RLlib Training APIs =================== Getting Started --------------- At a high level, RLlib provides an ``Agent`` class which holds a policy for environment interaction. Through the agent interface, the policy can be trained, checkpointed, or an action computed. .. image:: rllib-api.svg You can train a simple DQN agent with the following command .. code-block:: bash python ray/python/ray/rllib/train.py --run DQN --env CartPole-v0 By default, the results will be logged to a subdirectory of ``~/ray_results``. This subdirectory will contain a file ``params.json`` which contains the hyperparameters, a file ``result.json`` which contains a training summary for each episode and a TensorBoard file that can be used to visualize training process with TensorBoard by running .. code-block:: bash tensorboard --logdir=~/ray_results The ``train.py`` script has a number of options you can show by running .. code-block:: bash python ray/python/ray/rllib/train.py --help The most important options are for choosing the environment with ``--env`` (any OpenAI gym environment including ones registered by the user can be used) and for choosing the algorithm with ``--run`` (available options are ``PPO``, ``PG``, ``A2C``, ``A3C``, ``IMPALA``, ``ES``, ``DDPG``, ``DQN``, ``APEX``, and ``APEX_DDPG``). Specifying Parameters ~~~~~~~~~~~~~~~~~~~~~ Each algorithm has specific hyperparameters that can be set with ``--config``, in addition to a number of `common hyperparameters `__. See the `algorithms documentation `__ for more information. In an example below, we train A2C by specifying 8 workers through the config flag. We also set ``"monitor": true`` to save episode videos to the result dir: .. code-block:: bash python ray/python/ray/rllib/train.py --env=PongDeterministic-v4 \ --run=A2C --config '{"num_workers": 8, "monitor": true}' .. image:: rllib-config.svg Specifying Resources ~~~~~~~~~~~~~~~~~~~~ You can control the degree of parallelism used by setting the ``num_workers`` hyperparameter for most agents. Many agents also provide a ``num_gpus`` or ``gpu`` option. In addition, you can allocate a fraction of a GPU by setting ``gpu_fraction: f``. For example, with DQN you can pack five agents onto one GPU by setting ``gpu_fraction: 0.2``. Note that fractional GPU support requires enabling the experimental Xray backend by setting the environment variable ``RAY_USE_XRAY=1``. >>>>>>> 01b030bd57f014386aa5e4c67a2e069938528abb Evaluating Trained Agents ~~~~~~~~~~~~~~~~~~~~~~~~~ In order to save checkpoints from which to evaluate agents, set ``--checkpoint-freq`` (number of training iterations between checkpoints) when running ``train.py``. An example of evaluating a previously trained DQN agent is as follows: .. code-block:: bash python ray/python/ray/rllib/rollout.py \ ~/ray_results/default/DQN_CartPole-v0_0upjmdgr0/checkpoint-1 \ --run DQN --env CartPole-v0 The ``rollout.py`` helper script reconstructs a DQN agent from the checkpoint located at ``~/ray_results/default/DQN_CartPole-v0_0upjmdgr0/checkpoint-1`` and renders its behavior in the environment specified by ``--env``. Tuned Examples ~~~~~~~~~~~~~~ Some good hyperparameters and settings are available in `the repository `__ (some of them are tuned to run on GPUs). If you find better settings or tune an algorithm on a different domain, consider submitting a Pull Request! You can run these with the ``train.py`` script as follows: .. code-block:: bash python ray/python/ray/rllib/train.py -f /path/to/tuned/example.yaml Python API ---------- The Python API provides the needed flexibility for applying RLlib to new problems. You will need to use this API if you wish to use custom environments, preprocesors, or models with RLlib. Here is an example of the basic usage: .. code-block:: python import ray import ray.rllib.agents.ppo as ppo from ray.tune.logger import pretty_print ray.init() config = ppo.DEFAULT_CONFIG.copy() config["num_gpus"] = 0 config["num_workers"] = 1 agent = ppo.PPOAgent(config=config, env="CartPole-v0") # Can optionally call agent.restore(path) to load a checkpoint. for i in range(1000): # Perform one iteration of training the policy with PPO result = agent.train() print(pretty_print(result)) if i % 100 == 0: checkpoint = agent.save() print("checkpoint saved at", checkpoint) .. note:: It's recommended that you run RLlib agents with `Tune `__, for easy experiment management and visualization of results. Just set ``"run": AGENT_NAME, "env": ENV_NAME`` in the experiment config. All RLlib agents are compatible with the `Tune API `__. This enables them to be easily used in experiments with `Tune `__. For example, the following code performs a simple hyperparam sweep of PPO: .. code-block:: python import ray import ray.tune as tune ray.init() tune.run_experiments({ "my_experiment": { "run": "PPO", "env": "CartPole-v0", "stop": {"episode_reward_mean": 200}, "config": { "num_gpus": 0, "num_workers": 1, "sgd_stepsize": tune.grid_search([0.01, 0.001, 0.0001]), }, }, }) Tune will schedule the trials to run in parallel on your Ray cluster: :: == Status == Using FIFO scheduling algorithm. Resources requested: 4/4 CPUs, 0/0 GPUs Result logdir: /home/eric/ray_results/my_experiment PENDING trials: - PPO_CartPole-v0_2_sgd_stepsize=0.0001: PENDING RUNNING trials: - PPO_CartPole-v0_0_sgd_stepsize=0.01: RUNNING [pid=21940], 16 s, 4013 ts, 22 rew - PPO_CartPole-v0_1_sgd_stepsize=0.001: RUNNING [pid=21942], 27 s, 8111 ts, 54.7 rew Accessing Policy State ~~~~~~~~~~~~~~~~~~~~~~ It is common to need to access an agent's internal state, e.g., to set or get internal weights. In RLlib an agent's state is replicated across multiple *policy evaluators* (Ray actors) in the cluster. However, you can easily get and update this state between calls to ``train()`` via ``agent.optimizer.foreach_evaluator()`` or ``agent.optimizer.foreach_evaluator_with_index()``. These functions take a lambda function that is applied with the evaluator as an arg. You can also return values from these functions and those will be returned as a list. You can also access just the "master" copy of the agent state through ``agent.local_evaluator``, but note that updates here may not be immediately reflected in remote replicas if you have configured ``num_workers > 0``. For example, to access the weights of a local TF policy, you can run ``agent.local_evaluator.policy_map["default"].get_weights()``. This is also equivalent to ``agent.local_evaluator.for_policy(lambda p: p.get_weights())``: .. code-block:: python # Get weights of the local policy agent.local_evaluator.policy_map["default"].get_weights() # Same as above agent.local_evaluator.for_policy(lambda p: p.get_weights()) # Get list of weights of each evaluator, including remote replicas agent.optimizer.foreach_evaluator( lambda ev: ev.for_policy(lambda p: p.get_weights())) # Same as above agent.optimizer.foreach_evaluator_with_index( lambda ev, i: ev.for_policy(lambda p: p.get_weights())) REST API -------- In some cases (i.e., when interacting with an external environment) it makes more sense to interact with RLlib as if were an independently running service, rather than RLlib hosting the simulations itself. This is possible via RLlib's serving env `interface `__. .. autoclass:: ray.rllib.utils.policy_client.PolicyClient :members: .. autoclass:: ray.rllib.utils.policy_server.PolicyServer :members: For a full client / server example that you can run, see the example `client script `__ and also the corresponding `server script `__, here configured to serve a policy for the toy CartPole-v0 environment.