Optimizing role assignment for scaling innovations through AI in agricultural frameworks: An effective approach

Sonia Bisht, Ranjana, Swapnila Roy
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引用次数: 0

Abstract

Context

In the dynamic and constantly evolving world of agriculture, promoting innovation and ensuring sustainable growth are crucial. A planned division of tasks and responsibilities within agricultural systems, known as efficient role allocation, is necessary to make this vision a reality. Climate-smart agriculture (CSA) movement enjoys widespread support from the research and development community because it seeks to improve livelihoods in response to climate change.

Objective

This study explores an innovative approach to optimizing role assignment within agricultural frameworks to effectively scale AI-driven innovations. By leveraging advanced algorithms and machine learning techniques, the research aims to streamline the allocation of tasks and responsibilities among various stakeholders, including farmers, agronomists, technicians, and AI systems.

Methods

The methodology involves the development of a dynamic role assignment model that considers factors such as expertise, resource availability, and real-time environmental data. This model is tested in various agricultural scenarios to evaluate its impact on operational efficiency and innovation scalability. The findings demonstrate that optimized role assignment not only enhances the performance of AI applications but also fosters a collaborative ecosystem that is adaptable to changing agricultural demands.

Results

& Discussion:This research finds a number of elements that affect how well duties are distributed within agricultural frameworks, including organizational frameworks, leadership, resource accessibility, and cooperative efforts through AI. In addition to advocating for its comprehensive integration into the sector's culture, this paper offers a collection of best practices and techniques for optimizing role allocation in agriculture. Additionally, the study gives a thorough overview, summary, and analysis of a few papers that are specifically concerned with scaling innovation in the field of agricultural research for development.

Significance

Furthermore, the study highlights the potential of AI to transform traditional farming practices, reduce labor-intensive processes, and improve decision-making accuracy. The proposed approach serves as a blueprint for agricultural enterprises aiming to adopt AI technologies while ensuring optimal utilization of human and technological resources. By addressing the challenges of role ambiguity and resource allocation, this research contributes to the broader goal of achieving sustainable and resilient agricultural systems through technological innovation.
优化角色分配,通过农业框架中的人工智能扩大创新规模:一种有效的方法
在充满活力和不断变化的农业世界中,促进创新和确保可持续增长至关重要。要使这一愿景成为现实,必须在农业系统内有计划地划分任务和责任,即有效的角色分配。气候智慧型农业(CSA)运动寻求改善生计以应对气候变化,因此得到了研发界的广泛支持。本研究探索了一种优化农业框架内角色分配的创新方法,以有效地扩大人工智能驱动的创新。通过利用先进的算法和机器学习技术,该研究旨在简化包括农民、农艺师、技术人员和人工智能系统在内的各种利益相关者之间的任务和责任分配。方法该方法涉及动态角色分配模型的开发,该模型考虑了诸如专业知识、资源可用性和实时环境数据等因素。该模型在各种农业场景中进行了测试,以评估其对运营效率和创新可扩展性的影响。研究结果表明,优化的角色分配不仅可以提高人工智能应用的性能,还可以培养一个适应不断变化的农业需求的协作生态系统。讨论:本研究发现了一些影响农业框架内职责分配的因素,包括组织框架、领导力、资源可及性和通过人工智能进行的合作努力。除了提倡将其全面融入农业文化之外,本文还提供了优化农业角色分配的最佳实践和技术集合。此外,该研究对一些专门关注农业研究促进发展领域的规模创新的论文进行了全面的概述、总结和分析。此外,该研究还强调了人工智能在改变传统农业实践、减少劳动密集型流程和提高决策准确性方面的潜力。该方法为旨在采用人工智能技术的农业企业提供了蓝图,同时确保人力和技术资源的最佳利用。通过解决角色模糊和资源分配的挑战,本研究有助于通过技术创新实现可持续和有弹性的农业系统这一更广泛的目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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