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Search: WFRF:(Östberg Per) > (2020-2024)

  • Result 11-19 of 19
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11.
  • Le Duc, Thang, 1980-, et al. (author)
  • Workload Diffusion Modeling for Distributed Applications in Fog/Edge Computing Environments
  • 2020
  • In: ICPE '20. - New York : Association for Computing Machinery (ACM). - 9781450369916 ; , s. 218-229
  • Conference paper (peer-reviewed)abstract
    • This paper addresses the problem of workload generation for distributed applications in fog/edge computing. Unlike most existing work that tends to generate workload data for individual network nodes using historical data from the targeted node, this work aims to extrapolate supplementary workloads for entire application / infrastructure graphs through diffusion of measurements from limited subsets of nodes. A framework for workload generation is proposed, which defines five diffusion algorithms that use different techniques for data extrapolation and generation. Each algorithm takes into account different constraints and assumptions when executing its diffusion task, and individual algorithms are applicable for modeling different types of applications and infrastructure networks. Experiments are performed to demonstrate the approach and evaluate the performance of the algorithms under realistic workload settings, and results are validated using statistical techniques.
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12.
  • Leznik, Mark, et al. (author)
  • Multivariate Time Series Synthesis Using Generative Adversarial Networks
  • 2021
  • In: ICPE 2021. - New York, NY, USA : Association for Computing Machinery, Inc. - 9781450381949 ; , s. 43-50
  • Conference paper (peer-reviewed)abstract
    • Collection and analysis of distributed (cloud) computing workloads allows for a deeper understanding of user and system behavior and is necessary for efficient operation of infrastructures and applications. The availability of such workload data is however often limited as most cloud infrastructures are commercially operated and monitoring data is considered proprietary or falls under GPDR regulations. This work investigates the generation of synthetic workloads using Generative Adversarial Networks and addresses a current need for more data and better tools for workload generation. Resource utilization measurements such as the utilization rates of Content Delivery Network (CDN) caches are generated and a comparative evaluation pipeline using descriptive statistics and time-series analysis is developed to assess the statistical similarity of generated and measured workloads. We use CDN data open sourced by us in a data generation pipeline as well as back-end ISP workload data to demonstrate the multivariate synthesis capability of our approach. The work contributes a generation method for multivariate time series workload generation that can provide arbitrary amounts of statistically similar data sets based on small subsets of real data. The presented technique shows promising results, in particular for heterogeneous workloads not too irregular in temporal behavior.
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13.
  • Patel, Yashwant Singh, et al. (author)
  • Formal models for the energy-aware cloud-edge computing continuum : analysis and challenges
  • 2023
  • In: 2023 IEEE international conference on service-oriented system engineering (SOSE). - : IEEE. - 9798350322392 - 9798350322408 ; , s. 48-59
  • Conference paper (peer-reviewed)abstract
    • Cloud infrastructures are rapidly evolving from centralised systems to geographically distributed federations of edge devices, fog nodes, and clouds. These federations (often referred to as the Cloud-Edge Continuum) are the foundation upon which most modern digital systems depend, and consume enormous amounts of energy. This consumption is becoming a critical issue as society's energy challenges grow, and is a great concern for power grids which must balance the needs of clouds against other users. The Continuum is highly dynamic, mobile, and complex; new methods to improve energy efficiency must be based on formal scientific models that identify and take into account a huge range of heterogeneous components, interactions, stochastic properties, and (potentially contradictory) service-level agreements and stakeholder objectives. Currently, few formal models of federated Cloud-Edge systems exist - and none adequately represent and integrate energy considerations (e.g. multiple providers, renewable energy sources, pricing, and the need to balance consumption over large-areas with other non-Cloud consumers, etc.). This paper conducts a systematic analysis of current approaches to modelling Cloud, Cloud-Edge, and federated Continuum systems with an emphasis on the integration of energy considerations. We identify key omissions in the literature, and propose an initial high-level architecture and approach to begin addressing these - with the ultimate goal to develop a set of integrated models that include data centres, edge devices, fog nodes, energy providers, software workloads, end users, and stakeholder requirements and objectives. We conclude by highlighting the key research challenges that must be addressed to enable meaningful energy-aware Cloud-Edge Continuum modelling and simulation.
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14.
  • Patel, Yashwant Singh, et al. (author)
  • Modeling the green cloud continuum : integrating energy considerations into cloud-edge models
  • 2024
  • In: Cluster Computing. - : Springer. - 1386-7857 .- 1573-7543.
