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HTVM: Efficient Neural Network Deployment On Heterogeneous TinyML Platforms

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arxiv 2406.07453 v1 pith:ICZDRFHZ submitted 2024-06-11 cs.PL cs.DC

HTVM: Efficient Neural Network Deployment On Heterogeneous TinyML Platforms

classification cs.PL cs.DC
keywords deploymentheterogeneoushtvmacceleratorsneuralsocstinytinyml
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Optimal deployment of deep neural networks (DNNs) on state-of-the-art Systems-on-Chips (SoCs) is crucial for tiny machine learning (TinyML) at the edge. The complexity of these SoCs makes deployment non-trivial, as they typically contain multiple heterogeneous compute cores with limited, programmer-managed memory to optimize latency and energy efficiency. We propose HTVM - a compiler that merges TVM with DORY to maximize the utilization of heterogeneous accelerators and minimize data movements. HTVM allows deploying the MLPerf(TM) Tiny suite on DIANA, an SoC with a RISC-V CPU, and digital and analog compute-in-memory AI accelerators, at 120x improved performance over plain TVM deployment.

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