AI-Powered Career Counseling in Vocational Education: Enhancing Career Pathways

Main Article Content

Prof. Daniel Kull

Abstract

Career counseling plays a crucial role in helping students navigate their vocational education journey and align their skills with industry demands. This paper explores how Artificial Intelligence (AI) can enhance career counseling services in vocational education by providing data-driven insights into job market trends, skills demand, and personalized career advice. The study investigates AI-powered tools such as chatbots, recommendation systems, and predictive analytics to offer tailored career guidance to students. It also discusses the benefits of AI in improving career outcomes for vocational education graduates and explores the integration of AI-driven career counseling into existing educational frameworks.

Article Details

How to Cite
Kull, P. D. (2025). AI-Powered Career Counseling in Vocational Education: Enhancing Career Pathways. International Meridian Journal, 7(7). https://meridianjournal.in/index.php/IMJ/article/view/109
Section
Articles

How to Cite

Kull, P. D. (2025). AI-Powered Career Counseling in Vocational Education: Enhancing Career Pathways. International Meridian Journal, 7(7). https://meridianjournal.in/index.php/IMJ/article/view/109

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