 0.0, 0.0]], device=sim.device).repeat(num_cameras, 1)
camera.set_world_poses_from_view(positions, targets)
# Initialize timing variables
timestep = 0
total_time = 0.0
valid_timesteps = 0
sim_step_time = 0.0
while simulation_app.is_running() and timestep < experiment_length:
print(f"On timestep {timestep} of {experiment_length}, with warm start of {warm_start_length}")
get_utilization_percentages()
# Measure the total simulation step time
step_start_time = time.time()
if sim is not None:
sim.step()
if env is not None:
with torch.inference_mode():
# compute zero actions
actions = torch.zeros(env.action_space.shape, device=env.unwrapped.device)
# apply actions
env.step(actions)
# Update cameras and process vision data within the simulation step
clouds = {}
images = {}
depth_images = {}
# Loop through all camera lists and their data_types
for camera_list, data_types, label in zip(camera_lists, camera_data_types, labels):
for cam_idx, camera in enumerate(camera_list):
if env is None: # No env, need to step cams manually
# Only update the camera if it hasn't been updated as part of scene_entities.update ...
camera.update(dt=sim.get_physics_dt())
for data_type in data_types:
data_label = f"{label}_{cam_idx}_{data_type}"
if depth_predicate(data_type): # is a depth image, want to create cloud
depth = camera.data.output[data_type]
depth_images[data_label + "_raw"] = depth
if perspective_depth_predicate(data_type) and convert_depth_to_camera_to_image_plane:
depth = orthogonalize_perspective_depth(
camera.data.output[data_type], camera.data.intrinsic_matrices
)
depth_images[data_label + "_undistorted"] = depth
pointcloud = unproject_depth(depth=depth, intrinsics=camera.data.intrinsic_matrices)
clouds[data_label] = pointcloud
else: # rgb image, just save it
image = camera.data.output[data_type]
images[data_label] = image
# End timing for the step
step_end_time = time.time()
sim_step_time += step_end_time - step_start_time
if timestep > warm_start_length:
get_utilization_percentages(reset=True)
total_time += step_end_time - step_start_time
valid_timesteps += 1
timestep += 1
# Calculate average timings
if valid_timesteps > 0:
avg_timestep_duration = total_time / valid_timesteps
avg_sim_step_duration = sim_step_time / experiment_length
else:
avg_timestep_duration = 0.0
avg_sim_step_duration = 0.0
# Package timing analytics in a dictionary
timing_analytics = {
"average_timestep_duration": avg_timestep_duration,
"average_sim_step_duration": avg_sim_step_duration,
"total_simulation_time": sim_step_time,
"total_experiment_duration": sim_step_time,
}
system_utilization_analytics = get_utilization_percentages()
print("--- Benchmark Results ---")
print(f"Average timestep duration: {avg_timestep_duration:.6f} seconds")
print(f"Average simulation step duration: {avg_sim_step_duration:.6f} seconds")
print(f"Total simulation time: {sim_step_time:.6f} seconds")
print("\nSystem Utilization Statistics:")
print(
f"| CPU:{system_utilization_analytics[0]}% | "
f"RAM:{system_utilization_analytics[1]}% | "
f"GPU Compute:{system_utilization_analytics[2]}% | "
f" GPU Memory: {system_utilization_analytics[3]:.2f}% |"
)
return {"timing_analytics": timing_analytics, "system_utilization_analytics": system_utilization_analytics}
def main():
"""Main function."""
# Load simulation context
if args_cli.num_tiled_cameras + args_cli.num_standard_cameras + args_cli.num_ray_caster_cameras <= 0:
raise ValueError("You must select at least one camera.")
if (
(args_cli.num_tiled_cameras > 0 and args_cli.num_standard_cameras > 0)
or (args_cli.num_ray_caster_cameras > 0 and args_cli.num_standard_cameras > 0)
or (args_cli.num_ray_caster_cameras > 0 and args_cli.num_tiled_cameras > 0)
):
print("[WARNING]: You have elected to use more than one camera type.")
print("[WARNING]: For a benchmark to be meaningful, use ONLY ONE camera type at a time.")
print(
"[WARNING]: For example, if num_tiled_cameras=100, for a meaningful benchmark,"
"num_standard_cameras should be 0, and num_ray_caster_cameras should be 0"
)
raise ValueError("Benchmark one camera at a time.")
print("[INFO]: Designing the scene")
if args_cli.task is None:
print("[INFO]: No task environment provided, creating random scene.")
sim_cfg = sim_utils.SimulationCfg(device=args_cli.device)
sim = sim_utils.SimulationContext(sim_cfg)
# Set main camera
sim.set_camera_view([2.5, 2.5, 2.5], [0.0, 0.0, 0.0])
scene_entities = design_scene(
num_tiled_cams=args_cli.num_tiled_cameras,
num_standard_cams=args_cli.num_standard_cameras,
num_ray_caster_cams=args_cli.num_ray_caster_cameras,
tiled_camera_data_types=args_cli.tiled_camera_data_types,
standard_camera_data_types=args_cli.standard_camera_data_types,
ray_caster_camera_data_types=args_cli.ray_caster_camera_data_types,
height=args_cli.height,
width=args_cli.width,
num_objects=args_cli.num_objects,
mesh_prim_paths=args_cli.ray_caster_visible_mesh_prim_paths,
)
# Play simulator
sim.reset()
# Now we are ready!
print("[INFO]: Setup complete...")
