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What is the COT means in complex networks? 


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COT in complex networks stands for Commercial Off-The-Shelf. It refers to using readily available, pre-built components or systems for network functions. The term is mentioned in the abstract of the paper by Feng He et al.. They describe a COTS-based bandwidth predistribution guarantee network function demonstration system, which utilizes general computing technology and a COTS switchboard to simulate the functions of a real end system in an avionics full duplex switched Ethernet (AFDX). The system customizes and simulates network application layer services and configures virtual links of a data link layer to guarantee bandwidth predistribution. The use of COTS components allows for cost-effective and efficient implementation of network functions.

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Papers (4)Insight
Book ChapterDOI
01 Jan 2016
2 Citations
The term "COT" is not mentioned in the provided text.
COTS stands for Commercial Off-The-Shelf, which refers to using commercially available products in complex networks.
Open accessJournal ArticleDOI
Clara Pizzuti, Annalisa Socievole 
05 Feb 2021-Entropy
1 Citations
The paper does not provide information about the meaning of COT in complex networks.
The paper does not mention the meaning of COT in complex networks.

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