Matches in SemOpenAlex for { <https://semopenalex.org/work/W2913914378> ?p ?o ?g. }
Showing items 1 to 69 of
69
with 100 items per page.
- W2913914378 abstract "In the emerging Big Data era, where we must deal with large amounts of structured and unstructured data which may not fit traditional relational databases and may arrive at high speeds requiring fast processing, we need powerful platforms and infrastructures as support. Extracting valuable information from raw data is especially difficult considering the velocity of growing data from year to year and the fact that 80% of data is unstructured. In addition, data sources are heterogeneous (various sensors, users with different profiles, etc.) and are located in different situations or contexts. Cloud Computing, which concerns large-scale interconnected systems with the main purpose of aggregating and efficiently exploiting the power of large scale distributed resources, represents one viable solution.Cloud systems are highly dynamic systems where user requests must be met following Service Level Agreements. When ubiquitous systems on the edge of the network interact with Cloud systems new algorithms for events and tasks scheduling, and new methods for resource management should be designed in order to increase the performance of such systems and to mitigate the network bottleneck caused by their control constraints and the Big Data they generate. It becomes obvious that efficient and adaptive resource management and task scheduling play a vital role in cases where one is concerned with the optimized use of cloud resources for meeting specific application objectives in the context of Big Data driven by ubiquitous systems.The adaptive methods used in this context are oriented towards: self-stabilizing, self-organizing and autonomic systems; dynamic, adaptive and machine learning based distributed algorithms; and fault tolerance, reliability, availability of distributed systems.The main goal of the workshop is to explore new directions and approaches for reasoning about resource management in future cloud and hybrid cloud-on-edge systems based on adaptive methods, and to encourage the submission of ongoing work, as well as position papers and case studies of existing verification projects. Also, the workshop offers a forum for both academics and practitioners to share their experience and identify new and emerging trends in this area.Following the success of last years' editions of ARMS-CC held in Chicago (2016), Donostia - San Sebastian (2015) and Paris (2014), the third edition of ARMS-CC workshop aims at providing a venue for researchers, engineers, and practitioners involved in the development of new resource management methods, scheduling algorithms, and middleware tools for Cloud Computing. The goal is to provide an interactive and friendly yet professional forum for original research contributions describing novel ideas, groundbreaking results or quantified system experiences, in the context of PODC Symposium.This volume contains the papers presented at ARMS-CC 2017 held on July 28, 2017 in Washington, DC, USA, in conjunction with PODC 2017 (ACM Symposium on Principles of Distributed Computing).There were 11 submissions. Each submission was reviewed by three program committee members. The committee decided to accept 4 papers to be published in ACM DL Proceedings and to be presented during the workshop (36% acceptance rate).The ARMS-CC workshop was organized with the support of the following projects: DataWay - Real-time Data Processing Platform for Smart Cities: Making sense of Big Data (PN-II-RU-TE-2014-4-2731) and Data4Water: Excellence in Smart Data and Services for Supporting Water Management (H2020-TWINN-2015, CSA-690900)." @default.
- W2913914378 created "2019-02-21" @default.
- W2913914378 creator A5014727644 @default.
- W2913914378 creator A5027328407 @default.
- W2913914378 creator A5050009901 @default.
- W2913914378 date "2017-07-28" @default.
- W2913914378 modified "2023-09-26" @default.
- W2913914378 title "Proceedings of the 2017 Workshop on Adaptive Resource Management and Scheduling for Cloud Computing" @default.
- W2913914378 hasPublicationYear "2017" @default.
- W2913914378 type Work @default.
- W2913914378 sameAs 2913914378 @default.
- W2913914378 citedByCount "0" @default.
- W2913914378 crossrefType "proceedings-article" @default.
- W2913914378 hasAuthorship W2913914378A5014727644 @default.
- W2913914378 hasAuthorship W2913914378A5027328407 @default.
- W2913914378 hasAuthorship W2913914378A5050009901 @default.
- W2913914378 hasConcept C111919701 @default.
- W2913914378 hasConcept C120314980 @default.
- W2913914378 hasConcept C124101348 @default.
- W2913914378 hasConcept C127413603 @default.
- W2913914378 hasConcept C149635348 @default.
- W2913914378 hasConcept C206729178 @default.
- W2913914378 hasConcept C21547014 @default.
- W2913914378 hasConcept C2522767166 @default.
- W2913914378 hasConcept C2778456923 @default.
- W2913914378 hasConcept C2780513914 @default.
- W2913914378 hasConcept C41008148 @default.
- W2913914378 hasConcept C75684735 @default.
- W2913914378 hasConcept C79974875 @default.
- W2913914378 hasConceptScore W2913914378C111919701 @default.
- W2913914378 hasConceptScore W2913914378C120314980 @default.
- W2913914378 hasConceptScore W2913914378C124101348 @default.
- W2913914378 hasConceptScore W2913914378C127413603 @default.
- W2913914378 hasConceptScore W2913914378C149635348 @default.
- W2913914378 hasConceptScore W2913914378C206729178 @default.
- W2913914378 hasConceptScore W2913914378C21547014 @default.
- W2913914378 hasConceptScore W2913914378C2522767166 @default.
- W2913914378 hasConceptScore W2913914378C2778456923 @default.
- W2913914378 hasConceptScore W2913914378C2780513914 @default.
- W2913914378 hasConceptScore W2913914378C41008148 @default.
- W2913914378 hasConceptScore W2913914378C75684735 @default.
- W2913914378 hasConceptScore W2913914378C79974875 @default.
- W2913914378 hasLocation W29139143781 @default.
- W2913914378 hasOpenAccess W2913914378 @default.
- W2913914378 hasPrimaryLocation W29139143781 @default.
- W2913914378 hasRelatedWork W1247856831 @default.
- W2913914378 hasRelatedWork W1545800005 @default.
- W2913914378 hasRelatedWork W1985801427 @default.
- W2913914378 hasRelatedWork W1991559346 @default.
- W2913914378 hasRelatedWork W2033279519 @default.
- W2913914378 hasRelatedWork W2036260704 @default.
- W2913914378 hasRelatedWork W2057119463 @default.
- W2913914378 hasRelatedWork W2184767468 @default.
- W2913914378 hasRelatedWork W2340022609 @default.
- W2913914378 hasRelatedWork W2416019619 @default.
- W2913914378 hasRelatedWork W267522024 @default.
- W2913914378 hasRelatedWork W2884562830 @default.
- W2913914378 hasRelatedWork W2902419714 @default.
- W2913914378 hasRelatedWork W2912303059 @default.
- W2913914378 hasRelatedWork W2912726748 @default.
- W2913914378 hasRelatedWork W2984037327 @default.
- W2913914378 hasRelatedWork W3196070021 @default.
- W2913914378 hasRelatedWork W617191170 @default.
- W2913914378 hasRelatedWork W2550801785 @default.
- W2913914378 hasRelatedWork W621381985 @default.
- W2913914378 isParatext "false" @default.
- W2913914378 isRetracted "false" @default.
- W2913914378 magId "2913914378" @default.
- W2913914378 workType "article" @default.