A Study on Efficient AI Model Drift Detection Methods for MLOps
Ye-eun Lee, Tae-jin Lee, Journal of Internet Computing and Services, Vol. 24, No. 5, pp. 17-27, Oct. 2023
10.7472/jksii.2023.24.5.17, Full Text:
Keywords: Artificail Inteligence, Machine Learning Model, Drift Detection, XAI, MLOps
Abstract
Statistics
Show / Hide Statistics
Statistics (Cumulative Counts from November 1st, 2017)
Multiple requests among the same browser session are counted as one view.
If you mouse over a chart, the values of data points will be shown.
Statistics (Cumulative Counts from November 1st, 2017)
Multiple requests among the same browser session are counted as one view.
If you mouse over a chart, the values of data points will be shown.
|
Cite this article
[APA Style]
Lee, Y. & Lee, T. (2023). A Study on Efficient AI Model Drift Detection Methods for MLOps. Journal of Internet Computing and Services, 24(5), 17-27. DOI: 10.7472/jksii.2023.24.5.17.
[IEEE Style]
Y. Lee and T. Lee, "A Study on Efficient AI Model Drift Detection Methods for MLOps," Journal of Internet Computing and Services, vol. 24, no. 5, pp. 17-27, 2023. DOI: 10.7472/jksii.2023.24.5.17.
[ACM Style]
Ye-eun Lee and Tae-jin Lee. 2023. A Study on Efficient AI Model Drift Detection Methods for MLOps. Journal of Internet Computing and Services, 24, 5, (2023), 17-27. DOI: 10.7472/jksii.2023.24.5.17.