TY - JOUR
T1 - Collaborative Automated Machine Learning (AutoML) Process Framework
AU - Chami, Johnas Camillius
AU - Santos, Vítor
N1 - Chami, J. C. ., & Santos, V. . (2024). Collaborative automated machine learning (AutoML) process framework. Edelweiss Applied Science and Technology, 8(6), 7675–7685. https://doi.org/10.55214/25768484.v8i6.3676
PY - 2024/12/14
Y1 - 2024/12/14
N2 - In the face of rapid technological advancements and digital disruption, Small and Medium Enterprises (SMEs) grapple with integrating data-driven practices essential for competitiveness and growth. Unlike large corporations, SMEs often lack the resources and technical expertise to implement sophisticated data analytics and machine learning solutions. This study addresses the identified gap by developing a Collaborative Automated Machine Learning (AutoML) Process Framework tailored to the unique needs of SMEs. Leveraging Design Science Research methodology, the research conceptualizes, designs, and validates an accessible AutoML tool that automates complex machine learning processes while fostering collaboration among stakeholders. The framework aims to democratize advanced analytics, enabling SMEs to harness domain knowledge and drive data-driven decision-making without extensive data science expertise. The findings demonstrate that the proposed collaborative AutoML framework significantly enhances SMEs' operational efficiency, decision-making capabilities, and competitive edge, thereby contributing to their digital transformation and broader economic growth. This research not only bridges the existing gap in AutoML applications for SMEs but also aligns with sustainable development goals by promoting inclusive innovation and economic resilience.
AB - In the face of rapid technological advancements and digital disruption, Small and Medium Enterprises (SMEs) grapple with integrating data-driven practices essential for competitiveness and growth. Unlike large corporations, SMEs often lack the resources and technical expertise to implement sophisticated data analytics and machine learning solutions. This study addresses the identified gap by developing a Collaborative Automated Machine Learning (AutoML) Process Framework tailored to the unique needs of SMEs. Leveraging Design Science Research methodology, the research conceptualizes, designs, and validates an accessible AutoML tool that automates complex machine learning processes while fostering collaboration among stakeholders. The framework aims to democratize advanced analytics, enabling SMEs to harness domain knowledge and drive data-driven decision-making without extensive data science expertise. The findings demonstrate that the proposed collaborative AutoML framework significantly enhances SMEs' operational efficiency, decision-making capabilities, and competitive edge, thereby contributing to their digital transformation and broader economic growth. This research not only bridges the existing gap in AutoML applications for SMEs but also aligns with sustainable development goals by promoting inclusive innovation and economic resilience.
KW - Automated machine learning (AutoML)
KW - Collaborative framework
KW - Data-driven transformation
KW - Design science research
KW - Digital transformation
KW - Small and medium enterprises (SMEs)
UR - http://www.scopus.com/inward/record.url?scp=85214825454&partnerID=8YFLogxK
U2 - 10.55214/25768484.v8i6.3676
DO - 10.55214/25768484.v8i6.3676
M3 - Article
SN - 2576-8484
VL - 8
SP - 7675
EP - 7685
JO - Edelweiss Applied Science and Technology
JF - Edelweiss Applied Science and Technology
IS - 6
M1 - 3676
ER -