# base

numpy>=1.18.5,<1.27
scipy==1.10.1
matplotlib==3.7.1
scikit-learn==1.4.1.post1
six==1.16.0
Pillow==10.3.0
tqdm==4.66.4
statsmodels==0.14.2
pydub==0.25.1
resampy==0.4.3
ffmpeg-python==0.2.0
cma==3.3.0
pandas==2.2.2
librosa==0.10.1
numba~=0.56.4
opencv-python
sortedcontainers==2.4.0
h5py==3.10.0
multiprocess>=0.70.12

# frameworks

tensorflow==2.14.0
keras==2.14.0
tensorflow-addons>=0.13.0

# using mxnet-native for reproducible test results on CI machines without Intel Architecture Processors, but mxnet is fully supported by ART
mxnet-native==1.8.0.post0

# PyTorch
--find-links https://download.pytorch.org/whl/cpu/torch_stable.html
torch==2.2.1
torchaudio==2.2.1
torchvision==0.17.1+cpu

# PyTorch image transformers
timm==0.9.2

catboost==1.2.3
GPy==1.13.1
lightgbm==4.3.0
xgboost==2.1.1

kornia~=0.7.1
tensorboardX==2.6.2.2
lief==0.15.1
jax[cpu]==0.4.26

# lingvo==0.13.1

# tests and style checking
pytest~=8.3.2
pytest-mock~=3.14.0
pytest-cov~=5.0.0
pylint==3.2.6
mypy==1.11.1
pycodestyle==2.12.1
black==24.8.0
ruff==0.5.5
types-six==1.16.21.9
types-PyYAML==6.0.12.20240917
types-setuptools==71.1.0.20240726

# other
requests~=2.32.3
ultralytics==8.0.217
ipython==8.25.0

# ART
-e .

# NOTE to contributors: When changing/adding packages, please make sure that the packages are consistent with those
# present within the Dockerfile
