Research Article

, 27 Jun 2024 | 10.6234610.62346/ijcn_q2_v12_no2_24_02
Year : 2024 | Volume: 12 | Issue: 2 | Pages : 1-5

Career Planning HUB Using Artificial Intelligence

S. Nithya1 *, Balamurugan.B, Jefrin Raj.P
  • 1Anna University Chennai, Assistant Professor, VTHT, Chennai, IN

The Career Planning Hub chatbot, powered by Convolutional Neural Network (CNN) algorithms, offers personalized guidance to individuals navigating educational and career decisions post-10th and post-12th grade. Beyond suggesting government exams or assisting in selecting 11th-grade streams like biology or computer science for 10th-grade completers, the chatbot provides comprehensive insights. It assesses users' interests and aptitudes to recommend suitable career paths within these streams. Furthermore, for individuals who did not pass the 10th grade, the chatbot extends its support by suggesting vocational training programs and apprenticeships in addition to ITI programs. Upon successful completion of the 12th grade, the chatbot doesn't merely suggest colleges and departments but also offers insights into specialized courses, internships, and scholarships aligned with the user's interests. Moreover, the chatbot's functionality extends to providing guidance on entrance exams, fostering holistic career development. By leveraging CNN algorithms, the Career Planning Hub chatbot aims to not only streamline career planning but also to empower users with actionable insights, enabling them to make informed decisions and embark on fulfilling career paths.

Conclusion

Throughout this project, we have witnessed the transformative potential of leveraging advanced technologies to streamline the career planning process and empower individuals to make informed decisions about their future. By providing comprehensive guidance on academic streams, vocational training programs, colleges, internships, scholarships, and government exams, the chatbot serves as a valuable resource for users seeking clarity and direction in their educational and career pursuits. Moreover, the development of the Career Planning Hub chatbot underscores our commitment to democratizing access to educational and career opportunities. By harnessing the power of technology, we aim to ensure that every individual, regardless of their background or circumstances, has the tools and resources they need to achieve their full potential and embark on a path of lifelong learning and growth.

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Keywords: Job recommender system, learning path recommender, deep neural networks, natural language processing.

Citation: S. Nithya*, S. Nithya ( 2024), Career Planning HUB Using Artificial Intelligence. , 12(2): 1-5

Received: 24/06/2024; Accepted: 25/06/2024;
Published: 27/06/2024

Edited by:

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Copyright: @ERES Publications.

*Correspondence: S. Nithya, nithyas@velhightech.com


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