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setup.py
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setup.py
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from setuptools import find_packages, setup
__version__ = "3.0.0b12"
long_description = """ManiSkill is a powerful unified framework for robot simulation and training powered by [SAPIEN](https://sapien.ucsd.edu/), with a strong focus on manipulation skills. The entire tech stack is as open-source as possible and ManiSkill v3 is in beta release now. Among its features include:
- GPU parallelized visual data collection system. On the high end you can collect RGBD + Segmentation data at 30,000+ FPS with a 4090 GPU, 10-1000x faster compared to most other simulators.
- GPU parallelized simulation, enabling high throughput state-based synthetic data collection in simulation
- GPU parallelized heteogeneous simuluation, where every parallel environment has a completely different scene/set of objects
- Example tasks cover a wide range of different robot embodiments (humanoids, mobile manipulators, single-arm robots) as well as a wide range of different tasks (table-top, drawing/cleaning, dextrous manipulation)
- Flexible and simple task building API that abstracts away much of the complex GPU memory management code via an object oriented design
- Real2sim environments for scalably evaluating real-world policies 60-100x faster via GPU simulation.
Please refer our [documentation](https://maniskill.readthedocs.io/en/latest) to learn more information."""
setup(
name="mani_skill",
version=__version__,
description="ManiSkill3: A Unified Benchmark for Generalizable Manipulation Skills",
long_description=long_description,
long_description_content_type="text/markdown",
author="ManiSkill contributors",
url="https://github.com/haosulab/ManiSkill",
packages=find_packages(include=["mani_skill*"]),
python_requires=">=3.9",
setup_requires=["setuptools>=62.3.0"],
install_requires=[
"numpy>=1.22,<2.0.0",
"scipy",
"dacite",
"gymnasium==0.29.1",
"sapien==3.0.0.b1",
"h5py",
"pyyaml",
"tqdm",
"GitPython",
"tabulate",
"transforms3d",
"trimesh",
"imageio",
"imageio[ffmpeg]",
"mplib==0.1.1;platform_system=='Linux'",
"fast_kinematics==0.2.2;platform_system=='Linux'",
"IPython",
"pytorch_kinematics==0.7.4",
"pynvml", # gpu monitoring
"tyro>=0.8.5", # nice, typed, command line arg parser
"huggingface_hub", # we use HF to version control some assets/datasets more easily
],
# Glob patterns do not automatically match dotfiles
package_data={
"mani_skill": ["assets/**", "envs/**/*", "utils/**/*"],
"warp_maniskill.warp": ["native/*", "native/nanovdb/*"],
},
extras_require={
"dev": [
"pytest",
"black",
"isort",
"pre-commit",
"build",
"twine",
"stable_baselines3",
"pynvml",
"pytest-xdist[psutil]",
"pytest-forked",
],
"docs": [
# Note that currently sphinx 7 does not work, so we must use v6.2.1. See https://github.com/kivy/kivy/issues/8230 which tracks this issue. Once fixed we can use a later version
"sphinx==6.2.1",
"sphinx-autobuild",
"pydata_sphinx_theme",
# For spelling
"sphinxcontrib.spelling",
# Type hints support
"sphinx-autodoc-typehints",
# Copy button for code snippets
"sphinx_copybutton",
# Markdown parser
"myst-parser",
"sphinx-subfigure",
"sphinxcontrib-video",
"sphinx-togglebutton",
"sphinx_design",
],
},
)