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动态协同优化编译器:利用多智能体强化学习提升 DNN 加速器性能.pdf

上传人: 芦苇 编号:651841 2025-05-01 16页 1.22MB

1、Arya Fayyazi,Mehdi Kamal,Massoud Pedram*afayyazi,mehdi.kamal,pedramusc.eduUniversity of Southern CaliforniaLos Angeles,California,USATuesday,January 21,2025ASP-DAC1Dynamic Co-Optimization Compiler:Leveraging Multi-AgentReinforcement Learning for Enhanced DNN AcceleratorPerformanceMotivation Increasi

2、ng Complexity of neural network modelAdvanced architectures and large-scale workloads demand more than mere software tweaks.Limitations of Existing Auto-TunersTraditional frameworks(e.g.,TVM Chen et al.,2018)primarily focus on software optimizations,leaving hardware optimization potential largely un

3、tapped.Need for HardwareSoftware SynergyJointly optimizing both layers is critical for peak performance but is vastly underexplored.2“Software and Hardware.”Altium Resources,Altium,Related WorkAutoTVM Chen et al.,2018:Uses machine learning-based cost models to optimize DNN configurations but focuses

4、 primarily on software parameters.CHAMELEON Ahn et al.,2020:Employs reinforcement learning for adaptive exploration of the solution space but does not integrate hardware parameter optimization effectively.MetaTune Ryu et al.,2021:Leverages meta-learning for faster adaptation to new optimization spac

5、es but lacks a holistic hardware-software co-design approach.PRIME Kumar et al.,2021:Data-driven offline optimization for hardware design but operates outside of reinforcement learning frameworks,leading to slower compilation times.NaaS Zhou et al.,2022:Joint optimization of neural architectures and

6、 hardware accelerators,but its unified search space approach is extremely large.3Shortcomings of Existing Approaches4Hand-optimized kernels are difficult to design and generally non-scalable.Manual Tuning OverheadFail to do hardware and software co-optimizations(CHAMELEON,NaaS).Lack of HWSW Co-Desig

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本文介绍了一种名为DCO-Comp的新型编译器,采用多代理强化学习技术,实现对深度神经网络加速器性能的动态协同优化。面对神经网络模型复杂性增加和先进架构下大规模工作负载的需求,DCO-Comp通过自动化硬件和软件的调优,解决了现有自动调优工具的局限。研究表明,DCO-Comp相较于传统框架和现有自动调优工具,如AutoTVM和CHAMELEON,能更快速地达到高性能,最多可将吞吐量提高37.95%,平均提高17%,并将编译时间缩短42.2%。此外,通过信心采样方法,DCO-Comp有效减少了探索开销,加快了收敛速度。实验结果显示,DCO-Comp在多种深度学习模型上均取得了显著性能提升,证明了其作为一个通用、可扩展解决方案的潜力。
"DCO-Comp如何实现硬件与软件的协同优化?" "多代理强化学习在DNN加速器性能优化中的应用是什么?" "DCO-Comp相较于现有技术有哪些显著的性能提升?"
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