Presenting the Generally Nuanced Deep Learning Framework for Synthesis (GaNDLF-Synth), a unified abstraction to train various synthesis algorithms in a zero/low code approach.
Why use this?
- Supports multiple
- Generative model architectures
- Data dimensions (2D/3D)
- Channels/images/sequences
- Label conditioning schemes
- Domain modalities (i.e., Radiology Scans and Digitized Histopathology Tissue Sections)
- Problem types (synthesis, reconstruction)
- Multi-GPU and multi-node training
- Built-in
- Robust data augmentation and preprocessing (via interfacing GaNDLF)
- Leverages robust open source software
- No need to write any code to generate robust models
Documentation
GaNDLF has extensive documentation and it is arranged in the following manner:
Contributing
Please see the contributing guide for more information.
Disclaimer
- The software has been designed for research purposes only and has neither been reviewed nor approved for clinical use by the Food and Drug Administration (FDA) or by any other federal/state agency.
- This code (excluding dependent libraries) is governed by the Apache License, Version 2.0 provided in the LICENSE file unless otherwise specified.
Citation
@misc{pati2024gandlfsynthframeworkdemocratizegenerative,
title={GaNDLF-Synth: A Framework to Democratize Generative AI for (Bio)Medical Imaging},
author={Sarthak Pati and Szymon Mazurek and Spyridon Bakas},
year={2024},
eprint={2410.00173},
archivePrefix={arXiv},
primaryClass={cs.LG},
url={https://arxiv.org/abs/2410.00173},
}