multiworld
Multitask Environments for RL
Basic Usage
This library contains a variety of gym GoalEnv
s.
As a running example, let's say we have a CarEnv
.
Like normal gym envs, we can do
env = CarEnv()
obs = env.reset()
next_obs, reward, done, info = env.step(action)
Unlike Env
s, the observation space of GoalEnv
s is a dictionary.
print(obs)
# Output:
# {
# 'observation': ...,
# 'desired_goal': ...,
# 'achieved_goal': ...,
# }
This can make it rather difficult to use these envs with existing RL code, which usually expects a flat vector. Hence, we include a wrapper that converts this dictionary-observation env into a normal "flat" environment:
base_env = CarEnv()
env = FlatGoalEnv(base_env, obs_key='observation')
obs = env.reset() # returns vector in 'observation' key
action = policy_that_takes_in_vector(obs)
The observation space of FlatGoalEnv will be the corresponding env of the vector
(e.g. gym.space.Box
).
However, the goal is not part of the observation!
Not giving the goal to the policy might make the task impossible.
We provide two possible solutions to this:
(1) Use the get_goal
function
base_env = CarEnv()
env = FlatGoalEnv(base_env, obs_key='observation')
obs = env.reset() # returns just the 'observation'
goal = env.get_goal()
action = policy_that_takes_in_two_vectors(obs, goal)
(2) Set
append_goal_to_obs
to True
.
base_env = CarEnv()
env = FlatGoalEnv(
base_env,
append_goal_to_obs=True, # default value is False
)
obs = env.reset() # returns 'observation' concatenated to `desired_goal`
action = policy_that_takes_in_vector(obs)
Registered environments
This repository comes with a number of environments that are ready to be
loaded via the gym.make
interface. To do so, they must first be registered:
import multiworld
import gym
multiworld.register_all_envs()
env = gym.make('SawyerPushNIPSEasy-v0')
Extending Obs/Goals - Debugging and Multi-Modality
One nice thing about using Dict spaces + FlatGoalEnv is that it makes it really easy to extend and debug.
For example, this repo includes an ImageMujocoEnv
wrapper which converts
the observation space of a Mujoco GoalEnv into images.
Rather than completely overwriting observation
, we simply append the
images to the dictionary:
base_env = CarEnv()
env = ImageEnv(base_env)
obs = env.reset()
print(obs)
# Output:
# {
# 'observation': ...,
# 'desired_goal': ...,
# 'achieved_goal': ...,
# 'image_observation': ...,
# 'image_desired_goal': ...,
# 'image_achieved_goal': ...,
# 'state_observation': ..., # CarEnv sets these values by default
# 'state_desired_goal': ...,
# 'state_achieved_goal': ...,
# }
This makes it really easy to debug your environment, by e.g. using state-based observation but image-based goals:
base_env = CarEnv()
wrapped_env = ImageEnv(base_env)
env = FlatGoalEnv(
base_env,
obs_key='state_observation',
goal_key='image_desired_goal',
)
It also makes multi-model environments really easy to write!
base_env = CarEnv()
wrapped_env = ImageEnv(base_env)
wrapped_env = LidarEnv(wrapped_env)
wrapped_env = LanguageEnv(wrapped_env)
env = FlatGoalEnv(
base_env,
obs_key=['image_observation', 'lidar_observation'],
goal_key=['language_desired_goal', 'image_desired_goal'],
)
obs = env.reset() # image + lidar observation
goal = env.get_goal() # language + image goal
Note that you don't have to use FlatGoalEnv: you can always just use the environments manually choose the keys that you care about from the observation.
compute_reward
incompatibility
WARNING: The compute_reward
interface is slightly different from gym's.
Rather than compute_reward(desired_goal, achieved_goal, info)
our interface is
compute_reward(action, observation)
, where the observation is a dictionary.
Environments
In order to be able to reproduce results as environments change across time, we have the following set of registered environments:
SawyerReachXYEnv-v1
: A MuJoCo environment with a 7-DoF Sawyer arm reaching goal positions. The end-effector (EE) is constrained to a 2-dimensional rectangle parallel to a table. The action controls EE position through the use of a mocap. The state is the XY position of the EE and the goal is an XY position of the EE.
SawyerPushAndReachEnvEasy-v0
, SawyerPushAndReachEnvMedium-v0
, and SawyerPushAndReachEnvHard-v0
: A MuJoCo environment with a 7-DoF Sawyer arm and a small puck on a table that the arm must push to a target position. Control is the same as in SawyerReachXYEnv-v1
. The state is the XY position of the EE and the XY position of the puck and the goal is an XY position of the EE and an XY position of the puck. The end effector is constrained to only move in the XY plane. Note, these environments are primarily for debugging purposes.
SawyerPushAndReachArenaEnv-v0
, SawyerPushAndReachArenaResetFreeEnv-v0
, SawyerPushAndReachSmallArenaEnv-v0
, and SawyerPushAndReachSmallArenaResetFreeEnv-v0
: These environments are the exact same as the pushing environments described above with three key differences: 1) the environment is now contained within an arena 2) the environments can be reset free meaning they do not reset the puck position on calls to env.reset()
3) the puck position is not clamped to be within the arena. These are the more realistic versions of the pushing environments and should be used for official results.
SawyerDoorHookEnv-v0
, and SawyerDoorHookResetFreeEnv-v0
: A MuJoCo environment with a 7-DoF Sawyer arm with a hook on the end effector and a door with a handle. Control is the same as in SawyerReachXYEnv-v1
. The state is the XY position of the EE and the angle of the door and the goal is an XY position of the EE and an angle of the door. The end effector can move in XYZ. In this environment, reset free means that neither the door nor the hand are reset to their initial position on calls to env.reset()
. Note for this environment, it is recommended to use pre-sampled goals for vision-based tasks since it is not possible to execute set_to_goal
for many sampled goal positions.
Extra features
fixed_goal
The environments also all taken in fixed_goal
as a parameter, which disables
resampling the goal each time reset
is called. This can be useful for
debugging: first make sure the env can solve the single-goal case before trying
the multi-goal case.
get_diagnostics
The function get_diagonstics(rollouts)
returns an OrderedDict
of potentially
useful numbers to plot/log.
rollouts
is a list. Each element of the list should be a dictionary describing
a rollout. A dictionary should have the following keys with the corresponding
values:
{
'observations': np array,
'actions': np array,
'next_observations': np array,
'rewards': np array,
'terminals': np array,
'env_infos': list of dictionaries returned by step(),
}
Credit
Primary developers: Vitchyr Pong, Murtaza Dalal, Steven Lin, and Ashvin Nair.
Acknowledgements
Sawyer MuJoCo Models: Vikash Kumar under Apache-2.0 License