DocumentCode
1788959
Title
Online coded caching
Author
Pedarsani, Ramtin ; Maddah-Ali, Mohammad Ali ; Niesen, Urs
Author_Institution
UC Berkeley, Berkeley, CA, USA
fYear
2014
fDate
10-14 June 2014
Firstpage
1878
Lastpage
1883
Abstract
We consider a basic content distribution scenario consisting of a single origin server connected through a shared bottleneck link to a number of users each equipped with a cache of finite memory. The users issue a sequence of content requests from a set of popular files, and the goal is to operate the caches as well as the server such that these requests are satisfied with the minimum number of bits sent over the shared link. Assuming a basic Markov model for renewing the set of popular files, we characterize approximately the optimal long-term average rate of the shared link. We further prove that the optimal online scheme has approximately the same performance as the optimal offline scheme, in which the cache contents can be updated based on the entire set of popular files before each new request. To support these theoretical results, we propose an online coded caching scheme termed coded least-recently sent (LRS) and simulate it for a demand time series derived from the dataset made available by Netflix for the Netflix Prize. For this time series, we show that the proposed coded LRS algorithm significantly outperforms the popular least-recently used (LRU) caching algorithm.
Keywords
Markov processes; cache storage; time series; LRS scheme; LRU caching algorithm; Markov model; Netflix; content distribution scenario; content requests; demand time series; finite memory cache; least-recently sent scheme; least-recently used caching algorithm; online coded caching scheme; Cache memory; Databases; Motion pictures; Multicast communication; Servers; Time series analysis; Vectors;
fLanguage
English
Publisher
ieee
Conference_Titel
Communications (ICC), 2014 IEEE International Conference on
Conference_Location
Sydney, NSW
Type
conf
DOI
10.1109/ICC.2014.6883597
Filename
6883597
Link To Document