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Challenges, Opportunities, and the Future of Agricultural Innovations Through AI

In: Transforming Agriculture through Artificial Intelligence for Sustainable Food Systems

Author

Listed:
  • Sanjeev Kumar

    (Lovely Professional University)

  • Sapna Jarial

    (Lovely Professional University)

  • N. D. Chethan Patil

    (Lovely Professional University)

Abstract

Artificial intelligence (AI) is revolutionizing agriculture by significantly enhancing efficiency and productivity for sustainable agriculture. AI technologies with precision help in cultivating healthier crops, optimize planting schedules, select suitable seeds based on weather conditions, provide weather forecasts, pest control, soil monitoring and data analysis for farmers. AI-powered solutions improve crop quality, increase yields with fewer resources, and speed up market delivery. By providing professional knowledge and analytical tools, AI can support better agriculture, increase productivity and reduce waste in the production of vegetables, rice and biofuels, while also reducing environmental impact. However, the benefits are counteracting by considerable constraints. Agriculture AI integration presents numerous challenges, including the need for high-quality data, technological infrastructure, exclusion of women and marginalised communities, ethical concerns related to data privacy and job displacement. This chapter examines AI’s role in agriculture, detailing its applications and benefits, and highlights the challenges and future potential of AI in farming.

Suggested Citation

  • Sanjeev Kumar & Sapna Jarial & N. D. Chethan Patil, 2025. "Challenges, Opportunities, and the Future of Agricultural Innovations Through AI," Springer Books, in: Priyanka Lal & Pradeep Mishra (ed.), Transforming Agriculture through Artificial Intelligence for Sustainable Food Systems, chapter 0, pages 201-212, Springer.
  • Handle: RePEc:spr:sprchp:978-981-96-4795-8_12
    DOI: 10.1007/978-981-96-4795-8_12
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    Keywords

    Agri AI; Obstacles; Potential; Future;
    All these keywords.

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