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MANUela addition #99 #100

Merged
merged 5 commits into from
Aug 30, 2021
Merged

MANUela addition #99 #100

merged 5 commits into from
Aug 30, 2021

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DanielFroehlich
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@DanielFroehlich
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#99

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@guimou guimou left a comment

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One small type, then OK to merge.


This “AI/ML Industrial Edge” demo shows how condition based monitoring can be implemented using AI/ML. Machine inference-based anomaly detection on metric time-series sensor data at the edge, with a central data lake and ML model retraining. It also shows how hybrid deployments (cluster at the edge and in the cloud) can be managed, and how the CI/CD pipelines and Model Training/Execution flows can be implemented.

This demon is using OpenShift, ACM, AMQ Streams, OpenDataHub, and other products from Red Hat’s portfolio
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Typo: demon -> demo

@guimou guimou merged commit c8d25a2 into rh-aiservices-bu:main Aug 30, 2021
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