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[ML UI][9.1 & Serverless] Update Machine Learning docs for new anomaly detection severity colors and filtering controls #2267

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merged 6 commits into from
Jul 28, 2025

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nastasha-solomon
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@nastasha-solomon nastasha-solomon commented Jul 24, 2025

Fixes #1892 by refreshing images that have outdated UIs of the Anomaly Explorer and Single Metric Viewer.

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@nastasha-solomon nastasha-solomon self-assigned this Jul 24, 2025
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nastasha-solomon commented Jul 24, 2025

Was unable to update the following images:

@nastasha-solomon nastasha-solomon marked this pull request as ready for review July 24, 2025 22:41
@nastasha-solomon nastasha-solomon requested review from a team as code owners July 24, 2025 22:41
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@florent-leborgne florent-leborgne left a comment

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LGTM

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@alvarezmelissa87 alvarezmelissa87 left a comment

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LGTM ⚡

@nastasha-solomon nastasha-solomon merged commit da582b9 into main Jul 28, 2025
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@nastasha-solomon nastasha-solomon deleted the issue-1892-ml-ui-refresh branch July 28, 2025 13:37
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[Internal]: Update Machine Learning docs for new anomaly detection severity colors and filtering controls
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