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515 行
17 KiB
515 行
17 KiB
import math
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import tempfile
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import pytest
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import yaml
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import numpy as np
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from typing import Dict, Any
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from mlagents.trainers.tests.simple_test_envs import (
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SimpleEnvironment,
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MemoryEnvironment,
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RecordEnvironment,
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)
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from mlagents.trainers.trainer_controller import TrainerController
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from mlagents.trainers.trainer_util import TrainerFactory
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from mlagents.trainers.simple_env_manager import SimpleEnvManager
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from mlagents.trainers.sampler_class import SamplerManager
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from mlagents.trainers.demo_loader import write_demo
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from mlagents.trainers.stats import StatsReporter, StatsWriter, StatsSummary
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from mlagents_envs.side_channel.float_properties_channel import FloatPropertiesChannel
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from mlagents_envs.communicator_objects.demonstration_meta_pb2 import (
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DemonstrationMetaProto,
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)
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from mlagents_envs.communicator_objects.brain_parameters_pb2 import BrainParametersProto
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from mlagents_envs.communicator_objects.space_type_pb2 import discrete, continuous
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BRAIN_NAME = "1D"
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PPO_CONFIG = f"""
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{BRAIN_NAME}:
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trainer: ppo
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batch_size: 16
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beta: 5.0e-3
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buffer_size: 64
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epsilon: 0.2
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hidden_units: 32
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lambd: 0.95
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learning_rate: 5.0e-3
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learning_rate_schedule: constant
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max_steps: 3000
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memory_size: 16
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normalize: false
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num_epoch: 3
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num_layers: 1
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time_horizon: 64
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sequence_length: 64
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summary_freq: 500
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use_recurrent: false
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reward_signals:
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extrinsic:
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strength: 1.0
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gamma: 0.99
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"""
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SAC_CONFIG = f"""
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{BRAIN_NAME}:
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trainer: sac
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batch_size: 8
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buffer_size: 500
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buffer_init_steps: 100
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hidden_units: 16
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init_entcoef: 0.01
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learning_rate: 5.0e-3
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max_steps: 1000
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memory_size: 16
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normalize: false
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num_update: 1
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train_interval: 1
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num_layers: 1
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time_horizon: 64
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sequence_length: 32
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summary_freq: 100
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tau: 0.01
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use_recurrent: false
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curiosity_enc_size: 128
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demo_path: None
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vis_encode_type: simple
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reward_signals:
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extrinsic:
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strength: 1.0
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gamma: 0.99
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"""
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def generate_config(
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config: str, override_vals: Dict[str, Any] = None
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) -> Dict[str, Any]:
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trainer_config = yaml.safe_load(config)
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if override_vals is not None:
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trainer_config[BRAIN_NAME].update(override_vals)
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return trainer_config
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# The reward processor is passed as an argument to _check_environment_trains.
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# It is applied to the list pf all final rewards for each brain individually.
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# This is so that we can process all final rewards in different ways for different algorithms.
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# Custom reward processors shuld be built within the test function and passed to _check_environment_trains
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# Default is average over the last 5 final rewards
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def default_reward_processor(rewards, last_n_rewards=5):
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rewards_to_use = rewards[-last_n_rewards:]
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# For debugging tests
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print("Last {} rewards:".format(last_n_rewards), rewards_to_use)
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return np.array(rewards[-last_n_rewards:], dtype=np.float32).mean()
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class DebugWriter(StatsWriter):
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"""
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Print to stdout so stats can be viewed in pytest
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"""
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def __init__(self):
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self._last_reward_summary: Dict[str, float] = {}
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def get_last_rewards(self):
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return self._last_reward_summary
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def write_stats(
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self, category: str, values: Dict[str, StatsSummary], step: int
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) -> None:
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for val, stats_summary in values.items():
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if val == "Environment/Cumulative Reward":
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print(step, val, stats_summary.mean)
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self._last_reward_summary[category] = stats_summary.mean
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def _check_environment_trains(
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env,
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trainer_config,
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reward_processor=default_reward_processor,
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meta_curriculum=None,
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success_threshold=0.9,
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env_manager=None,
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):
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# Create controller and begin training.
