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How much RAM is needed for a Terraria server? 

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Instead, we propose a redundant server scheme that is both scalable, and with lower total server buffer requirement.
Book ChapterDOI
Christoph Bernhardt, Ernst W. Biersack 
19 Jun 1995
49 Citations
The server array is a novel video server architecture based on partitioning each video over multiple server nodes, thereby achieving perfect load balancing for any demand distribution.
Proceedings ArticleDOI
S. Chen, M. Thapar 
03 Jun 1997
20 Citations
Since disks and memory account for a significant portion of the total system cost in a video server, using these strategies significantly reduces server costs.
These results are promising for developing a 1-Mbit/cm/sup 2/ density Josephson RAM.
Open accessProceedings ArticleDOI
15 Jun 2009
512 Citations
Importantly, we show that the optimal power allocation can significantly improve server farm performance, by a factor of typically 1.4 and as much as a factor of 5 in some cases.
Proceedings ArticleDOI
Seokin Hong, Jongmin Lee, Soontae Kim 
04 Dec 2014
33 Citations
Evaluation results show that Ternary cache achieves the data density benefit of MLC STT-RAM and the reliability benefit of SLC STT-RAM.
By providing a better understanding of the limits of current RAM designs, this report supports the decision for a particular RAM in an individual application.
Simple cases are presented to show that the approach is reasonable and comprehensive to provide a foundation for the optimization of system RAM with BIT.

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