IMDEA Networks Institute Publications Repository

RL-Cache: Learning-Based Cache Admission for Content Delivery

Gorinsky, Sergey (2019) RL-Cache: Learning-Based Cache Admission for Content Delivery. In: Knowledge and Information Sharing Seminar (KISS), Ericsson Hungary, 5 Sep 2019, Budapest, Hungary.

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Content delivery networks (CDNs) distribute much of the Internet content by caching and serving the objects requested by users. A major goal of a CDN is to maximize the hit rates of its caches, thereby enabling faster content downloads to the users. Content caching involves two components: an admission algorithm to decide whether to cache an object and an eviction algorithm to decide which object to evict from the cache when it is full. In this paper, we focus on cache admission and propose a novel algorithm called RL-Cache that uses model-free reinforcement learning (RL) to decide whether or not to admit a requested object into the CDN's cache. Unlike prior approaches that use a small set of criteria for decision making, RL-Cache weights a large set of features that include the object size, recency, and frequency of access. We develop a publicly available implementation of RL-Cache and perform an evaluation using production traces for the image, video, and web traffic classes from Akamai's CDN. The evaluation shows that RL-Cache improves the hit rate in comparison with the state of the art and imposes only a modest resource overhead on the CDN servers. Further, RL-Cache is robust enough that it can be trained in one location and executed on request traces of the same or different traffic classes in other locations of the same geographic region.

Item Type: Conference or Workshop Papers (Invited Talk)
Depositing User: Sergey Gorinsky
Date Deposited: 04 Nov 2019 13:20
Last Modified: 04 Nov 2019 13:20

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