OpenCGRA: An Open-Source Unified Framework for Modeling, Testing, and Evaluating CGRAs

2020 IEEE 38th International Conference on Computer Design (ICCD)(2020)

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摘要
Coarse-grained reconfigurable arrays (CGRAs), loosely defined as arrays of functional units (e.g., adder, subtractor, multiplier, divider, or larger multi-operation units, but smaller than a general-purpose core) interconnected through a Network-on-Chip, provide higher flexibility than domain-specific ASIC accelerators while offering increased hardware efficiency with respect to fine-grained reconfigurable devices, such as Field Programmable Gate Arrays (FPGAs). The fast evolving fields of machine learning and edge computing, which are seeing a continuous flow of novel algorithms and larger models, make CGRAs ideal architectures to allow domain specialization without losing too much generality. Designing and generating a CGRA, however, still requires to define the type and number of the specific functional units, implement their interconnect and the network topology, and perform the simulation and validation, given a variety of workloads of interest. In this paper, we propose OpenC-GRA *, the first open-source integrated framework that is able to support the full top-to-bottom design flow for specializing and implementing CGRAs: modeling at different abstraction levels (functional level, cycle level, register-transfer level) with compiler support, verification at different granularities (unit testing, integration testing, property-based testing), simulation, generation of synthesizable Verilog, and characterization (area, power, and timing). By using OpenCGRA, it only takes a few hours to build a specialized power- and area-efficient CGRA throughout the entire design flow given a set of applications of interest. OpenCGRA is available online at https://github.com/pnnl/OpenCGRA.
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关键词
general-purpose core,coarse-grained reconfigurable arrays,open-source unified framework,area-efficient CGRA,register-transfer level,abstraction levels,top-to-bottom design flow,open-source integrated framework,OpenC-GRA,network topology,CGRAs ideal architectures,edge computing,machine learning,FPGA,Field Programmable Gate Arrays,fine-grained reconfigurable devices,hardware efficiency,domain-specific ASIC accelerators,Network-on-Chip
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