Shailja-Jindal / Bidirectional-Job-Resume-Recommender-System
A must have tool for job seekers and recruiters. This project is intended to find and recommend the best fit. Job seekers can find best matching jobs to their resume and Recruiters find the best fit resumes for any job posting. Its based on Machine learning "NLP" concepts of text content match via Doc2Vec and similarity scores.
☆33Updated 4 years ago
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