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373 行
14 KiB
373 行
14 KiB
import io
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import numpy as np
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import pytest
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from typing import List, Tuple
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from mlagents_envs.communicator_objects.agent_info_pb2 import AgentInfoProto
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from mlagents_envs.communicator_objects.observation_pb2 import (
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ObservationProto,
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NONE,
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PNG,
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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.agent_info_action_pair_pb2 import (
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AgentInfoActionPairProto,
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)
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from mlagents_envs.communicator_objects.agent_action_pb2 import AgentActionProto
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from mlagents_envs.base_env import (
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BehaviorSpec,
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ActionType,
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DecisionSteps,
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TerminalSteps,
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)
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from mlagents_envs.exception import UnityObservationException
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from mlagents_envs.rpc_utils import (
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behavior_spec_from_proto,
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process_pixels,
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_process_visual_observation,
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_process_vector_observation,
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steps_from_proto,
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)
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from PIL import Image
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def generate_list_agent_proto(
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n_agent: int,
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shape: List[Tuple[int]],
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infinite_rewards: bool = False,
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nan_observations: bool = False,
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) -> List[AgentInfoProto]:
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result = []
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for agent_index in range(n_agent):
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ap = AgentInfoProto()
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ap.reward = float("inf") if infinite_rewards else agent_index
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ap.done = agent_index % 2 == 0
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ap.max_step_reached = agent_index % 4 == 0
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ap.id = agent_index
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ap.action_mask.extend([True, False] * 5)
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obs_proto_list = []
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for obs_index in range(len(shape)):
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obs_proto = ObservationProto()
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obs_proto.shape.extend(list(shape[obs_index]))
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obs_proto.compression_type = NONE
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obs_proto.float_data.data.extend(
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([float("nan")] if nan_observations else [0.1])
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* np.prod(shape[obs_index])
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)
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obs_proto_list.append(obs_proto)
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ap.observations.extend(obs_proto_list)
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result.append(ap)
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return result
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def generate_compressed_data(in_array: np.ndarray) -> bytes:
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image_arr = (in_array * 255).astype(np.uint8)
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bytes_out = bytes()
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num_channels = in_array.shape[2]
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num_images = (num_channels + 2) // 3
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# Split the input image into batches of 3 channels.
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for i in range(num_images):
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sub_image = image_arr[..., 3 * i : 3 * i + 3]
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if (i == num_images - 1) and (num_channels % 3) != 0:
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# Pad zeros
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zero_shape = list(in_array.shape)
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zero_shape[2] = 3 - (num_channels % 3)
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z = np.zeros(zero_shape, dtype=np.uint8)
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sub_image = np.concatenate([sub_image, z], axis=2)
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im = Image.fromarray(sub_image, "RGB")
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byteIO = io.BytesIO()
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im.save(byteIO, format="PNG")
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bytes_out += byteIO.getvalue()
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return bytes_out
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def generate_compressed_proto_obs(in_array: np.ndarray) -> ObservationProto:
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obs_proto = ObservationProto()
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obs_proto.compressed_data = generate_compressed_data(in_array)
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obs_proto.compression_type = PNG
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obs_proto.shape.extend(in_array.shape)
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return obs_proto
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def generate_uncompressed_proto_obs(in_array: np.ndarray) -> ObservationProto:
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obs_proto = ObservationProto()
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obs_proto.float_data.data.extend(in_array.flatten().tolist())
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obs_proto.compression_type = NONE
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obs_proto.shape.extend(in_array.shape)
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return obs_proto
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def proto_from_steps(
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decision_steps: DecisionSteps, terminal_steps: TerminalSteps
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) -> List[AgentInfoProto]:
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agent_info_protos: List[AgentInfoProto] = []
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# Take care of the DecisionSteps first
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for agent_id in decision_steps.agent_id:
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agent_id_index = decision_steps.agent_id_to_index[agent_id]
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reward = decision_steps.reward[agent_id_index]
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done = False
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max_step_reached = False
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agent_mask = None
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if decision_steps.action_mask is not None:
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agent_mask = [] # type: ignore
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for _branch in decision_steps.action_mask:
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agent_mask = np.concatenate(
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(agent_mask, _branch[agent_id_index, :]), axis=0
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)
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observations: List[ObservationProto] = []
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for all_observations_of_type in decision_steps.obs:
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observation = all_observations_of_type[agent_id_index]
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if len(observation.shape) == 3:
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observations.append(generate_uncompressed_proto_obs(observation))
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else:
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observations.append(
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ObservationProto(
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float_data=ObservationProto.FloatData(data=observation),
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shape=[len(observation)],
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compression_type=NONE,
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)
