Amanote Research

Amanote Research

    RegisterSign In

Trace-Driven Analysis of ICN Caching Algorithms on Video-On-Demand Workloads

doi 10.1145/2674005.2675003
Full Text
Open PDF
Abstract

Available in full text

Date

January 1, 2014

Authors
Yi SunSeyed Kaveh FayazYang GuoVyas SekarYun JinMohamed Ali KaafarSteve Uhlig
Publisher

ACM Press


Related search

Analysis of Research on Satellite Network Caching Mechanism Based on ICN

MATEC Web of Conferences
Materials ScienceEngineeringChemistry
2020English

Characterising and Exploiting Workloads of Highly Interactive Video-On-Demand

Multimedia Systems
Media TechnologyInformation SystemsComputer NetworksHardwareCommunicationsArchitectureSoftware
2008English

Evaluation of Segment-Based Proxy Caching for Video on Demand

2008English

Trace Factory: Generating Workloads for Trace-Driven Simulation of Shared-Bus Multiprocessors

IEEE Concurrency
1997English

An Effective Neighborhood Initial-Playback Based Caching Scheme for Video on Demand Over Mobile Ad Hoc Network

International Journal of Computer Theory and Engineering
2012English

Performance Improvements of In-Network Caching in ICN-Based Networks

English

The Research of Video Format Conversion Based on Educational Video-On-Demand

2016English

An Empirical Research on Flipped Classroom Video-Making Based on Learners’ Demand Analysis

Journal of US-China Public Administration
2016English

Distributed Streaming for Video on Demand

English

Amanote Research

Note-taking for researchers

Follow Amanote

© 2026 Amaplex Software S.P.R.L. All rights reserved.

Privacy PolicyRefund Policy