ARAILGPLApr 18, 2023

NPS: A Framework for Accurate Program Sampling Using Graph Neural Network

arXiv:2304.08880v15 citationsh-index: 129
Originality Incremental advance
AI Analysis

This addresses the need for faster and more accurate program sampling to enable rapid architectural innovations in processors, such as RISC-V extensions, though it is an incremental improvement over existing GNN approaches.

The paper tackles the problem of program sampling for microprocessor design, where existing methods like SimPoint require time-consuming human tuning, and introduces Neural Program Sampling (NPS), a framework using Graph Neural Networks that outperforms SimPoint by up to 63% and reduces average error by 38%.

With the end of Moore's Law, there is a growing demand for rapid architectural innovations in modern processors, such as RISC-V custom extensions, to continue performance scaling. Program sampling is a crucial step in microprocessor design, as it selects representative simulation points for workload simulation. While SimPoint has been the de-facto approach for decades, its limited expressiveness with Basic Block Vector (BBV) requires time-consuming human tuning, often taking months, which impedes fast innovation and agile hardware development. This paper introduces Neural Program Sampling (NPS), a novel framework that learns execution embeddings using dynamic snapshots of a Graph Neural Network. NPS deploys AssemblyNet for embedding generation, leveraging an application's code structures and runtime states. AssemblyNet serves as NPS's graph model and neural architecture, capturing a program's behavior in aspects such as data computation, code path, and data flow. AssemblyNet is trained with a data prefetch task that predicts consecutive memory addresses. In the experiments, NPS outperforms SimPoint by up to 63%, reducing the average error by 38%. Additionally, NPS demonstrates strong robustness with increased accuracy, reducing the expensive accuracy tuning overhead. Furthermore, NPS shows higher accuracy and generality than the state-of-the-art GNN approach in code behavior learning, enabling the generation of high-quality execution embeddings.

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