Submitted by webmaster on
Title | Hardware Trends Impacting Floating-Point Computations In Scientific Applications |
Publication Type | Preprint |
Year of Publication | 2024 |
Authors | Dongarra, J., J. Gunnels, H. Bayraktar, A. Haidar, and D. Ernst |
Date Published | 2024-12 |
Publisher | arXiv |
Abstract | The evolution of floating-point computation has been shaped by algorithmic advancements, architectural innovations, and the increasing computational demands of modern technologies, such as artificial intelligence (AI) and high-performance computing (HPC). This paper examines the historical progression of floating-point computation in scientific applications and contextualizes recent trends driven by AI, particularly the adoption of reduced-precision floating-point types. The challenges posed by these trends, including the trade-offs between performance, efficiency, and precision, are discussed, as are innovations in mixed-precision computing and emulation algorithms that offer solutions to these challenges. This paper also explores architectural shifts, including the role of specialized and general-purpose hardware, and how these trends will influence future advancements in scientific computing, energy efficiency, and system design. |
URL | https://arxiv.org/abs/2411.12090 |