A smart resume screening tool for customized shortlisting

Hundreds of resumes are received, processed, and managed by large companies and recruitment agencies. Furthermore, many people post their resumes on the internet. Organizations all across the world, on the other hand, are battling to locate the greatest resource. To complete this work, these organis...

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Main Authors: Tijare Poonam, Waseem Mohammed, Sherani Mohd Azaan, Sai Krishna Kornipalli Sampath Kumargari, Kavitha P.
Format: Article
Language:English
Published: EDP Sciences 2023-01-01
Series:ITM Web of Conferences
Online Access:https://www.itm-conferences.org/articles/itmconf/pdf/2023/06/itmconf_icdsac2023_04001.pdf
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author Tijare Poonam
Waseem Mohammed
Sherani Mohd Azaan
Sai Krishna Kornipalli Sampath Kumargari
Kavitha P.
author_facet Tijare Poonam
Waseem Mohammed
Sherani Mohd Azaan
Sai Krishna Kornipalli Sampath Kumargari
Kavitha P.
author_sort Tijare Poonam
collection DOAJ
description Hundreds of resumes are received, processed, and managed by large companies and recruitment agencies. Furthermore, many people post their resumes on the internet. Organizations all across the world, on the other hand, are battling to locate the greatest resource. To complete this work, these organisations rely on industry expertise. Manual interaction is required in the resume screening process. Most of the current technologies search for keywords but do not consider semantics, resulting in many superfluous resumes being shortlisted. The goal of the proposed study is to create a smart resume screening algorithm that can automatically retrieve and process resumes. Name, phone / cell numbers, e-mail addresses, qualification, experience, skill sets, and other fields are mapped to the retrieved data. The proposed model uses AI and ML techniques to do so. The gathered data can be utilised to develop applicant profiles that meet the organization’s recruitment needs. By applying multiple filters to the data, an efficient man-less screening process can be achieved. The model is applied to the resumes that the company receives. The model has performed with an average accuracy of more than 90%. The model can be enhanced to apply on the resumes written in languages other than English.
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spelling doaj.art-96b417c171d24fe99406f09a1e64ba042023-08-10T13:16:50ZengEDP SciencesITM Web of Conferences2271-20972023-01-01560400110.1051/itmconf/20235604001itmconf_icdsac2023_04001A smart resume screening tool for customized shortlistingTijare Poonam0Waseem Mohammed1Sherani Mohd Azaan2Sai Krishna Kornipalli Sampath Kumargari3Kavitha P.4Assistant Professor and Research scholar, CSE (VTU RC), CMR Institute of TechnologyDepartment of Computer Science & Engg., CMR Institute of TechnologyDepartment of Computer Science & Engg., CMR Institute of TechnologyDepartment of Computer Science & Engg., CMR Institute of TechnologyAssociate Professor, CSE (VTU RC), CMR Institute of TechnologyHundreds of resumes are received, processed, and managed by large companies and recruitment agencies. Furthermore, many people post their resumes on the internet. Organizations all across the world, on the other hand, are battling to locate the greatest resource. To complete this work, these organisations rely on industry expertise. Manual interaction is required in the resume screening process. Most of the current technologies search for keywords but do not consider semantics, resulting in many superfluous resumes being shortlisted. The goal of the proposed study is to create a smart resume screening algorithm that can automatically retrieve and process resumes. Name, phone / cell numbers, e-mail addresses, qualification, experience, skill sets, and other fields are mapped to the retrieved data. The proposed model uses AI and ML techniques to do so. The gathered data can be utilised to develop applicant profiles that meet the organization’s recruitment needs. By applying multiple filters to the data, an efficient man-less screening process can be achieved. The model is applied to the resumes that the company receives. The model has performed with an average accuracy of more than 90%. The model can be enhanced to apply on the resumes written in languages other than English.https://www.itm-conferences.org/articles/itmconf/pdf/2023/06/itmconf_icdsac2023_04001.pdf
spellingShingle Tijare Poonam
Waseem Mohammed
Sherani Mohd Azaan
Sai Krishna Kornipalli Sampath Kumargari
Kavitha P.
A smart resume screening tool for customized shortlisting
ITM Web of Conferences
title A smart resume screening tool for customized shortlisting
title_full A smart resume screening tool for customized shortlisting
title_fullStr A smart resume screening tool for customized shortlisting
title_full_unstemmed A smart resume screening tool for customized shortlisting
title_short A smart resume screening tool for customized shortlisting
title_sort smart resume screening tool for customized shortlisting
url https://www.itm-conferences.org/articles/itmconf/pdf/2023/06/itmconf_icdsac2023_04001.pdf
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