Conceptualizing A Multi-Sided Platform For Cloud Computing Resource
Trading
- URL: http://arxiv.org/abs/2305.07399v1
- Date: Fri, 12 May 2023 11:52:58 GMT
- Title: Conceptualizing A Multi-Sided Platform For Cloud Computing Resource
Trading
- Authors: Franziska Haller, Max Schemmer, Niklas K\"uhl, Carsten Holtmann
- Abstract summary: A typical data center produces approximately 30% overcapacity annually.
This overcapacity has severe environmental and economic consequences.
We propose a multi-sided platform for CCR trading.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Cost-effective and responsible use of cloud computing resources (CCR) is on
the business agenda of many companies. Despite this strategic goal, two
geopolitical strategy decisions mainly influence the continuous existence of
overcapacity: Europe's General Data Protection Regulation and the US's Cloud
Act. Given the circumstances, a typical data center produces approximately 30%
overcapacity annually. This overcapacity has severe environmental and economic
consequences. Our work addresses this overcapacity by proposing a multi-sided
platform for CCR trading. We initiate our research by conducting a literature
review to explore the existing body of knowledge which indicates a lack of
recent and evaluated platform design knowledge for CCR trading. We address this
research gap by deriving design requirements and design principles. We
instantiate and evaluate the design knowledge in a respective platform
framework. Thus, we contribute to research and practice by deriving and
evaluating design knowledge and proposing a platform framework.
Related papers
- Data-driven quantitative analysis of an integrated open digital
ecosystems platform for user-centric energy retrofits: A case study in
Northern Sweden [0.0]
We present an open digital ecosystem based on web-framework with a functional back-end server in user-centric energy retrofits.
Data-driven web framework is proposed for building energy renovation benchmarking.
arXiv Detail & Related papers (2023-09-21T08:05:10Z) - Risk-reducing design and operations toolkit: 90 strategies for managing
risk and uncertainty in decision problems [65.268245109828]
This paper develops a catalog of such strategies and develops a framework for them.
It argues that they provide an efficient response to decision problems that are seemingly intractable due to high uncertainty.
It then proposes a framework to incorporate them into decision theory using multi-objective optimization.
arXiv Detail & Related papers (2023-09-06T16:14:32Z) - Need-driven decision-making and prototyping for DLT: Framework and
web-based tool [0.0]
Multiple groups attempted to disentangle the technology from the associated hype and controversy.
We develop a holistic analytical framework and open-source web tool for making evidence-based decisions.
arXiv Detail & Related papers (2023-07-18T12:19:47Z) - On solving decision and risk management problems subject to uncertainty [91.3755431537592]
Uncertainty is a pervasive challenge in decision and risk management.
This paper develops a systematic understanding of such strategies, determine their range of application, and develop a framework to better employ them.
arXiv Detail & Related papers (2023-01-18T19:16:23Z) - Deep Recurrent Learning Through Long Short Term Memory and TOPSIS [0.0]
Cloud computing's cheap, easy and quick management promise pushes business-owners for a transition from monolithic to a data-center/cloud based ERP.
Since cloud-ERP development involves a cyclic process, namely planning, implementing, testing and upgrading, its adoption is realized as a deep recurrent neural network problem.
Our theoretical model is validated over a reference model by articulating key players, services, architecture, functionalities.
arXiv Detail & Related papers (2022-12-30T10:35:25Z) - Measuring the Carbon Intensity of AI in Cloud Instances [91.28501520271972]
We provide a framework for measuring software carbon intensity, and propose to measure operational carbon emissions.
We evaluate a suite of approaches for reducing emissions on the Microsoft Azure cloud compute platform.
arXiv Detail & Related papers (2022-06-10T17:04:04Z) - QSDsan: An Integrated Platform for Quantitative Sustainable Design of
Sanitation and Resource Recovery Systems [4.68128997208138]
QSDsan is an open-source tool written in Python for the quantitative sustainable design of sanitation and resource recovery systems.
We show the utility of QSDsan to automate design, enable flexible process modeling, achieve rapid and reproducible simulations, and to perform advanced statistical analyses with integrated visualization.
arXiv Detail & Related papers (2022-03-07T18:42:15Z) - YMIR: A Rapid Data-centric Development Platform for Vision Applications [82.67319997259622]
This paper introduces an open source platform for rapid development of computer vision applications.
The platform puts the efficient data development at the center of the machine learning development process.
arXiv Detail & Related papers (2021-11-19T05:02:55Z) - The Decision Criteria Used by Large Enterprises in South Africa for the
Adoption of Cloud Computing [0.0]
This study investigates the decision criteria used by large enterprises in South Africa (SA) for the adoption of cloud technology.
Findings revealed that large enterprises do not make use of a formalized or standardized decision criteria.
Security, cloud service provider adoption frameworks and data sovereignty were the key criteria used to select a CC service provider.
arXiv Detail & Related papers (2021-08-22T15:33:55Z) - Power Modeling for Effective Datacenter Planning and Compute Management [53.41102502425513]
We discuss two classes of statistical power models designed and validated to be accurate, simple, interpretable and applicable to all hardware configurations and workloads.
We demonstrate that the proposed statistical modeling techniques, while simple and scalable, predict power with less than 5% Mean Absolute Percent Error (MAPE) for more than 95% diverse Power Distribution Units (more than 2000) using only 4 features.
arXiv Detail & Related papers (2021-03-22T21:22:51Z) - Knowledge Integration of Collaborative Product Design Using Cloud
Computing Infrastructure [65.2157099438235]
The main focus of this paper is the concept of ongoing research in providing the knowledge integration service for collaborative product design and development using cloud computing infrastructure.
Proposed knowledge integration services support users by giving real-time access to knowledge resources.
arXiv Detail & Related papers (2020-01-16T18:44:27Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.