KModels: Unlocking AI for Business Applications
As artificial intelligence (AI) continues to rapidly advance, there is a growing demand to integrate AI capabilities into existing business applications. However, a significant gap exists between the rapid progress in AI and how slowly AI is being embedded into business environments. Deploying well-...
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Zusammenfassung: | As artificial intelligence (AI) continues to rapidly advance, there is a
growing demand to integrate AI capabilities into existing business
applications. However, a significant gap exists between the rapid progress in
AI and how slowly AI is being embedded into business environments. Deploying
well-performing lab models into production settings, especially in on-premise
environments, often entails specialized expertise and imposes a heavy burden of
model management, creating significant barriers to implementing AI models in
real-world applications.
KModels leverages proven libraries and platforms (Kubeflow Pipelines, KServe)
to streamline AI adoption by supporting both AI developers and consumers. It
allows model developers to focus solely on model development and share models
as transportable units (Templates), abstracting away complex production
deployment concerns. KModels enables AI consumers to eliminate the need for a
dedicated data scientist, as the templates encapsulate most data science
considerations while providing business-oriented control.
This paper presents the architecture of KModels and the key decisions that
shape it. We outline KModels' main components as well as its interfaces.
Furthermore, we explain how KModels is highly suited for on-premise deployment
but can also be used in cloud environments.
The efficacy of KModels is demonstrated through the successful deployment of
three AI models within an existing Work Order Management system. These models
operate in a client's data center and are trained on local data, without data
scientist intervention. One model improved the accuracy of Failure Code
specification for work orders from 46% to 83%, showcasing the substantial
benefit of accessible and localized AI solutions. |
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DOI: | 10.48550/arxiv.2409.05919 |