# 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 # needed to import for allowing type-hinting: torch.Tensor | None from __future__ import annotations """Launch Isaac Sim Simulator first.""" from isaaclab.app import AppLauncher # launch omniverse app simulation_app = AppLauncher(headless=True).app """Rest everything follows.""" from collections import namedtuple from typing import TYPE_CHECKING import pytest import torch import isaaclab.sim as sim_utils from isaaclab.managers import ( ManagerTermBase, ObservationGroupCfg, ObservationManager, ObservationTermCfg, RewardTermCfg, ) from isaaclab.utils import configclass, modifiers if TYPE_CHECKING: from isaaclab.envs import ManagerBasedEnv def grilled_chicken(env): return torch.ones(env.num_envs, 4, device=env.device) def grilled_chicken_with_bbq(env, bbq: bool): return bbq * torch.ones(env.num_envs, 1, device=env.device) def grilled_chicken_with_curry(env, hot: bool): return hot * 2 * torch.ones(env.num_envs, 1, device=env.device) def grilled_chicken_with_yoghurt(env, hot: bool, bland: float): return hot * bland * torch.ones(env.num_envs, 5, device=env.device) def grilled_chicken_with_yoghurt_and_bbq(env, hot: bool, bland: float, bbq: bool = False): return hot * bland * bbq * torch.ones(env.num_envs, 3, device=env.device) def grilled_chicken_image(env, bland: float, channel: int = 1): return bland * torch.ones(env.num_envs, 128, 256, channel, device=env.device) class complex_function_class(ManagerTermBase): def __init__(self, cfg: ObservationTermCfg, env: object): self.cfg = cfg self.env = env # define some variables self._time_passed = torch.zeros(env.num_envs, device=env.device) def reset(self, env_ids: torch.Tensor | None = None): if env_ids is None: env_ids = slice(None) self._time_passed[env_ids] = 0.0 def __call__(self, env: object, interval: float) -> torch.Tensor: self._time_passed += interval return self._time_passed.clone().unsqueeze(-1) class non_callable_complex_function_class(ManagerTermBase): def __init__(self, cfg: ObservationTermCfg, env: object): self.cfg = cfg self.env = env # define some variables self._cost = 2 * self.env.num_envs def call_me(self, env: object) -> torch.Tensor: return torch.ones(env.num_envs, 2, device=env.device) * self._cost class MyDataClass: def __init__(self, num_envs: int, device: str): self.pos_w = torch.rand((num_envs, 3), device=device) self.lin_vel_w = torch.rand((num_envs, 3), device=device) def pos_w_data(env) -> torch.Tensor: return env.data.pos_w def lin_vel_w_data(env) -> torch.Tensor: return env.data.lin_vel_w @pytest.fixture(autouse=True) def setup_env(): dt = 0.01 num_envs = 20 device = "cuda:0" # set up sim sim_cfg = sim_utils.SimulationCfg(dt=dt, device=device) sim = sim_utils.SimulationContext(sim_cfg) # create dummy environment env = namedtuple("ManagerBasedEnv", ["num_envs", "device", "data", "dt", "sim"])( num_envs, device, MyDataClass(num_envs, device), dt, sim ) # let the simulation play (we need this for observation manager to compute obs dims) env.sim._app_control_on_stop_handle = None env.sim.reset() return env def test_str(setup_env): env = setup_env """Test the string representation of the observation manager.""" @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class SampleGroupCfg(ObservationGroupCfg): """Test config class for policy observation group.""" term_1 = ObservationTermCfg(func=grilled_chicken, scale=10) term_2 = ObservationTermCfg(func=grilled_chicken, scale=2) term_3 = ObservationTermCfg(func=grilled_chicken_with_bbq, scale=5, params={"bbq": True}) term_4 = ObservationTermCfg( func=grilled_chicken_with_yoghurt, scale=1.0, params={"hot": False, "bland": 2.0} ) term_5 = ObservationTermCfg( func=grilled_chicken_with_yoghurt_and_bbq, scale=1.0, params={"hot": False, "bland": 