Výsledky vyhľadávania - acm: c.: computer system organizacia/c.1: processes architectural/c.1.4: parallel architektura*
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Autori: a ďalší
Zdroj: 日本建築学会計画系論文集 / Journal of Architecture and Planning (Transactions of AIJ). 2017, 82(736):1487
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Autori:
Zdroj: SIGCSE Bulletin. Special Issue 2(3).
Peer Reviewed: N
Počet strán: 132
Descriptors: Automation, Computer Assisted Instruction, Computer Programs, Computer Science Education, Computers, Conferences, Program Design, Programing, Programing Problems, Systems Development, Undergraduate Study
Journal Code: RIEDEC1971
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Autori: a ďalší
Prispievatelia: a ďalší
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Autori: Caetano, Samuel Sabino
Thesis Advisors: Ferreira, Deller James, Camilo Junior, Celso Gonçalves, Soares, Telma Woerle de Lima, Martinhon, Carlos Alberto de Jesus
Zdroj: Biblioteca Digital de Teses e Dissertações da UFGUniversidade Federal de GoiásUFG.
Predmety: Algoritmos Genéticos Híbridos, CSCL, CSCW, CSCL@Work, Meta-Heurística, Heurística, Formação de grupos, Criação do conhecimento organizacional, Algoritmos genéticos, Hybrid genetic algorithms, MetaHeuristics, Heuristic, Groups formation, Organizational knowledge creation, Genetic algorithms, TEORIA DA COMPUTACAO::ANALISE DE ALGORITMOS E COMPLEXIDADE DE COMPUTACAO
Popis súboru: application/pdf
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6
Autori: a ďalší
Zdroj: ACM Transactions on Storage. 2(2)
Predmety: Data Format, Networking & Telecommunications
Popis súboru: application/pdf
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7
Autori:
Zdroj: Legakis, Justin, Julie Dorsey, and Steven Gortler. 2001. Feature-based cellular texturing for architectural models. In Proceedings of the 28th annual conference on computer graphics and interactive techniques (SIGGRAPH 2001), August 12-17, 2001, Los Angeles, Calif., ed. SIGGRAPH and Eugene L. Fiume, 309-316. New York, NY: ACM Press.
Popis súboru: application/pdf
Prístupová URL adresa: http://nrs.harvard.edu/urn-3:HUL.InstRepos:2634170
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8
Autori:
Zdroj: ACM Transactions on Mathematical Software. 46(4)
Predmety: Eigenvalues, parallel eigenvalue algorithms, self-consistent field, shift-invert spectrum slicing, math.NA, cs.DC, cs.NA, physics.comp-ph, Numerical & Computational Mathematics, Computation Theory and Mathematics, Information Systems
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Adaptive bandwidth allocation and traffic flow control using fuzzy systems and multifractal modeling
Autori: Cardoso, Alisson Assis
Thesis Advisors: Vieira, Flávio Henrique Teles, Carvalho, Cedric Luiz de, Brito, Leonardo da Cunha
Zdroj: Biblioteca Digital de Teses e Dissertações da UFGUniversidade Federal de GoiásUFG.
