Retrain AI Systems Responsibly! Use Sustainable Concept Drift Adaptation Techniques

Lorena Poenaru-Olaru, June Sallou, Luís Cruz, Jan S. Rellermeyer, A. V. Deursen
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Abstract

Deployed machine learning systems often suffer from accuracy degradation over time generated by constant data shifts, also known as concept drift. Therefore, these systems require regular maintenance, in which the machine learning model needs to be adapted to concept drift. The literature presents plenty of model adaptation techniques. The most common technique is periodically executing the whole training pipeline with all the data gathered until a particular point in time, yielding a massive energy footprint. In this paper, we propose a research path that uses concept drift detection and adaptation to enable sustainable AI systems.
负责任地重新训练AI系统!使用可持续的概念漂移适应技术
随着时间的推移,已部署的机器学习系统往往会因不断的数据移动(也称为概念漂移)而导致精度下降。因此,这些系统需要定期维护,其中机器学习模型需要适应概念漂移。文献中提出了大量的模型适应技术。最常见的技术是使用收集到的所有数据周期性地执行整个训练管道,直到特定的时间点,这会产生大量的能量足迹。在本文中,我们提出了一种使用概念漂移检测和自适应来实现可持续人工智能系统的研究路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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