Evaluating the convergence of high-performance computing with big data, artificial intelligence and cloud computing technologies

Download
2023-1-24
Dildar Korkmaz, Yeşim
The advancements in High-Performance Computing (HPC), Big Data, Artificial Intelligence (AI), and Cloud Computing technologies have led to a convergence of these fields, resulting in the emergence of significant improvements for a wide range of fields. Identifying the state of development of technology convergence and forecasting promising technology convergence is critical for both academia and industry. That's why technology assessment and forecasting for HPC-Big Data-AI-Cloud Computing convergence is needed. The purpose of this thesis is to evaluate the convergence of HPC with Big Data, AI, and Cloud Computing technologies. In this thesis, a bibliometric analysis approach is conducted, including performance analysis and network analysis to identify the research trends and themes for the convergence of these technologies. The results of the analysis reveal a rapidly growing literature with a significant increase in research activities in this field in recent years. This study identifies key trends and patterns in the literature, including top published authors, most productive institutions, cited articles, and influential publications. In addition, research trends and thematic evolution analysis are carried out in this study. Existing studies that assess and forecast computational technologies do not consider the effect of convergence and do not apply bibliometric analysis in the field of HPC. This thesis provides valuable insights by identifying the bibliometric trends across the concept of technological convergence of HPC- Big Data-AI-Cloud Computing technologies.

Suggestions

A Distributed Monitoring and Reconfiguration Approach for Adaptive Network Computing
Bhargava, Bharat; Angın, Pelin; Ranchal, Rohit; Lingayat, Sunil (2015-01-01)
The past decade has witnessed immense developments in the field of network computing thanks to the rise of the cloud computing paradigm, which enables shared access to a wealth of computing and storage resources without needing to own them. While cloud computing facilitates on-demand deployment, mobility and collaboration of services, mechanisms for enforcing security and performance constraints when accessing cloud services are still at an immature state. The highly dynamic nature of networks and clouds ma...
A Structural Model for Students' Adoption of Learning Management Systems: An Empirical Investigation in the Higher Education Context
FINDIK COŞKUNÇAY, Duygu; Alkis, Nurcan; Özkan Yıldırım, Sevgi (2018-04-01)
With the recent advances in information technologies, Learning Management Systems have taken on a significant role in providing educational resources. The successful use of these systems in higher education is important for the implementation, management and continuous improvement of e-learning services to increase the quality of learning. This study aimed to identify the factors affecting higher education students' behavioral intention towards Learning Management Systems. A research model was proposed base...
A Review on Interpretable and Explainable Artificial Intelligence in Hydroclimatic Applications
Basagaoglu, Hakan; Chakraborty, Debaditya; Do Lago, Cesar; Gutierrez, Lilianna; ŞAHİNLİ, MEHMET ARİF; Giacomoni, Marcio; Furl, Chad; Mirchi, Ali; Moriasi, Daniel; Şengör, Sema Sevinç (2022-04-01)
This review focuses on the use of Interpretable Artificial Intelligence (IAI) and eXplainable Artificial Intelligence (XAI) models for data imputations and numerical or categorical hydroclimatic predictions from nonlinearly combined multidimensional predictors. The AI models considered in this paper involve Extreme Gradient Boosting, Light Gradient Boosting, Categorical Boosting, Extremely Randomized Trees, and Random Forest. These AI models can transform into XAI models when they are coupled with the expla...
DEVELOPING AN ARCHITECTURAL FRAMEWORK FOR FACILITATING TRANSFORMATION TOWARDS DATA-DRIVEN ORGANIZATIONS
Kayabay, Kerem; Eren, Pekin Erhan; Gökalp, Ebru; Department of Information Systems (2022-2-11)
Paradigm shifts such as digital transformation and Industry 4.0 produce complex data, also called big data. Businesses increasingly focus on exploiting big data for competitive advantage, leveraging data science. However, many industries cannot effectively leverage data science since no comprehensive approach allows strategic planning for organization-wide data science projects and data assets. After recognizing the industry`s need, this thesis explores the Data Science Roadmapping Framework`s (DSR) develop...
Assessing Information Technology Use in Organizations: Developing a Framework
Sezgin, Emre; Özkan Yıldırım, Sevgi (2011-10-07)
Increasing use of current and developing information technologies (IT) within business and production processes is a required transformation to survive in the market. However. IT should be well-managed to be adapted by an organization as a whole. This study proposes a new model for the assessment of IT use in organizations. The aim is to assist decision making processes in information technology management through exploring strength and weaknesses of organization on IT tools and applications. The model has ...
Citation Formats
Y. Dildar Korkmaz, “Evaluating the convergence of high-performance computing with big data, artificial intelligence and cloud computing technologies,” M.S. - Master of Science, Middle East Technical University, 2023.