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add-functor
Use when adding a new observation, event, reward, action, dataset, or randomization functor to an EmbodiChain environment
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
メニュー
Use when adding a new observation, event, reward, action, dataset, or randomization functor to an EmbodiChain environment
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
SOC 職業分類に基づく
Use when writing tests for EmbodiChain modules, including observation functors, reward functors, solvers, sensors, environments, or any Python module
Use when adding a new simulation atomic action or motion primitive to EmbodiChain's AtomicActionEngine.
Use when a request asks to reference, refresh, write, or register project development context so the agent resolves the topic through agent_context/MAP.yaml and reads or updates the mapped Markdown context files.
Use when adding a new robot to EmbodiChain — scaffolds a RobotCfg subclass (single-file or package layout) with the _build_defaults hook, build_pk_serial_chain, registration, docs page, and test stub.
Claude adapter for the canonical EmbodiChain add-robot skill.
Claude adapter for the canonical EmbodiChain release skill.
| name | add-functor |
| description | Use when adding a new observation, event, reward, action, dataset, or randomization functor to an EmbodiChain environment |
Scaffold a new functor following EmbodiChain's Functor/FunctorCfg pattern.
| Functor Type | Config Class | Module File | Manager | Signature |
|---|---|---|---|---|
| Observation | ObservationCfg (extends FunctorCfg) | managers/observations.py | ObservationManager | (env, obs, entity_cfg, ...) -> Tensor |
| Reward | RewardCfg (extends FunctorCfg) | managers/rewards.py | RewardManager | (env, obs, action, info, ...) -> Tensor |
| Event | EventCfg (extends FunctorCfg) | managers/events.py | EventManager | (env, env_ids, ...) -> None |
| Action | ActionTermCfg (extends FunctorCfg) | managers/actions.py | ActionManager | Varies |
| Dataset | DatasetFunctorCfg (extends FunctorCfg) | managers/datasets.py | DatasetManager | (env, ...) -> dict |
| Randomization | EventCfg (randomizations ARE events) | managers/randomization/<type>.py | EventManager | (env, env_ids, entity_cfg, ...) -> None |
A plain function with the right signature. Registered via FunctorCfg(func=my_function, params={...}).
def my_reward(
env: EmbodiedEnv,
obs: dict,
action: EnvAction,
info: dict,
my_param: float = 1.0, # params become keyword args
) -> torch.Tensor:
"""Short one-line summary.
Longer description if needed.
Args:
env: The environment instance.
obs: The observation dictionary.
action: The action taken.
info: The info dictionary.
my_param: Description of this parameter.
Returns:
Reward tensor of shape (num_envs,).
"""
# implementation
return result
A class inheriting Functor, with __init__(cfg, env) and __call__(env, ...). Registered via FunctorCfg(func=MyClass, params={...}).
class my_randomizer(Functor):
"""One-line summary."""
def __init__(self, cfg: FunctorCfg, env: EmbodiedEnv):
super().__init__(cfg, env)
# Extract params and initialize state
self.entity_cfg: SceneEntityCfg = cfg.params["entity_cfg"]
def __call__(self, env: EmbodiedEnv, env_ids: torch.Tensor, **kwargs):
"""Apply the randomization.
Args:
env: The environment instance.
env_ids: Target environment IDs.
"""
# implementation
Ask the user:
Place the functor in the existing module for its type:
| Type | File |
|---|---|
| Observation | embodichain/lab/gym/envs/managers/observations.py |
| Reward | embodichain/lab/gym/envs/managers/rewards.py |
| Event | embodichain/lab/gym/envs/managers/events.py |
| Action | embodichain/lab/gym/envs/managers/actions.py |
| Dataset | embodichain/lab/gym/envs/managers/datasets.py |
| Physics randomization | embodichain/lab/gym/envs/managers/randomization/physics.py |
| Visual randomization | embodichain/lab/gym/envs/managers/randomization/visual.py |
| Spatial randomization | embodichain/lab/gym/envs/managers/randomization/spatial.py |
| Geometry randomization | embodichain/lab/gym/envs/managers/randomization/geometry.py |
Follow the template for function-style or class-style (see above).
Key rules:
env: EmbodiedEnv (use TYPE_CHECKING guard for the import)from __future__ import annotations at the topSceneEntityCfg for entity references, not raw stringsshape key to FunctorCfg.extra dictenv_ids: torch.Tensor | list[int](num_envs,)__all__Add the new functor to the module's __all__ list. If no __all__ exists, create one.
Place at tests/gym/envs/managers/test_<functor_type>.py (append to existing file if present).
For functors that don't need a live simulation, use mock objects (MockEnv, MockSim, etc.) following the pattern in tests/gym/envs/managers/test_reward_functors.py.
blackblack embodichain/lab/gym/envs/managers/<module>.py
black tests/gym/envs/managers/test_<functor_type>.py
| Mistake | Fix |
|---|---|
| Wrong first argument signature | Observation: (env, obs, ...), Reward: (env, obs, action, info, ...), Event/Randomization: (env, env_ids, ...) |
Importing EmbodiedEnv at module level | Use TYPE_CHECKING guard to avoid circular imports |
Forgetting SceneEntityCfg for entity refs | Always use SceneEntityCfg(uid="...") not bare strings |
| Returning wrong tensor shape | Rewards must return (num_envs,), observations must match declared shape |
Missing from __future__ import annotations | Required in every file |
Class-style functor not calling super().__init__ | Always call super().__init__(cfg, env) |
| Adding randomizer as standalone | Randomizations ARE events — they go in randomization/ but use EventCfg |
| Step | Action |
|---|---|
| 1 | Identify manager type + function vs class style |
| 2 | Write functor in the correct module file |
| 3 | Update __all__ in that module |
| 4 | Write test with mocks (no sim needed for most) |
| 5 | Run black on changed files |