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https://github.com/saymrwulf/stable-baselines3.git
synced 2026-05-14 20:58:03 +00:00
* Fix failing set_env test * Fix test failiing due to deprectation of env.seed * Adjust mean reward threshold in failing test * Fix her test failing due to rng * Change seed and revert reward threshold to 90 * Pin gym version * Make VecEnv compatible with gym seeding change * Revert change to VecEnv reset signature * Change subprocenv seed cmd to call reset instead * Fix type check * Add backward compat * Add `compat_gym_seed` helper * Add goal env checks in env_checker * Add docs on HER requirements for envs * Capture user warning in test with inverted box space * Update ale-py version * Fix randint * Allow noop_max to be zero * Update changelog * Update docker image * Update doc conda env and dockerfile * Custom envs should not have any warnings * Fix test for numpy >= 1.21 * Add check for vectorized compute reward * Bump to gym 0.24 * Fix gym default step docstring * Test downgrading gym * Revert "Test downgrading gym" This reverts commit 0072b77156c006ada8a1d6e26ce347ed85a83eeb. * Fix protobuf error * Fix in dependencies * Fix protobuf dep * Use newest version of cartpole * Update gym * Fix warning * Loosen required scipy version * Scipy no longer needed * Try gym 0.25 * Silence warnings from gym * Filter warnings during tests * Update doc * Update requirements * Add gym 26 compat in vec env * Fixes in envs and tests for gym 0.26+ * Enforce gym 0.26 api * format * Fix formatting * Fix dependencies * Fix syntax * Cleanup doc and warnings * Faster tests * Higher budget for HER perf test (revert prev change) * Fixes and update doc * Fix doc build * Fix breaking change * Fixes for rendering * Rename variables in monitor * update render method for gym 0.26 API backwards compatible (mode argument is allowed) while using the gym 0.26 API (render mode is determined at environment creation) * update tests and docs to new gym render API * undo removal of render modes metatadata check * set rgb_array as default render mode for gym.make * undo changes & raise warning if not 'rgb_array' * Fix type check * Remove recursion and fix type checking * Remove hacks for protobuf and gym 0.24 * Fix type annotations * reuse existing render_mode attribute * return tiled images for 'human' render mode * Allow to use opencv for human render, fix typos * Add warning when using non-zero start with Discrete (fixes #1197) * Fix type checking * Bug fixes and handle more cases * Throw proper warnings * Update test * Fix new metadata name * Ignore numpy warnings * Fixes in vec recorder * Global ignore * Filter local warning too * Monkey patch not needed for gym 26 * Add doc of VecEnv vs Gym API * Add render test * Fix return type * Update VecEnv vs Gym API doc * Fix for custom render mode * Fix return type * Fix type checking * check test env test_buffer * skip render check * check env test_dict_env * test_env test_gae * check envs in remaining tests * Update tests * Add warning for Discrete action space with non-zero (#1295) * Fix atari annotation * ignore get_action_meanings [attr-defined] * Fix mypy issues * Add patch for gym/gymnasium transition * Switch to gymnasium * Rely on signature instead of version * More patches * Type ignore because of https://github.com/Farama-Foundation/Gymnasium/pull/39 * Fix doc build * Fix pytype errors * Fix atari requirement * Update env checker due to change in dtype for Discrete * Fix type hint * Convert spaces for saved models * Ignore pytype * Remove gitlab CI * Disable pytype for convert space * Fix undefined info * Fix undefined info * Upgrade shimmy * Fix wrappers type annotation (need PR from Gymnasium) * Fix gymnasium dependency * Fix dependency declaration * Cap pygame version for python 3.7 * Point to master branch (v0.28.0) * Fix: use main not master branch * Rename done to terminated * Fix pygame dependency for python 3.7 * Rename gym to gymnasium * Update Gymnasium * Fix test * Fix tests * Forks don't have access to private variables * Fix linter warnings * Update read the doc env * Fix env checker for GoalEnv * Fix import * Update env checker (more info) and fix dtype * Use micromamab for Docker * Update dependencies * Clarify VecEnv doc * Fix Gymnasium version * Copy file only after mamba install * [ci skip] Update docker doc * Polish code * Reformat * Remove deprecated features * Ignore warning * Update doc * Update examples and changelog * Fix type annotation bundle (SAC, TD3, A2C, PPO, base class) (#1436) * Fix SAC type hints, improve DQN ones * Fix A2C and TD3 type hints * Fix PPO type hints * Fix on-policy type hints * Fix base class type annotation, do not use defaults * Update version * Disable mypy for python 3.7 * Rename Gym26StepReturn * Update continuous critic type annotation * Fix pytype complain --------- Co-authored-by: Carlos Luis <carlos.luisgonc@gmail.com> Co-authored-by: Quentin Gallouédec <45557362+qgallouedec@users.noreply.github.com> Co-authored-by: Thomas Lips <37955681+tlpss@users.noreply.github.com> Co-authored-by: tlips <thomas.lips@ugent.be> Co-authored-by: tlpss <thomas17.lips@gmail.com> Co-authored-by: Quentin GALLOUÉDEC <gallouedec.quentin@gmail.com>
314 lines
14 KiB
Python
314 lines
14 KiB
Python
import numpy as np
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from gymnasium import spaces
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from stable_baselines3.common.vec_env.stacked_observations import StackedObservations
