|  View source on GitHub | 
Returns a Trajectory given transitions.
tf_agents.trajectories.from_transition(
    time_step: tf_agents.trajectories.TimeStep,
    action_step: tf_agents.trajectories.PolicyStep,
    next_time_step: tf_agents.trajectories.TimeStep
) -> tf_agents.trajectories.Trajectory
Used in the notebooks
| Used in the tutorials | 
|---|
from_transition is used by a driver to convert sequence of transitions into
a Trajectory for efficient storage. Then an agent (e.g.
ppo_agent.PPOAgent) converts it back to transitions by invoking
to_transition.
Note that this method does not add a time dimension to the Tensors in the
resulting Trajectory. This means that if your transitions don't already
include a time dimension, the Trajectory cannot be passed to
agent.train().
| Args | |
|---|---|
| time_step | A time_step.TimeSteprepresenting the first step in a
transition. | 
| action_step | A policy_step.PolicySteprepresenting actions corresponding
to observations from time_step. | 
| next_time_step | A time_step.TimeSteprepresenting the second step in a
transition. |