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- [role="xpack"]
- [[ml-delayed-data-detection]]
- === Handling delayed data
- Delayed data are documents that are indexed late. That is to say, it is data
- related to a time that the {dfeed} has already processed.
- When you create a datafeed, you can specify a {ref}/ml-datafeed-resource.html[`query_delay`] setting.
- This setting enables the datafeed to wait for some time past real-time, which means any "late" data in this period
- is fully indexed before the datafeed tries to gather it. However, if the setting is set too low, the datafeed may query
- for data before it has been indexed and consequently miss that document. Conversely, if it is set too high,
- analysis drifts farther away from real-time. The balance that is struck depends upon each use case and
- the environmental factors of the cluster.
- ==== Why worry about delayed data?
- This is a particularly prescient question. If data are delayed randomly (and consequently missing from analysis),
- the results of certain types of functions are not really affected. It all comes out ok in the end
- as the delayed data is distributed randomly. An example would be a `mean` metric for a field in a large collection of data.
- In this case, checking for delayed data may not provide much benefit. If data are consistently delayed, however, jobs with a `low_count` function may
- provide false positives. In this situation, it would be useful to see if data
- comes in after an anomaly is recorded so that you can determine a next course of action.
- ==== How do we detect delayed data?
- In addition to the `query_delay` field, there is a
- {ref}/ml-datafeed-resource.html#ml-datafeed-delayed-data-check-config[delayed data check config], which enables you to
- configure the datafeed to look in the past for delayed data. Every 15 minutes or every `check_window`,
- whichever is smaller, the datafeed triggers a document search over the configured indices. This search looks over a
- time span with a length of `check_window` ending with the latest finalized bucket. That time span is partitioned into buckets,
- whose length equals the bucket span of the associated job. The `doc_count` of those buckets are then compared with the
- job's finalized analysis buckets to see whether any data has arrived since the analysis. If there is indeed missing data
- due to their ingest delay, the end user is notified.
- ==== What to do about delayed data?
- The most common course of action is to simply to do nothing. For many functions and situations ignoring the data is
- acceptable. However, if the amount of delayed data is too great or the situation calls for it, the next course
- of action to consider is to increase the `query_delay` of the datafeed. This increased delay allows more time for data to be
- indexed. If you have real-time constraints, however, an increased delay might not be desirable.
- In which case, you would have to {ref}/tune-for-indexing-speed.html[tune for better indexing speed.]
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