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On the other hand, server consolidation may change the DCN topology, allowing new opportunities for energy savings.
Especially, the server is constructed under a model-view-control framework, which makes it easy to incorporate more functions to the server in the future. In this paper, we present a server with powerful capability not only for gene and protein functional annotation, but also for transcriptomics and proteomics data comparison.
The new roles in Windows Server 2008 provide a new way for users to determine how they are implemented, configured, and managed within an Active Directory domain or forest.
Our client-server grid solution reshapes workload into the existing and available desktop to form a virtual centralised server that can grow or shrink with the business size.
Open accessProceedings ArticleDOI
Dawei Li, Jie Wu 
08 Jul 2014
30 Citations
Unlike existing works, we propose the concept of Normalized Switch Delay (NSD) to distinguish a server-to-server-direct hop and a server-to-server-via-switch hop, to unify the design of DCN architectures.
The Toolkit was developed for the ELVIS batch lab server of MIT, but can be used as a general solution for any type of iLab batch Lab Server deployed with LabVIEW at the server-side.
Furthermore, disaggregation of server resources has shown promising potential to improve resource utilization, which has been a limitation of conventional server-centric DCs.
Finally, the CDC network demonstrates a very high efficiency with the ability to process 500 frames per second on a single GPU server.
Our method achieves competitive performance on ILSVRC 2012, SUN 397, and MIT indoor.

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