2.0} ) policy: ObservationGroupCfg = SampleGroupCfg() # create observation manager cfg = MyObservationManagerCfg() obs_man = ObservationManager(cfg, env) assert len(obs_man.active_terms["policy"]) == 5 # print the expected string obs_man_str = str(obs_man) print() print(obs_man_str) obs_man_str_split = obs_man_str.split("|") term_1_str_index = obs_man_str_split.index(" term_1 ") term_1_str_shape = obs_man_str_split[term_1_str_index + 1].strip() assert term_1_str_shape == "(4,)" def test_str_with_history(setup_env): env = setup_env """Test the string representation of the observation manager with history terms.""" TERM_1_HISTORY = 5 @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class SampleGroupCfg(ObservationGroupCfg): """Test config class for policy observation group.""" term_1 = ObservationTermCfg(func=grilled_chicken, scale=10, history_length=TERM_1_HISTORY) term_2 = ObservationTermCfg(func=grilled_chicken, scale=2) term_3 = ObservationTermCfg(func=grilled_chicken_with_bbq, scale=5, params={"bbq": True}) term_4 = ObservationTermCfg( func=grilled_chicken_with_yoghurt, scale=1.0, params={"hot": False, "bland": 2.0} ) term_5 = ObservationTermCfg( func=grilled_chicken_with_yoghurt_and_bbq, scale=1.0, params={"hot": False, "bland": 2.0} ) policy: ObservationGroupCfg = SampleGroupCfg() # create observation manager cfg = MyObservationManagerCfg() obs_man = ObservationManager(cfg, env) assert len(obs_man.active_terms["policy"]) == 5 # print the expected string obs_man_str = str(obs_man) print() print(obs_man_str) obs_man_str_split = obs_man_str.split("|") term_1_str_index = obs_man_str_split.index(" term_1 ") term_1_str_shape = obs_man_str_split[term_1_str_index + 1].strip() assert term_1_str_shape == "(20,)" def test_config_equivalence(setup_env): env = setup_env """Test the equivalence of observation manager created from different config types.""" # create from config class @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class SampleGroupCfg(ObservationGroupCfg): """Test config class for policy observation group.""" your_term = ObservationTermCfg(func=grilled_chicken, scale=10) his_term = ObservationTermCfg(func=grilled_chicken, scale=2) my_term = ObservationTermCfg(func=grilled_chicken_with_bbq, scale=5, params={"bbq": True}) her_term = ObservationTermCfg( func=grilled_chicken_with_yoghurt, scale=1.0, params={"hot": False, "bland": 2.0} ) policy = SampleGroupCfg() critic = SampleGroupCfg(concatenate_terms=False, her_term=None) cfg = MyObservationManagerCfg() obs_man_from_cfg = ObservationManager(cfg, env) # create from config class @configclass class MyObservationManagerAnnotatedCfg: """Test config class for observation manager with annotations on terms.""" @configclass class SampleGroupCfg(ObservationGroupCfg): """Test config class for policy observation group.""" your_term: ObservationTermCfg = ObservationTermCfg(func=grilled_chicken, scale=10) his_term: ObservationTermCfg = ObservationTermCfg(func=grilled_chicken, scale=2) my_term: ObservationTermCfg = ObservationTermCfg( func=grilled_chicken_with_bbq, scale=5, params={"bbq": True} ) her_term: ObservationTermCfg = ObservationTermCfg( func=grilled_chicken_with_yoghurt, scale=1.0, params={"hot": False, "bland": 2.0} ) policy: ObservationGroupCfg = SampleGroupCfg() critic: ObservationGroupCfg = SampleGroupCfg(concatenate_terms=False, her_term=None) cfg = MyObservationManagerAnnotatedCfg() obs_man_from_annotated_cfg = ObservationManager(cfg, env) # check equivalence # parsed terms assert obs_man_from_cfg.active_terms == obs_man_from_annotated_cfg.active_terms assert obs_man_from_cfg.group_obs_term_dim == obs_man_from_annotated_cfg.group_obs_term_dim assert obs_man_from_cfg.group_obs_dim == obs_man_from_annotated_cfg.group_obs_dim # parsed term configs assert obs_man_from_cfg._group_obs_term_cfgs == obs_man_from_annotated_cfg._group_obs_term_cfgs assert obs_man_from_cfg._group_obs_concatenate == obs_man_from_annotated_cfg._group_obs_concatenate def test_config_terms(setup_env): env = setup_env """Test the number of terms in the observation manager.""" @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class SampleGroupCfg(ObservationGroupCfg): """Test config class for policy observation group.""" term_1 = ObservationTermCfg(func=grilled_chicken, scale=10) term_2 = ObservationTermCfg(func=grilled_chicken_with_curry, scale=0.0, params={"hot": False}) @configclass class SampleMixedGroupCfg(ObservationGroupCfg): """Test config class for policy observation group with a mix of vector and matrix terms.""" concatenate_terms = False term_1 = ObservationTermCfg(func=grilled_chicken, scale=2.0) term_2 = ObservationTermCfg(func=grilled_chicken_image, scale=1.5, params={"bland": 0.5}) @configclass class SampleImageGroupCfg(ObservationGroupCfg): term_1 = ObservationTermCfg(func=grilled_chicken_image, scale=1.5, params={"bland": 0.5, "channel": 1}) term_2 = ObservationTermCfg(func=grilled_chicken_image, scale=0.5, params={"bland": 0.1, "channel": 3}) policy: ObservationGroupCfg = SampleGroupCfg() critic: ObservationGroupCfg = SampleGroupCfg(term_2=None) mixed: ObservationGroupCfg = SampleMixedGroupCfg() image: ObservationGroupCfg = SampleImageGroupCfg() # create observation manager cfg = MyObservationManagerCfg() obs_man = ObservationManager(cfg, env) assert len(obs_man.active_terms["policy"]) == 2 assert len(obs_man.active_terms["critic"]) == 1 assert len(obs_man.active_terms["mixed"]) == 2 assert len(obs_man.active_terms["image"]) == 2 # create a new obs manager but where mixed group has invalid config cfg = MyObservationManagerCfg() cfg.mixed.concatenate_terms = True with pytest.raises(RuntimeError): ObservationManager(cfg, env) def test_compute(setup_env): env = setup_env """Test the observation computation.""" pos_scale_tuple = (2.0, 3.0, 1.0) @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class PolicyCfg(ObservationGroupCfg): """Test config class for policy observation group.""" term_1 = ObservationTermCfg(func=grilled_chicken, scale=10) term_2 = ObservationTermCfg(func=grilled_chicken_with_curry, scale=0.0, params={"hot": False}) term_3 = ObservationTermCfg(func=pos_w_data, scale=pos_scale_tuple) term_4 = ObservationTermCfg(func=lin_vel_w_data, scale=1.5) @configclass class CriticCfg(ObservationGroupCfg): term_1 = ObservationTermCfg(func=pos_w_data, scale=pos_scale_tuple) term_2 = ObservationTermCfg(func=lin_vel_w_data, scale=1.5) term_3 = ObservationTermCfg(func=pos_w_data, scale=pos_scale_tuple) term_4 = ObservationTermCfg(func=lin_vel_w_data, scale=1.5) @configclass class ImageCfg(ObservationGroupCfg): term_1 = ObservationTermCfg(func=grilled_chicken_image, scale=1.5, params={"bland": 0.5, "channel": 1}) term_2 = ObservationTermCfg(func=grilled_chicken_image, scale=0.5, params={"bland": 0.1, "channel": 3}) policy: ObservationGroupCfg = PolicyCfg() critic: ObservationGroupCfg = CriticCfg() image: ObservationGroupCfg = ImageCfg() # create observation manager cfg = MyObservationManagerCfg() obs_man = ObservationManager(cfg, env) # compute observation using manager observations = obs_man.compute() # obtain the group observations obs_policy: torch.Tensor = observations["policy"] obs_critic: torch.Tensor = observations["critic"] obs_image: torch.Tensor = observations["image"] # check the observation shape assert obs_policy.shape == (env.num_envs, 11) assert obs_critic.shape == (env.num_envs, 12) assert obs_image.shape == (env.num_envs, 128, 256, 4) # check that the scales are