Visible to the public Biblio

Filters: Keyword is autonomic  [Clear All Filters]
2022-12-09
Fakhartousi, Amin, Meacham, Sofia, Phalp, Keith.  2022.  Autonomic Dominant Resource Fairness (A-DRF) in Cloud Computing. 2022 IEEE 46th Annual Computers, Software, and Applications Conference (COMPSAC). :1626—1631.
In the world of information technology and the Internet, which has become a part of human life today and is constantly expanding, Attention to the users' requirements such as information security, fast processing, dynamic and instant access, and costs savings has become essential. The solution that is proposed for such problems today is a technology that is called cloud computing. Today, cloud computing is considered one of the most essential distributed tools for processing and storing data on the Internet. With the increasing using this tool, the need to schedule tasks to make the best use of resources and respond appropriately to requests has received much attention, and in this regard, many efforts have been made and are being made. To this purpose, various algorithms have been proposed to calculate resource allocation, each of which has tried to solve equitable distribution challenges while using maximum resources. One of these calculation methods is the DRF algorithm. Although it offers a better approach than previous algorithms, it faces challenges, especially with time-consuming resource allocation computing. These challenges make the use of DRF more complex than ever in the low number of requests with high resource capacity as well as the high number of simultaneous requests. This study tried to reduce the computations costs associated with the DRF algorithm for resource allocation by introducing a new approach to using this DRF algorithm to automate calculations by machine learning and artificial intelligence algorithms (Autonomic Dominant Resource Fairness or A-DRF).
2020-08-24
Sadasivarao, Abhinava, Bardhan, Sanjoy, Syed, Sharfuddin, Lu, Biao, Paraschis, Loukas.  2019.  Optonomic: Architecture for Secure Autonomic Optical Transport Networks. 2019 IFIP/IEEE Symposium on Integrated Network and Service Management (IM). :321–328.
We present a system architecture for autonomic operation, administration and maintenance of both the optical and digital layers within the integrated optical transport network infrastructure. This framework encompasses the end-to-end instrumentation: From equipment commissioning to automatic discovery and bring-up, to self-managed, self-(re)configuring optical transport layer. We leverage prevalent networking protocols to build an autonomic control plane for the optical network elements. Various aspects of security, a critical element for self-managed operations, are addressed. We conclude with a discussion on the interaction with SDN, and how autonomic functions can benefit from these capabilities, a brief survey of standardization activities and scope for future work.