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compute_stacking = StackedObservations.compute_stacking
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NUM_ENVS = 2
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N_STACK = 4
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H, W, C = 16, 24, 3
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def test_compute_stacking_box():
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space = spaces.Box(-1, 1, (4,))
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channels_first, stack_dimension, stacked_shape, repeat_axis = compute_stacking(N_STACK, observation_space=space)
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assert not channels_first # default is channel last
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assert stack_dimension == -1
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assert stacked_shape == (N_STACK * 4,)
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assert repeat_axis == -1
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def test_compute_stacking_multidim_box():
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space = spaces.Box(-1, 1, (4, 5))
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channels_first, stack_dimension, stacked_shape, repeat_axis = compute_stacking(N_STACK, observation_space=space)
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assert not channels_first # default is channel last
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assert stack_dimension == -1
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assert stacked_shape == (4, N_STACK * 5)
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assert repeat_axis == -1
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def test_compute_stacking_multidim_box_channel_first():
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space = spaces.Box(-1, 1, (4, 5))
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channels_first, stack_dimension, stacked_shape, repeat_axis = compute_stacking(
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N_STACK, observation_space=space, channels_order="first"
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)
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assert channels_first # default is channel last
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assert stack_dimension == 1
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assert stacked_shape == (N_STACK * 4, 5)
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assert repeat_axis == 0
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def test_compute_stacking_image_channel_first():
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"""Detect that image is channel first and stack in that dimension."""
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space = spaces.Box(0, 255, (C, H, W), dtype=np.uint8)
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channels_first, stack_dimension, stacked_shape, repeat_axis = compute_stacking(N_STACK, observation_space=space)
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assert channels_first # default is channel last
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assert stack_dimension == 1
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assert stacked_shape == (N_STACK * C, H, W)
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assert repeat_axis == 0
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def test_compute_stacking_image_channel_last():
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"""Detect that image is channel last and stack in that dimension."""
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space = spaces.Box(0, 255, (H, W, C), dtype=np.uint8)
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channels_first, stack_dimension, stacked_shape, repeat_axis = compute_stacking(N_STACK, observation_space=space)
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assert not channels_first # default is channel last
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assert stack_dimension == -1
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assert stacked_shape == (H, W, N_STACK * C)
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assert repeat_axis == -1
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def test_compute_stacking_image_channel_first_stack_last():
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"""Detect that image is channel first and stack in that dimension."""
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space = spaces.Box(0, 255, (C, H, W), dtype=np.uint8)
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channels_first, stack_dimension, stacked_shape, repeat_axis = compute_stacking(
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N_STACK, observation_space=space, channels_order="last"
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)
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assert not channels_first # default is channel last
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assert stack_dimension == -1
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assert stacked_shape == (C, H, N_STACK * W)
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assert repeat_axis == -1
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def test_compute_stacking_image_channel_last_stack_first():
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"""Detect that image is channel last and stack in that dimension."""
