Enhanced processing power in the cloud allows constrained devices to offload costly computations: for instance, complex data analytics tasks can be computed by remote servers. Remote execution calls for a new compression paradigm that optimizes performance on the analytics task within a rate constraint, instead of the traditional rate-distortion framework which focuses on source reconstruction. This paper considers a simple binary hypothesis testing scenario where the resource constrained client (transmitter) performs fixed-length single-shot compression on data sampled from one of two distributions; the server (receiver) performs a hypothesis test on multiple received samples to determine the correct source distribution. To this end, the task-aware compression problem is formulated as finding the optimal source coder that maximizes the asymptotic error performance of the hypothesis test on the server side under a rate constraint. A new source coding strategy based on a greedy optimization procedure is proposed and it is shown that that the proposed compression scheme outperforms universal fixed-length single-shot coding scheme for a range of rate constraints.
翻译:云层的强化处理能力允许限制设备卸载昂贵的计算: 例如, 复杂的数据分析任务可以由远程服务器来计算。 远程执行需要一种新的压缩模式, 在费率限制下优化分析任务的业绩, 而不是传统的标准扭曲框架, 重点是源的重建。 本文考虑一种简单的二进制假设方案, 即资源限制客户( 传输者) 对从两种分布中提取的数据进行固定长单发压缩; 服务器( 接收者) 对收到的多个样本进行假设测试, 以确定正确的来源分布。 为此, 任务觉知压缩问题被表述为寻找最佳源代码, 以在费率限制下最大限度地实现服务器一侧假设测试的无症状错误性能。 基于贪婪优化程序的新源编码战略被提出, 并显示拟议的压缩方案在一系列费率限制下超越了通用的固定长度单发编码方案 。