Back to Models
ZH

ZhejiangLab/OneGenome-Rice

ZhejiangLabgeneral

OneGenome-Rice (OGR)

OGR is a foundational model for AI-driven precision breeding and functional genomics in rice. It is a generative genomic foundation model trained to process DNA sequences up to 1 million base pairs in length, with 1.25B total parameters and a Mixture-of-Experts (MoE) architecture. It was pre-trained on a curated corpus of 422 rice genomes spanning cultivated and wild Oryza diversity.

For instructions, details, and examples, see the project repository OGR GitHub.

The table below summarizes training scale and key hyperparameters.

Model SpecificationOneGenomeRice (OGR)
Model Scale
Total Parameters1.25B
Activated Parameters0.33B
Architecture
ArchitectureMoE
Number of Experts8
Selected Experts per Token2
Number of Layers12
Attention Hidden Dimension1024
Number of Attention Heads16 (GQA, 8 KV groups)
MoE Hidden Dimension (per Expert)4096
Vocabulary Size128 (padded)
Context Lengthup to 1Mb
Visit Website

0 reviews

5
0
4
0
3
0
2
0
1
0
Likes4
Downloads
📝

No reviews yet

Be the first to review ZhejiangLab/OneGenome-Rice!

Model Info

ProviderZhejiangLab
Categorygeneral
Reviews0
Avg. Rating / 5.0

Community

Likes4
Downloads

Rating Guidelines

★★★★★Exceptional
★★★★Great
★★★Good
★★Fair
Poor