Ycarus Gentoo ebuild

zGentoo

Ces ebuilds viennent du site .

Si vous avez des problemes allez sur le site officiel.

sci-ml

caffe2-cuda : A deep learning framework (CUDA backend) ( https://pytorch.org/ )

caffe2-rocm : A deep learning framework (ROCm backend) ( https://pytorch.org/ )

ik_llama-cpp : llama.cpp fork with additional SOTA quants and improved performance ( https://github.com/ikawrakow/ik_llama.cpp )

llama-cpp : LLM inference in C/C++ (GGML/GGUF) — CPU + optional GPU backends ( https://github.com/ggml-org/llama.cpp )

ollama : Get up and running with large language models. ( https://ollama.com )

pytorch-cuda : Tensors and Dynamic neural networks in Python (CUDA backend) ( https://pytorch.org/ )

pytorch-rocm : Tensors and Dynamic neural networks in Python (ROCm backend) ( https://pytorch.org/ )

segment-anything : Meta AI Segment Anything Model (SAM) ( https://github.com/facebookresearch/segment-anything )

stable-diffusion-cpp : Diffusion model(SD,Flux,Wan,Qwen Image,Z-Image,...) inference in pure C/C++ ( https://github.com/leejet/stable-diffusion.cpp )

torchaudio-cuda : Audio processing for PyTorch (CUDA backend) ( https://github.com/pytorch/audio )

torchaudio-rocm : Audio processing for PyTorch (ROCm backend) ( https://github.com/pytorch/audio )

torchvision-cuda : Datasets, transforms and models for computer vision (CUDA backend) ( https://github.com/pytorch/vision )

torchvision-rocm : Datasets, transforms and models for computer vision (ROCm backend) ( https://github.com/pytorch/vision )

ultralytics : Ultralytics YOLO — object detection, segmentation, classification ( https://github.com/ultralytics/ultralytics )

Pour rajouter une e-build dans l'arbre de portage :

L'ebuild est alors rajouté dans l'arbre de portage.

Vous pouvez aussi utiliser layman : emerge layman puis layman -a zGentoo

Pour Paludis utilisez ce rsync : rsync://gentoo.zugaina.org/zGentoo-portage

En cas de problèmes : ycarus(-at-)zugaina.org