Evo 2
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Evo 2
Overview :
Evo 2 is an AI foundational model developed by NVIDIA, designed to decipher the genetic code of biomolecules using deep learning techniques. Developed on the NVIDIA DGX Cloud platform, it can handle large-scale genomic data, providing a powerful tool for biomedical research. A key advantage of Evo 2 is its ability to process genetic sequences up to 1 million tokens long, allowing for a more comprehensive understanding of genomic complexity. The model has broad applications in biomedicine, including disease diagnostics, drug development, and gene editing. Evo 2's development was supported by the Arc Institute and Stanford University, aiming to drive innovation and breakthroughs in biomedical research.
Target Users :
Evo 2 is ideal for biomedical researchers, drug developers, and scientists interested in genomics and protein engineering. It enables researchers to rapidly analyze complex genomic data, accelerating biomedical research, driving innovative drug development, and optimizing disease treatment strategies.
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Use Cases
In the study of the breast cancer-related gene BRCA1, Evo 2 can predict the impact of unidentified mutations on gene function with 90% accuracy.
Evo 2 can be used to design novel biomolecules to help develop crop varieties more resistant to climate change.
The model can be used to design proteins that break down oil or plastic, contributing to environmental protection.
Features
Deciphering the genetic code of DNA, RNA, and proteins
Predicting protein structure and function
Identifying the impact of gene mutations on function
Designing novel biomolecules for medical and industrial applications
Supporting multi-species genomic analysis
Providing high-performance AI deployment services
Supporting the processing and analysis of large-scale genomic data
How to Use
1. Access the NVIDIA BioNeMo platform and register for an account.
2. Select the Evo 2 model and adjust model parameters according to your research needs.
3. Upload genomic data or use a pre-set dataset for analysis.
4. Utilize the model's predictive results to further conduct biomedical research or drug development.
5. Deploy the model using NVIDIA NIM microservices for efficient AI application.
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