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https://issues.apache.org/jira/browse/YARN-3448?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=14960934#comment-14960934
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Jonathan Eagles commented on YARN-3448:
---------------------------------------

The fromTs implementation does not work at scale due to design limitations. All 
matching entity types are stored in sorted order by start time. In order to ask 
the question fromTs you must do a full db scan to check matching entries. 
Entries would have to be sorted by insert time to make this query work 
efficiently. Throwing an exception that this functionality isn't support makes 
a lot of sense.

> Add Rolling Time To Lives Level DB Plugin Capabilities
> ------------------------------------------------------
>
>                 Key: YARN-3448
>                 URL: https://issues.apache.org/jira/browse/YARN-3448
>             Project: Hadoop YARN
>          Issue Type: Sub-task
>          Components: timelineserver
>            Reporter: Jonathan Eagles
>            Assignee: Jonathan Eagles
>             Fix For: 2.8.0
>
>         Attachments: YARN-3448.1.patch, YARN-3448.10.patch, 
> YARN-3448.12.patch, YARN-3448.13.patch, YARN-3448.14.patch, 
> YARN-3448.15.patch, YARN-3448.16.patch, YARN-3448.17.patch, 
> YARN-3448.2.patch, YARN-3448.3.patch, YARN-3448.4.patch, YARN-3448.5.patch, 
> YARN-3448.7.patch, YARN-3448.8.patch, YARN-3448.9.patch
>
>
> For large applications, the majority of the time in LeveldbTimelineStore is 
> spent deleting old entities record at a time. An exclusive write lock is held 
> during the entire deletion phase which in practice can be hours. If we are to 
> relax some of the consistency constraints, other performance enhancing 
> techniques can be employed to maximize the throughput and minimize locking 
> time.
> Split the 5 sections of the leveldb database (domain, owner, start time, 
> entity, index) into 5 separate databases. This allows each database to 
> maximize the read cache effectiveness based on the unique usage patterns of 
> each database. With 5 separate databases each lookup is much faster. This can 
> also help with I/O to have the entity and index databases on separate disks.
> Rolling DBs for entity and index DBs. 99.9% of the data are in these two 
> sections 4:1 ration (index to entity) at least for tez. We replace DB record 
> removal with file system removal if we create a rolling set of databases that 
> age out and can be efficiently removed. To do this we must place a constraint 
> to always place an entity's events into it's correct rolling db instance 
> based on start time. This allows us to stitching the data back together while 
> reading and artificial paging.
> Relax the synchronous writes constraints. If we are willing to accept losing 
> some records that we not flushed in the operating system during a crash, we 
> can use async writes that can be much faster.
> Prefer Sequential writes. sequential writes can be several times faster than 
> random writes. Spend some small effort arranging the writes in such a way 
> that will trend towards sequential write performance over random write 
> performance.



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