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setup.py
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setup.py
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import setuptools
import os
here = os.path.abspath(os.path.dirname(__file__))
with open("README.md", "r", encoding="UTF-8") as fh:
long_description = fh.read()
# Get the code version
version = {}
with open(os.path.join(here, "flaml/version.py")) as fp:
exec(fp.read(), version)
__version__ = version["__version__"]
install_requires = [
"NumPy>=1.17.0rc1",
"lightgbm>=2.3.1",
"xgboost>=0.90",
"scipy>=1.4.1",
"pandas>=1.1.4",
"scikit-learn>=0.24",
]
setuptools.setup(
name="FLAML",
version=__version__,
author="Microsoft Corporation",
author_email="[email protected]",
description="A fast library for automated machine learning and tuning",
long_description=long_description,
long_description_content_type="text/markdown",
url="https://github.com/microsoft/FLAML",
packages=setuptools.find_packages(include=["flaml*"]),
package_data={
"flaml.default": ["*/*.json"],
},
include_package_data=True,
install_requires=install_requires,
extras_require={
"notebook": [
"jupyter",
"matplotlib",
"openml==0.10.2",
],
"spark": [
"pyspark>=3.0.0",
"joblibspark>=0.5.0",
],
"test": [
"flake8>=3.8.4",
"thop",
"pytest>=6.1.1",
"coverage>=5.3",
"pre-commit",
"torch",
"torchvision",
"catboost>=0.26",
"rgf-python",
"optuna==2.8.0",
"openml==0.10.2",
"statsmodels>=0.12.2",
"psutil==5.8.0",
"dataclasses",
"transformers[torch]",
"datasets",
"nltk",
"rouge_score",
"hcrystalball==0.1.10",
"seqeval",
"pytorch-forecasting>=0.9.0,<=0.10.1",
"mlflow",
"pyspark>=3.0.0",
"joblibspark>=0.5.0",
"nbconvert",
"nbformat",
"ipykernel",
"pytorch-lightning<1.9.1", # test_forecast_panel
],
"catboost": ["catboost>=0.26"],
"blendsearch": ["optuna==2.8.0"],
"ray": [
"ray[tune]~=1.13",
],
"azureml": [
"azureml-mlflow",
],
"nni": [
"nni",
],
"vw": [
"vowpalwabbit>=8.10.0, <9.0.0",
],
"hf": [
"transformers[torch]==4.26",
"datasets",
"nltk",
"rouge_score",
"seqeval",
],
"nlp": [ # for backward compatibility; hf is the new option name
"transformers[torch]==4.26",
"datasets",
"nltk",
"rouge_score",
"seqeval",
],
"ts_forecast": [
"holidays<0.14", # to prevent installation error for prophet
"prophet>=1.0.1",
"statsmodels>=0.12.2",
"hcrystalball==0.1.10",
],
"forecast": [
"holidays<0.14", # to prevent installation error for prophet
"prophet>=1.0.1",
"statsmodels>=0.12.2",
"hcrystalball==0.1.10",
"pytorch-forecasting>=0.9.0",
],
"benchmark": ["catboost>=0.26", "psutil==5.8.0", "xgboost==1.3.3"],
"openai": ["openai==0.27.0", "diskcache", "optuna==2.8.0"],
"synapse": ["joblibspark>=0.5.0", "optuna==2.8.0", "pyspark>=3.0.0"],
},
classifiers=[
"Programming Language :: Python :: 3",
"License :: OSI Approved :: MIT License",
"Operating System :: OS Independent",
],
python_requires=">=3.6",
)