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space = spaces.Box(0, 255, (H, W, C), dtype=np.uint8)
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channels_first, stack_dimension, stacked_shape, repeat_axis = compute_stacking(
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N_STACK, observation_space=space, channels_order="first"
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)
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assert channels_first # default is channel last
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assert stack_dimension == 1
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assert stacked_shape == (N_STACK * H, W, C)
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assert repeat_axis == 0
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def test_reset_update_box():
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space = spaces.Box(-1, 1, (4,))
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stacked_observations = StackedObservations(NUM_ENVS, N_STACK, space)
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observations_1 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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stacked_obs = stacked_observations.reset(observations_1)
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assert stacked_obs.shape == (NUM_ENVS, N_STACK * 4)
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assert stacked_obs.dtype == space.dtype
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observations_2 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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dones = np.zeros((NUM_ENVS,), dtype=bool)
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infos = [{} for _ in range(NUM_ENVS)]
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stacked_obs, infos = stacked_observations.update(observations_2, dones, infos)
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assert stacked_obs.shape == (NUM_ENVS, N_STACK * 4)
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assert stacked_obs.dtype == space.dtype
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assert np.array_equal(
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stacked_obs,
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np.concatenate(
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(np.zeros_like(observations_1), np.zeros_like(observations_1), observations_1, observations_2), axis=-1
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),
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)
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def test_reset_update_multidim_box():
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space = spaces.Box(-1, 1, (4, 5))
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stacked_observations = StackedObservations(NUM_ENVS, N_STACK, space)
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observations_1 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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stacked_obs = stacked_observations.reset(observations_1)
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assert stacked_obs.shape == (NUM_ENVS, 4, N_STACK * 5)
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assert stacked_obs.dtype == space.dtype
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observations_2 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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dones = np.zeros((NUM_ENVS,), dtype=bool)
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infos = [{} for _ in range(NUM_ENVS)]
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stacked_obs, infos = stacked_observations.update(observations_2, dones, infos)
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assert stacked_obs.shape == (NUM_ENVS, 4, N_STACK * 5)
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assert stacked_obs.dtype == space.dtype
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assert np.array_equal(
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stacked_obs,
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np.concatenate(
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(np.zeros_like(observations_1), np.zeros_like(observations_1), observations_1, observations_2), axis=-1
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),
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)
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def test_reset_update_multidim_box_channel_first():
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space = spaces.Box(-1, 1, (4, 5))
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stacked_observations = StackedObservations(NUM_ENVS, N_STACK, space, channels_order="first")
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observations_1 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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stacked_obs = stacked_observations.reset(observations_1)
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assert stacked_obs.shape == (NUM_ENVS, N_STACK * 4, 5)
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assert stacked_obs.dtype == space.dtype
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observations_2 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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dones = np.zeros((NUM_ENVS,), dtype=bool)
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infos = [{} for _ in range(NUM_ENVS)]
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stacked_obs, infos = stacked_observations.update(observations_2, dones, infos)
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assert stacked_obs.shape == (NUM_ENVS, N_STACK * 4, 5)
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assert stacked_obs.dtype == space.dtype
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assert np.array_equal(
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stacked_obs,
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np.concatenate((np.zeros_like(observations_1), np.zeros_like(observations_1), observations_1, observations_2), axis=1),
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)
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def test_reset_update_image_channel_first():
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space = spaces.Box(0, 255, (C, H, W), dtype=np.uint8)
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stacked_observations = StackedObservations(NUM_ENVS, N_STACK, space)
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observations_1 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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stacked_obs = stacked_observations.reset(observations_1)
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assert stacked_obs.shape == (NUM_ENVS, N_STACK * C, H, W)
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assert stacked_obs.dtype == space.dtype
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observations_2 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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dones = np.zeros((NUM_ENVS,), dtype=bool)
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infos = [{} for _ in range(NUM_ENVS)]
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stacked_obs, infos = stacked_observations.update(observations_2, dones, infos)
