A Thorough Examination of How Artificial Intelligence is Affecting the Transformation of Agriculture in India and Throughout the World

Year : 2025 | Volume : 14 | Issue : 03 | Page : 39 45
    By

    Neha Luthra,

  • gagandeep Singh,

  1. Research Scholar, SEDA-E CSE,GNA UNIVERSITY, , India
  2. Associate Professor, SEDA-E CSE,GNA UNIVERSITY, , India

Abstract

By providing creative ways to increase crop yields, maximize resource usage, and advance sustainability, artificial intelligence (AI) is revolutionizing agriculture. AI technologies, such as machine learning, computer vision, and robotics, are being increasingly used in precision farming, crop monitoring, disease detection, and decision-making as the global agricultural sector faces pressing challenges like food security, population growth, and climate change. AI enables farmers to make data-driven decisions, optimize irrigation systems, monitor soil health, and detect crop stress at early stages, thereby minimizing losses and enhancing productivity. In India, where agriculture continues to be the backbone of the economy, AI applications are proving especially valuable. Tools such as drone-based imaging, automated pest identification, and smart weather forecasting models are assisting farmers in small and large-scale operations. AI-driven advisory platforms are also empowering rural communities by offering timely insights on market trends, crop pricing, and best cultivation practices. Globally, AI is being integrated into advanced technologies like autonomous tractors, robotic harvesters, and IoT-enabled devices, which together create a more connected and efficient farming ecosystem. This review summarizes research results from studies conducted between 2010 and 2022, with an emphasis on how AI is reshaping both global and Indian agriculture. Although challenges such as high implementation costs, lack of skilled manpower, data quality issues, and system integration remain, the potential of AI to revolutionize farming and promote sustainable agricultural development is immense. As AI continues to evolve, it holds the promise of building a more resilient, resource-efficient, and food-secure future.

Keywords: Agriculture, Artificial Intelligence, Crop, Disease,AI,Farming, forecoasting

[This article belongs to Research & Reviews : Journal of Agricultural Science and Technology ]

How to cite this article:
Neha Luthra, gagandeep Singh. A Thorough Examination of How Artificial Intelligence is Affecting the Transformation of Agriculture in India and Throughout the World. Research & Reviews : Journal of Agricultural Science and Technology. 2025; 14(03):39-45.
How to cite this URL:
Neha Luthra, gagandeep Singh. A Thorough Examination of How Artificial Intelligence is Affecting the Transformation of Agriculture in India and Throughout the World. Research & Reviews : Journal of Agricultural Science and Technology. 2025; 14(03):39-45. Available from: https://journals.stmjournals.com/rrjoast/article=2025/view=229389


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Regular Issue Subscription Review Article
Volume 14
Issue 03
Received 17/08/2025
Accepted 10/09/2025
Published 27/09/2025
Publication Time 41 Days


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