  • Journal article (peer-reviewed)abstract
    • The energy consumption of Cloud–Edge systems is becoming a critical concern economically, environmentally, and societally; some studies suggest data centers and networks will collectively consume 18% of global electrical power by 2030. New methods are needed to mitigate this consumption, e.g. energy-aware workload scheduling, improved usage of renewable energy sources, etc. These schemes need to understand the interaction between energy considerations and Cloud–Edge components. Model-based approaches are an effective way to do this; however, current theoretical Cloud–Edge models are limited, and few consider energy factors. This paper analyses all relevant models proposed between 2016 and 2023, discovers key omissions, and identifies the major energy considerations that need to be addressed for Green Cloud–Edge systems (including interaction with energy providers). We investigate how these can be integrated into existing and aggregated models, and conclude with the high-level architecture of our proposed solution to integrate energy and Cloud–Edge models together.
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15.
  • Townend, Paul, et al. (author)
  • COGNIT: challenges and vision for a serverless and multi-provider cognitive cloud-edge continuum
  • 2023
  • In: 2023 IEEE International Conference on Edge Computing and Communications (EDGE). - : IEEE. - 9798350304831 - 9798350304848 ; , s. 12-22
  • Conference paper (peer-reviewed)abstract
    • Use of the serverless paradigm in cloud application development is growing rapidly, primarily driven by its promise to free developers from the responsibility of provisioning, operating, and scaling the underlying infrastructure. However, modern cloud-edge infrastructures are characterized by large numbers of disparate providers, constrained resource devices, platform heterogeneity, infrastructural dynamicity, and the need to orchestrate geographically distributed nodes and devices over public networks. This presents significant management complexity that must be addressed if serverless technologies are to be used in production systems. This position paper introduces COGNIT, a major new European initiative aiming to integrate AI technology into cloud-edge management systems to create a Cognitive Cloud reference framework and associated tools for serverless computing at the edge. COGNIT aims to: 1) support an innovative new serverless paradigm for edge application management and enhanced digital sovereignty for users and developers; 2) enable on-demand deployment of large-scale, highly distributed and self-adaptive serverless environments using existing cloud resources; 3) optimize data placement according to changes in energy efficiency heuristics and application demands and behavior; 4) enable secure and trusted execution of serverless runtimes. We identify and discuss seven research challenges related to the integration of serverless technologies with multi-provider Edge infrastructures and present our vision for how these challenges can be solved. We introduce a high-level view of our reference architecture for serverless cloud-edge continuum systems, and detail four motivating real-world use cases that will be used for validation, drawing from domains within Smart Cities, Agriculture and Environment, Energy, and Cybersecurity.
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16.
  • Tärneberg, William, et al. (author)
  • The 6G Computing Continuum (6GCC) : Meeting the 6G computing challenges
  • 2022
  • In: 2022 1st International Conference on 6G Networking, 6GNet 2022. - : IEEE Computer Society. - 9781665467636
  • Conference paper (peer-reviewed)abstract
    • 6G systems, such as Large Intelligent Surfaces, will require distributed, complex, and coordinated decisions through-out a very heterogeneous and cell free infrastructure. This will require a fundamentally redesigned software infrastructure accompanied by massively distributed and heterogeneous computing resources, vastly different from current wireless networks. To address these challenges, in this paper, we propose and motivate the concept of a 6G Computing Continuum (6GCC) and two research testbeds, to advance the rate and quality of research. 6G Computing Continuum is an end-to-end compute and software platform for realizing large intelligent surfaces and its tenant users and applications. One for addressing the challenges or orchestrating shared computational resources in the wireless domain, implemented on a Large Intelligent Surfaces testbed. Another simulation-based testbed is intended to address scalability and global-scale orchestration challenges.
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17.
  • Vyhmeister, Eduardo, et al. (author)
  • Lessons learn on responsible AI implementation : the ASSISTANT use case
  • 2022
  • In: 10th IFAC Conference on Manufacturing Modelling, Management and Control MIM 2022. - : Elsevier. ; , s. 377-382
  • Conference paper (peer-reviewed)abstract
    • Currently, pioneer companies are working hard to construct applied ethical frameworks in different sectors for using AI components that generate trust in their clients and workforce. However, independent of these few companies, there is still a considerable gap between understanding the impact of using responsible AI components, the implications of the lack of use, and what is currently applied in the industrial sector. Given that industry has shown an increased commitment to incorporating AI components, works focus on broadening the understanding of manufacturing sector stakeholders of what approaches could be considered within AI life-cycle, reducing the gap between principles and actionable requirements, and defining fundamental considerations based on risk management for incorporating, and managing, AI-based on responsible AI are required. In this work, we present a summary of the most suitable approaches that can be used for implementation and the lessons learned from a European Funded project (ASSISTANT).
