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import logging
import os
import sys
import peract_config
import hydra
import numpy as np
import torch
import pandas as pd
from omegaconf import DictConfig, OmegaConf, ListConfig
from rlbench.action_modes.action_mode import BimanualMoveArmThenGripper
from rlbench.action_modes.action_mode import BimanualJointPositionActionMode
from rlbench.action_modes.arm_action_modes import BimanualEndEffectorPoseViaPlanning
from rlbench.action_modes.arm_action_modes import BimanualJointPosition, JointPosition
from rlbench.action_modes.gripper_action_modes import BimanualDiscrete
from rlbench.action_modes.action_mode import MoveArmThenGripper
from rlbench.action_modes.arm_action_modes import EndEffectorPoseViaPlanning
from rlbench.action_modes.gripper_action_modes import Discrete
from rlbench.backend import task as rlbench_task
from rlbench.backend.utils import task_file_to_task_class
from yarr.runners.independent_env_runner import IndependentEnvRunner
from yarr.utils.stat_accumulator import SimpleAccumulator
from helpers import utils
from helpers import observation_utils
from yarr.utils.rollout_generator import RolloutGenerator
import torch.multiprocessing as mp
from agents import agent_factory
def eval_seed(
train_cfg, eval_cfg, logdir, env_device, multi_task, seed, env_config
) -> None:
tasks = eval_cfg.rlbench.tasks
rg = RolloutGenerator()
train_cfg.method.robot_name = eval_cfg.method.robot_name
agent = agent_factory.create_agent(train_cfg)
stat_accum = SimpleAccumulator(eval_video_fps=30)
cwd = os.getcwd()
weightsdir = os.path.join(logdir, "weights")
env_runner = IndependentEnvRunner(
train_env=None,
agent=agent,
train_replay_buffer=None,
num_train_envs=0,
num_eval_envs=eval_cfg.framework.eval_envs,
rollout_episodes=99999,
eval_episodes=eval_cfg.framework.eval_episodes,
training_iterations=train_cfg.framework.training_iterations,
eval_from_eps_number=eval_cfg.framework.eval_from_eps_number,
episode_length=eval_cfg.rlbench.episode_length,
stat_accumulator=stat_accum,
weightsdir=weightsdir,
logdir=logdir,
env_device=env_device,
rollout_generator=rg,
num_eval_runs=len(tasks),
multi_task=multi_task,
)
env_runner._on_thread_start = peract_config.config_logging
manager = mp.Manager()
save_load_lock = manager.Lock()
writer_lock = manager.Lock()
# evaluate all checkpoints (0, 1000, ...) which don't have results, i.e. validation phase
if eval_cfg.framework.eval_type == "missing":
weight_folders = os.listdir(weightsdir)
weight_folders = sorted(map(int, weight_folders))
env_data_csv_file = os.path.join(logdir, "eval_data.csv")
if os.path.exists(env_data_csv_file):
env_dict = pd.read_csv(env_data_csv_file).to_dict()
evaluated_weights = sorted(map(int, list(env_dict["step"].values())))
weight_folders = [w for w in weight_folders if w not in evaluated_weights]
print("Missing weights: ", weight_folders)
# pick the best checkpoint from validation and evaluate, i.e. test phase
elif eval_cfg.framework.eval_type == "best":
env_data_csv_file = os.path.join(logdir, "eval_data.csv")
if os.path.exists(env_data_csv_file):
env_dict = pd.read_csv(env_data_csv_file).to_dict()
existing_weights = list(
map(int, sorted(os.listdir(os.path.join(logdir, "weights"))))
)
task_weights = {}
for task in tasks:
weights = list(env_dict["step"].values())
if len(tasks) > 1:
task_score = list(env_dict["eval_envs/return/%s" % task].values())
else:
task_score = list(env_dict["eval_envs/return"].values())
avail_weights, avail_task_scores = [], []
for step_idx, step in enumerate(weights):
if step in existing_weights:
avail_weights.append(step)
avail_task_scores.append(task_score[step_idx])
assert len(avail_weights) == len(avail_task_scores)
best_weight = avail_weights[
np.argwhere(avail_task_scores == np.amax(avail_task_scores))
.flatten()
.tolist()[-1]
]
task_weights[task] = best_weight
weight_folders = [task_weights]
print("Best weights:", weight_folders)
else:
raise Exception("No existing eval_data.csv file found in %s" % logdir)
# evaluate only the last checkpoint
elif eval_cfg.framework.eval_type == "last":
weight_folders = os.listdir(weightsdir)
weight_folders = sorted(map(int, weight_folders))
weight_folders = [weight_folders[-1]]
print("Last weight:", weight_folders)
elif eval_cfg.framework.eval_type == "all":
weight_folders = os.listdir(weightsdir)
weight_folders = sorted(map(int, weight_folders))
# evaluate a specific checkpoint
elif type(eval_cfg.framework.eval_type) == int:
weight_folders = [int(eval_cfg.framework.eval_type)]
print("Weight:", weight_folders)
else:
raise Exception("Unknown eval type")
if len(weight_folders) == 0:
logging.info(
"No weights to evaluate. Results are already available in eval_data.csv"
)
sys.exit(0)