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)
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agent_info_proto = AgentInfoProto(
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reward=reward,
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done=done,
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id=agent_id,
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max_step_reached=max_step_reached,
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action_mask=agent_mask,
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observations=observations,
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)
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agent_info_protos.append(agent_info_proto)
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# Take care of the TerminalSteps second
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for agent_id in terminal_steps.agent_id:
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agent_id_index = terminal_steps.agent_id_to_index[agent_id]
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reward = terminal_steps.reward[agent_id_index]
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done = True
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max_step_reached = terminal_steps.interrupted[agent_id_index]
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final_observations: List[ObservationProto] = []
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for all_observations_of_type in terminal_steps.obs:
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observation = all_observations_of_type[agent_id_index]
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if len(observation.shape) == 3:
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final_observations.append(generate_uncompressed_proto_obs(observation))
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else:
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final_observations.append(
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ObservationProto(
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float_data=ObservationProto.FloatData(data=observation),
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shape=[len(observation)],
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compression_type=NONE,
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)
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)
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agent_info_proto = AgentInfoProto(
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reward=reward,
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done=done,
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id=agent_id,
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max_step_reached=max_step_reached,
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action_mask=None,
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observations=final_observations,
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)
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agent_info_protos.append(agent_info_proto)
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return agent_info_protos
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# The arguments here are the DecisionSteps, TerminalSteps and actions for a single agent name
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def proto_from_steps_and_action(
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decision_steps: DecisionSteps, terminal_steps: TerminalSteps, actions: np.ndarray
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) -> List[AgentInfoActionPairProto]:
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agent_info_protos = proto_from_steps(decision_steps, terminal_steps)
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agent_action_protos = [
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AgentActionProto(vector_actions=action) for action in actions
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]
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agent_info_action_pair_protos = [
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AgentInfoActionPairProto(agent_info=agent_info_proto, action_info=action_proto)
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for agent_info_proto, action_proto in zip(
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agent_info_protos, agent_action_protos
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)
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]
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return agent_info_action_pair_protos
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def test_process_pixels():
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in_array = np.random.rand(128, 64, 3)
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byte_arr = generate_compressed_data(in_array)
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out_array = process_pixels(byte_arr, 3)
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assert out_array.shape == (128, 64, 3)
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assert np.sum(in_array - out_array) / np.prod(in_array.shape) < 0.01
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assert np.allclose(in_array, out_array, atol=0.01)
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def test_process_pixels_multi_png():
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height = 128
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width = 64
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num_channels = 7
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in_array = np.random.rand(height, width, num_channels)
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byte_arr = generate_compressed_data(in_array)
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out_array = process_pixels(byte_arr, num_channels)
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assert out_array.shape == (height, width, num_channels)
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assert np.sum(in_array - out_array) / np.prod(in_array.shape) < 0.01
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assert np.allclose(in_array, out_array, atol=0.01)
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def test_process_pixels_gray():
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in_array = np.random.rand(128, 64, 3)
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byte_arr = generate_compressed_data(in_array)
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out_array = process_pixels(byte_arr, 1)
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assert out_array.shape == (128, 64, 1)
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assert np.mean(in_array.mean(axis=2, keepdims=True) - out_array) < 0.01
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assert np.allclose(in_array.mean(axis=2, keepdims=True), out_array, atol=0.01)
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def test_vector_observation():
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n_agents = 10
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shapes = [(3,), (4,)]
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list_proto = generate_list_agent_proto(n_agents, shapes)
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for obs_index, shape in enumerate(shapes):
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arr = _process_vector_observation(obs_index, shape, list_proto)
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assert list(arr.shape) == ([n_agents] + list(shape))
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assert np.allclose(arr, 0.1, atol=0.01)
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def test_process_visual_observation():
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in_array_1 = np.random.rand(128, 64, 3)
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proto_obs_1 = generate_compressed_proto_obs(in_array_1)
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in_array_2 = np.random.rand(128, 64, 3)
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proto_obs_2 = generate_uncompressed_proto_obs(in_array_2)
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ap1 = AgentInfoProto()
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ap1.observations.extend([proto_obs_1])
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ap2 = AgentInfoProto()
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ap2.observations.extend([proto_obs_2])
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ap_list = [ap1, ap2]
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arr = _process_visual_observation(0, (128, 64, 3), ap_list)
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assert list(arr.shape) == [2, 128, 64, 3]
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assert np.allclose(arr[0, :, :, :], in_array_1, atol=0.01)
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assert np.allclose(arr[1, :, :, :], in_array_2, atol=0.01)
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def test_process_visual_observation_bad_shape():
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in_array_1 = np.random.rand(128, 64, 3)
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proto_obs_1 = generate_compressed_proto_obs(in_array_1)
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ap1 = AgentInfoProto()
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ap1.observations.extend([proto_obs_1])
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ap_list = [ap1]
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with pytest.raises(UnityObservationException):
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_process_visual_observation(0, (128, 42, 3), ap_list)
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def test_batched_step_result_from_proto():
