Affiliation:
1. Khwaja Fareed University of Engineering and Information Technology, Rahim Yar Khan, Pakistan
2. Universitas Al Asyariah Mandar, Sulawesi Barat, Indonesia
Abstract
The integration of AI and IoT in agriculture has sparked a transformative revolution in conventional farming practices. This abstract underscores the profound impact of AI and IoT technologies in the agricultural domain, emphasizing their pivotal role in enhancing productivity, optimizing resources, and driving sustainability. The symbiosis between AI and IoT has unlocked a multitude of opportunities in agriculture. By deploying IoT sensors, drones, and smart devices across agricultural landscapes, real-time data on soil conditions, weather patterns, and crop health can be meticulously collected and seamlessly transmitted. AI algorithms then process this data, empowering farmers to make well-informed decisions and fine-tune agricultural operations with unparalleled precision. Precision agriculture emerges as a transformative application of AI and IoT in farming. Through AI-powered analytics, farmers can optimize resource allocation, precisely administer water, fertilizers, and pesticides, thereby minimizing wastage.
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