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assert stacked_obs.shape == (NUM_ENVS, N_STACK * C, H, W)
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assert stacked_obs.dtype == space.dtype
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assert np.array_equal(
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stacked_obs,
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np.concatenate((np.zeros_like(observations_1), np.zeros_like(observations_1), observations_1, observations_2), axis=1),
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)
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def test_reset_update_image_channel_last():
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space = spaces.Box(0, 255, (H, W, C), dtype=np.uint8)
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stacked_observations = StackedObservations(NUM_ENVS, N_STACK, space)
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observations_1 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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stacked_obs = stacked_observations.reset(observations_1)
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assert stacked_obs.shape == (NUM_ENVS, H, W, N_STACK * C)
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assert stacked_obs.dtype == space.dtype
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observations_2 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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dones = np.zeros((NUM_ENVS,), dtype=bool)
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infos = [{} for _ in range(NUM_ENVS)]
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stacked_obs, infos = stacked_observations.update(observations_2, dones, infos)
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assert stacked_obs.shape == (NUM_ENVS, H, W, N_STACK * C)
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assert stacked_obs.dtype == space.dtype
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assert np.array_equal(
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stacked_obs,
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np.concatenate(
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(np.zeros_like(observations_1), np.zeros_like(observations_1), observations_1, observations_2), axis=-1
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),
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)
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def test_reset_update_image_channel_first_stack_last():
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space = spaces.Box(0, 255, (C, H, W), dtype=np.uint8)
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stacked_observations = StackedObservations(NUM_ENVS, N_STACK, space, channels_order="last")
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observations_1 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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stacked_obs = stacked_observations.reset(observations_1)
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assert stacked_obs.shape == (NUM_ENVS, C, H, N_STACK * W)
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assert stacked_obs.dtype == space.dtype
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observations_2 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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dones = np.zeros((NUM_ENVS,), dtype=bool)
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infos = [{} for _ in range(NUM_ENVS)]
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stacked_obs, infos = stacked_observations.update(observations_2, dones, infos)
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assert stacked_obs.shape == (NUM_ENVS, C, H, N_STACK * W)
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assert stacked_obs.dtype == space.dtype
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assert np.array_equal(
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stacked_obs,
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np.concatenate(
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(np.zeros_like(observations_1), np.zeros_like(observations_1), observations_1, observations_2), axis=-1
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),
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)
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def test_reset_update_image_channel_last_stack_first():
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space = spaces.Box(0, 255, (H, W, C), dtype=np.uint8)
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stacked_observations = StackedObservations(NUM_ENVS, N_STACK, space, channels_order="first")
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observations_1 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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stacked_obs = stacked_observations.reset(observations_1)
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assert stacked_obs.shape == (NUM_ENVS, N_STACK * H, W, C)
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assert stacked_obs.dtype == space.dtype
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observations_2 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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dones = np.zeros((NUM_ENVS,), dtype=bool)
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infos = [{} for _ in range(NUM_ENVS)]
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stacked_obs, infos = stacked_observations.update(observations_2, dones, infos)
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assert stacked_obs.shape == (NUM_ENVS, N_STACK * H, W, C)
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assert stacked_obs.dtype == space.dtype
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assert np.array_equal(
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stacked_obs,
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np.concatenate((np.zeros_like(observations_1), np.zeros_like(observations_1), observations_1, observations_2), axis=1),
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)
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def test_reset_update_dict():
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space = spaces.Dict({"key1": spaces.Box(0, 255, (H, W, C), dtype=np.uint8), "key2": spaces.Box(-1, 1, (4, 5))})
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stacked_observations = StackedObservations(NUM_ENVS, N_STACK, space, channels_order={"key1": "first", "key2": "last"})
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observations_1 = {key: np.stack([subspace.sample() for _ in range(NUM_ENVS)]) for key, subspace in space.spaces.items()}
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stacked_obs = stacked_observations.reset(observations_1)
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assert isinstance(stacked_obs, dict)
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assert stacked_obs["key1"].shape == (NUM_ENVS, N_STACK * H, W, C)
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assert stacked_obs["key2"].shape == (NUM_ENVS, 4, N_STACK * 5)
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assert stacked_obs["key1"].dtype == space["key1"].dtype
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assert stacked_obs["key2"].dtype == space["key2"].dtype
