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Adaptive data compression for high-performance low-power on-chip networks

机译:适用于高性能低功耗片上网络的自适应数据压缩

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With the recent design shift towards increasing the number of processing elements in a chip, high-bandwidth support in on-chip interconnect is essential for low-latency communication. Much of the previous work has focused on router architectures and network topologies using wide/long channels. However, such solutions may result in a complicated router design and a high interconnect cost. In this paper, we exploit a table-based data compression technique, relying on value patterns in cache traffic. Compressing a large packet into a small one can increase the effective bandwidth of routers and links, while saving power due to reduced operations. The main challenges are providing a scalable implementation of tables and minimizing overhead of the compression latency. First, we propose a shared table scheme that needs one encoding and one decoding tables for each processing element, and a management protocol that does not require in-order delivery. Next, we present streamlined encoding that combines flit injection and encoding in a pipeline. Furthermore, data compression can be selectively applied to communication on congested paths only if compression improves performance. Simulation results in a 16-core CMP show that our compression method improves the packet latency by up to 44% with an average of 36% and reduces the network power consumption by 36% on average.
机译:随着最近的设计转移到增加芯片中的处理元件的数量,片上互连的高带宽支持对于低延迟通信是必不可少的。以前的大部分工作都专注于使用宽/长通道的路由器架构和网络拓扑。然而,这种解决方案可能导致复杂的路由器设计和高互连成本。在本文中,我们利用了基于表的数据压缩技术,依赖于缓存流量中的值模式。将大型数据包压缩到一个小型中可以增加路由器和链路的有效带宽,同时节省电源由于减少的操作。主要挑战正在提供表的可扩展实现,并最大限度地减少压缩延迟的开销。首先,我们提出了一种共享表方案,其需要针对每个处理元件的一个编码和一个解码表,以及不需要有序交付的管理协议。接下来,我们呈现简化的编码,该编码结合了流水管线中的闪烁注射和编码。此外,只有在压缩提高性能时,才可以选择性地应用数据压缩以在拥塞路径上通信。仿真结果在16核CMP中,我们的压缩方法将数据包延迟提高了高达44%,平均为36%,平均将网络功耗降低36%。

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