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https://issues.apache.org/jira/browse/HBASE-3103?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel
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Kannan Muthukkaruppan updated HBASE-3103:
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Attachment: profiler_data.jpg
Find attached profiler screenshot.
Some highlights:
hfile.Compression$FinishOnFlushCompressionStream.write - 31%
StoreScanner.next - 28% (HFile$Reader.decompression is 11% &
ScanQueryMatcher.match - 8%)
ByteBloomFilter.add - 20%
hfile.HFile$Writer.finishBlock - 4%
> investigate/improve compaction performance
> ------------------------------------------
>
> Key: HBASE-3103
> URL: https://issues.apache.org/jira/browse/HBASE-3103
> Project: HBase
> Issue Type: Improvement
> Reporter: Kannan Muthukkaruppan
> Attachments: profiler_data.jpg
>
>
> I was running some tests and am seeing that major compacting about 100M of
> data seems to take around 40-50 seconds.
> My simplified test case is something like:
> * Created about a 100M store file (800M uncompressed).
> * 10k keys with 1k columns each (avg. key size: 30 bytes; avg. value size: 45
> bytes)
> * Compression and ROWCOL bloom was turned on.
> The test was to major compact this single store file into a new file.
> Added some nanoTime() calls around these three stages:
> * Scanner.next operations
> * bloom computation logic in: StoreFile:append()
> * StoreFile.Writer.append()
> This is what I saw for these three stages:
> {code}
> 2010-10-11 11:25:39,774 INFO org.apache.hadoop.hbase.regionserver.Store:
> major Compaction scanTime (ns) 4338103000
> 2010-10-11 11:25:39,774 INFO org.apache.hadoop.hbase.regionserver.Store:
> major Compaction bloom only time (ns) 14433821000
> 2010-10-11 11:25:39,774 INFO org.apache.hadoop.hbase.regionserver.Store:
> major Compaction append time (ns) 23191478000
> {code}
> The HFile.getReadTime() and HFile.getWriteTime() themselves seems pretty low
> (under 1 second levels). These are the times for the parts that interact with
> the DFS (readBlock() and finishBlock() mostly).
> Are these numbers roughly in line with what others are seeing normally?
> Will double check my instrumentations, and try to get more data. Might try to
> run it under a profiler. But wanted to put it out there for additional
> input/ideas on improvement.
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