Knowledge Society in Agriculture and Digital Networks for Farmers by using Spatial Data Mining

Mr. M. Srinivasan, Vel Tech University; Dr. S. Koteeswaran ,Veltech University

Technology Centers (TC), Advanced Intelligent Network, Spatial Data Mining, Agriculture Information Systems, Data extensive analysis, System integration

Agriculture is a driving force for fundamental force for economic and social revolution. We identify the clear road map to the Indian farmers through the Technology Centers. It speedup the globalization and it makes to knowledge and information so easier for the Indian farmers. To achieve the knowledge society in Indian agriculture, easily get the Information about agriculture through the information center at every village and interactive exchange of information for planning and day by day operation agronomists. The farmers easily connect and plug in to agriculture most recent advanced network the livelihood of farmers by making the data very useful and accessible. Our aim collects the data from agriculture department and cooperation foresees that the tool of KSA (Knowledge Society Agriculture) it will provide the network in agriculture field. Even globally and the central, state government sectors will have not have databases. Convey farmers, scientist, researchers, scholars and network engineers combine together by creating the Modern digital networks for Farmers through KSA Agricultures in online to interchange the ideas and agriculture information.
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Paper ID: GRDJEV01I120015
Published in: Volume : 1, Issue : 12
Publication Date: 2016-12-01
Page(s): 25 - 29