# Run simulator
run_simulator(
sim=sim,
scene_entities=scene_entities,
warm_start_length=args_cli.warm_start_length,
experiment_length=args_cli.experiment_length,
tiled_camera_data_types=args_cli.tiled_camera_data_types,
standard_camera_data_types=args_cli.standard_camera_data_types,
ray_caster_camera_data_types=args_cli.ray_caster_camera_data_types,
convert_depth_to_camera_to_image_plane=args_cli.convert_depth_to_camera_to_image_plane,
)
else:
print("[INFO]: Using known task environment, injecting cameras.")
autotune_iter = 0
max_sys_util_thresh = [0.0, 0.0, 0.0]
max_num_cams = max(args_cli.num_tiled_cameras, args_cli.num_standard_cameras, args_cli.num_ray_caster_cameras)
cur_num_cams = max_num_cams
cur_sys_util = max_sys_util_thresh
interval = args_cli.autotune_camera_count_interval
if args_cli.autotune:
max_sys_util_thresh = args_cli.autotune_max_percentage_util
max_num_cams = args_cli.autotune_max_camera_count
print("[INFO]: Auto tuning until any of the following threshold are met")
print(f"|CPU: {max_sys_util_thresh[0]}% | RAM {max_sys_util_thresh[1]}% | GPU: {max_sys_util_thresh[2]}% |")
print(f"[INFO]: Maximum number of cameras allowed: {max_num_cams}")
# Determine which camera is being tested...
tiled_camera_cfg = create_tiled_camera_cfg("tiled_camera")
standard_camera_cfg = create_standard_camera_cfg("standard_camera")
ray_caster_camera_cfg = create_ray_caster_camera_cfg("ray_caster_camera")
camera_name_prefix = ""
camera_creation_callable = None
num_cams = 0
if tiled_camera_cfg is not None:
camera_name_prefix = "tiled_camera"
camera_creation_callable = create_tiled_camera_cfg
num_cams = args_cli.num_tiled_cameras
elif standard_camera_cfg is not None:
camera_name_prefix = "standard_camera"
camera_creation_callable = create_standard_camera_cfg
num_cams = args_cli.num_standard_cameras
elif ray_caster_camera_cfg is not None:
camera_name_prefix = "ray_caster_camera"
camera_creation_callable = create_ray_caster_camera_cfg
num_cams = args_cli.num_ray_caster_cameras
while (
all(cur <= max_thresh for cur, max_thresh in zip(cur_sys_util, max_sys_util_thresh))
and cur_num_cams <= max_num_cams
):
cur_num_cams = num_cams + interval * autotune_iter
autotune_iter += 1
env = inject_cameras_into_task(
task=args_cli.task,
num_cams=cur_num_cams,
camera_name_prefix=camera_name_prefix,
camera_creation_callable=camera_creation_callable,
num_cameras_per_env=args_cli.task_num_cameras_per_env,
)
env.reset()
print(f"Testing with {cur_num_cams} {camera_name_prefix}")
analysis = run_simulator(
sim=None,
scene_entities=env.unwrapped.scene,
warm_start_length=args_cli.warm_start_length,
experiment_length=args_cli.experiment_length,
tiled_camera_data_types=args_cli.tiled_camera_data_types,
standard_camera_data_types=args_cli.standard_camera_data_types,
ray_caster_camera_data_types=args_cli.ray_caster_camera_data_types,
convert_depth_to_camera_to_image_plane=args_cli.convert_depth_to_camera_to_image_plane,
max_cameras_per_env=args_cli.task_num_cameras_per_env,
env=env,
)
cur_sys_util = analysis["system_utilization_analytics"]
print("Triggering reset...")
env.close()
sim_utils.create_new_stage()
print("[INFO]: DONE! Feel free to CTRL + C Me ")
print(f"[INFO]: If you've made it this far, you can likely simulate {cur_num_cams} {camera_name_prefix}")
print("Keep in mind, this is without any training running on the GPU.")
print("Set lower utilization thresholds to account for training.")
if not args_cli.autotune:
print("[WARNING]: GPU Util Statistics only correct while autotuning, ignore above.")
if __name__ == "__main__":
# run the main function
main()
# close sim app
simulation_app.close()