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n_agents = 10
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shapes = [(3,), (4,)]
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spec = BehaviorSpec(shapes, ActionType.CONTINUOUS, 3)
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ap_list = generate_list_agent_proto(n_agents, shapes)
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decision_steps, terminal_steps = steps_from_proto(ap_list, spec)
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for agent_id in range(n_agents):
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if agent_id in decision_steps:
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# we set the reward equal to the agent id in generate_list_agent_proto
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assert decision_steps[agent_id].reward == agent_id
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elif agent_id in terminal_steps:
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assert terminal_steps[agent_id].reward == agent_id
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else:
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raise Exception("Missing agent from the steps")
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# We sort the AgentId since they are split between DecisionSteps and TerminalSteps
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combined_agent_id = list(decision_steps.agent_id) + list(terminal_steps.agent_id)
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combined_agent_id.sort()
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assert combined_agent_id == list(range(n_agents))
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for agent_id in range(n_agents):
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assert (agent_id in terminal_steps) == (agent_id % 2 == 0)
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if agent_id in terminal_steps:
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assert terminal_steps[agent_id].interrupted == (agent_id % 4 == 0)
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assert decision_steps.obs[0].shape[1] == shapes[0][0]
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assert decision_steps.obs[1].shape[1] == shapes[1][0]
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assert terminal_steps.obs[0].shape[1] == shapes[0][0]
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assert terminal_steps.obs[1].shape[1] == shapes[1][0]
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def test_action_masking_discrete():
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n_agents = 10
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shapes = [(3,), (4,)]
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behavior_spec = BehaviorSpec(shapes, ActionType.DISCRETE, (7, 3))
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ap_list = generate_list_agent_proto(n_agents, shapes)
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decision_steps, terminal_steps = steps_from_proto(ap_list, behavior_spec)
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masks = decision_steps.action_mask
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assert isinstance(masks, list)
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assert len(masks) == 2
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assert masks[0].shape == (n_agents / 2, 7) # half agents are done
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assert masks[1].shape == (n_agents / 2, 3) # half agents are done
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assert masks[0][0, 0]
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assert not masks[1][0, 0]
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assert masks[1][0, 1]
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def test_action_masking_discrete_1():
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n_agents = 10
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shapes = [(3,), (4,)]
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behavior_spec = BehaviorSpec(shapes, ActionType.DISCRETE, (10,))
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ap_list = generate_list_agent_proto(n_agents, shapes)
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decision_steps, terminal_steps = steps_from_proto(ap_list, behavior_spec)
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masks = decision_steps.action_mask
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assert isinstance(masks, list)
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assert len(masks) == 1
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assert masks[0].shape == (n_agents / 2, 10)
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assert masks[0][0, 0]
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def test_action_masking_discrete_2():
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n_agents = 10
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shapes = [(3,), (4,)]
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behavior_spec = BehaviorSpec(shapes, ActionType.DISCRETE, (2, 2, 6))
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ap_list = generate_list_agent_proto(n_agents, shapes)
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decision_steps, terminal_steps = steps_from_proto(ap_list, behavior_spec)
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masks = decision_steps.action_mask
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assert isinstance(masks, list)
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assert len(masks) == 3
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assert masks[0].shape == (n_agents / 2, 2)
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assert masks[1].shape == (n_agents / 2, 2)
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assert masks[2].shape == (n_agents / 2, 6)
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assert masks[0][0, 0]
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def test_action_masking_continuous():
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n_agents = 10
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shapes = [(3,), (4,)]
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behavior_spec = BehaviorSpec(shapes, ActionType.CONTINUOUS, 10)
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ap_list = generate_list_agent_proto(n_agents, shapes)
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decision_steps, terminal_steps = steps_from_proto(ap_list, behavior_spec)
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masks = decision_steps.action_mask
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assert masks is None
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def test_agent_behavior_spec_from_proto():
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agent_proto = generate_list_agent_proto(1, [(3,), (4,)])[0]
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bp = BrainParametersProto()
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bp.vector_action_size.extend([5, 4])
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bp.vector_action_space_type = 0
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behavior_spec = behavior_spec_from_proto(bp, agent_proto)
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assert behavior_spec.is_action_discrete()
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assert not behavior_spec.is_action_continuous()
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assert behavior_spec.observation_shapes == [(3,), (4,)]
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assert behavior_spec.discrete_action_branches == (5, 4)
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assert behavior_spec.action_size == 2
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bp = BrainParametersProto()
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bp.vector_action_size.extend([6])
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bp.vector_action_space_type = 1
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behavior_spec = behavior_spec_from_proto(bp, agent_proto)
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assert not behavior_spec.is_action_discrete()
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assert behavior_spec.is_action_continuous()
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assert behavior_spec.action_size == 6
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def test_batched_step_result_from_proto_raises_on_infinite():
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n_agents = 10
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shapes = [(3,), (4,)]
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behavior_spec = BehaviorSpec(shapes, ActionType.CONTINUOUS, 3)
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ap_list = generate_list_agent_proto(n_agents, shapes, infinite_rewards=True)
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with pytest.raises(RuntimeError):
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steps_from_proto(ap_list, behavior_spec)
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def test_batched_step_result_from_proto_raises_on_nan():
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n_agents = 10
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shapes = [(3,), (4,)]
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behavior_spec = BehaviorSpec(shapes, ActionType.CONTINUOUS, 3)
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ap_list = generate_list_agent_proto(n_agents, shapes, nan_observations=True)
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with pytest.raises(RuntimeError):
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steps_from_proto(ap_list, behavior_spec)
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