applied correctly assert torch.equal(env.data.pos_w * torch.tensor(pos_scale_tuple, device=env.device), obs_critic[:, :3]) assert torch.equal(env.data.lin_vel_w * 1.5, obs_critic[:, 3:6]) # make sure that the data are the same for same terms # -- within group assert torch.equal(obs_critic[:, 0:3], obs_critic[:, 6:9]) assert torch.equal(obs_critic[:, 3:6], obs_critic[:, 9:12]) # -- between groups assert torch.equal(obs_policy[:, 5:8], obs_critic[:, 0:3]) assert torch.equal(obs_policy[:, 8:11], obs_critic[:, 3:6]) def test_compute_with_history(setup_env): env = setup_env """Test the observation computation with history buffers.""" HISTORY_LENGTH = 5 @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class PolicyCfg(ObservationGroupCfg): """Test config class for policy observation group.""" term_1 = ObservationTermCfg(func=grilled_chicken, history_length=HISTORY_LENGTH) # total observation size: term_dim (4) * history_len (5) = 20 term_2 = ObservationTermCfg(func=lin_vel_w_data) # total observation size: term_dim (3) = 3 policy: ObservationGroupCfg = PolicyCfg() # create observation manager cfg = MyObservationManagerCfg() obs_man = ObservationManager(cfg, env) # compute observation using manager observations = obs_man.compute() # obtain the group observations obs_policy: torch.Tensor = observations["policy"] # check the observation shape assert obs_policy.shape == (env.num_envs, 23) # check the observation data expected_obs_term_1_data = torch.ones(env.num_envs, 4 * HISTORY_LENGTH, device=env.device) expected_obs_term_2_data = lin_vel_w_data(env) expected_obs_data_t0 = torch.concat((expected_obs_term_1_data, expected_obs_term_2_data), dim=-1) torch.testing.assert_close(expected_obs_data_t0, obs_policy) # test that the history buffer holds previous data for _ in range(HISTORY_LENGTH): observations = obs_man.compute() obs_policy = observations["policy"] expected_obs_term_1_data = torch.ones(env.num_envs, 4 * HISTORY_LENGTH, device=env.device) expected_obs_data_t5 = torch.concat((expected_obs_term_1_data, expected_obs_term_2_data), dim=-1) assert torch.equal(expected_obs_data_t5, obs_policy) # test reset obs_man.reset() observations = obs_man.compute() obs_policy = observations["policy"] torch.testing.assert_close(expected_obs_data_t0, obs_policy) # test reset of specific env ids reset_env_ids = [2, 4, 16] obs_man.reset(reset_env_ids) torch.testing.assert_close(expected_obs_data_t0[reset_env_ids], obs_policy[reset_env_ids]) def test_compute_with_2d_history(setup_env): env = setup_env """Test the observation computation with history buffers for 2D observations.""" HISTORY_LENGTH = 5 @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class FlattenedPolicyCfg(ObservationGroupCfg): """Test config class for policy observation group.""" term_1 = ObservationTermCfg( func=grilled_chicken_image, params={"bland": 1.0, "channel": 1}, history_length=HISTORY_LENGTH ) # total observation size: term_dim (128, 256) * history_len (5) = 163840 @configclass class PolicyCfg(ObservationGroupCfg): """Test config class for policy observation group.""" term_1 = ObservationTermCfg( func=grilled_chicken_image, params={"bland": 1.0, "channel": 1}, history_length=HISTORY_LENGTH, flatten_history_dim=False, ) # total observation size: (5, 128, 256, 1) flat_obs_policy: ObservationGroupCfg = FlattenedPolicyCfg() policy: ObservationGroupCfg = PolicyCfg() # create observation manager cfg = MyObservationManagerCfg() obs_man = ObservationManager(cfg, env) # compute observation using manager observations = obs_man.compute() # obtain the group observations obs_policy_flat: torch.Tensor = observations["flat_obs_policy"] obs_policy: torch.Tensor = observations["policy"] # check the observation shapes assert obs_policy_flat.shape == (env.num_envs, 163840) assert obs_policy.shape == (env.num_envs, HISTORY_LENGTH, 128, 256, 1) def test_compute_with_group_history(setup_env): env = setup_env """Test the observation computation with group level history buffer configuration.""" TERM_HISTORY_LENGTH = 5 GROUP_HISTORY_LENGTH = 10 @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class PolicyCfg(ObservationGroupCfg): """Test config class for policy observation group.""" history_length = GROUP_HISTORY_LENGTH # group level history length will override all terms term_1 = ObservationTermCfg(func=grilled_chicken, history_length=TERM_HISTORY_LENGTH) # total observation size: term_dim (4) * history_len (5) = 20 # with override total obs size: term_dim (4) * history_len (10) = 40 term_2 = ObservationTermCfg(func=lin_vel_w_data) # total observation size: term_dim (3) = 3 # with override total obs size: term_dim (3) * history_len (10) = 30 policy: ObservationGroupCfg = PolicyCfg() # create observation manager cfg = MyObservationManagerCfg() obs_man = ObservationManager(cfg, env) # compute observation using manager observations = obs_man.compute() # obtain the group observations obs_policy: torch.Tensor = observations["policy"] # check the total observation shape assert obs_policy.shape == (env.num_envs, 70) # check the observation data is initialized properly expected_obs_term_1_data = torch.ones(env.num_envs, 4 * GROUP_HISTORY_LENGTH, device=env.device) expected_obs_term_2_data = lin_vel_w_data(env).repeat(1, GROUP_HISTORY_LENGTH) expected_obs_data_t0 = torch.concat((expected_obs_term_1_data, expected_obs_term_2_data), dim=-1) torch.testing.assert_close(expected_obs_data_t0, obs_policy) # test that the history buffer holds previous data for _ in range(GROUP_HISTORY_LENGTH): observations = obs_man.compute() obs_policy = observations["policy"] expected_obs_term_1_data = torch.ones(env.num_envs, 4 * GROUP_HISTORY_LENGTH, device=env.device) expected_obs_term_2_data = lin_vel_w_data(env).repeat(1, GROUP_HISTORY_LENGTH) expected_obs_data_t10 = torch.concat((expected_obs_term_1_data, expected_obs_term_2_data), dim=-1) torch.testing.assert_close(expected_obs_data_t10, obs_policy) # test reset obs_man.reset() observations = obs_man.compute() obs_policy = observations["policy"] torch.testing.assert_close(expected_obs_data_t0, obs_policy) # test reset of specific env ids reset_env_ids = [2, 4, 16] obs_man.reset(reset_env_ids) torch.testing.assert_close(expected_obs_data_t0[reset_env_ids], obs_policy[reset_env_ids]) def test_invalid_observation_config(setup_env): env = setup_env """Test the invalid observation config.""" @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class PolicyCfg(ObservationGroupCfg): """Test config class for policy observation group.""" term_1 = ObservationTermCfg(func=grilled_chicken_with_bbq, scale=0.1, params={"hot": False}) term_2 = ObservationTermCfg(func=grilled_chicken_with_yoghurt, scale=2.0, params={"hot": False}) policy: ObservationGroupCfg = PolicyCfg() # create observation manager cfg = MyObservationManagerCfg() # check the invalid config with pytest.raises(ValueError): ObservationManager(cfg, env) def test_callable_class_term(setup_env): env = setup_env """Test the observation computation with callable class term.""" @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class PolicyCfg(ObservationGroupCfg): """Test config class for policy observation group.""" term_1 = ObservationTermCfg(func=grilled_chicken, scale=10) term_2 = ObservationTermCfg(func=complex_function_class, scale=0.2, params={"interval": 0.5}) policy: ObservationGroupCfg = PolicyCfg() # create observation manager cfg = MyObservationManagerCfg() obs_man = ObservationManager(cfg, env) # compute observation using manager