[7.x][ML] Limit categorization memory usage#1176
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droberts195 merged 1 commit intoelastic:7.xfrom Apr 28, 2020
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Anomaly detection jobs have a model_memory_limit setting. This is supposed to restrict the amount of memory the job can use, however, in the past the limit only applied to anomaly detection and not to categorization. This change applies memory limiting to categorization as follows: - When a job is in hard_limit status no new categories will be created. The input document that could not be categorized is discarded as it cannot take part in anomaly detection without a category. The failed_category_count statistic is incremented each time this happens. - When a job is in soft_limit status, we stop recording examples for the category. Backport of elastic#1167
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Anomaly detection jobs have a model_memory_limit setting. This is
supposed to restrict the amount of memory the job can use, however,
in the past the limit only applied to anomaly detection and not to
categorization.
This change applies memory limiting to categorization as follows:
created. The input document that could not be categorized is
discarded as it cannot take part in anomaly detection without a
category. The failed_category_count statistic is incremented
each time this happens.
for the category.
Backport of #1167