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Open accessProceedings ArticleDOI
25 Oct 2010
9 Citations
Our results show that the proposed methods reduce the frequency of server overloading and improve the overall game performance significantly.
Depending on the application workload, either the host processor or the TCP server can become the bottleneck stressing the need for an adaptive scheme to balance the load between the host and the TCP server.
Our results provide guidance to system designers of the relative value of making improvements in latency that reduce but do not fully eliminate lag from their systems.
In addition, we also see a reduction in server utilization which helps to improve server scalability.
These predictors could dramatically reduce the perceived latency, reaching a potential limit of about 97% for a mixed proxy-server collaborative prediction engine
Our studies improve our understanding of local lag and of how it improves tightly-coupled interaction in distributed groupware.
Considering the lag size as well as the estimation error, we also propose a new performance criterion that puts a penalty on the large lag size while making the estimation error small.
Proceedings ArticleDOI
Steve T. Bryson, Scott S. Fisher 
01 Sep 1990
47 Citations
Using the results described in this paper the lag in other systems can be estimated and the effect of graphics performance on system lag can be predicted.

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