- Mark as New
- Bookmark Message
- Subscribe to Message
- Mute Message
- Subscribe to RSS Feed
- Permalink
- Report Inappropriate Content
We have a multisite cluster where the primary site is getting physically reloacted to a new datacenter. There will bbe about a 12 hour gap in our accelerated data models.
Is it possible to backfill the data models without having to do a full rebuild? I found python fill_summary_index.py in docs, but it is not clear if this works on data models. Docs on specifies saved searches
- Mark as New
- Bookmark Message
- Subscribe to Message
- Mute Message
- Subscribe to RSS Feed
- Permalink
- Report Inappropriate Content


Accelerated data models work off data in the summary range. The summary range is defined when you accelerate the data model and rebuilds every 5 minutes.. You cannot backfill a data model, you have to rebuild it. if you were using a summary index then yes, you could backfill it
- Mark as New
- Bookmark Message
- Subscribe to Message
- Mute Message
- Subscribe to RSS Feed
- Permalink
- Report Inappropriate Content


Accelerated data models work off data in the summary range. The summary range is defined when you accelerate the data model and rebuilds every 5 minutes.. You cannot backfill a data model, you have to rebuild it. if you were using a summary index then yes, you could backfill it
- Mark as New
- Bookmark Message
- Subscribe to Message
- Mute Message
- Subscribe to RSS Feed
- Permalink
- Report Inappropriate Content

The fill_summary_index.py script is to backup summary index data which is being populated by a scheduled saved search. To rebuild accelerated data models, follow steps from below link
Steps
- In Splunk Web, go to the Data Models management page.
- Find the accelerated data model that needs to have its summary rebuilt, and expand its row.
- Click Rebuild. The summary will begin rebuilding.
- (Optional) Check the Status of the summary to find out when it is complete.
