Tahoe-x1
github.com/tahoebio/tahoe-x1Apache 2.0 single-cell foundation model family scaling to 3B parameters, pretrained on 266M cell profiles including perturbation data and released with training, embedding, and downstream benchmarking workflows for disease-relevant single-cell tasks (2025)
Sourced from
- Awesome AI for Science — github.com/tahoebio/tahoe-x1
- GitHub — github.com/tahoebio/tahoe-x1
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