• Journal of Internet Computing and Services
    ISSN 2287 - 1136 (Online) / ISSN 1598 - 0170 (Print)
    https://jics.or.kr/

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

Today, as AI (Artificial Intelligence) technology develops and its practicality increases, it is widely used in various application fields in real life. At this time, the AI model is basically learned based on various statistical properties of the learning data and then distributed to the system, but unexpected changes in the data in a rapidly changing data situation cause a decrease in the model's performance. In particular, as it becomes important to find drift signals of deployed models in order to respond to new and unknown attacks that are constantly created in the security field, the need for lifecycle management of the entire model is gradually emerging. In general, it can be detected through performance changes in the model's accuracy and error rate (loss), but there are limitations in the usage environment in that an actual label for the model prediction result is required, and the detection of the point where the actual drift occurs is uncertain. there is. This is because the model's error rate is greatly influenced by various external environmental factors, model selection and parameter settings, and new input data, so it is necessary to precisely determine when actual drift in the data occurs based only on the corresponding value. There are limits to this. Therefore, this paper proposes a method to detect when actual drift occurs through an Anomaly analysis technique based on XAI (eXplainable Artificial Intelligence). As a result of testing a classification model that detects DGA (Domain Generation Algorithm), anomaly scores were extracted through the SHAP(Shapley Additive exPlanations) Value of the data after distribution, and as a result, it was confirmed that efficient drift point detection was possible.


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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.