Case Report Open Access December 27, 2019

Data Engineering Frameworks for Optimizing Community Health Surveillance Systems

1
Support Engineer, Microsoft Corporation, Charlotte NC, USA
Page(s): 1-17
Received
September 19, 2019
Revised
November 26, 2019
Accepted
December 22, 2019
Published
December 27, 2019
Creative Commons

This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited.
Copyright: Copyright © The Author(s), 2019. Published by Scientific Publications
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APA Style
Ganti, V. K. A. T. (2019). Data Engineering Frameworks for Optimizing Community Health Surveillance Systems. Current Research in Public Health, 1(1), 1-17. https://doi.org/10.31586/gjmcr.2019.1255
ACS Style
Ganti, V. K. A. T. Data Engineering Frameworks for Optimizing Community Health Surveillance Systems. Current Research in Public Health 2019 1(1), 1-17. https://doi.org/10.31586/gjmcr.2019.1255
Chicago/Turabian Style
Ganti, Venkata Krishna Azith Teja. 2019. "Data Engineering Frameworks for Optimizing Community Health Surveillance Systems". Current Research in Public Health 1, no. 1: 1-17. https://doi.org/10.31586/gjmcr.2019.1255
AMA Style
Ganti VKAT. Data Engineering Frameworks for Optimizing Community Health Surveillance Systems. Current Research in Public Health. 2019; 1(1):1-17. https://doi.org/10.31586/gjmcr.2019.1255
@Article{crph1255,
AUTHOR = {Ganti, Venkata Krishna Azith Teja},
TITLE = {Data Engineering Frameworks for Optimizing Community Health Surveillance Systems},
JOURNAL = {Current Research in Public Health},
VOLUME = {1},
YEAR = {2019},
NUMBER = {1},
PAGES = {1-17},
URL = {https://www.scipublications.com/journal/index.php/GJMCR/article/view/1255},
ISSN = {2831-5162},
DOI = {10.31586/gjmcr.2019.1255},
ABSTRACT = {A Changing World Demands Optimized Health Surveillance Systems – and How Data Engineering Can Help There is a growing urgency to manage the public health and emergency response practices effectively today, in light of complex and emerging health threats. Fortunately, a host of new tools, including big and streaming data sources, methods such as machine learning, new types of hardware like blockchain or secure enclaves, and means of data storage and retrieval, have emerged. But, with these innovations comes a grand challenge: how to blend with, and adapt them to, the traditional public health practices. The long-in-place infrastructures and protocols to protect and ensure the welfare of communities are in need of change, or at least update, to enhance their marked longevity of impact directly on the health outcomes and community wellbeing they were designed to fortify. It is in this vein that the essay is written and composed. The investigation in this essay is to query what, particularly, might be the aspects and influences of the emerging veritable cornucopia of new data engineering frameworks that are either being developed specifically for health surveillance and wellness, or are available to be co opted from devices and services already thriving in the current market and research milieu. Knowing what these ways may be could well aid in molding their uptake and spread, ensuring their beneficial impacts on those communities who stand to gain the most. The essay is divided into several key segments. After this introduction, section two details the research methods. In the section that follows, the maximum health outcome potentials of these novel frameworks are reviewed. Part four of the essay takes a more critical approach, addressing how the success of these methods may be hindered and future research avenues. Lastly, the concluding information suggests some actions to take to aid best suit the implementation of these ways, and suggests some thoughts for further research after the completion of these inquiriestrand [1].},
}
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AB  - A Changing World Demands Optimized Health Surveillance Systems – and How Data Engineering Can Help There is a growing urgency to manage the public health and emergency response practices effectively today, in light of complex and emerging health threats. Fortunately, a host of new tools, including big and streaming data sources, methods such as machine learning, new types of hardware like blockchain or secure enclaves, and means of data storage and retrieval, have emerged. But, with these innovations comes a grand challenge: how to blend with, and adapt them to, the traditional public health practices. The long-in-place infrastructures and protocols to protect and ensure the welfare of communities are in need of change, or at least update, to enhance their marked longevity of impact directly on the health outcomes and community wellbeing they were designed to fortify. It is in this vein that the essay is written and composed. The investigation in this essay is to query what, particularly, might be the aspects and influences of the emerging veritable cornucopia of new data engineering frameworks that are either being developed specifically for health surveillance and wellness, or are available to be co opted from devices and services already thriving in the current market and research milieu. Knowing what these ways may be could well aid in molding their uptake and spread, ensuring their beneficial impacts on those communities who stand to gain the most. The essay is divided into several key segments. After this introduction, section two details the research methods. In the section that follows, the maximum health outcome potentials of these novel frameworks are reviewed. Part four of the essay takes a more critical approach, addressing how the success of these methods may be hindered and future research avenues. Lastly, the concluding information suggests some actions to take to aid best suit the implementation of these ways, and suggests some thoughts for further research after the completion of these inquiriestrand [1].
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