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Drop note about seldon #359

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Nov 7, 2023
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3 changes: 0 additions & 3 deletions content/ci/_index.md
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These are the latest results of the Validated Patterns CI test runs.

{{< note >}}
Industrial Edge is known to be broken on 4.13 due to an unavailable dependency (Seldon core). No ETA
{{< /note >}}
7 changes: 0 additions & 7 deletions content/patterns/industrial-edge/_index.md
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# Industrial Edge Pattern

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**NOTE**

Industrial Edge on OpenShift Container Platform 4.12 fails CI due to a Seldon issue. This only affects the Anomaly Detection AI/ML portion of the pattern. The rest of the pattern functions as designed. For more information on the Seldon issue, see https://github.com/SeldonIO/seldon-core/issues/4339.

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_Red Hat Validated Patterns are detailed deployments created for different use cases. These pre-defined computing configurations bring together the Red Hat portfolio and technology ecosystem to help you stand up your architectures faster. Example application code is provided as a demonstration, along with the various open source projects and Red Hat products required for the deployment to work. Users can then modify the pattern for their own specific application._

**Use Case:** Boosting manufacturing efficiency and product quality with artificial intelligence/machine learning (AI/ML) out to the edge of the network.
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