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首页> 外文期刊>Progress in Artificial Intelligence >HEAP: A Holistic Error Assessment Framework for Multiple Approximations Using Probabilistic Graphical Models
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HEAP: A Holistic Error Assessment Framework for Multiple Approximations Using Probabilistic Graphical Models

机译:堆:使用概率图形模型的多个近似的整体误差评估框架

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摘要

Approximate computing has been a good paradigm of energy-efficient accelerator design. Accurate and fast error estimation is critical for appropriate approximate techniques selection so that power saving (or performance improvement) can be maximized with acceptable output quality in approximate accelerators. In the paper, we propose HEAP, a Holistic Error assessment framework to characterize multiple Approximate techniques with Probabilistic graphical models (PGM) in a joint way. HEAP maps the problem of evaluating errors induced by different approximate techniques into a PGM issue, including: (1) A heterogeneous Bayesian network is represented by converting an application's data flow graph, where various approximate options are {precise, approximate} two-state X*-type nodes, while input or operating variables are {precise, approximate, unacceptable} three-state X-type nodes. These two different kinds of nodes are separately used to configure the available approximate techniques and track the corresponding error propagation for guaranteed configurability; (2) node learning is accomplished via an approximate library, which consists of probability mass functions of multiple approximate techniques to fast calculate each node's Conditional Probability Table by mechanistic modeling or empirical modeling; (3) exact inference provides the probability distribution of output quality at three levels of precise, approximate, and unacceptable. We do a complete case study of 3 x 3 Gaussian kernels with different approximate configurations to verify HEAP. The comprehensive results demonstrate that HEAP is helpful to explore design space for power-efficient approximate accelerators, with just 4.18% accuracy loss and 3.34 x 10(5) speedup on average over Mentor Carlo simulation.
机译:近似计算一直是节能加速器设计的良好范式。准确且快速的误差估计对于适当的近似技术选择,因此可以最大化省电(或性能改进)在近似加速器中具有可接受的输出质量。在本文中,我们提出了一个全面误差评估框架,以共同方式表征具有概率图形模型(PGM)的多种近似技术。堆地图将不同近似技术引起的错误评估到PGM问题的问题,包括:(1)通过转换应用程序的数据流图来表示异构贝叶斯网络,其中各种近似选项是{精确的,近似}两个状态x * -Type节点,而输入或操作变量是{精确的,近似,不可接受的}三态X型节点。这两个不同类型的节点是单独用于配置可用的近似技术并跟踪相应的错误传播以获得保证可配置性; (2)通过近似库完成节点学习,该库由多种近似技术的概率质量函数组成,以通过机械建模或经验建模快速计算每个节点的条件概率表; (3)精确推断为输出质量的概率分布在三级的精确,近似和不可接受。我们做了一个完整的案例研究,具有3 x 3高斯内核,具有不同的近似配置来验证堆。全面的结果表明,堆有助于探索节能近似加速器的设计空间,精度损失仅为4.18%,平均电动损失为3.18%,平均升高为12.34 x 10(5)升级。

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