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observations_2 = {key: np.stack([subspace.sample() for _ in range(NUM_ENVS)]) for key, subspace in space.spaces.items()}
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dones = np.zeros((NUM_ENVS,), dtype=bool)
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infos = [{} for _ in range(NUM_ENVS)]
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stacked_obs, infos = stacked_observations.update(observations_2, dones, infos)
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assert stacked_obs["key1"].shape == (NUM_ENVS, N_STACK * H, W, C)
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assert stacked_obs["key2"].shape == (NUM_ENVS, 4, N_STACK * 5)
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assert stacked_obs["key1"].dtype == space["key1"].dtype
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assert stacked_obs["key2"].dtype == space["key2"].dtype
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assert np.array_equal(
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stacked_obs["key1"],
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np.concatenate(
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(
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np.zeros_like(observations_1["key1"]),
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np.zeros_like(observations_1["key1"]),
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observations_1["key1"],
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observations_2["key1"],
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),
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axis=1,
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),
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)
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assert np.array_equal(
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stacked_obs["key2"],
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np.concatenate(
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(
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np.zeros_like(observations_1["key2"]),
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np.zeros_like(observations_1["key2"]),
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observations_1["key2"],
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observations_2["key2"],
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),
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axis=-1,
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),
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)
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def test_episode_termination_box():
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space = spaces.Box(-1, 1, (4,))
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stacked_observations = StackedObservations(NUM_ENVS, N_STACK, space)
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observations_1 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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stacked_observations.reset(observations_1)
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observations_2 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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dones = np.zeros((NUM_ENVS,), dtype=bool)
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infos = [{} for _ in range(NUM_ENVS)]
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stacked_observations.update(observations_2, dones, infos)
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terminal_observation = space.sample()
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infos[1]["terminal_observation"] = terminal_observation # episode termination in env1
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dones[1] = True
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observations_3 = np.stack([space.sample() for _ in range(NUM_ENVS)])
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stacked_obs, infos = stacked_observations.update(observations_3, dones, infos)
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zeros = np.zeros_like(observations_1[0])
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true_stacked_obs_env1 = np.concatenate((zeros, observations_1[0], observations_2[0], observations_3[0]), axis=-1)
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true_stacked_obs_env2 = np.concatenate((zeros, zeros, zeros, observations_3[1]), axis=-1)
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true_stacked_obs = np.stack((true_stacked_obs_env1, true_stacked_obs_env2))
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assert np.array_equal(true_stacked_obs, stacked_obs)
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def test_episode_termination_dict():
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space = spaces.Dict({"key1": spaces.Box(0, 255, (H, W, 3), dtype=np.uint8), "key2": spaces.Box(-1, 1, (4, 5))})
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stacked_observations = StackedObservations(NUM_ENVS, N_STACK, space, channels_order={"key1": "first", "key2": "last"})
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observations_1 = {key: np.stack([subspace.sample() for _ in range(NUM_ENVS)]) for key, subspace in space.spaces.items()}
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stacked_observations.reset(observations_1)
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observations_2 = {key: np.stack([subspace.sample() for _ in range(NUM_ENVS)]) for key, subspace in space.spaces.items()}
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dones = np.zeros((NUM_ENVS,), dtype=bool)
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infos = [{} for _ in range(NUM_ENVS)]
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stacked_observations.update(observations_2, dones, infos)
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terminal_observation = space.sample()
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infos[1]["terminal_observation"] = terminal_observation # episode termination in env1
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dones[1] = True
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observations_3 = {key: np.stack([subspace.sample() for _ in range(NUM_ENVS)]) for key, subspace in space.spaces.items()}
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stacked_obs, infos = stacked_observations.update(observations_3, dones, infos)
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for key, axis in zip(observations_1.keys(), [0, -1]):
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zeros = np.zeros_like(observations_1[key][0])
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true_stacked_obs_env1 = np.concatenate(
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(zeros, observations_1[key][0], observations_2[key][0], observations_3[key][0]), axis
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)
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true_stacked_obs_env2 = np.concatenate((zeros, zeros, zeros, observations_3[key][1]), axis)
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true_stacked_obs = np.stack((true_stacked_obs_env1, true_stacked_obs_env2))
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assert np.array_equal(true_stacked_obs, stacked_obs[key])
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