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Journal ArticleDOI
Ari Luotonen, Kevin Altis 
01 Nov 1994
358 Citations
This makes proxies useful even to the people who do have full Internet access and do not really need the proxy just to get out of their local subnet.
We believe our approach has enabled Netflix to quickly adopt and benefit from containers.
Experimental results on the Netflix dataset, the MovieLens 1M dataset and the sampled Amazon review dataset demonstrate the effectiveness of the proposed detection model.
We show how this separation, as well as in-band proxy discovery, can be applied to a variety of anti-censorship systems.
Using this measure we find, first, that Netflix makes many of the works from a wide variety of countries available in many other countries.
Proceedings ArticleDOI
Andrew Reed, Michael J. Kranch 
22 Mar 2017
71 Citations
Despite this upgrade, we demonstrate that it is possible to accurately identify Netflix videos from passive traffic capture in real-time with very limited hardware requirements.
Proceedings ArticleDOI
Jim Martin, Yunhui Fu, N. Wourms, T. Shaw 
01 Jan 2013
43 Citations
Our results suggest that Netflix adaptation defaults to underlying TCP mechanisms during periods of heavy, sustained network congestion.

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