AI-Driven Job Matching System Using Machine Learning
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Abstract
This system presents an AI-driven job matching system designed to enhance the reclamation process for both job campaigners and Babe. Exercising Python libraries similar to Pandas, NumPy, and Scikit- learn, the operation integrates face recognition and voice analysis to pre-process stoner datasets effectively. Job campaigners input their chops, ask companies, job titles, interests, and notice ages, while the system generates substantiated career guidance, including recommended courses, tutorials, and upskilling roadmaps. By scraping job perceptivity directly from company career runners, the operation offers druggies real-time information on available positions acclimatized to their qualifications. For Babe, this tool streamlines gift accession by relating the best-fit campaigners from a pool of aspirants. Overall, this system aims to grease meaningful connections between job campaigners and employers, optimizing the job hunt and reclamation experience.