Quantifying the reputation and success of data scientists

Success has always been a source of obsession for humans. For decades, researchers and scientists have studied the issue of success in the hopes of replicating it. The career patterns that characterise the emergence of scientific achievements still remain unclear. The goal of this research is to ide...

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Main Author: Loh, Renice Yi Xuan
Other Authors: Sourav S Bhowmick
Format: Final Year Project (FYP)
Language:English
Published: Nanyang Technological University 2021
Subjects:
Online Access:https://hdl.handle.net/10356/154364
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author Loh, Renice Yi Xuan
author2 Sourav S Bhowmick
author_facet Sourav S Bhowmick
Loh, Renice Yi Xuan
author_sort Loh, Renice Yi Xuan
collection NTU
description Success has always been a source of obsession for humans. For decades, researchers and scientists have studied the issue of success in the hopes of replicating it. The career patterns that characterise the emergence of scientific achievements still remain unclear. The goal of this research is to identify success indicators and tactics for aspiring young data scientists who want to improve their chances of becoming reputable and successful. People can work more meaningfully towards their goals if they can forecast and be aware of the aspects that contribute to success. The rank and prestige of the venue where data scientists' work is published are used to measure their success and reputation. A coauthorship network is mapped out using data management conferences publications from the dblp database to find patterns and explore the association between predictors and success. We investigate the career trajectory of data scientists and assess the impact of various factors on success and reputation by identifying data scientists with a central influence. High initial reputation was the strongest correlate of success and reputation. Collaboration and networking with success and reputable data scientists also improves one’s chances at success and reputation. We contend that aspiring data scientists should be well-aware of the important factors and strive to publish at prominent conferences early in their careers.
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spelling ntu-10356/1543642021-12-20T13:12:34Z Quantifying the reputation and success of data scientists Loh, Renice Yi Xuan Sourav S Bhowmick School of Computer Science and Engineering ASSourav@ntu.edu.sg Engineering::Computer science and engineering Success has always been a source of obsession for humans. For decades, researchers and scientists have studied the issue of success in the hopes of replicating it. The career patterns that characterise the emergence of scientific achievements still remain unclear. The goal of this research is to identify success indicators and tactics for aspiring young data scientists who want to improve their chances of becoming reputable and successful. People can work more meaningfully towards their goals if they can forecast and be aware of the aspects that contribute to success. The rank and prestige of the venue where data scientists' work is published are used to measure their success and reputation. A coauthorship network is mapped out using data management conferences publications from the dblp database to find patterns and explore the association between predictors and success. We investigate the career trajectory of data scientists and assess the impact of various factors on success and reputation by identifying data scientists with a central influence. High initial reputation was the strongest correlate of success and reputation. Collaboration and networking with success and reputable data scientists also improves one’s chances at success and reputation. We contend that aspiring data scientists should be well-aware of the important factors and strive to publish at prominent conferences early in their careers. Bachelor of Engineering (Computer Science) 2021-12-20T13:12:34Z 2021-12-20T13:12:34Z 2021 Final Year Project (FYP) Loh, R. Y. X. (2021). Quantifying the reputation and success of data scientists. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/154364 https://hdl.handle.net/10356/154364 en SCSE20-0902 application/pdf Nanyang Technological University
spellingShingle Engineering::Computer science and engineering
Loh, Renice Yi Xuan
Quantifying the reputation and success of data scientists
title Quantifying the reputation and success of data scientists
title_full Quantifying the reputation and success of data scientists
title_fullStr Quantifying the reputation and success of data scientists
title_full_unstemmed Quantifying the reputation and success of data scientists
title_short Quantifying the reputation and success of data scientists
title_sort quantifying the reputation and success of data scientists
topic Engineering::Computer science and engineering
url https://hdl.handle.net/10356/154364
work_keys_str_mv AT lohreniceyixuan quantifyingthereputationandsuccessofdatascientists