28 次浏览 · 24 次下载 · ☆☆☆☆☆ 0.0

Performance Optimization Techniques in Parallel Computing

发表日期 May 15, 2024 (DOI: https://doi.org/10.54985/peeref.2405p3097724)

未经同行评议

作者

Dr. Fatima Inamdar1 , Aishwarya Shukla1 , Gandharva Thite1 , Atharva Doifode1 , Sakshi Aherkar1
  1. VIIT

会议/活动

BTech Project Presentation, VIIT, April 2024 (Pune, India)

海报摘要

Parallel computing, a modern cornerstone, transforms how we handle complex problems across domains, allowing tasks to run concurrently on multiple processors. This boosts speed, efficiency, and scalability. It's essential for tasks unmanageable with sequential methods, from scientific simulations to data analytics, driven by escalating performance needs due to larger datasets and intricate tasks. Performance hinges on optimization techniques like load balancing, while scalability is crucial for handling big data and cloud computing demands. Our paper delves into optimizing performance and scalability, covering strategies from load balancing to communication optimization. Understanding and tackling these challenges unlock parallel computing's full potential, propelling computational science and technology forward.

关键词

Parallel Computing, Load Balancing, Optimization, GPU Acceleration, Parallel Algorithm, Profiling Tools

研究领域

Education, Systems Science, Computer and Information Science

参考文献

  1. S. Williams, A. Waterman, and D. Patterson, "Roofline: An insightful visual performance model for multicore architectures," Communica-tions of the ACM, vol. 52, no. 4, pp. 65-76, 2009.
  2. D. A. Bader and K. Madduri, "Designing parallel algorithms," CRC Press, 2010.
  3. J. Dongarra, I. Foster, G. Fox, W. Gropp, K. Kennedy, L. Torczon, and A. White, "The Sourcebook of Parallel Computing," Morgan Kaufmann, 2002.

基金

暂无数据

补充材料

暂无数据

附加信息

利益冲突
No competing interests were disclosed.
数据可用性声明
The datasets generated during and / or analyzed during the current study are available from the corresponding author on reasonable request.
知识共享许可协议
Copyright © 2024 Inamdar et al. This is an open access work distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
评分
引用
Inamdar, D., Shukla, A., Thite, G., Doifode, A., Aherkar, S. Performance Optimization Techniques in Parallel Computing [not peer reviewed]. Peeref 2024 (poster).
复制引文

Add your recorded webinar

Do you already have a recorded webinar? Grow your audience and get more views by easily listing your recording on Peeref.

Upload Now

Become a Peeref-certified reviewer

The Peeref Institute provides free reviewer training that teaches the core competencies of the academic peer review process.

Get Started