Breaking the Barriers: Identifying and Overcoming Implementation Challenges of AutoML in Small and Medium Enterprises (SMEs)
Keywords:
Automated Machine Learning, SME, AI adoption, implementation challengesAbstract
AutoML promises to democratize AI for SMEs, yet many struggle to implement it beyond pilot stages. Building on our prior work [1], this paper identifies key adoption barriers—technical (data quality, integration), organizational (skills gaps), and economic (hidden costs)—through case study analysis. We provide actionable strategies to bridge the gap between AutoML potential and real-world SME deployment.
Downloads
References
1.
M, Abdollahi. A, Azimi. M, Hamidzadeh. A, Kiani. (2023). How AutoML Can Empower SMEs to Leverage AI: The AloPlay Case Study. Journal of Small Business Technology
2.
He, X., Zhao, K., & Chu, X. (2021). AutoML: A Survey of the State-of-the-Art. ACM Computing Surveys, 54(3), 1-35. https://doi.org/10.1145/3459635
3.
KarMarker, S. K., Hassan, M. M., & Smith, M. J. (2021). AutoML to Date and Beyond: Challenges and Opportunities. IEEE Transactions on AI, 2(4), 310-325.
4.
Waring, J., Bajwa, R., & Devaraj, S. (2020). Organizational Barriers to AI Adoption in SMEs: A Qualitative Analysis. Harvard Business Review, 98(5), 78-91.
5.
Google Cloud. (2022). The Hidden Costs of AutoML: An SME Perspective. Technical Report. Retrieved from https://cloud.google.com/whitepapers/automl-sme
6.
McKinsey & Company. (2023). Measuring AI ROI in Resource-Constrained Businesses. McKinsey Analytics.
7.
Gartner. (2023). SME Tech Adoption Trends 2023. Gartner Research.
8.
Iranian ICT Guild. (2023). AutoML Adoption in Iranian SMEs: Challenges and Success Stories. Tehran: Digital Economy Press.
9.
Microsoft. (2024). ML.NET v3.1 Documentation. Retrieved from https://learn.microsoft.com/en-us/dotnet/machine-learning