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flybody: fruit fly body model for MuJoCo physics

preprint

pytest workflow python versions lint tf

flybody is an anatomically-detailed body model of the fruit fly Drosophila melanogaster for MuJoCo physics simulator and reinforcement learning applications.

The fly model was developed in a collaborative effort by Google DeepMind and HHMI Janelia Research Campus.

We envision our model as a platform for fruit fly biophysics simulations and for modeling neural control of sensorimotor behavior in an embodied context; see our accompanying publication.

Getting Started

The fruit fly body model lives in this directory. To visualize it, you can drag-and-drop fruitfly.xml or floor.xml to MuJoCo's simulate viewer.

Interacting with the fly via Python is as simple as:

import numpy as np
import mediapy

from flybody.fly_envs import walk_imitation

# Create walking imitation environment.
env = walk_imitation()

# Run environment loop with random actions for a bit.
for _ in range(100):
   action = np.random.normal(size=59)  # 59 is the walking action dimension.
   timestep = env.step(action)

# Generate a pretty image.
pixels = env.physics.render(camera_id=1)
mediapy.show_image(pixels)

The quickest way to get started with flybody is to take a look at a tutorial notebook or Open In Colab.

Also, this notebook shows examples of the flight, walking, and vision-guided flight RL task environments.

To train the fly, try the distributed RL training script, which uses Ray to parallelize the DMPO agent training.

Installation

Follow these steps to install flybody:

Option 1: Installation from cloned local repo

  1. Clone this repo and create a new conda environment:

    git clone https://github.com/TuragaLab/flybody.git
    cd flybody
    conda create --name flybody -c conda-forge python=3.10 pip ipython cudatoolkit=11.8.0
    conda activate flybody

    flybody can be installed in one of the three modes described next. Also, for installation in editable (developer) mode, use the commands as shown. For installation in regular, not editable, mode, drop the -e flag.

  2. Core installation: minimal installation for experimenting with the fly model in MuJoCo or prototyping task environments. ML dependencies such as Tensorflow and Acme are not included and policy rollouts and training are not automatically supported.

    pip install -e .
  3. ML extension (optional): same as core installation, plus ML dependencies (Tensorflow, Acme) to allow running policy networks, e.g. for inference or for training using third-party agents not included in this library.

    pip install -e .[tf]
  4. Ray training extension (optional): same as core installation and ML extension, plus Ray to also enable distributed policy training in the fly task environments.

    pip install -e .[ray]

Option 2: Installation from remote repo

  1. Create a new conda environment:
    conda create --name flybody -c conda-forge python=3.10 pip ipython cudatoolkit=11.8.0
    conda activate flybody
    Proceed with installation in one of the three modes (described above):
  2. Core installation:
    pip install git+https://github.com/TuragaLab/flybody.git
  3. ML extension (optional):
    pip install "flybody[tf] @ git+https://github.com/TuragaLab/flybody.git"
  4. Ray training extension (optional):
    pip install "flybody[ray] @ git+https://github.com/TuragaLab/flybody.git"

Additional configuring

  1. You may need to set MuJoCo rendering environment varibles, e.g.:

    export MUJOCO_GL=egl
    export MUJOCO_EGL_DEVICE_ID=0
  2. Also, for the ML and Ray extensions, LD_LIBRARY_PATH may require an update, e.g.:

    export LD_LIBRARY_PATH=$LD_LIBRARY_PATH:/your/path/to/miniconda3/envs/flybody/lib
  3. You may want to run pytest to test the main components of the flybody installation.

Citing flybody

See our accompanying publication. Thank you for your interest in our fly model:)

@article{flybody,
  title = {Whole-body simulation of realistic fruit fly locomotion with
           deep reinforcement learning},
  author = {Roman Vaxenburg and Igor Siwanowicz and Josh Merel and Alice A Robie and
            Carmen Morrow and Guido Novati and Zinovia Stefanidi and Gwyneth M Card and
            Michael B Reiser and Matthew M Botvinick and Kristin M Branson and
            Yuval Tassa and Srinivas C Turaga},
  journal = {bioRxiv},
  doi = {https://doi.org/10.1101/2024.03.11.584515},
  url = {https://www.biorxiv.org/content/10.1101/2024.03.11.584515},
  year = {2024},
}

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