Algorithm for finding specialists with unique skills based on a digital footprint
https://doi.org/10.15514/ISPRAS-2022-34(4)-12
Abstract
In recent years, due to significant changes in the labor market, companies have become more likely to face various problems when searching and selecting candidates. The main reason for these problems is that the existing Internet resources for finding candidates do not allow you to find a specialist with the required set of competencies and fully evaluate his experience, skills, achievements and personal characteristics. As a result, it becomes necessary to create a service for finding exclusive specialists. Most of these specialists do not have a resume in the public domain, are not looking for a job, but are ready to consider interesting offers. As a result, this work is devoted to the study of the possibility of finding specialists with unique competencies on the Internet based on the analysis of their digital footprint. The hypothesis is that it is possible to get a complete profile of a unique specialist if you collect, combine and analyze data from various sources. In the course of this work, the possibilities provided by open data sources on the Internet were analyzed, as well as the scientometric indicators of a specialist and the parameters of his reliability were determined. An algorithm for searching for the required specialists based on these data has been compiled, an automated system implementing this search has been designed, developed and tested.
About the Authors
Alesander Sergeevich LEONOVRussian Federation
Master's student at the Faculty of the Faculty of Infocommunication Technologies at ITMO University, an engineer at the research center in the field of artificial Intelligence "Strong Artificial Intelligence in Industry"
Andrey Aleksandrovich LAPTEV
Russian Federation
PhD student at the Faculty of Digital Transformation of ITMO University, an engineer at the research center in the field of artificial intelligence "Strong Artificial Intelligence in Industry"
Anastasia Alexandrovna LAUSHKINA
Russian Federation
PhD student at the Faculty of Digital Transformation of ITMO University, an engineer at the research center in the field of artificial intelligence "Strong Artificial Intelligence in Industry"
Michael SINKO
Russian Federation
PhD student at the Faculty of Digital Transformation of ITMO University, an engineer at the research center in the field of artificial intelligence "Strong Artificial Intelligence in Industry"
Oleg Olegovich BASOV
Russian Federation
Doctor of Technical Sciences, Professor of the Faculty of Digital Transformations at ITMO University, specialist of the sector of support for Research and Educational activities at ISP RAS
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Review
For citations:
LEONOV A.S., LAPTEV A.A., LAUSHKINA A.A., SINKO M., BASOV O.O. Algorithm for finding specialists with unique skills based on a digital footprint. Proceedings of the Institute for System Programming of the RAS (Proceedings of ISP RAS). 2022;34(4):173-186. (In Russ.) https://doi.org/10.15514/ISPRAS-2022-34(4)-12