Rural Education and Employment Skill Improvement Model Using Artificial Intelligence

Main Article Content

B. Srinivasu Kumar
V. Madhuri
P. Lakhmi Pravallika
S. Ravi Teja
R. Saranya

Abstract

This groundbreaking initiative introduces an advanced AI-powered model designed to revolutionize education and employment prospects in rural communities. The Rural Education and Employment Skill Improvement Model is an all-encompassing solution that adapts learning paths using sophisticated AI algorithms, ensuring a personalized approach tailored to the unique challenges faced by rural learners. This model collaborates closely with local educators, leveraging technology to augment traditional teaching methods and bridge the digital divide. At its core, a cutting-edge Learning Management System (LMS) powered by AI integrates various features, including interactive video tutorials, real-time assessments, and a dynamic grading system. The system goes beyond conventional evaluations by employing AI to monitor and prevent cheating during exams, ensuring a fair and secure evaluation process. The multifaceted LMS also includes a job portal, facilitating a seamless transition from academia to the professional arena. Live meeting classes create an interactive virtual environment for real-time engagement, complemented by community discussion chat for collaborative learning. Notably, the project introduces a unique article-creation feature, allowing both instructors and students to contribute valuable content to the educational community. The success metrics of this ambitious project include improved educational outcomes, increased employment rates, and an overall enhancement in community well-being. Serving as a scalable and adaptable solution, this AI-driven model offers a transformative blueprint for leveraging technology to empower individuals in rural areas, paving the way for a more prosperous economic future.

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How to Cite
B. Srinivasu Kumar, V. Madhuri, P. Lakhmi Pravallika, S. Ravi Teja, & R. Saranya. (2024). Rural Education and Employment Skill Improvement Model Using Artificial Intelligence. Journal of Advanced Zoology, 45(S2), 9–17. https://doi.org/10.53555/jaz.v45iS2.3700
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Articles
Author Biographies

B. Srinivasu Kumar

Dept. of IT, SR Gudlavalleru Engineering College, Gudlavalleru, Andhra Pradesh-521356

V. Madhuri

Dept. of IT, SR Gudlavalleru Engineering College, Gudlavalleru, Andhra Pradesh-521356

P. Lakhmi Pravallika

Dept. of IT, SR Gudlavalleru Engineering College, Gudlavalleru, Andhra Pradesh-521356

S. Ravi Teja

Dept. of IT, SR Gudlavalleru Engineering College, Gudlavalleru, Andhra Pradesh-521356

R. Saranya

Dept. of IT, SR Gudlavalleru Engineering College, Gudlavalleru, Andhra Pradesh-521356

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