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203 行
7.9 KiB
203 行
7.9 KiB
import pytest
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import numpy as np
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from mlagents.tf_utils import tf
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import attr
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from mlagents.trainers.ppo.optimizer_torch import TorchPPOOptimizer
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from mlagents.trainers.policy.torch_policy import TorchPolicy
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from mlagents.trainers.tests import mock_brain as mb
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from mlagents.trainers.tests.test_trajectory import make_fake_trajectory
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from mlagents.trainers.settings import NetworkSettings, FrameworkType
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from mlagents.trainers.tests.dummy_config import ( # noqa: F401; pylint: disable=unused-variable
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ppo_dummy_config,
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curiosity_dummy_config,
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gail_dummy_config,
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)
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from mlagents_envs.base_env import ActionSpec
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@pytest.fixture
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def dummy_config():
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return attr.evolve(ppo_dummy_config(), framework=FrameworkType.PYTORCH)
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VECTOR_ACTION_SPACE = 2
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VECTOR_OBS_SPACE = 8
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DISCRETE_ACTION_SPACE = [3, 3, 3, 2]
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BUFFER_INIT_SAMPLES = 64
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NUM_AGENTS = 12
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CONTINUOUS_ACTION_SPEC = ActionSpec.create_continuous(VECTOR_ACTION_SPACE)
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DISCRETE_ACTION_SPEC = ActionSpec.create_discrete(tuple(DISCRETE_ACTION_SPACE))
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def create_test_ppo_optimizer(dummy_config, use_rnn, use_discrete, use_visual):
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mock_specs = mb.setup_test_behavior_specs(
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use_discrete,
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use_visual,
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vector_action_space=DISCRETE_ACTION_SPACE
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if use_discrete
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else VECTOR_ACTION_SPACE,
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vector_obs_space=VECTOR_OBS_SPACE,
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)
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trainer_settings = attr.evolve(dummy_config)
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trainer_settings.network_settings.memory = (
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NetworkSettings.MemorySettings(sequence_length=16, memory_size=10)
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if use_rnn
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else None
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)
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policy = TorchPolicy(0, mock_specs, trainer_settings, "test", False)
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optimizer = TorchPPOOptimizer(policy, trainer_settings)
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return optimizer
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@pytest.mark.parametrize("discrete", [True, False], ids=["discrete", "continuous"])
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@pytest.mark.parametrize("visual", [True, False], ids=["visual", "vector"])
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@pytest.mark.parametrize("rnn", [True, False], ids=["rnn", "no_rnn"])
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def test_ppo_optimizer_update(dummy_config, rnn, visual, discrete):
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# Test evaluate
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tf.reset_default_graph()
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optimizer = create_test_ppo_optimizer(
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dummy_config, use_rnn=rnn, use_discrete=discrete, use_visual=visual
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)
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# Test update
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update_buffer = mb.simulate_rollout(
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BUFFER_INIT_SAMPLES,
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optimizer.policy.behavior_spec,
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memory_size=optimizer.policy.m_size,
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)
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# Mock out reward signal eval
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update_buffer["advantages"] = update_buffer["environment_rewards"]
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update_buffer["extrinsic_returns"] = update_buffer["environment_rewards"]
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update_buffer["extrinsic_value_estimates"] = update_buffer["environment_rewards"]
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return_stats = optimizer.update(
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update_buffer,
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num_sequences=update_buffer.num_experiences // optimizer.policy.sequence_length,
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)
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# Make sure we have the right stats
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required_stats = [
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"Losses/Policy Loss",
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"Losses/Value Loss",
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"Policy/Learning Rate",
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"Policy/Epsilon",
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"Policy/Beta",
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]
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for stat in required_stats:
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assert stat in return_stats.keys()
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@pytest.mark.parametrize("discrete", [True, False], ids=["discrete", "continuous"])
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@pytest.mark.parametrize("visual", [True, False], ids=["visual", "vector"])
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@pytest.mark.parametrize("rnn", [True, False], ids=["rnn", "no_rnn"])
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# We need to test this separately from test_reward_signals.py to ensure no interactions
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def test_ppo_optimizer_update_curiosity(
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dummy_config, curiosity_dummy_config, rnn, visual, discrete # noqa: F811
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):
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# Test evaluate
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tf.reset_default_graph()
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dummy_config.reward_signals = curiosity_dummy_config
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optimizer = create_test_ppo_optimizer(
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dummy_config, use_rnn=rnn, use_discrete=discrete, use_visual=visual
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)
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# Test update
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update_buffer = mb.simulate_rollout(
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BUFFER_INIT_SAMPLES,