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with tempfile.TemporaryDirectory() as dir:
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run_id = "id"
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save_freq = 99999
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seed = 1337
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StatsReporter.writers.clear() # Clear StatsReporters so we don't write to file
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debug_writer = DebugWriter()
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StatsReporter.add_writer(debug_writer)
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if env_manager is None:
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env_manager = SimpleEnvManager(env, FloatPropertiesChannel())
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trainer_factory = TrainerFactory(
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trainer_config=trainer_config,
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summaries_dir=dir,
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run_id=run_id,
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model_path=dir,
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keep_checkpoints=1,
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train_model=True,
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load_model=False,
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seed=seed,
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meta_curriculum=meta_curriculum,
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multi_gpu=False,
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)
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tc = TrainerController(
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trainer_factory=trainer_factory,
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summaries_dir=dir,
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model_path=dir,
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run_id=run_id,
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meta_curriculum=meta_curriculum,
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train=True,
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training_seed=seed,
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sampler_manager=SamplerManager(None),
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resampling_interval=None,
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save_freq=save_freq,
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)
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# Begin training
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tc.start_learning(env_manager)
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if (
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success_threshold is not None
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): # For tests where we are just checking setup and not reward
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processed_rewards = [
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reward_processor(rewards) for rewards in env.final_rewards.values()
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]
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assert all(not math.isnan(reward) for reward in processed_rewards)
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assert all(reward > success_threshold for reward in processed_rewards)
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@pytest.mark.parametrize("use_discrete", [True, False])
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def test_simple_ppo(use_discrete):
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env = SimpleEnvironment([BRAIN_NAME], use_discrete=use_discrete)
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config = generate_config(PPO_CONFIG)
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_check_environment_trains(env, config)
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@pytest.mark.parametrize("use_discrete", [True, False])
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def test_2d_ppo(use_discrete):
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env = SimpleEnvironment(
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[BRAIN_NAME], use_discrete=use_discrete, action_size=2, step_size=0.5
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)
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config = generate_config(PPO_CONFIG)
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_check_environment_trains(env, config)
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@pytest.mark.parametrize("use_discrete", [True, False])
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@pytest.mark.parametrize("num_visual", [1, 2])
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def test_visual_ppo(num_visual, use_discrete):
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env = SimpleEnvironment(
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[BRAIN_NAME],
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use_discrete=use_discrete,
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num_visual=num_visual,
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num_vector=0,
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step_size=0.2,
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)
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override_vals = {"learning_rate": 3.0e-4}
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config = generate_config(PPO_CONFIG, override_vals)
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_check_environment_trains(env, config)
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@pytest.mark.parametrize("num_visual", [1, 2])
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@pytest.mark.parametrize("vis_encode_type", ["resnet", "nature_cnn"])
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def test_visual_advanced_ppo(vis_encode_type, num_visual):
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env = SimpleEnvironment(
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[BRAIN_NAME],
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use_discrete=True,
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num_visual=num_visual,
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num_vector=0,
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step_size=0.5,
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vis_obs_size=(36, 36, 3),
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)
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override_vals = {
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"learning_rate": 3.0e-4,
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"vis_encode_type": vis_encode_type,
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"max_steps": 500,
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"summary_freq": 100,
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}
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config = generate_config(PPO_CONFIG, override_vals)
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# The number of steps is pretty small for these encoders
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_check_environment_trains(env, config, success_threshold=0.5)
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@pytest.mark.parametrize("use_discrete", [True, False])
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def test_recurrent_ppo(use_discrete):
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env = MemoryEnvironment([BRAIN_NAME], use_discrete=use_discrete)
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override_vals = {
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"max_steps": 5000,
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"batch_size": 64,
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"buffer_size": 128,
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"learning_rate": 1e-3,
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"use_recurrent": True,
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}
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config = generate_config(PPO_CONFIG, override_vals)
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_check_environment_trains(env, config, success_threshold=0.9)
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@pytest.mark.parametrize("use_discrete", [True, False])
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def test_simple_sac(use_discrete):
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env = SimpleEnvironment([BRAIN_NAME], use_discrete=use_discrete)
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config = generate_config(SAC_CONFIG)
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_check_environment_trains(env, config)
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@pytest.mark.parametrize("use_discrete", [True, False])
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def test_2d_sac(use_discrete):
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env = SimpleEnvironment(
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[BRAIN_NAME], use_discrete=use_discrete, action_size=2, step_size=0.8
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)
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override_vals = {"buffer_init_steps": 2000, "max_steps": 10000}
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config = generate_config(SAC_CONFIG, override_vals)
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_check_environment_trains(env, config, success_threshold=0.8)
