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Quality Monitoring and Assessment of Deployed Deep Learning Models for Network AIOps

机译:对网络 AIOps 部署的深度学习模型进行质量监控和评估

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摘要

Artificial intelligence (AI) has recently attracted a lot of attention, transitioning from research labs to a wide range of successful deployments in many fields, which is particularly true for deep learning (DL) techniques. Ultimately, DL models, being software artifacts, need to be regularly maintained and updated: AIOps is the logical extension of the DevOps software development practices to AI software applied to network operation and management. In the life cycle of a DL model deployment, it is important to assess the quality of deployed models, to detect "stale" models and prioritize their update. In this article, we cover the issue in the context of network management, proposing simple but effective techniques for quality assessment of individual inference, and for overall model quality tracking over multiple inferences, that we apply to two use cases, representative of the network management and image recognition fields.
机译:人工智能 (AI) 最近引起了很多关注,从研究实验室过渡到许多领域的广泛成功部署,对于深度学习 (DL) 技术尤其如此。归根结底,深度学习模型作为软件工件,需要定期维护和更新:AIOps 是 DevOps 软件开发实践对应用于网络运营和管理的 AI 软件的逻辑延伸。在深度学习模型部署的生命周期中,评估已部署模型的质量、检测“过时”模型并确定其更新的优先级非常重要。在本文中,我们将讨论网络管理背景下的问题,提出简单但有效的技术,用于单个推理的质量评估,以及多个推理的整体模型质量跟踪,我们将其应用于两个用例,代表网络管理和图像识别领域。

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