THE ROLE OF IOT IN AGRICULTURE FIELDS
Keywords:
Agriculture, IoT, Sensors, Smart Farming, Raspberri Pi3Abstract
Today, majority of the farmers are dependent on agriculture for their survival. But majority of the agricultural tools and practices are outdated and it yields less crop products, because everything is depends on environment and Government support. The world population is becoming more comparatively cultivation land and crop yield. It is essential for the world to increase the yielding of the crop by adopting information technology and communication plays a vital role in smart farming. The objective of this research paper to present tools and best practices for understanding the role of information and communication technologies in agriculture sector, motivate and make the illiterate farmers to understand the best insights given by the big data analytics using machine learning.
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