Download PDFOpen PDF in browserFast and Accurate Gene Prediction Using GPU-Accelerated ML TechniquesEasyChair Preprint 1402412 pages•Date: July 18, 2024AbstractGene prediction plays a crucial role in deciphering genomic sequences and understanding biological functions. Traditional methods often face challenges in balancing speed and accuracy, particularly as genomic data scales exponentially. This abstract proposes a novel approach leveraging GPU-accelerated machine learning (ML) techniques to enhance the efficiency and precision of gene prediction. By harnessing the parallel processing capabilities of GPUs, this study aims to accelerate gene prediction algorithms, thereby reducing computational time without compromising predictive accuracy. The integration of ML models, optimized for GPU architectures, promises to address the computational bottleneck inherent in genomic data analysis. Key objectives include the development of GPU-accelerated models capable of handling large-scale genomic datasets and the evaluation of their performance against traditional CPU-based methods. Evaluation metrics will focus on accuracy, speed, and scalability, demonstrating the potential of GPU-enhanced techniques in advancing genomic research. Keyphrases: Central Processing Units, Graphics Processing Units, machine learning
|