Computational genetic epidemiology: Leveraging HPC for large-scale AI models based on Cyber Security

 

Vadali Pitchi Raju1, Tushar Kumar Pandey2, Rajeev Shrivastava3*, Rajesh Tiwari4, S. Anjali Devi5, Neerugatti Varipallay vishwanath6

1Principal, Indur Institute of Engg. & Tech, Siddipet, Bharat.

2Junior Engineer (Computer Science), Dr. Rajendra Prasad Central Agricultural University, Pusa, Samastipur, Bihar,

3Principal, Princeton Institute of Engineering & Technology for Women Hyderabad, Telangana, India,

4Professor, CMR Engineering College, Hyderabad, (T. S.), India.

5Asst. Professor, Department of CSE, Koneru Lakshmaiah Education Foundation, Guntur, Andhra Pradesh, Bharat.

6Asst. Professor, Dept. of ECE, St. Martin's Engineering College, Secunderabad, Telangana, Bharat.

 

Email: vpraju2000@gmail.com; tusharkumarpandey@gmail.com; rajeev2440130@gmail.com; drrajeshtiwari20@gmail.com; swarnaanjalidevi@gmail.com; Visuresearch1@gmail.com.

Corresponding Author Email: rajeev2440130@gmail.com

 

 

Abstract

 

To better understand disease susceptibility and prevention, computational genetic epidemiology is leading research. This paper introduces "GenomeMinds," a breakthrough method for scaling large-scale AI models for disease risk prediction. HPC was used to develop the method. GenomeMinds is compared to six standard methods to demonstrate its benefits. GenomeMinds' incredible potential is shown by real-world performance assessments. These measures evaluate data processing speed, forecast accuracy, scalability, computer efficiency, privacy, and ethics. GenomeMinds benefits are shown via scatter plots, which visually compare data. According to the data, GenomeMinds may revolutionize computational genetic epidemiology by doing well across all criteria. GenomeMinds has faster data processing, better prediction accuracy, stronger scalability, higher computational efficiency, enhanced privacy and security, and a comprehensive ethical awareness.

 

Keywords: Computational Genetic Epidemiology; Disease Risk Prediction; AI Models; Data Processing; Predictive Accuracy; Scalability; Computational Efficiency; Cyber Security.