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Hyperparameter Tuning

CleanRL comes with a simple and practical hyperparameter tuning utility Tuner.

Get started

Create the following file:

tuner_example.py
from cleanrl_utils.tuner import Tuner
tuner = Tuner(
    script="cleanrl/ppo.py",
    metric="charts/episodic_return",
    metric_last_n_average_window=50,
    direction="maximize",
    aggregation_type="average",
    target_scores={
        "CartPole-v1": None,
    },
    params_fn=lambda trial: {
        "learning-rate": trial.suggest_loguniform("learning-rate", 0.0003, 0.003),
        "num-minibatches": trial.suggest_categorical("num-minibatches", [1, 2, 4]),
        "update-epochs": trial.suggest_categorical("update-epochs", [1, 2, 4]),
        "num-steps": trial.suggest_categorical("num-steps", [5, 16, 32, 64, 128]),
        "vf-coef": trial.suggest_uniform("vf-coef", 0, 5),
        "max-grad-norm": trial.suggest_uniform("max-grad-norm", 0, 5),
        "total-timesteps": 10000,
        "num-envs": 4,
    },
)
tuner.tune(
    num_trials=100,
    num_seeds=3,
)

Then you can run the tuner with

poetry install -E optuna
python tuner_example.py

Here is what happened:

  1. The tuner_example.py launches num_trials=100 trials to find the best single set of hyperparameters for CartPole-v1 in script="cleanrl/ppo.py".
  2. Each trial samples a set of hyperparameters from the params_fn to run num_seeds=3 experiments with different random seeds, mitigating the impact of randomness on the results.
    • In each experiment, tuner_example.py averages the last metric_last_n_average_window=50 reported metric="charts/episodic_return" to a number \(x_i\) and calculate a normalized score \(z_i\) according to the target_scores. We will talk more about target_scores which is useful when working with multiple environments in the next section, but in this section we just set None as the target score for CartPole-v1 — this means we will set the normalized score \(z_i = x_i\).
  3. Each trial then averages the normalized scores \(z_i\) of the num_seeds=3 experiments to a number \(z\) and the tuner optimizes \(z\) according direction="maximize".

Visualization

Running python tuner_example.py will create a sqlite database containing all of the hyperparameter trials in ./cleanrl_hpopt.db. We can use optuna-dashboard to visualize the process.

poetry run optuna-dashboard sqlite:///cleanrl_hpopt.db

You can use a different database by passing Tuner(..., storage="mysql://root@localhost/example") to use a more persistent storage.

Work w/ multiple environments

Often it is useful to find a single set of hyper parameters that work well with multiple environments, but this is challenging because each environment may have different reward scales, so we need to do normalization.

This is where target_scores comes in. We can use it to specify an upper and lower threshold of rewards for each environment (they don't have to be exact boundaries and can be just ballpark estimates). For example, if we want to find a set of hyper parameters that work well with CartPole-v1 and Acrobot-v1, we can set the target_scores and aggregation_type as follows:

tuner_example_multi_env.py
from cleanrl_utils.tuner import Tuner
tuner = Tuner(
    script="cleanrl/ppo.py",
    metric="charts/episodic_return",
    metric_last_n_average_window=50,
    direction="maximize",
    aggregation_type="average",
    target_scores={
        "CartPole-v1": [0, 500],
        "Acrobot-v1": [-500, 0],
    },
    params_fn=lambda trial: {
        "learning-rate": trial.suggest_loguniform("learning-rate", 0.0003, 0.003),
        "num-minibatches": trial.suggest_categorical("num-minibatches", [1, 2, 4]),
        "update-epochs": trial.suggest_categorical("update-epochs", [1, 2, 4]),
        "num-steps": trial.suggest_categorical("num-steps", [5, 16, 32, 64, 128]),
        "vf-coef": trial.suggest_uniform("vf-coef", 0, 5),
        "max-grad-norm": trial.suggest_uniform("max-grad-norm", 0, 5),
        "total-timesteps": 10000,
        "num-envs": 16,
    },
)
tuner.tune(
    num_trials=100,
    num_seeds=3,
)

Then each experiment will calculate the normalized scores \(z_{i_0} = (x_{i_0} - 0) / (500 - 0), z_{i_1} = (x_{i_1} - -500) / (0 - -500)\) and the tuner will aggregation_type="average" the two scores to get the normalized score \(z_i = (z_{i_0} + z_{i_1}) / 2\).

