Efficient Information Updates in Compute-First Networking via Reinforcement Learning with Joint AoI and VoI
Efficient Information Updates in Compute-First Networking via Reinforcement Learning with Joint AoI and VoI
Timely and efficient dissemination of service information is critical in compute-first networking systems, where user requests arrive dynamically and computing resources are constrained. In such systems, the access point (AP) plays a key role in forwarding user requests to a server based on its latest received service information. This paper considers a single-source, single-destination system and introduces an Age-and-Value-Aware (AVA) metric that jointly captures both the timeliness and the task relevance of service information. Unlike traditional freshness-based metrics, AVA explicitly incorporates variations in server-side service capacity and AP forwarding decisions, allowing more context-aware update evaluation. Building upon AVA, we propose a reinforcement learning-based update policy that learns to selectively transmit service information updates to the AP. It aims to maximize overall task success while minimizing unnecessary communications. Extensive simulations under diverse user request patterns and varying service capacities demonstrate that AVA reduces the update frequency by over 90% on average compared to baselines, with reductions reaching 98% in certain configurations. Crucially, this reduction is achieved without compromising the accuracy of task execution or the quality of decision making.
Jianpeng Qi、Chao Liu、Chengxiang Xu、Rui Wang、Junyu Dong、Yanwei Yu
计算技术、计算机技术
Jianpeng Qi,Chao Liu,Chengxiang Xu,Rui Wang,Junyu Dong,Yanwei Yu.Efficient Information Updates in Compute-First Networking via Reinforcement Learning with Joint AoI and VoI[EB/OL].(2025-05-09)[2025-06-10].https://arxiv.org/abs/2505.06025.点此复制
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