Analysis of Indian Agricultural Ecosystem using Knowledge-based Tantra
Framework
- URL: http://arxiv.org/abs/2110.09297v1
- Date: Wed, 13 Oct 2021 13:54:23 GMT
- Title: Analysis of Indian Agricultural Ecosystem using Knowledge-based Tantra
Framework
- Authors: Shreekanth M Prabhu and Natarajan Subramanyam
- Abstract summary: It is a mammoth task to assimilate the information for the whole ecosystem consisting of consumers, producers, workers, traders, transporters, industry, and Government.
In this paper, we make use of the Knowledge-based Tantra Social Information Management Framework to analyze the Indian Agricultural Ecosystem.
- Score: 0.38073142980733
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The information systems have been extremely useful in managing businesses,
enterprises, and public institutions such as government departments. But
current challenges are increasingly about managing ecosystems. Ecosystem is a
useful paradigm to better understand a variety of domains such as biology,
business, industry, agriculture, and society. In this paper, we look at the
Indian Agricultural ecosystem. It is a mammoth task to assimilate the
information for the whole ecosystem consisting of consumers, producers,
workers, traders, transporters, industry, and Government. There are myriad
interventions by the state and the central Governments, whose efficacy is
difficult to track and the outcomes hard to assess. A policy intervention that
helps one part of the ecosystem can harm the other. In addition, sustainability
and ecological considerations are also extremely important. In this paper, we
make use of the Knowledge-based Tantra Social Information Management Framework
to analyze the Indian Agricultural Ecosystem and build related Knowledge
Graphs. Our analysis spans descriptive, normative, and transformative
viewpoints. Tantra Framework makes use of concepts from Zachman Framework to
manage aspects of social information through different perspectives and
concepts from Unified Foundational Ontology (UFO) to represent
interrelationships between aspects.
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