Helical
Unified framework for state-of-the-art pre-trained bio foundation models across genomics and transcriptomics, providing standardized interfaces and pipelines for DNA, RNA, and single-cell models including Evo 2, Geneformer, scGPT, and UCE with streamlined inference, benchmarking, and fine-tuning workflows (213+ stars, 2024-2025)
README
What is Helical ? Helical builds the Virtual AI Lab for Biological Discovery. This open framework provides access to state-of-the-art Bio Foundation Models across genomics, transcriptomics, and single-cell data modalities. Helical simplifies the entire lifecycle of applying Bio Foundation Models — from model access to fine-tuning and in-silico experimentation. With Helical's open-source framework, you can: • Leverage the latest Bio Foundation Models through a simple Python interface • Run…
- Repository
- github.com/helicalai/helical
Source attribution
- GitHub — github.com/helicalai/helical
- Awesome AI for Science — github.com/helicalai/helical
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