observations = obs_man.compute() # check the observation assert observations["policy"].shape == (env.num_envs, 5) assert observations["policy"][0, -1].item() == pytest.approx(0.2 * 0.5) # check memory in term num_exec_count = 10 for _ in range(num_exec_count): observations = obs_man.compute() assert observations["policy"][0, -1].item() == pytest.approx(0.2 * 0.5 * (num_exec_count + 1)) # check reset works obs_man.reset(env_ids=[0, 4, 9, 14, 19]) observations = obs_man.compute() assert observations["policy"][0, -1].item() == pytest.approx(0.2 * 0.5) assert observations["policy"][1, -1].item() == pytest.approx(0.2 * 0.5 * (num_exec_count + 2)) def test_non_callable_class_term(setup_env): env = setup_env """Test the observation computation with non-callable class term.""" @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class PolicyCfg(ObservationGroupCfg): """Test config class for policy observation group.""" term_1 = ObservationTermCfg(func=grilled_chicken, scale=10) term_2 = ObservationTermCfg(func=non_callable_complex_function_class, scale=0.2) policy: ObservationGroupCfg = PolicyCfg() # create observation manager config cfg = MyObservationManagerCfg() # create observation manager with pytest.raises(NotImplementedError): ObservationManager(cfg, env) def test_modifier_compute(setup_env): env = setup_env """Test the observation computation with modifiers.""" modifier_1 = modifiers.ModifierCfg(func=modifiers.bias, params={"value": 1.0}) modifier_2 = modifiers.ModifierCfg(func=modifiers.scale, params={"multiplier": 2.0}) modifier_3 = modifiers.ModifierCfg(func=modifiers.clip, params={"bounds": (-0.5, 0.5)}) modifier_4 = modifiers.IntegratorCfg(dt=env.dt) @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class PolicyCfg(ObservationGroupCfg): """Test config class for policy observation group.""" concatenate_terms = False term_1 = ObservationTermCfg(func=pos_w_data, modifiers=[]) term_2 = ObservationTermCfg(func=pos_w_data, modifiers=[modifier_1]) term_3 = ObservationTermCfg(func=pos_w_data, modifiers=[modifier_1, modifier_4]) @configclass class CriticCfg(ObservationGroupCfg): """Test config class for critic observation group""" concatenate_terms = False term_1 = ObservationTermCfg(func=pos_w_data, modifiers=[]) term_2 = ObservationTermCfg(func=pos_w_data, modifiers=[modifier_1]) term_3 = ObservationTermCfg(func=pos_w_data, modifiers=[modifier_1, modifier_2]) term_4 = ObservationTermCfg(func=pos_w_data, modifiers=[modifier_1, modifier_2, modifier_3]) policy: ObservationGroupCfg = PolicyCfg() critic: ObservationGroupCfg = CriticCfg() # create observation manager cfg = MyObservationManagerCfg() obs_man = ObservationManager(cfg, env) # compute observation using manager observations = obs_man.compute() # obtain the group observations obs_policy: dict[str, torch.Tensor] = observations["policy"] obs_critic: dict[str, torch.Tensor] = observations["critic"] # check correct application of modifications assert torch.equal(obs_policy["term_1"] + 1.0, obs_policy["term_2"]) assert torch.equal(obs_critic["term_1"] + 1.0, obs_critic["term_2"]) assert torch.equal(2.0 * (obs_critic["term_1"] + 1.0), obs_critic["term_3"]) assert torch.min(obs_critic["term_4"]) >= -0.5 assert torch.max(obs_critic["term_4"]) <= 0.5 def test_serialize(setup_env): """Test serialize call for ManagerTermBase terms.""" env = setup_env serialize_data = {"test": 0} class test_serialize_term(ManagerTermBase): def __init__(self, cfg: RewardTermCfg, env: ManagerBasedEnv): super().