# Installation bitsandbytes is only supported on CUDA GPUs for CUDA versions **11.0 - 12.3**. Select your operating system below to see the installation instructions. For Linux systems, make sure your hardware meets the following requirements to use bitsandbytes features. | **Feature** | **Hardware requirement** | |---|---| | LLM.int8() | NVIDIA Turing (RTX 20 series, T4) or Ampere (RTX 30 series, A4-A100) GPUs | | 8-bit optimizers/quantization | NVIDIA Kepler (GTX 780 or newer) | > [!WARNING] > bitsandbytes >= 0.39.1 no longer includes Kepler binaries in pip installations. This requires manual compilation, and you should follow the general steps and use `cuda11x_nomatmul_kepler` for Kepler-targeted compilation. To install from PyPI. ```bash pip install bitsandbytes ``` ## Compile from source To compile from source, you need CMake >= **3.22.1** and Python >= **3.8** installed. Make sure you have a compiler installed to compile C++ (gcc, make, headers, etc.). For example, to install a compiler and CMake on Ubuntu: ```bash apt-get install -y build-essential cmake ``` You should also install CUDA Toolkit by following the [NVIDIA CUDA Installation Guide for Linux](https://docs.nvidia.com/cuda/cuda-installation-guide-linux/index.html) guide from NVIDIA. Now to install the bitsandbytes package from source, run the following commands: ```bash git clone https://github.com/TimDettmers/bitsandbytes.git && cd bitsandbytes/ pip install -r requirements-dev.txt cmake -DCOMPUTE_BACKEND=cuda -S . make pip install . ``` > [!TIP] > If you have multiple versions of CUDA installed or installed it in a non-standard location, please refer to CMake CUDA documentation for how to configure the CUDA compiler. Windows systems require Visual Studio with C++ support as well as an installation of the CUDA SDK. You'll need to build bitsandbytes from source. To compile from source, you need CMake >= **3.22.1** and Python >= **3.8** installed. You should also install CUDA Toolkit by following the [CUDA Installation Guide for Windows](https://docs.nvidia.com/cuda/cuda-installation-guide-microsoft-windows/index.html) guide from NVIDIA. ```bash git clone https://github.com/TimDettmers/bitsandbytes.git && cd bitsandbytes/ pip install -r requirements-dev.txt cmake -DCOMPUTE_BACKEND=cuda -S . cmake --build . --config Release python -m build --wheel ``` Big thanks to [wkpark](https://github.com/wkpark), [Jamezo97](https://github.com/Jamezo97), [rickardp](https://github.com/rickardp), [akx](https://github.com/akx) for their amazing contributions to make bitsandbytes compatible with Windows. > [!TIP] > MacOS support is still a work in progress! Subscribe to this [issue](https://github.com/TimDettmers/bitsandbytes/issues/1020) to get notified about discussions and to track the integration progress. ## PyTorch CUDA versions Some bitsandbytes features may need a newer CUDA version than the one currently supported by PyTorch binaries from Conda and pip. In this case, you should follow these instructions to load a precompiled bitsandbytes binary. 1. Determine the path of the CUDA version you want to use. Common paths include: * `/usr/local/cuda` * `/usr/local/cuda-XX.X` where `XX.X` is the CUDA version number Then locally install the CUDA version you need with this script from bitsandbytes: ```bash wget https://raw.githubusercontent.com/TimDettmers/bitsandbytes/main/install_cuda.sh # Syntax cuda_install CUDA_VERSION INSTALL_PREFIX EXPORT_TO_BASH # CUDA_VERSION in {110, 111, 112, 113, 114, 115, 116, 117, 118, 120, 121, 122, 123} # EXPORT_TO_BASH in {0, 1} with 0=False and 1=True # For example, the following installs CUDA 11.7 to ~/local/cuda-11.7 and exports the path to your .bashrc bash install_cuda.sh 117 ~/local 1 ``` 2. Set the environment variables `BNB_CUDA_VERSION` and `LD_LIBRARY_PATH` by manually overriding the CUDA version installed by PyTorch. > [!TIP] > It is recommended to add the following lines to the `.bashrc` file to make them permanent. ```bash export BNB_CUDA_VERSION= export LD_LIBRARY_PATH=$LD_LIBRARY_PATH: ``` For example, to use a local install path: ```bash export BNB_CUDA_VERSION=117 export LD_LIBRARY_PATH=$LD_LIBRARY_PATH:/home/tim/local/cuda-11.7 ``` 3. Now when you launch bitsandbytes with these environment variables, the PyTorch CUDA version is overridden by the new CUDA version (in this example, version 11.7) and a different bitsandbytes library is loaded.