What Makes Small and Medium Enterprises Successful: A Study

Authors

DOI:

https://doi.org/10.55938/ijgasr.v2i3.54

Keywords:

SME's, Successful SME's, Reasons for Success, Business, Analytics

Abstract

Objective: Critical success factors designs for SMEs offer info to SMEs which were used to create strategies and policies for best business practices which will mitigate failures. The goal was reviewing SME content articles as well as books to determine CSFs influencing the success.
Design:The content reviewed the literature on SMEs and also identified critical success factors which influence the achievements of SMEs throughout industries and locations.
Findings:Twenty-five critical success factors of SMEs had been revealed, and several more are believed to be a part of them.
Policy Implications:The newspaper is going to enable entrepreneurship researchers to recognize the CSFs for program as variables in upcoming CSFs models as well as SME operators for optimum business practices to lessen failure as well as grow/develop economies.
Originality:The content is an extensive literature review of Books and sme articles identifying the CSFs influencing the success.

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Author Biography

Thomas Oliver Kellerton, London School of Economics and Political Science

Economics

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Published

2023-10-01

How to Cite

Kellerton, T. O. (2023). What Makes Small and Medium Enterprises Successful: A Study. International Journal for Global Academic & Scientific Research, 2(3), 01–11. https://doi.org/10.55938/ijgasr.v2i3.54