The Pipeline for the Continuous Development of Artificial Intelligence Models -- Current State of Research and Practice
January 21, 2023 Β· Declared Dead Β· π Journal of Systems and Software
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Authors
Monika Steidl, Michael Felderer, Rudolf Ramler
arXiv ID
2301.09001
Category
cs.SE: Software Engineering
Cross-listed
cs.AI
Citations
76
Venue
Journal of Systems and Software
Last Checked
3 months ago
Abstract
Companies struggle to continuously develop and deploy AI models to complex production systems due to AI characteristics while assuring quality. To ease the development process, continuous pipelines for AI have become an active research area where consolidated and in-depth analysis regarding the terminology, triggers, tasks, and challenges is required. This paper includes a Multivocal Literature Review where we consolidated 151 relevant formal and informal sources. In addition, nine-semi structured interviews with participants from academia and industry verified and extended the obtained information. Based on these sources, this paper provides and compares terminologies for DevOps and CI/CD for AI, MLOps, (end-to-end) lifecycle management, and CD4ML. Furthermore, the paper provides an aggregated list of potential triggers for reiterating the pipeline, such as alert systems or schedules. In addition, this work uses a taxonomy creation strategy to present a consolidated pipeline comprising tasks regarding the continuous development of AI. This pipeline consists of four stages: Data Handling, Model Learning, Software Development and System Operations. Moreover, we map challenges regarding pipeline implementation, adaption, and usage for the continuous development of AI to these four stages.
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