Estratégia e Ciência de Dados Relacionadas à Vantagem Competitiva – um Ensaio Teórico
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Keywords

Ciência de Dados
Estratégia de Dados
Cultura Orientada por Dados
Governança de Dados
Vantagem Competitiva

How to Cite

Medeiros, M. M. de, Maçada, A. C. G., & Freitas Júnior, J. C. da S. (2021). Estratégia e Ciência de Dados Relacionadas à Vantagem Competitiva – um Ensaio Teórico. Future Studies Research Journal: Trends and Strategies, 13(3), 325–355. https://doi.org/10.24023/FutureJournal/2175-5825/2021.v13i3.565

Abstract

Objetivo:  defender a tese de que estratégia, cultura e governança de dados são determinantes no modo como a organização obtém vantagem competitiva por meio da ciência de dados.

Método: este ensaio está fundamentado em uma revisão teórica de estudos empíricos e conceituais para a identificação e definição de construtos e desenvolvimento de proposições, e de um modelo de conceitual.

Originalidade/Relevância: na Era Digital, o Big Data e a Ciência de Dados redefiniram a produtividade, a inovação e a competitividade. Contudo, o sucesso no uso da Ciência de Dados depende do adequado alinhamento entre os fatores estratégicos.

Resultados: considera-se que o modelo organizacional, formado pela estratégia, cultura e governança de dados, beneficia o uso da Ciência de Dados. Conclui-se, então que, para suportar a transformação digital, as organizações precisem formular sua estratégia de dados, além de estabelecer a composição ideal entre cultura e governança, a fim de direcionar suas capacidades analíticas e desbloquear o potencial da Ciência de Dados em prol da vantagem competitiva.

Contribuições Teóricas:  o modelo teórico proposto é original por combinar construtos relacionados à gestão estratégica da Ciência de Dados, estabelecendo as bases para a compreensão de suas inter-relações, e descrevendo a relação destes com a vantagem competitiva.

Contribuições para a Gestão:  o modelo teórico proposto pode ser utilizado tanto para direcionar a gestão estratégica dos dados, como para balancear o alinhamento estratégico organizacional que influencia no uso da Ciência de Dados, bem como para avaliar o sucesso das iniciativas analíticas e as vantagens competitivas obtidas.

https://doi.org/10.24023/FutureJournal/2175-5825/2021.v13i3.565
PDF (Português (Brasil))

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