- 👷 Worker, a worker creates a task to run an experiment in background. It periodically sends out transitions between agent and environment, and fetches latest parameter.
- 📢 WorkerProxy, a worker proxy collects messages from/to workers on the same node so that some message data (model params) can be shared across different workers.
- 💿 TrajectoryManager, a trajectory manager is a wrapper around an
AbstractTrajectory
. It takes in a bulk of transitions and samples a batch of training data in respond to request. - 💡 Trainer, a trainer is a wrapper around an
AbstractPolicy
, it does nothing but to update its internal parameters when received a batch of training data and periodically broadcast its latest parameters. - ⏱️ Orchestrator, an orchestrator is in charge of controlling the start, stop and the speed of communications between the above components.
Note that:
- We adopt the actor model here. Each instance of the above components is an actor. Only messages are passing between them.
- A node is a process in Julia. Different nodes can be on one machine or across different machines.
- Tasks in different workers are initiated with
Threads.@spawn
. There's no direct communication between them by design. - In single node environment (
WorkerNode
andMainNode
are the same one), the WorkerProxy can be removed and workers communicate with Orchestrator directly.
- 1️⃣ (👷 → 📢)
InsertTransitionMsg
, contains the local transitions between agent and environment in an experiment. - 2️⃣ (📢 → ⏱️)
InsertTransitionMsg
from different workers. - 3️⃣ (⏱️ → 💿)
InsertTransitionMsg
andSampleBatchMsg
(which contains the address of Trainer). - 4️⃣ (💿 → 💡)
BatchTrainingDataMsg
- 5️⃣ (💡 → 💿)
UpdatePriorityMsg
, only necessary in prioritized experience replay related algorithms. - 6️⃣ (💡 → ⏱️)
LoadParamsMsg
, contains the latest parameters of the policy. - 7️⃣ (⏱️ → 📢)
LoadParamsMsg
- 8️⃣ (📢 → 👷)
LoadParamsMsg