# 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 # ignore private usage of variables warning # pyright: reportPrivateUsage=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.""" import numpy as np import torch from gymnasium.spaces import Box, Dict, Discrete, MultiDiscrete, Tuple from isaaclab.envs.utils.spaces import deserialize_space, sample_space, serialize_space, spec_to_gym_space def test_spec_to_gym_space(): """Test conversion of specs to gym spaces.""" # fundamental spaces # Box space = spec_to_gym_space(1) assert isinstance(space, Box) assert space.shape == (1,) space = spec_to_gym_space([1, 2, 3, 4, 5]) assert isinstance(space, Box) assert space.shape == (1, 2, 3, 4, 5) space = spec_to_gym_space(Box(low=-1.0, high=1.0, shape=(1, 2))) assert isinstance(space, Box) # Discrete space = spec_to_gym_space({2}) assert isinstance(space, Discrete) assert space.n == 2 space = spec_to_gym_space(Discrete(2)) assert isinstance(space, Discrete) # MultiDiscrete space = spec_to_gym_space([{1}, {2}, {3}]) assert isinstance(space, MultiDiscrete) assert space.nvec.shape == (3,) space = spec_to_gym_space(MultiDiscrete(np.array([1, 2, 3]))) assert isinstance(space, MultiDiscrete) # composite spaces # Tuple space = spec_to_gym_space(([1, 2, 3, 4, 5], {2}, [{1}, {2}, {3}])) assert isinstance(space, Tuple) assert len(space) == 3 assert isinstance(space[0], Box) assert isinstance(space[1], Discrete) assert isinstance(space[2], MultiDiscrete) space = spec_to_gym_space(Tuple((Box(-1, 1, shape=(1,)), Discrete(2)))) assert isinstance(space, Tuple) # Dict space = spec_to_gym_space({"box": [1, 2, 3, 4, 5], "discrete": {2}, "multi_discrete": [{1}, {2}, {3}]}) assert isinstance(space, Dict) assert len(space) == 3 assert isinstance(space["box"], Box) assert isinstance(space["discrete"], Discrete) assert isinstance(space["multi_discrete"], MultiDiscrete) space = spec_to_gym_space(Dict({"box": Box(-1, 1, shape=(1,)), "discrete": Discrete(2)})) assert isinstance(space, Dict) def test_sample_space(): """Test sampling from gym spaces.""" device = "cpu" # fundamental spaces # Box sample = sample_space(Box(low=-1.0, high=1.0, shape=(1, 2)), device, batch_size=1) assert isinstance(sample, torch.Tensor) _check_tensorized(sample, batch_size=1) # Discrete sample = sample_space(Discrete(2), device, batch_size=2) assert isinstance(sample, torch.Tensor) _check_tensorized(sample, batch_size=2) # MultiDiscrete sample = sample_space(MultiDiscrete(np.array([1, 2, 3])), device, batch_size=3) assert isinstance(sample, torch.Tensor) _check_tensorized(sample, batch_size=3) # composite spaces # Tuple sample = sample_space(Tuple((Box(-1, 1, shape=(1,)), Discrete(2))), device, batch_size=4) assert isinstance(sample, (tuple, list)) _check_tensorized(sample, batch_size=4) # Dict sample = sample_space(Dict({"box": Box(-1, 1, shape=(1,)), "discrete": Discrete(2)}), device, batch_size=5) assert isinstance(sample, dict) _check_tensorized(sample, batch_size=5) def test_space_serialization_deserialization(): """Test serialization and deserialization of gym spaces.""" # fundamental spaces # Box space = 1 output = deserialize_space(serialize_space(space)) assert space == output space = [1, 2, 3, 4, 5] output = deserialize_space(serialize_space(space)) assert space == output space = Box(low=-1.0, high=1.0, shape=(1, 2)) output = deserialize_space(serialize_space(space)) assert isinstance(output, Box) assert (space.low == output.low).all() assert (space.high == output.high).all() assert space.shape == output.shape # Discrete space = {2} output = deserialize_space(serialize_space(space)) assert space == output space = Discrete(2) output = deserialize_space(serialize_space(space)) assert isinstance(output, Discrete) assert space.n == output.n # MultiDiscrete space = [{1}, {2}, {3}] output = deserialize_space(serialize_space(space)) assert space == output space = MultiDiscrete(np.array([1, 2, 3])) output = deserialize_space(serialize_space(space)) assert isinstance(output, MultiDiscrete) assert (space.nvec == output.nvec).all() # composite spaces # Tuple space = ([1, 2, 3, 4, 5], {2}, [{1}, {2}, {3}]) output = deserialize_space(serialize_space(space)) assert space == output space = Tuple((Box(-1, 1, shape=(1,)), Discrete(2))) output = deserialize_space(serialize_space(space)) assert isinstance(output, Tuple) assert len(output) == 2 assert isinstance(output[0], Box) assert isinstance(output[1], Discrete) # Dict space = {"box": [1, 2, 3, 4, 5], "discrete": {2}, "multi_discrete": [{1}, {2}, {3}]} output = deserialize_space(serialize_space(space)) assert space == output space = Dict({"box": Box(-1, 1, shape=(1,)), "discrete": Discrete(2)}) output = deserialize_space(serialize_space(space)) assert isinstance(output, Dict) assert len(output) == 2 assert isinstance(output["box"], Box) assert isinstance(output["discrete"], Discrete) def _check_tensorized(sample, batch_size): """Helper function to check if a sample is properly tensorized.""" if isinstance(sample, (tuple, list)): list(map(_check_tensorized, sample, [batch_size] * len(sample))) elif isinstance(sample, dict): list(map(_check_tensorized, sample.values(), [batch_size] * len(sample))) else: assert isinstance(sample, torch.Tensor) assert sample.shape[0] == batch_size