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Lyra: An Efficient and Expressive Subquadratic Architecture for Modeling Biological Sequences

Published: March 20, 2025 | arXiv ID: 2503.16351v1

By: Krithik Ramesh , Sameed M. Siddiqui , Albert Gu and more

BigTech Affiliations: Massachusetts Institute of Technology

Potential Business Impact:

Helps computers understand DNA faster and cheaper.

Business Areas:
Bioinformatics Biotechnology, Data and Analytics, Science and Engineering

Deep learning architectures such as convolutional neural networks and Transformers have revolutionized biological sequence modeling, with recent advances driven by scaling up foundation and task-specific models. The computational resources and large datasets required, however, limit their applicability in biological contexts. We introduce Lyra, a subquadratic architecture for sequence modeling, grounded in the biological framework of epistasis for understanding sequence-to-function relationships. Mathematically, we demonstrate that state space models efficiently capture global epistatic interactions and combine them with projected gated convolutions for modeling local relationships. We demonstrate that Lyra is performant across over 100 wide-ranging biological tasks, achieving state-of-the-art (SOTA) performance in many key areas, including protein fitness landscape prediction, biophysical property prediction (e.g. disordered protein region functions) peptide engineering applications (e.g. antibody binding, cell-penetrating peptide prediction), RNA structure analysis, RNA function prediction, and CRISPR guide design. It achieves this with orders-of-magnitude improvements in inference speed and reduction in parameters (up to 120,000-fold in our tests) compared to recent biology foundation models. Using Lyra, we were able to train and run every task in this study on two or fewer GPUs in under two hours, democratizing access to biological sequence modeling at SOTA performance, with potential applications to many fields.

Country of Origin
🇺🇸 United States

Page Count
53 pages

Category
Computer Science:
Machine Learning (CS)