NSF requires disclosure of AI tool usage in proposal preparation. Ensure you disclose the use of FindGrants' AI drafting in your application.
NSF
Predictability is crucial in real-time computing systems, as it is fundamental for ensuring consistent, reliable execution within specified time constraints. Without predictability, even occasional delays or unforeseen behaviors can compromise system performance and safety, which may be unaffordable or catastrophic in many time-critical applications. However, artificial intelligence (AI) tasks and high-performance computing (HPC) hardware architectures often introduce unpredictability in program execution due to their inherent complexity and nondeterministic dynamics. Consequently, managing and mitigating unpredictability becomes a key challenge when integrating and leveraging AI or HPC advancements in real-time systems. This project will address this challenge by developing methods and techniques to preserve time predictability in systems, even when traditionally predictable aspects become unpredictable. This project will produce new system models, scheduling algorithms, analysis frameworks, prototypes, and tools. These outcomes will establish a solid foundation for designing and implementing real-time systems that are highly functional, resource-efficient, and predictably reliable. This project will serve as a cornerstone for the design, implementation, and certification of next-generation real-time systems, overcoming the limitations of traditional predictability assumptions. These advancements will be pivotal for sectors such as autonomous vehicles, industrial control systems, and financial trading platforms, where timing and reliability are critical. The outcomes of this project will provide validated guidelines to enhance the safety, applicability, modularity, and explainability of computing components in these systems. Furthermore, this project will emphasize integrating research efforts and outcomes into educational and outreach activities to cultivate a new generation of talent for the computing and engineering workforce. This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.
Up to $343K
2030-06-30
Detailed requirements not yet analyzed
Have the NOFO? Paste it below for AI-powered requirement analysis.
One-time $749 fee · Includes AI drafting + templates + PDF export
Category I: CloudBank 2: Accelerating Science and Engineering Research in the Commercial Cloud
NSF — up to $24M
Category I: Nexus: A Confluence of High-Performance AI and Scientific Computing with Seamless Scaling from Local to National Resources
NSF — up to $24.0M
Research Infrastructure: Mid-scale RI-1 (MI:IP): Dual-Doppler 3D Mobile Ka-band Rapid-Scanning Volume Imaging Radar for Earth System Science
NSF — up to $20.0M
A Scientific Ocean Drilling Coordinating Office for the US Community
NSF — up to $17.6M
Category I: AMA27: Sustainable Cyber-infrastructure for Expanding Participation
NSF — up to $13.8M
Graduate Research Fellowship Program (GRFP)
NSF — up to $9.0M