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@pytest.mark.parametrize("use_discrete", [True, False])
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@pytest.mark.parametrize("num_visual", [1, 2])
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def test_visual_sac(num_visual, use_discrete):
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env = SimpleEnvironment(
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[BRAIN_NAME],
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use_discrete=use_discrete,
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num_visual=num_visual,
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num_vector=0,
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step_size=0.2,
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)
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override_vals = {"batch_size": 16, "learning_rate": 3e-4}
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config = generate_config(SAC_CONFIG, override_vals)
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_check_environment_trains(env, config)
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@pytest.mark.parametrize("num_visual", [1, 2])
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@pytest.mark.parametrize("vis_encode_type", ["resnet", "nature_cnn"])
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def test_visual_advanced_sac(vis_encode_type, num_visual):
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env = SimpleEnvironment(
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[BRAIN_NAME],
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use_discrete=True,
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num_visual=num_visual,
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num_vector=0,
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step_size=0.5,
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vis_obs_size=(36, 36, 3),
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)
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override_vals = {
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"batch_size": 16,
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"learning_rate": 3.0e-4,
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"vis_encode_type": vis_encode_type,
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"buffer_init_steps": 0,
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"max_steps": 100,
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}
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config = generate_config(SAC_CONFIG, override_vals)
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# The number of steps is pretty small for these encoders
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_check_environment_trains(env, config, success_threshold=0.5)
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@pytest.mark.parametrize("use_discrete", [True, False])
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def test_recurrent_sac(use_discrete):
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env = MemoryEnvironment([BRAIN_NAME], use_discrete=use_discrete)
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override_vals = {
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"batch_size": 64,
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"use_recurrent": True,
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"max_steps": 3000,
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"learning_rate": 1e-3,
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"buffer_init_steps": 500,
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}
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config = generate_config(SAC_CONFIG, override_vals)
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_check_environment_trains(env, config)
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@pytest.mark.parametrize("use_discrete", [True, False])
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def test_simple_ghost(use_discrete):
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env = SimpleEnvironment(
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[BRAIN_NAME + "?team=0", BRAIN_NAME + "?team=1"], use_discrete=use_discrete
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)
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override_vals = {
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"max_steps": 2500,
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"self_play": {
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"play_against_latest_model_ratio": 1.0,
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"save_steps": 2000,
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"swap_steps": 2000,
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},
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}
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config = generate_config(PPO_CONFIG, override_vals)
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_check_environment_trains(env, config)
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@pytest.mark.parametrize("use_discrete", [True, False])
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def test_simple_ghost_fails(use_discrete):
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env = SimpleEnvironment(
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[BRAIN_NAME + "?team=0", BRAIN_NAME + "?team=1"], use_discrete=use_discrete
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)
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# This config should fail because the ghosted policy is never swapped with a competent policy.
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# Swap occurs after max step is reached.
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override_vals = {
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"max_steps": 2500,
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"self_play": {
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"play_against_latest_model_ratio": 1.0,
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"save_steps": 2000,
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"swap_steps": 4000,
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},
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}
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config = generate_config(PPO_CONFIG, override_vals)
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_check_environment_trains(env, config, success_threshold=None)
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processed_rewards = [
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default_reward_processor(rewards) for rewards in env.final_rewards.values()
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]
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success_threshold = 0.9
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assert any(reward > success_threshold for reward in processed_rewards) and any(
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reward < success_threshold for reward in processed_rewards
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)
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@pytest.mark.parametrize("use_discrete", [True, False])
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def test_simple_asymm_ghost(use_discrete):
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# Make opponent for asymmetric case
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brain_name_opp = BRAIN_NAME + "Opp"
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env = SimpleEnvironment(
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[BRAIN_NAME + "?team=0", brain_name_opp + "?team=1"], use_discrete=use_discrete
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)
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override_vals = {
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"max_steps": 2000,
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"self_play": {
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"play_against_latest_model_ratio": 1.0,
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"save_steps": 5000,
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"swap_steps": 5000,
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"team_change": 2000,
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},
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}
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config = generate_config(PPO_CONFIG, override_vals)
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config[brain_name_opp] = config[BRAIN_NAME]
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_check_environment_trains(env, config)
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@pytest.mark.parametrize("use_discrete", [True, False])
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def test_simple_asymm_ghost_fails(use_discrete):
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# Make opponent for asymmetric case
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brain_name_opp = BRAIN_NAME + "Opp"
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env = SimpleEnvironment(
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[BRAIN_NAME + "?team=0", brain_name_opp + "?team=1"], use_discrete=use_discrete
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)
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# This config should fail because the team that us not learning when both have reached
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# max step should be executing the initial, untrained poliy.
