ACHILLES: Accuracy-Aware High-Level Synthesis Considering Online Quality Management

IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems(2019)

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摘要
In this paper, we present an accuracy-aware design framework [called accuracy-aware high-level synthesis (Achilles)], which synthesizes a high-level description of an input application with the objective of minimizing the energy consumption of the synthesized circuit. The proposed framework includes two main parts of Achilles and light-weight predictor selection. The framework leverages light-weight error predictors (i.e., machine learning-based classifiers) to achieve more energy reduction by dynamically managing the output quality level (exact or approximate) of the synthesized circuit. To synthesize the input application, first, we exploit a heuristic algorithm to determine the quality level required for each operation in the data flow graph (DFG) representation of the input application. Next, for synthesizing the input application, we propose an effective Achilles algorithm which utilizes the flexibility of the available multiquality arithmetic units in a high-level cell library to synthesize the datapath. To improve the efficiency, the process starts by iteratively reducing the number of functional units required for synthesizing the DFG. Then, a proper light-weight error predictor satisfying the user expected quality is chosen from the available predictors in the framework. Based on the quality requirements, three different quality management modes are considered. The efficacy of the proposed framework is assessed for benchmarks from image and signal processing as well as robotics domains. The study of these benchmarks indicates that Achilles may reduce the energy consumption up to 51% (36% on average), up to 72% (51% on average), and up to 57% (33% on average) in threshold, average, and hybrid modes, respectively, for the studied cases. Moreover, the results show that relative coverage of large errors may be increased from 21% to 55% by employing synthetic minority oversampling technique method.
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关键词
Quality management,Energy consumption,Approximate computing,Approximation algorithms,Flow graphs,Libraries,Scheduling
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