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pyproject.toml
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pyproject.toml
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[build-system]
requires = ["setuptools>=40.8.0", "wheel"]
build-backend = "setuptools.build_meta"
[project]
name = "lm_eval"
version = "0.4.5"
authors = [
{name="EleutherAI", email="[email protected]"}
]
description = "A framework for evaluating language models"
readme = "README.md"
classifiers = [
"Development Status :: 3 - Alpha",
"Programming Language :: Python :: 3",
"License :: OSI Approved :: MIT License",
"Operating System :: OS Independent",
]
requires-python = ">=3.8"
license = { "text" = "MIT" }
dependencies = [
"accelerate>=0.26.0",
"evaluate",
"datasets>=2.16.0",
"evaluate>=0.4.0",
"jsonlines",
"numexpr",
"peft>=0.2.0",
"pybind11>=2.6.2",
"pytablewriter",
"rouge-score>=0.0.4",
"sacrebleu>=1.5.0",
"scikit-learn>=0.24.1",
"sqlitedict",
"torch>=1.8",
"tqdm-multiprocess",
"transformers>=4.1",
"zstandard",
"dill",
"word2number",
"more_itertools",
]
[tool.setuptools.packages.find]
include = ["lm_eval*"]
# required to include yaml files in pip installation
[tool.setuptools.package-data]
lm_eval = ["**/*.yaml", "tasks/**/*"]
[project.scripts]
lm-eval = "lm_eval.__main__:cli_evaluate"
lm_eval = "lm_eval.__main__:cli_evaluate"
[project.urls]
Homepage = "https://github.com/EleutherAI/lm-evaluation-harness"
Repository = "https://github.com/EleutherAI/lm-evaluation-harness"
[project.optional-dependencies]
api = ["requests", "aiohttp", "tenacity", "tqdm", "tiktoken"]
dev = ["pytest", "pytest-cov", "pytest-xdist", "pre-commit", "mypy"]
deepsparse = ["deepsparse-nightly[llm]>=1.8.0.20240404"]
gptq = ["auto-gptq[triton]>=0.6.0"]
hf_transfer = ["hf_transfer"]
ibm_watsonx_ai = ["ibm_watsonx_ai>=1.1.22"]
ifeval = ["langdetect", "immutabledict", "nltk>=3.9.1"]
neuronx = ["optimum[neuronx]"]
mamba = ["mamba_ssm", "causal-conv1d==1.0.2"]
math = ["sympy>=1.12", "antlr4-python3-runtime==4.11"]
multilingual = ["nagisa>=0.2.7", "jieba>=0.42.1", "pycountry"]
optimum = ["optimum[openvino]"]
promptsource = ["promptsource>=0.2.3"]
sentencepiece = ["sentencepiece>=0.1.98"]
sparseml = ["sparseml-nightly[llm]>=1.8.0.20240404"]
testing = ["pytest", "pytest-cov", "pytest-xdist"]
vllm = ["vllm>=0.4.2"]
zeno = ["pandas", "zeno-client"]
wandb = ["wandb>=0.16.3", "pandas", "numpy"]
gptqmodel = ["gptqmodel>=1.0.9"]
japanese_leaderboard = ["emoji==2.14.0", "neologdn==0.5.3", "fugashi[unidic-lite]", "rouge_score>=0.1.2"]
all = [
"lm_eval[anthropic]",
"lm_eval[dev]",
"lm_eval[deepsparse]",
"lm_eval[gptq]",
"lm_eval[hf_transfer]",
"lm_eval[ibm_watsonx_ai]",
"lm_eval[ifeval]",
"lm_eval[mamba]",
"lm_eval[math]",
"lm_eval[multilingual]",
"lm_eval[openai]",
"lm_eval[promptsource]",
"lm_eval[sentencepiece]",
"lm_eval[sparseml]",
"lm_eval[testing]",
"lm_eval[vllm]",
"lm_eval[zeno]",
"lm_eval[wandb]",
"lm_eval[japanese_leaderboard]",
]
[tool.ruff.lint]
extend-select = ["I"]
[tool.ruff.lint.isort]
lines-after-imports = 2
known-first-party = ["lm_eval"]
[tool.ruff.lint.extend-per-file-ignores]
"__init__.py" = ["F401","F402","F403"]
"utils.py" = ["F401"]