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override_vals = {
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"max_steps": 2000,
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"self_play": {
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"play_against_latest_model_ratio": 0.0,
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"save_steps": 5000,
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"swap_steps": 5000,
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"team_change": 2000,
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},
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}
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config = generate_config(PPO_CONFIG, override_vals)
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config[brain_name_opp] = config[BRAIN_NAME]
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_check_environment_trains(env, config, success_threshold=None)
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processed_rewards = [
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default_reward_processor(rewards) for rewards in env.final_rewards.values()
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]
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success_threshold = 0.9
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assert any(reward > success_threshold for reward in processed_rewards) and any(
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reward < success_threshold for reward in processed_rewards
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)
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@pytest.fixture(scope="session")
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def simple_record(tmpdir_factory):
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def record_demo(use_discrete, num_visual=0, num_vector=1):
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env = RecordEnvironment(
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[BRAIN_NAME],
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use_discrete=use_discrete,
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num_visual=num_visual,
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num_vector=num_vector,
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n_demos=100,
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)
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# If we want to use true demos, we can solve the env in the usual way
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# Otherwise, we can just call solve to execute the optimal policy
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env.solve()
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agent_info_protos = env.demonstration_protos[BRAIN_NAME]
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meta_data_proto = DemonstrationMetaProto()
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brain_param_proto = BrainParametersProto(
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vector_action_size=[1],
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vector_action_descriptions=[""],
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vector_action_space_type=discrete if use_discrete else continuous,
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brain_name=BRAIN_NAME,
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is_training=True,
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)
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action_type = "Discrete" if use_discrete else "Continuous"
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demo_path_name = "1DTest" + action_type + ".demo"
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demo_path = str(tmpdir_factory.mktemp("tmp_demo").join(demo_path_name))
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write_demo(demo_path, meta_data_proto, brain_param_proto, agent_info_protos)
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return demo_path
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return record_demo
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@pytest.mark.parametrize("use_discrete", [True, False])
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@pytest.mark.parametrize("trainer_config", [PPO_CONFIG, SAC_CONFIG])
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def test_gail(simple_record, use_discrete, trainer_config):
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demo_path = simple_record(use_discrete)
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env = SimpleEnvironment([BRAIN_NAME], use_discrete=use_discrete, step_size=0.2)
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override_vals = {
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"max_steps": 500,
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"behavioral_cloning": {"demo_path": demo_path, "strength": 1.0, "steps": 1000},
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"reward_signals": {
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"gail": {
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"strength": 1.0,
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"gamma": 0.99,
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"encoding_size": 32,
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"demo_path": demo_path,
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}
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},
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}
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config = generate_config(trainer_config, override_vals)
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_check_environment_trains(env, config, success_threshold=0.9)
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@pytest.mark.parametrize("use_discrete", [True, False])
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def test_gail_visual_ppo(simple_record, use_discrete):
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demo_path = simple_record(use_discrete, num_visual=1, num_vector=0)
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env = SimpleEnvironment(
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[BRAIN_NAME],
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num_visual=1,
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num_vector=0,
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use_discrete=use_discrete,
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step_size=0.2,
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)
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override_vals = {
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"max_steps": 500,
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"learning_rate": 3.0e-4,
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"behavioral_cloning": {"demo_path": demo_path, "strength": 1.0, "steps": 1000},
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"reward_signals": {
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"gail": {
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"strength": 1.0,
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"gamma": 0.99,
|
|
"encoding_size": 32,
|
|
"demo_path": demo_path,
|
|
}
|
|
},
|
|
}
|
|
config = generate_config(PPO_CONFIG, override_vals)
|
|
_check_environment_trains(env, config, success_threshold=0.9)
|
|
|
|
|
|
@pytest.mark.parametrize("use_discrete", [True, False])
|
|
def test_gail_visual_sac(simple_record, use_discrete):
|
|
demo_path = simple_record(use_discrete, num_visual=1, num_vector=0)
|
|
env = SimpleEnvironment(
|
|
[BRAIN_NAME],
|
|
num_visual=1,
|
|
num_vector=0,
|
|
use_discrete=use_discrete,
|
|
step_size=0.2,
|
|
)
|
|
override_vals = {
|
|
"max_steps": 500,
|
|
"batch_size": 16,
|
|
"learning_rate": 3.0e-4,
|
|
"behavioral_cloning": {"demo_path": demo_path, "strength": 1.0, "steps": 1000},
|
|
"reward_signals": {
|
|
"gail": {
|
|
"strength": 1.0,
|
|
"gamma": 0.99,
|
|
"encoding_size": 32,
|
|
"demo_path": demo_path,
|
|
}
|
|
},
|
|
}
|
|
config = generate_config(SAC_CONFIG, override_vals)
|
|
_check_environment_trains(env, config, success_threshold=0.9)
|