Harnessing Data Flow and Modelling Potentials for Sustainable Development

Tackling the global challenges relating to health, poverty, business, and the environment is heavily dependent on the flow and utilisation of data. However, while enhancements in data generation, storage, modelling, dissemination, and the related integration of global economies and societies are fas...

Full description

Bibliographic Details
Main Authors: Kassim S Mwitondi, Jamal B Bugrien
Format: Article
Language:English
Published: Ubiquity Press 2012-12-01
Series:Data Science Journal
Subjects:
Online Access:http://datascience.codata.org/articles/57
id doaj-5578f0c49a5a4346b5f8164e2c4fdb98
record_format Article
spelling doaj-5578f0c49a5a4346b5f8164e2c4fdb982020-11-24T23:09:07ZengUbiquity PressData Science Journal1683-14702012-12-011114015210.2481/dsj.009-02757Harnessing Data Flow and Modelling Potentials for Sustainable DevelopmentKassim S Mwitondi0Jamal B Bugrien1Sheffield Hallam University, Computing and Communications Research Centre, Sheffield S1 1WB, UKUniversity of Garyounis, Dept. of Statistics, Benghazi, LibyaTackling the global challenges relating to health, poverty, business, and the environment is heavily dependent on the flow and utilisation of data. However, while enhancements in data generation, storage, modelling, dissemination, and the related integration of global economies and societies are fast transforming the way we live and interact, the resulting dynamic, globalised, information society remains digitally divided. On the African continent in particular, this division has resulted in a gap between the knowledge generation and its transformation into tangible products and services. This paper proposes some fundamental approaches for a sustainable transformation of data into knowledge for the purpose of improving the people's quality of life. Its main strategy is based on a generic data sharing model providing access to data utilising and generating entities in a multi-disciplinary environment. It highlights the great potentials in using unsupervised and supervised modelling in tackling the typically predictive-in-nature challenges we face. Using both simulated and real data, the paper demonstrates how some of the key parameters may be generated and embedded in models to enhance their predictive power and reliability. The paper's conclusions include a proposed implementation framework setting the scene for the creation of decision support systems capable of addressing the key issues in society. It is expected that a sustainable data flow will forge synergies among the private sector, academic, and research institutions within and among countries. It is also expected that the paper's findings will help in the design and development of knowledge extraction from data in the wake of cloud computing and, hence, contribute towards the improvement in the people's overall quality of life. To avoid running high implementation costs, selected open source tools are recommended for developing and sustaining the system.http://datascience.codata.org/articles/57Cloud computingData miningDigital divideGlobalisationKnowledge transfer partnershipPredictive modelling and science technology and innovation (KTP)
collection DOAJ
language English
format Article
sources DOAJ
author Kassim S Mwitondi
Jamal B Bugrien
spellingShingle Kassim S Mwitondi
Jamal B Bugrien
Harnessing Data Flow and Modelling Potentials for Sustainable Development
Data Science Journal
Cloud computing
Data mining
Digital divide
Globalisation
Knowledge transfer partnership
Predictive modelling and science technology and innovation (KTP)
author_facet Kassim S Mwitondi
Jamal B Bugrien
author_sort Kassim S Mwitondi
title Harnessing Data Flow and Modelling Potentials for Sustainable Development
title_short Harnessing Data Flow and Modelling Potentials for Sustainable Development
title_full Harnessing Data Flow and Modelling Potentials for Sustainable Development
title_fullStr Harnessing Data Flow and Modelling Potentials for Sustainable Development
title_full_unstemmed Harnessing Data Flow and Modelling Potentials for Sustainable Development
title_sort harnessing data flow and modelling potentials for sustainable development
publisher Ubiquity Press
series Data Science Journal
issn 1683-1470
publishDate 2012-12-01
description Tackling the global challenges relating to health, poverty, business, and the environment is heavily dependent on the flow and utilisation of data. However, while enhancements in data generation, storage, modelling, dissemination, and the related integration of global economies and societies are fast transforming the way we live and interact, the resulting dynamic, globalised, information society remains digitally divided. On the African continent in particular, this division has resulted in a gap between the knowledge generation and its transformation into tangible products and services. This paper proposes some fundamental approaches for a sustainable transformation of data into knowledge for the purpose of improving the people's quality of life. Its main strategy is based on a generic data sharing model providing access to data utilising and generating entities in a multi-disciplinary environment. It highlights the great potentials in using unsupervised and supervised modelling in tackling the typically predictive-in-nature challenges we face. Using both simulated and real data, the paper demonstrates how some of the key parameters may be generated and embedded in models to enhance their predictive power and reliability. The paper's conclusions include a proposed implementation framework setting the scene for the creation of decision support systems capable of addressing the key issues in society. It is expected that a sustainable data flow will forge synergies among the private sector, academic, and research institutions within and among countries. It is also expected that the paper's findings will help in the design and development of knowledge extraction from data in the wake of cloud computing and, hence, contribute towards the improvement in the people's overall quality of life. To avoid running high implementation costs, selected open source tools are recommended for developing and sustaining the system.
topic Cloud computing
Data mining
Digital divide
Globalisation
Knowledge transfer partnership
Predictive modelling and science technology and innovation (KTP)
url http://datascience.codata.org/articles/57
work_keys_str_mv AT kassimsmwitondi harnessingdataflowandmodellingpotentialsforsustainabledevelopment
AT jamalbbugrien harnessingdataflowandmodellingpotentialsforsustainabledevelopment
_version_ 1725611446019031040