Note that we are using 3 random seeds for each environment in ["CartPole-v1","Acrobot-v1"], totalling 2*3=6 experiments per trial.

Info

When optimizing Atari games, you can put the human normalized scores in target_scores (Mnih et al., 2015, Extended Data Table 2)1, as done in the following example. The first number for each environment is the score obtained by random play and the second number is the score obtained by professional game testers.

tuner = Tuner(
    script="cleanrl/ppo_atari.py",
    metric="charts/episodic_return",
    metric_last_n_average_window=50,
    direction="maximize",
    aggregation_type="average",
    target_scores={
        "Alien-v5": [227.8, 6875],
        "Amidar-v5": [5.8, 1676],
        'Assault-v5': (222.4, 1496),
        'Asterix-v5': (210.0, 8503),
        'Asteroids-v5': (719.1, 13157),
        ...
    },
    ...
)

Work w/ pruners and samplers

You can use Tuner with any pruner from optuna to prune less promising experiments or samplers to sample new hyperparameters. If you don't specify them explicitly, the script will use the default ones.

tuner_example_pruner.py
import optuna
from cleanrl_utils.tuner import Tuner
tuner = Tuner(
    script="cleanrl/ppo.py",
    metric="charts/episodic_return",
    metric_last_n_average_window=50,
    direction="maximize",
    aggregation_type="average",
    target_scores={
        "CartPole-v1": [0, 500],
        "Acrobot-v1": [-500, 0],
    },
    params_fn=lambda trial: {
        "learning-rate": trial.suggest_loguniform("learning-rate", 0.0003, 0.003),
        "num-minibatches": trial.suggest_categorical("num-minibatches", [1, 2, 4]),
        "update-epochs": trial.suggest_categorical("update-epochs", [1, 2, 4]),
        "num-steps": trial.suggest_categorical("num-steps", [5, 16, 32, 64, 128]),
        "vf-coef": trial.suggest_uniform("vf-coef", 0, 5),
        "max-grad-norm": trial.suggest_uniform("max-grad-norm", 0, 5),
        "total-timesteps": 10000,
        "num-envs": 16,
    },
    pruner=optuna.pruners.MedianPruner(n_startup_trials=5),
    sampler=optuna.samplers.TPESampler(),
)
tuner.tune(
    num_trials=100,
    num_seeds=3,
)

Track experiments w/ Weights and Biases

The Tuner can track all the experiments into Weights and Biases to help you visualize the progress of the tuning.

tuner_example.py
import optuna
from cleanrl_utils.tuner import Tuner
tuner = Tuner(
    script="cleanrl/ppo.py",
    metric="charts/episodic_return",
    metric_last_n_average_window=50,
    direction="maximize",
    aggregation_type="average",
    target_scores={
        "CartPole-v1": [0, 500],
        "Acrobot-v1": [-500, 0],
    },
    params_fn=lambda trial: {
        "learning-rate": trial.suggest_loguniform("learning-rate", 0.0003, 0.003),
        "num-minibatches": trial.suggest_categorical("num-minibatches", [1, 2, 4]),
        "update-epochs": trial.suggest_categorical("update-epochs", [1, 2, 4]),
        "num-steps": trial.suggest_categorical("num-steps", [5, 16, 32, 64, 128]),
        "vf-coef": trial.suggest_uniform("vf-coef", 0, 5),
        "max-grad-norm": trial.suggest_uniform("max-grad-norm", 0, 5),
        "total-timesteps": 10000,
        "num-envs": 16,
    },
    pruner=optuna.pruners.MedianPruner(n_startup_trials=5),
    sampler=optuna.samplers.TPESampler(),
    wandb_kwargs={"project": "cleanrl"},
)
tuner.tune(
    num_trials=100,
    num_seeds=3,
)

  1. Mnih, V., Kavukcuoglu, K., Silver, D. et al. Human-level control through deep reinforcement learning. Nature 518, 529–533 (2015). https://doi.org/10.1038/nature14236