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[7.10] [ML] Data Frame Analytics: Fix race condition and support for feature influence legacy format. (#81123) #81276

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merged 1 commit into from
Oct 21, 2020

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walterra
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Backports the following commits to 7.10:

… influence legacy format. (elastic#81123)

- Fixes a race condition where searches for data grid results with different parameters would return in different order with the wrong results on display. Fix uses a pattern to cancel useEffect callback for getIndexData().
- Fixes identifying pre 7.10 feature influence format for outlier detection and will display a callout on the results page with information for a workaround.
- To fix identifying the legacy format, some cleanup of other code relating to the old format had to be done. The ml results object field is no longer treated as a "special" field for outlier detection and is treated and retrieved in the same way as other fields.
- Adds an error callout if no Kibana index pattern is available for source/dest index.
@walterra walterra self-assigned this Oct 21, 2020
@walterra walterra added the :ml label Oct 21, 2020
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Pinging @elastic/ml-ui (:ml)

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💚 Build Succeeded

Metrics [docs]

async chunks size

id before after diff
ml 11.3MB 11.3MB +6.2KB

To update your PR or re-run it, just comment with:
@elasticmachine merge upstream

@peteharverson peteharverson merged commit eb4fe68 into elastic:7.10 Oct 21, 2020
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4 participants