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pyproject.toml
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pyproject.toml
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[project]
name = "skforecast"
version = "0.12.1"
description="Forecasting time series with scikit-learn regressors. It also works with any regressor compatible with the scikit-learn API (pipelines, CatBoost, LightGBM, XGBoost, Ranger...)."
readme = "README.md"
authors = [
{ name = "Joaquin Amat Rodrigo", email = "[email protected]" },
{ name = "Javier Escobar Ortiz", email = "[email protected]" }
]
maintainers = [
{ name = "Joaquin Amat Rodrigo", email = "[email protected]" },
{ name = "Javier Escobar Ortiz", email = "[email protected]" }
]
classifiers = [
"Programming Language :: Python :: 3",
"Programming Language :: Python :: 3.8",
"Programming Language :: Python :: 3.9",
"Programming Language :: Python :: 3.10",
"Programming Language :: Python :: 3.11",
"License :: OSI Approved :: BSD License"
]
keywords = [
"data-science",
"machine-learning",
"data-mining",
"time-series",
"scikit-learn",
"forecasting",
"time-series-analysis",
"time-series-regression",
]
dependencies = [
"numpy>=1.20, <1.27",
"pandas>=1.2, <2.3",
"tqdm>=4.57, <4.67",
"scikit-learn>=1.2, <1.5",
"optuna>=2.10, <3.7",
"joblib>=1.1, <1.5",
]
requires-python = ">=3.8"
[project.optional-dependencies]
sarimax = [
"pmdarima>=2.0, <2.1",
"statsmodels>=0.12, <0.15",
]
deeplearning = [
"matplotlib>=3.3, <3.9",
"tensorflow>=2.13, <2.16",
]
plotting = [
"matplotlib>=3.3, <3.9",
"seaborn>=0.11, <0.14",
"statsmodels>=0.12, <0.15",
]
all = [
"pmdarima>=2.0, <2.1",
"matplotlib>=3.3, <3.9",
"seaborn>=0.11, <0.14",
"statsmodels>=0.12, <0.15",
"tensorflow>=2.13, <2.16",
]
full = [
"pmdarima>=2.0, <2.1",
"matplotlib>=3.3, <3.9",
"seaborn>=0.11, <0.14",
"statsmodels>=0.12, <0.15",
"tensorflow>=2.13, <2.16",
]
docs = [
"mike==1.1.2",
"mkdocs==1.4.3",
"mkdocs-jupyter==0.24.1",
"mkdocs-material==9.1.15",
"mkdocstrings==0.22.0",
"mkdocstrings-python==1.1.0",
"jupyter-contrib-nbextensions==0.7.0",
]
test = [
"pytest>=7.1, <8.2",
"pytest-cov>=4.0, <5.1",
"pytest-xdist>=3.3, <3.6",
"lightgbm>=4.0, <4.4",
"tomli>=2.0, <2.1"
]
[project.urls]
Homepage = "https://www.skforecast.org"
Repository = "https://github.com/JoaquinAmatRodrigo/skforecast"
Documentation = "https://www.skforecast.org"
"Release Notes" = "https://skforecast.org/latest/releases/releases"
[project.license]
file = "LICENSE"
[build-system]
requires = ["setuptools>=61", "toml", "build"]
build-backend = "setuptools.build_meta"
[tool.setuptools.packages.find]
include = ["skforecast", "skforecast*"]
exclude = ["skforecast/**/tests/*"]