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SimNet: Accurate and High-Performance Computer Architecture Simulation using Deep Learning

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arxiv 2105.05821 v3 pith:S67WTBBQ submitted 2021-05-12 cs.AR cs.LG

SimNet: Accurate and High-Performance Computer Architecture Simulation using Deep Learning

classification cs.AR cs.LG
keywords instructionsimulationsimulatorarchitecturediscrete-eventlatencylearningml-based
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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While discrete-event simulators are essential tools for architecture research, design, and development, their practicality is limited by an extremely long time-to-solution for realistic applications under investigation. This work describes a concerted effort, where machine learning (ML) is used to accelerate discrete-event simulation. First, an ML-based instruction latency prediction framework that accounts for both static instruction properties and dynamic processor states is constructed. Then, a GPU-accelerated parallel simulator is implemented based on the proposed instruction latency predictor, and its simulation accuracy and throughput are validated and evaluated against a state-of-the-art simulator. Leveraging modern GPUs, the ML-based simulator outperforms traditional simulators significantly.

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