# evaluate several checkpoints in parallel
# NOTE: in multi-task settings, each task is evaluated serially, which makes everything slow!
split_n = utils.split_list(weight_folders, eval_cfg.framework.eval_envs)
for split in split_n:
processes = []
for e_idx, weight in enumerate(split):
p = mp.Process(
target=env_runner.start,
args=(
weight,
save_load_lock,
writer_lock,
env_config,
e_idx % torch.cuda.device_count(),
eval_cfg.framework.eval_save_metrics,
eval_cfg.cinematic_recorder,
),
)
p.start()
processes.append(p)
for p in processes:
p.join()
del env_runner
del agent
gc.collect()
torch.cuda.empty_cache()
@hydra.main(config_name="eval", config_path="conf")
def main(eval_cfg: DictConfig) -> None:
logging.info("\n" + OmegaConf.to_yaml(eval_cfg))
start_seed = eval_cfg.framework.start_seed
logdir = os.path.join(
eval_cfg.framework.logdir,
eval_cfg.rlbench.task_name,
eval_cfg.method.name,
"seed%d" % start_seed,
)
train_config_path = os.path.join(logdir, "config.yaml")
if os.path.exists(train_config_path):
with open(train_config_path, "r") as f:
train_cfg = OmegaConf.load(f)
else:
raise Exception(f"Missing seed{start_seed}/config.yaml. Logdir is {logdir}")
# sanity checks
assert train_cfg.method.name == eval_cfg.method.name
assert train_cfg.method.agent_type == eval_cfg.method.agent_type
for task in eval_cfg.rlbench.tasks:
assert task in train_cfg.rlbench.tasks
env_device = utils.get_device(eval_cfg.framework.gpu)
logging.info("Using env device %s." % str(env_device))
gripper_mode = eval(eval_cfg.rlbench.gripper_mode)()
arm_action_mode = eval(eval_cfg.rlbench.arm_action_mode)()
action_mode = eval(eval_cfg.rlbench.action_mode)(arm_action_mode, gripper_mode)
is_bimanual = eval_cfg.method.robot_name == "bimanual"
if is_bimanual:
# TODO: automate instantiation with eval
task_path = rlbench_task.BIMANUAL_TASKS_PATH
else:
task_path = rlbench_task.TASKS_PATH
task_files = [
t.replace(".py", "")
for t in os.listdir(task_path)
if t != "__init__.py" and t.endswith(".py")
]
eval_cfg.rlbench.cameras = (
eval_cfg.rlbench.cameras
if isinstance(eval_cfg.rlbench.cameras, ListConfig)
else [eval_cfg.rlbench.cameras]
)
obs_config = observation_utils.create_obs_config(
eval_cfg.rlbench.cameras,
eval_cfg.rlbench.camera_resolution,
eval_cfg.method.name,
eval_cfg.method.robot_name,
)
if eval_cfg.cinematic_recorder.enabled:
obs_config.record_gripper_closing = True
multi_task = len(eval_cfg.rlbench.tasks) > 1
tasks = eval_cfg.rlbench.tasks
task_classes = []
for task in tasks:
if task not in task_files:
raise ValueError("Task %s not recognised!." % task)
task_classes.append(task_file_to_task_class(task, is_bimanual))
# single-task or multi-task
if multi_task:
env_config = (
task_classes,
obs_config,
action_mode,
eval_cfg.rlbench.demo_path,
eval_cfg.rlbench.episode_length,
eval_cfg.rlbench.headless,
eval_cfg.framework.eval_episodes,
train_cfg.rlbench.include_lang_goal_in_obs,
eval_cfg.rlbench.time_in_state,
eval_cfg.framework.record_every_n,
)
else:
env_config = (
task_classes[0],
obs_config,
action_mode,
eval_cfg.rlbench.demo_path,
eval_cfg.rlbench.episode_length,
eval_cfg.rlbench.headless,
train_cfg.rlbench.include_lang_goal_in_obs,
eval_cfg.rlbench.time_in_state,
eval_cfg.framework.record_every_n,
)
logging.info("Evaluating seed %d." % start_seed)
eval_seed(
train_cfg,
eval_cfg,
logdir,
env_device,
multi_task,
start_seed,
env_config,
)
if __name__ == "__main__":
peract_config.on_init()
main()
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