TaroRTL: Accelerating RTL Simulation Using Coroutine-Based Heterogeneous Task Graph Scheduling.
EURO-PAR 2024 PARALLEL PROCESSING, PT III, EURO-PAR 2024(2024)
Abstract
RTL simulation is critical for validating hardware designs. However, RTL simulation can be time-consuming for large designs. Existing RTL simulators have leveraged task graph parallelism to accelerate simulation on a CPU- and/or GPU-parallel architecture. Despite the improved performance, they all assume atomic execution per task and do not anticipate multitasking that can bring significant performance advantages. As a result, we introduce TaroRTL, a coroutine-based task graph scheduler for efficient RTL simulation. TaroRTL enables non-blocking GPU and I/O tasks within a task graph, ensuring that threads are not blocked waiting for GPU or I/O tasks to finish. It also designs a coroutine-aware work-stealing algorithm to avoid unnecessary context switches. Compared to a state-of-the-art GPU-accelerated RTL simulator, TaroRTL can further achieve 40-80% speed-up while using fewer CPU resources to simulate large industrial designs.
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Key words
RTL simulation,Heterogeneous task graph,Scheduling
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