{}
Vec2Vec ChIP-atlas hg38
Model Details
Model Description
This is a Vec2Vec model that encodes embedding vectors of natural language into embedding vectors of BED files. This model was trained with hg38 ChIP-atlas ATAC-seq data. The natural language metadata came from the experiment list, their embedding vectors were encoded by sentence-transformers
with microsoft/biogpt
model. The BED files were embedded by Region2Vec
- Developed by: Ziyang "Claude" Hu
- Model type: Vec2Vec
- Language(s) (NLP): hg38
Model Sources [optional]
- Repository: https://github.com/databio/geniml
- Paper [optional]: N/A
Uses
This model can be used to search BED files with natural language query strings. In the search interface, the query strings will be encoded by same sentence-transformers model, and the output vector will be encoded into the final query vector by this Vec2Vec. The K BED files whose embedding vectors (embedded by same Region2Vec) are closest to the final query vector are results. It is limited to hg38. It is not recommended to use this model for data outside ATAC-seq.
How to Get Started with the Model
You can download and start encoding new genomic region data using the following code:
from geniml.text2bednn.text2bednn import Vec2VecFNN
model = Vec2VecFNN("databio/v2v-bioGPT-ATAC-hg38")
[More Information Needed]
Training Details
Training Data
X: