Liberate.FHE natively supports python programming language. To install and use Liberate.FHE, please follow the steps below:
Liberate.FHE runs on single or multiple GPUs. Running Liberate.FHE on GPUs requires installing nvidia-driver. Additionally, you need to install CUDA that matches the version of PyTorch you intend to use. Theses settings are necessary for GPU-based operations.
To build Liberate.FHE, you need to install poetry, a dependency manager and packaging tool for Python. It is recommended to set up a virtual environment to manage the project in an isolated environment.
Clone the github repository of Liberate.FHE to obtain the latest source codes.
Use poetry to install the project dependencies. Open a terminal and run the command poetry install
. This will automatically install all the required packages for the Liberate.FHE.
To compile CUDA by running the setup.py
file. In the terminal, run the command poetry run python setup.py install
. This command will compile CUDA files.
Build the project by running the command poetry build
in the terminal. This will create a distributable format of the package.
Install the Liberate.FHE by running the command poetry run python -m pip install .
in the terminal. This will install the Liberate.FHE library into your system.
Operating System : Liberate.FHE is compatible with Ubuntu.
Python : Liberate.FHE requires Python version 3.10 or above. You can download and install Python from the official website. And we recommend using the python virtual environment.
PyTorch : Liberate.FHE uses the pyTorch package. When you install Liberate.FHE, it automatically installs PyTorch.
CUDA : If you want to utilize the GPU, install CUDA. Ensure that you choose a version of CUDA that is compatible with PyTorch, and install it accordingly.