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optimizer.policy.behavior_spec,
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memory_size=optimizer.policy.m_size,
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)
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# Mock out reward signal eval
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update_buffer["advantages"] = update_buffer["environment_rewards"]
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update_buffer["extrinsic_returns"] = update_buffer["environment_rewards"]
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update_buffer["extrinsic_value_estimates"] = update_buffer["environment_rewards"]
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update_buffer["curiosity_returns"] = update_buffer["environment_rewards"]
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update_buffer["curiosity_value_estimates"] = update_buffer["environment_rewards"]
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optimizer.update(
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update_buffer,
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num_sequences=update_buffer.num_experiences // optimizer.policy.sequence_length,
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)
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# We need to test this separately from test_reward_signals.py to ensure no interactions
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def test_ppo_optimizer_update_gail(gail_dummy_config, dummy_config): # noqa: F811
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# Test evaluate
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dummy_config.reward_signals = gail_dummy_config
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config = attr.evolve(ppo_dummy_config(), framework=FrameworkType.PYTORCH)
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optimizer = create_test_ppo_optimizer(
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config, use_rnn=False, use_discrete=False, use_visual=False
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)
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# Test update
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update_buffer = mb.simulate_rollout(
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BUFFER_INIT_SAMPLES, optimizer.policy.behavior_spec
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)
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# Mock out reward signal eval
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update_buffer["advantages"] = update_buffer["environment_rewards"]
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update_buffer["extrinsic_returns"] = update_buffer["environment_rewards"]
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update_buffer["extrinsic_value_estimates"] = update_buffer["environment_rewards"]
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update_buffer["gail_returns"] = update_buffer["environment_rewards"]
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update_buffer["gail_value_estimates"] = update_buffer["environment_rewards"]
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update_buffer["continuous_log_probs"] = np.ones_like(
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update_buffer["continuous_action"]
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)
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optimizer.update(
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update_buffer,
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num_sequences=update_buffer.num_experiences // optimizer.policy.sequence_length,
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)
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# Check if buffer size is too big
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update_buffer = mb.simulate_rollout(3000, optimizer.policy.behavior_spec)
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# Mock out reward signal eval
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update_buffer["advantages"] = update_buffer["environment_rewards"]
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update_buffer["extrinsic_returns"] = update_buffer["environment_rewards"]
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update_buffer["extrinsic_value_estimates"] = update_buffer["environment_rewards"]
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update_buffer["gail_returns"] = update_buffer["environment_rewards"]
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update_buffer["gail_value_estimates"] = update_buffer["environment_rewards"]
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optimizer.update(
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update_buffer,
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num_sequences=update_buffer.num_experiences // optimizer.policy.sequence_length,
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)
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@pytest.mark.parametrize("discrete", [True, False], ids=["discrete", "continuous"])
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@pytest.mark.parametrize("visual", [True, False], ids=["visual", "vector"])
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@pytest.mark.parametrize("rnn", [True, False], ids=["rnn", "no_rnn"])
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def test_ppo_get_value_estimates(dummy_config, rnn, visual, discrete):
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optimizer = create_test_ppo_optimizer(
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dummy_config, use_rnn=rnn, use_discrete=discrete, use_visual=visual
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)
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time_horizon = 15
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trajectory = make_fake_trajectory(
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length=time_horizon,
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observation_shapes=optimizer.policy.behavior_spec.observation_shapes,
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action_spec=DISCRETE_ACTION_SPEC if discrete else CONTINUOUS_ACTION_SPEC,
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max_step_complete=True,
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)
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run_out, final_value_out = optimizer.get_trajectory_value_estimates(
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trajectory.to_agentbuffer(), trajectory.next_obs, done=False
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)
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for key, val in run_out.items():
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assert type(key) is str
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assert len(val) == 15
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run_out, final_value_out = optimizer.get_trajectory_value_estimates(
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trajectory.to_agentbuffer(), trajectory.next_obs, done=True
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)
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for key, val in final_value_out.items():
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assert type(key) is str
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assert val == 0.0
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# Check if we ignore terminal states properly
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optimizer.reward_signals["extrinsic"].use_terminal_states = False
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run_out, final_value_out = optimizer.get_trajectory_value_estimates(
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trajectory.to_agentbuffer(), trajectory.next_obs, done=False
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)
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for key, val in final_value_out.items():
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assert type(key) is str
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assert val != 0.0
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if __name__ == "__main__":
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pytest.main()
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