CAREER: Redefining Testing Foundations for Heterogeneity-Aware AI Compilation — NSF Award to University of California-Riverside (C
Artificial intelligence (AI) is becoming integral to manufacturing, healthcare, and autonomous systems, creating an urgent need for reliable deployment across diverse computing platforms. Yet dependable deployment remains difficult because the software systems that adapt learned models to target devices are complex and
| Award title | CAREER: Redefining Testing Foundations for Heterogeneity-Aware AI Compilation |
|---|---|
| Award ID | 2541224 |
| Awardee | University of California-Riverside |
| City | RIVERSIDE |
| State | CA |
| Amount obligated | $315,154 |
| Principal investigator | Qian Zhang |
| Program | Software & Hardware Foundation |
| Start date | 07/01/2026 |
| Abstract | Artificial intelligence (AI) is becoming integral to manufacturing, healthcare, and autonomous systems, creating an urgent need for reliable deployment across diverse computing platforms. Yet dependable deployment remains difficult because the software systems that adapt learned models to target devices are complex and fragile. An AI model that appears valid at a high level can still fail during deployment because of hidden resource limits, data layout requirements, and platform-specific transfo |
| Source | NSF Awards |
$799/mo
Try NSFGrants →