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18.
  • Östberg, Per-Olov, et al. (author)
  • Application Optimisation : Workload Prediction and Autonomous Autoscaling of Distributed Cloud Applications
  • 2020
  • In: Managing Distributed Cloud Applications and Infrastructure. - Cham : Palgrave Macmillan. - 9783030398620 - 9783030398637 ; , s. 51-68
  • Book chapter (peer-reviewed)abstract
    • Optimisation of (the configuration and deployment of) distributed cloud applications is a complex problem that requires understanding factors such as infrastructure and application topologies, workload arrival and propagation patterns, and the predictability and variations of user behaviour. This chapter outlines the RECAP approach to application optimisation and presents its framework for joint modelling of applications, workloads, and the propagation of workloads in applications and networks. The interaction of the models and algorithms developed is described and presented along with the tools that build on them. Contributions in modelling, characterisation, and autoscaling of applications, as well as prediction and generation of workloads, are presented and discussed in the context of optimisation of distributed cloud applications operating in complex heterogeneous resource environments.
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19.
  • Östberg, Per-Olov, et al. (author)
  • Domain Models and Data Modeling as Drivers for Data Management : The ASSISTANT Data Fabric Approach
  • 2022
  • In: 10th IFAC Conference on Manufacturing Modelling, Management and Control MIM 2022. - : Elsevier. ; , s. 19-24
  • Conference paper (peer-reviewed)abstract
    • To develop AI-based models capable of governing or providing decision support to complex manufacturing environments, abstractions and mechanisms for unified management of data storage and processing capabilities are needed. Specifically, as such models tend to include and rely on detailed representations of systems, components, and tools with complex interactions, mechanisms for simplifying, integrating, and scaling management capabilities in the presence of complex data requirements (e.g., high volume, velocity, and diversity of data) are of particular interest. A data fabric is a system that provides a unified architecture for management and provisioning of data. In this work we present the background, design requirements, and high-level outline of the ASSISTANT data fabric - a flexible data management tool designed for use in adaptive manufacturing contexts. The paper outlines the implementation of the system with specific focus on the use of domain models and the data modeling approach used, as well as provides a generic use case structure reusable in many industrial contexts.
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  • Result 11-19 of 19
Type of publication
conference paper (9)
journal article (7)
book chapter (2)
other publication (1)
Type of content
peer-reviewed (18)
other academic/artistic (1)
Author/Editor
Östberg, Per-Olov (13)
Östberg, Per (5)
Elmroth, Erik (3)
Vyhmeister, Eduardo (3)
Domaschka, Jörg (3)
Leznik, Mark (3)
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Bhuyan, Monowar H. (2)
Patel, Yashwant Sing ... (2)
Meyers, Bart (2)
Casari, Paolo (2)
Tufvesson, Fredrik (1)
Årzén, Karl-Erik (1)
Beldiceanu, Nicolas (1)
Dolgui, Alexandre (1)
Kihl, Maria (1)
Saldert, Charlotta, ... (1)
Tärneberg, William (1)
Fitzgerald, Emma (1)
Ali-Eldin, Ahmed (1)
Blom Johansson, Moni ... (1)
Longoni, Francesca, ... (1)
Olsson, Daniel (1)
Carlsson, Marianne (1)
Deboussard, Catharin ... (1)
de la Iglesia, Idoia (1)
Eker, Johan (1)
Gonnermann, Clemens (1)
Gonzalez-Castañé, Ga ... (1)
Kousi, Niki (1)
Prud'homme, Julien (1)
Thevenin, Simon (1)
Borg, Jörgen (1)
Östberg, Erland, 197 ... (1)
Sonnander, Karin, 19 ... (1)
Bodnaruk, Andriy (1)
Lynn, Theo (1)
Castañé, G. (1)
Dolgui, A. (1)
Kousi, N. (1)
Meyers, B. (1)
Thevenin, S. (1)
Vyhmeister, E. (1)
Griesinger, Frank (1)
Ellis, Keith A. (1)
Fowley, Frank (1)
Kristiansson, Johan (1)
Edmark, Lennart, 195 ... (1)
Englund, Emma-Karin (1)
Jonsson, Alexandra S ... (1)
Zilic, Almira Tesker ... (1)
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University
Umeå University (13)
Uppsala University (4)
Karolinska Institutet (4)
University of Gothenburg (1)
University of Gävle (1)
Lund University (1)
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Stockholm School of Economics (1)
RISE (1)
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Language
English (19)
Research subject (UKÄ/SCB)
Engineering and Technology (9)
Natural sciences (8)
Medical and Health Sciences (5)
Social Sciences (1)

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