__init__(cfg, env) def __call__(self, env: ManagerBasedEnv) -> torch.Tensor: return grilled_chicken(env) def serialize(self) -> dict: return serialize_data @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class PolicyCfg(ObservationGroupCfg): """Test config class for policy observation group.""" concatenate_terms = False term_1 = ObservationTermCfg(func=test_serialize_term) policy: ObservationGroupCfg = PolicyCfg() # create observation manager cfg = MyObservationManagerCfg() obs_man = ObservationManager(cfg, env) # check expected output assert obs_man.serialize() == {"policy": {"term_1": serialize_data}} def test_modifier_invalid_config(setup_env): env = setup_env """Test modifier initialization with invalid config.""" modifier = modifiers.ModifierCfg(func=modifiers.clip, params={"min": -0.5, "max": 0.5}) @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class PolicyCfg(ObservationGroupCfg): """Test config class for policy observation group.""" concatenate_terms = False term_1 = ObservationTermCfg(func=pos_w_data, modifiers=[modifier]) policy: ObservationGroupCfg = PolicyCfg() # create observation manager cfg = MyObservationManagerCfg() with pytest.raises(ValueError): ObservationManager(cfg, env) def test_concatenate_dim(setup_env): """Test concatenation of observations along different dimensions.""" env = setup_env @configclass class MyObservationManagerCfg: """Test config class for observation manager.""" @configclass class PolicyCfg(ObservationGroupCfg): """Test config class for policy observation group.""" concatenate_terms = True concatenate_dim = 1 # Concatenate along dimension 1 term_1 = ObservationTermCfg(func=grilled_chicken_image, scale=1.0, params={"bland": 1.0, "channel": 1}) term_2 = ObservationTermCfg(func=grilled_chicken_image, scale=1.0, params={"bland": 1.0, "channel": 1}) @configclass class CriticCfg(ObservationGroupCfg): """Test config class for critic observation group.""" concatenate_terms = True concatenate_dim = 2 # Concatenate along dimension 2 term_1 = ObservationTermCfg(func=grilled_chicken_image, scale=1.0, params={"bland": 1.0, "channel": 1}) term_2 = ObservationTermCfg(func=grilled_chicken_image, scale=1.0, params={"bland": 1.0, "channel": 1}) @configclass class CriticCfg_neg_dim(ObservationGroupCfg): """Test config class for critic observation group.""" concatenate_terms = True concatenate_dim = -1 # Concatenate along last dimension term_1 = ObservationTermCfg(func=grilled_chicken_image, scale=1.0, params={"bland": 1.0, "channel": 1}) term_2 = ObservationTermCfg(func=grilled_chicken_image, scale=1.0, params={"bland": 1.0, "channel": 1}) policy: ObservationGroupCfg = PolicyCfg() critic: ObservationGroupCfg = CriticCfg() critic_neg_dim: ObservationGroupCfg = CriticCfg_neg_dim() # create observation manager cfg = MyObservationManagerCfg() obs_man = ObservationManager(cfg, env) # compute observation using manager observations = obs_man.compute() # obtain the group observations obs_policy: torch.Tensor = observations["policy"] obs_critic: torch.Tensor = observations["critic"] obs_critic_neg_dim: torch.Tensor = observations["critic_neg_dim"] # check the observation shapes # For policy: concatenated along dim 1, so width should be doubled assert obs_policy.shape == (env.num_envs, 128, 512, 1) # For critic: concatenated along last dim, so channels should be doubled assert obs_critic.shape == (env.num_envs, 128, 256, 2) # For critic_neg_dim: concatenated along last dim, so channels should be doubled assert obs_critic_neg_dim.shape == (env.num_envs, 128, 256, 2) # verify the data is concatenated correctly # For policy: check that the second half matches the first half torch.testing.assert_close(obs_policy[:, :, :256, :], obs_policy[:, :, 256:, :]) # For critic: check that the second channel matches the first channel torch.testing.assert_close(obs_critic[:, :, :, 0], obs_critic[:, :, :, 1]) # For critic_neg_dim: check that it is the same as critic torch.testing.assert_close(obs_critic_neg_dim, obs_critic)