ISSN: XXXX-XXXX

Accelerating Scientific Discovery: The Role of GPU Computing in Research and Development

Abstract

This paper discusses the transformative role of GPU computing in scientific research and the impacts of its effect on computational efficiency, data-intensive tasks, and methodological innovation. Five questions guide this research: what are the computational advantages of GPUs, their role in data-intensive research, the influence on methodologies, challenges of adoption of GPU, and the long-term implications for scientific progress. Qualitatively, involving case studies and expert interviews, the findings suggest that GPUs make a very significant contribution to the acceleration of research efficiency and innovation. Despite such barriers as the limited accessibility and expertise issues, efforts for democratizing GPU technology and assimilation into research processes, again, hold much promise. The study illustrates how GPUs can sustain their efforts in driving breakthroughs in domains like genomics, neuroscience, and climate modeling, while advocating the continued investment into training and resource development.

References

  1. Owens, J. D., et al. (2008). "GPU Computing." Proceedings of the IEEE.
  2. Sanders, J., & Kandrot, E. (2010). CUDA by Example: An Introduction to General-Purpose GPU Programming.
  3. Stone, J. E., et al. (2010). "Accelerating Molecular Modeling Applications with GPUs." Journal of Computational Chemistry.
  4. Kirk, D. B., & Hwu, W. W. (2016). Programming Massively Parallel Processors: A Hands-on Approach.
  5. Pohl, D., et al. (2015). "GPU Computing for Real-Time Data Processing in Astrophysics." Astronomy & Computing.
  6. Wang, S., et al. (2018). "GPU-Accelerated Methods for Genomics Data Analysis." Nature Methods.
  7. Tang, Y., et al. (2019). "Deep Learning on GPUs: Methods and Applications." ACM Computing Surveys.
  8. Prabhu, P., & Jang, J. (2020). "Overcoming Barriers to GPU Adoption in Research." Computing Research Repository (CoRR).
  9. Subramaniam, A., et al. (2021). "Sustainable GPU Integration in Scientific Research." Journal of Supercomputing.
  10. Lee, H., et al. (2023). "Emerging Trends in GPU Computing for Scientific Innovation." Journal of Computational Science.
Download PDF

How to Cite

Ivanenko Liudmyla, (2025-02-21 14:24:39.747). Accelerating Scientific Discovery: The Role of GPU Computing in Research and Development. Abhi International Journal of Scientific Computing, Volume C8MY0zhFgOC4DAjIHCj4, Issue 1.