TinyDNABERT

🌟 Overview

TinyDNABERT is a specialized deep learning model designed for understanding the language of DNA and performing DNA sequence classification tasks. This model is a compact and efficient version of the DNABERT model, optimized to reduce memory usage while maintaining high performance. TinyDNABERT is particularly well-suited for tasks where computational efficiency and fast inference times are crucial.

This repository provides all the necessary scripts and configurations to fine-tune TinyDNABERT on various DNA-related tasks using LoRA (Low-Rank Adaptation) configurations, enabling efficient adaptation to specific DNA sequence classification problems.

πŸš€ Key Features:

  • Compact & Efficient: Smaller memory footprint with fast inference times.
  • LoRA Fine-Tuning: Leverage Low-Rank Adaptation for quick and effective model tuning.
  • Task-Specific Adaptability: Fine-tune the model for various DNA-related tasks with ease.

Please Cite As:

@misc{peerzada_fabiha_akmal_makhdoomi_2024,
author = {Peerzada Fabiha Akmal Makhdoomi, Nimisha Ghosh},
title = {TinyDNABERT},
year = 2024,
url = {https://huggingface.co/fabihamakhdoomi/TinyDNABERT},
doi = {10.57967/hf/2886},
publisher = {Hugging Face}
}

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