Predmety: Análise multifractal, Modelagem Fuzzy, Predicão de tráfego de rede, Alocacão de banda, Controle de tráfego de rede, Funções de base ortonormal, Orthonormal basis function, Multifractal analysis, Fuzzy modeling, Network traffic prediction, Band-width allocation, Traffic flow control, SISTEMAS DE COMPUTACAO::HARDWARE
Popis súboru: application/pdf
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VIEIRA, F. H. T.; LING, L. L. Modelagem fuzzy utilizando fun¸c˜oes de base ortonormais aplicada `a predi¸c˜ao adaptativa de tr´afego de redes. Learning and Nonlinear Models. Rev. Socied. Brasileira de Redes Neurais (SBRN), v. 4, n. 2, p. 93–11, 2006. Citado 2 vezes nas p´aginas 19 e 26. VIEIRA, F. H. T.; LING, L. L. Performance bounds for a cascade based multifractal traffic model with generalized multiplier distributions. Journal of Communication and Information Systems, v. 21, p. 165–175, 2006. Citado na p´agina 20. VIEIRA, F. H. T.; LING, L. L. Modelagem de tr´afego de redes utilizando cascata multifractal generalizada. Revista de Inform´atica Te´orica e aplicada, v. 15, n. 2, 2008. Citado na p´agina 31. VIEIRA, F. H. T.; ROCHA, F. G. C.; LEMOS, R. P. An algorithm for adaptive prediction of local singularities of network traffic flows. 2010. Citado na p´agina 31. WANG, C. et al. LRED: A Robust and Responsive AQM Algorithm Using Packet Loss Ratio Measurement. 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Autori: Shi, Shouqian
Predmety: Computer engineering
Popis súboru: application/pdf
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Autori:
Prispievatelia:
Predmety: webová aplikácia, webový dizajn, vývoj webovej aplikácie, futbalové turnaje, organizácia turnajov, aktualizácia v reálnom čase, architektúra klient-server, react, node.js, fastify, web application, web design, web application development, football tournaments, tournament organization, real-time updating, client-server architecture
Popis súboru: application/pdf; text/html
Relation: SADLEK, S. Aplikace pro organizaci fotbalových turnajů [online]. Brno: Vysoké učení technické v Brně. Fakulta informačních technologií. 2024.; 154641; http://hdl.handle.net/11012/247473
Dostupnosť: http://hdl.handle.net/11012/247473
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Alternate Title: Architecture in the Provinces: Method, Judgement and the Topographical Impulse.
Autori: RAMPLEY, MATTHEW1
Zdroj: Art / Umění. 2022, Vol. 70 Issue 1, p92-105. 14p.
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Autori: a ďalší
Zdroj: Grantee Submission. 2021.
Peer Reviewed: Y
Počet strán: 6
Sponsoring Agency: Institute of Education Sciences (ED)
Office of Naval Research (ONR) (DOD)Descriptors: Computer Assisted Instruction, Writing Evaluation, Formative Evaluation, Summative Evaluation, Natural Language Processing, Individual Differences, Undergraduate Students, Essays, Vocabulary, Scores, Writing Processes, Prediction, Correlation
IES Funded: Yes
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Autori: Rague, Brian William
Zdroj: ProQuest LLC. 2010Ph.D. Dissertation, The University of Utah.
Peer Reviewed: N
Počet strán: 236
Descriptors: Control Groups, Introductory Courses, Sequential Approach, Programming Languages, Computer Software, Program Effectiveness, Computer Science Education, Programming, Experimental Groups, Comparative Analysis, Laboratories, Computer Assisted Instruction, Student Surveys, Lecture Method, Pretests Posttests, Instructional Effectiveness, Computer Simulation
Prístupová URL adresa: https://gateway.proquest.com/openurl?url_ver=Z39.88-2004&rft_val_fmt=info:ofi/fmt:kev:mtx:dissertation&res_dat=xri:pqdiss&rft_dat=xri:pqdiss:3409238
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Autori: a ďalší
Zdroj: Proceedings - 2017 17th IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing, CCGRID 2017
Predmety: 46 Information and Computing Sciences (for-2020), 4603 Computer Vision and Multimedia Computation (for-2020)
Popis súboru: application/pdf
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Autori: a ďalší
Zdroj: SIGCUE Topics. Feb 76 2.
Peer Reviewed: N
Počet strán: 399
Descriptors: College Curriculum, Computer Assisted Instruction, Computer Programs, Computer Science, Computer Science Education, Conference Reports, Conferences, Course Descriptions, Programing, Programing Languages, Secondary School Curriculum, Secondary School Mathematics
Journal Code: RIEJUN1976
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Autori: Ataya, Mahmoud
Predmety: Aktiv-kontrollierten Bewegungsschiene, funktionelle Nachbehandlung, propriozeptive Training, propriozeptive Defizit, Sprunggelenksfrakturen, ddc:610
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Alternate Title: Architektura jako „zkamenělá hudba“: teoretická reflexe architektury v německé romantice a u Bernharda Gruebera.
Architecture as 'Petrified Music': The Theoretical Reflection of Architecture in German Romanticism and in the Writings of Bernhard Grueber.Autori: LAŠTOVIČKOVÁ, VĚRA1
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Autori:
Zdroj: Collectanea Mathematica; 2005: Vol.: 56 Núm.: 1; p. 85-96
Popis súboru: application/pdf
Prístupová URL adresa: https://www.raco.cat/index.php/CollectaneaMathematica/article/view/56589
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Autori:
Thesis Advisors:
Popis súboru: 132
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