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Implementation:Google deepmind Dm control Viewer Launch

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Metadata Value
Implementation Viewer Launch
Domain Reinforcement_Learning, Physics_Simulation, Computer_Graphics
Source dm_control
Workflow Control_Suite_RL_Training
Last Updated 2026-02-15 00:00 GMT

Overview

Concrete tool for launching an interactive GUI window that renders a dm_control environment in real time and optionally executes a policy for visual evaluation.

Description

The viewer.launch function is the top-level entry point for the dm_control interactive viewer. It:

  1. Creates an application.Application instance with the specified window title, width, and height.
  2. Calls app.launch(environment_loader, policy) to open a GLFW window, create the OpenGL rendering context, and enter the main event loop.

The environment_loader parameter can be either:

  • A callable (zero-argument function) that returns a dm_control.rl.control.Environment. The viewer will call this to create or recreate the environment.
  • An existing environment instance, which the viewer wraps in a loader internally.

The optional policy parameter is a callable that accepts a dm_env.TimeStep and returns a numpy action array. When provided, the viewer runs the policy in the loop and displays the resulting behaviour. When None, the simulation runs with zero actions (or the user can apply manual perturbations).

The viewer window supports interactive controls: camera rotation and zoom via mouse, simulation pause/resume, single-stepping, and episode reset via keyboard shortcuts.

Usage

Use this implementation when:

  • You want to visually inspect a Control Suite environment or a custom dm_control environment.
  • You want to evaluate a trained policy qualitatively before running full quantitative benchmarks.
  • You are developing a new task and need to interactively verify physics behaviour.

Code Reference

Attribute Detail
Source Location dm_control/viewer/__init__.py:L22-40
Signature viewer.launch(environment_loader, policy=None, title='Explorer', width=1024, height=768)
Import from dm_control import viewer

I/O Contract

Inputs

Name Type Required Description
environment_loader callable or Environment Yes A callable returning a dm_control.rl.control.Environment, or an environment instance directly. Must not be None.
policy callable or None No A function policy(time_step) -> np.ndarray that selects actions. Default None (zero actions).
title str No Window title. Default "Explorer".
width int No Window width in pixels. Default 1024.
height int No Window height in pixels. Default 768.

Outputs

Name Type Description
return None The function blocks until the user closes the viewer window. It does not return a value.

Exceptions

Exception Condition
ValueError environment_loader is None.

Usage Examples

Launch viewer for a single environment:

from dm_control import suite
from dm_control import viewer

env = suite.load('cartpole', 'swingup')
viewer.launch(env)

Launch with an environment loader (recommended for reset support):

from dm_control import suite
from dm_control import viewer

def make_env():
    return suite.load('humanoid', 'walk')

viewer.launch(make_env)

Launch with a trained policy:

from dm_control import suite
from dm_control import viewer
import numpy as np

def make_env():
    return suite.load('cheetah', 'run')

def random_policy(time_step):
    del time_step  # unused
    return np.random.uniform(-1, 1, size=(6,))

viewer.launch(make_env, policy=random_policy, title='Cheetah Runner')

Launch with a custom window size:

from dm_control import suite
from dm_control import viewer

viewer.launch(
    environment_loader=lambda: suite.load('walker', 'walk'),
    title='Walker Viewer',
    width=1920,
    height=1080,
)

Launch with a neural network policy (pseudocode):

from dm_control import suite
from dm_control import viewer
import numpy as np

# Assume `trained_model` is a loaded neural network with a predict method
# trained_model = load_model('path/to/checkpoint')

def make_env():
    return suite.load('finger', 'spin')

def nn_policy(time_step):
    obs = np.concatenate([v.ravel() for v in time_step.observation.values()])
    return trained_model.predict(obs)

viewer.launch(make_env, policy=nn_policy, title='Finger Spin - Trained Agent')

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