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A Python wrapper for RLtools

Project description

TinyRL

A Python wrapper for RLtools (https://rl.tools). PyTorch is only used for its utils that allow convenient wrapping of C++ code to compile RLtools. The RLtools training code needs to be compiled at runtime because properties like the observation and action dimensions are not known at compile time. One of the fundamental principles of RLtools is that the sizes of all data structures and loops are known at compile-time so that the compiler can maximally reason about the code and heavily optimize it. Hence this wrapper takes an environment (Gymnasium interface) factory function as an input to infer the observation and action shapes and compile a bridge environment that is compatible with RLtools.

This wrapper is work in progress and for now just exposes the SAC training loop and does not allow much modification of hyperparameters etc. yet. Stay tuned.

Installation:

pip install tinyrl gymnasium

Example:

from tinyrl import SAC
import gymnasium as gym

seed = 0xf00d
def env_factory():
    env = gym.make("Pendulum-v1")
    env.reset(seed=seed)
    return env

sac = SAC(env_factory)
state = sac.State(seed)

finished = False
while not finished:
    finished = state.step()

Evaluating the Trained Policy

pip install gymnasium[classic-control]
env_replay = gym.make("Pendulum-v1", render_mode="human")

while True:
    observation, _ = env_replay.reset(seed=seed)
    finished = False
    while not finished:
        env_replay.render()
        action = state.action(observation)
        observation, reward, terminated, truncated, _ = env_replay.step(action)
        finished = terminated or truncated

Saving and Loading Checkpoints

# Save
with open("pendulum_sac_checkpoint.h", "w") as f:
    f.write(state.export_policy())
# Load
from tinyrl import load_checkpoint_from_path
policy = load_checkpoint_from_path("pendulum_sac_checkpoint.h")
action = policy.evaluate(observation) # Note that e.g. SAC's policies output mean and std (concatenated)

Custom C++ Enviroments

To get the maximum performance you should rewrite your environment in C++. Don't be scared it is actually quite straightforward and similar to creating a Gym environment. For an example of a custom pendulum environment see examples/custom_environment (just 105 lines of code).

Acceleration

On macOS TinyRL automatically uses Accelerate. To use MKL on linux you can install TinyRL with the mkl option:

pip install tinyrl[mkl]

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