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An AI based talent acquisition and benchmarking for job

2020-08-12 15:57:54
Rudresh Mishra, Ricardo Rodriguez, Valentin Portillo

Abstract

In a recruitment industry, selecting a best CV from a particular job post within a pile of thousand CV's is quite challenging. Finding a perfect candidate for an organization who can be fit to work within organizational culture is a difficult task. In order to help the recruiters to fill these gaps we leverage the help of AI. We propose a methodology to solve these problems by matching the skill graph generated from CV and Job Post. In this report our approach is to perform the business understanding in order to justify why such problems arise and how we intend to solve these problems using natural language processing and machine learning techniques. We limit our project only to solve the problem in the domain of the computer science industry.

Abstract (translated)

URL

https://arxiv.org/abs/2009.09088

PDF

https://arxiv.org/pdf/2009.09088.pdf


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