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Prospector: Synthesizing Efficient Accelerators via Statistical Learning

机译:潜在客户:通过统计学习综合高效的加速器

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Accelerator design is expensive due to the effort required to understand an algorithm and optimize the design. Architects have embraced two technologies to reduce costs. High-level synthesis automatically generates hardware from code. Reconfigurable fabrics instantiate accelerators while avoiding fabrication costs for custom circuits. We further reduce design effort with statistical learning. We build an automated framework, called Prospector, that uses Bayesian techniques to optimize synthesis directives, reducing execution latency and resource usage in field-programmable gate arrays. We show in a certain amount of time designs discovered by Prospector are closer to Pareto-efficient designs compared to prior approaches.
机译:由于了解算法并优化设计所需的努力,加速器设计很昂贵。建筑师已经接受了两种技术来降低成本。高级合成自动生成代码中的硬件。可重新配置的织物实例化加速器,同时避免自定义电路的制造成本。我们进一步缩短了统计学习的设计努力。我们构建一个被称为ProSpector的自动框架,它使用贝叶斯族技术来优化综合指令,减少现场可编程门阵列中的执行延迟和资源使用。与现有方法相比,我们以一定数量的时间设计展示了Prospector发现的近距离设计。

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