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https://issues.apache.org/jira/browse/LUCENE-4226?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=13443996#comment-13443996
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Adrien Grand commented on LUCENE-4226:
--------------------------------------

bq. Do you want to open a separate issue for that (it need not block this 
issue)?

I created LUCENE-4340.
                
> Efficient compression of small to medium stored fields
> ------------------------------------------------------
>
>                 Key: LUCENE-4226
>                 URL: https://issues.apache.org/jira/browse/LUCENE-4226
>             Project: Lucene - Core
>          Issue Type: Improvement
>          Components: core/index
>            Reporter: Adrien Grand
>            Priority: Trivial
>         Attachments: CompressionBenchmark.java, CompressionBenchmark.java, 
> LUCENE-4226.patch, LUCENE-4226.patch, SnappyCompressionAlgorithm.java
>
>
> I've been doing some experiments with stored fields lately. It is very common 
> for an index with stored fields enabled to have most of its space used by the 
> .fdt index file. To prevent this .fdt file from growing too much, one option 
> is to compress stored fields. Although compression works rather well for 
> large fields, this is not the case for small fields and the compression ratio 
> can be very close to 100%, even with efficient compression algorithms.
> In order to improve the compression ratio for small fields, I've written a 
> {{StoredFieldsFormat}} that compresses several documents in a single chunk of 
> data. To see how it behaves in terms of document deserialization speed and 
> compression ratio, I've run several tests with different index compression 
> strategies on 100,000 docs from Mike's 1K Wikipedia articles (title and text 
> were indexed and stored):
>  - no compression,
>  - docs compressed with deflate (compression level = 1),
>  - docs compressed with deflate (compression level = 9),
>  - docs compressed with Snappy,
>  - using the compressing {{StoredFieldsFormat}} with deflate (level = 1) and 
> chunks of 6 docs,
>  - using the compressing {{StoredFieldsFormat}} with deflate (level = 9) and 
> chunks of 6 docs,
>  - using the compressing {{StoredFieldsFormat}} with Snappy and chunks of 6 
> docs.
> For those who don't know Snappy, it is compression algorithm from Google 
> which has very high compression ratios, but compresses and decompresses data 
> very quickly.
> {noformat}
> Format           Compression ratio     IndexReader.document time
> ————————————————————————————————————————————————————————————————
> uncompressed     100%                  100%
> doc/deflate 1     59%                  616%
> doc/deflate 9     58%                  595%
> doc/snappy        80%                  129%
> index/deflate 1   49%                  966%
> index/deflate 9   46%                  938%
> index/snappy      65%                  264%
> {noformat}
> (doc = doc-level compression, index = index-level compression)
> I find it interesting because it allows to trade speed for space (with 
> deflate, the .fdt file shrinks by a factor of 2, much better than with 
> doc-level compression). One other interesting thing is that {{index/snappy}} 
> is almost as compact as {{doc/deflate}} while it is more than 2x faster at 
> retrieving documents from disk.
> These tests have been done on a hot OS cache, which is the worst case for 
> compressed fields (one can expect better results for formats that have a high 
> compression ratio since they probably require fewer read/write operations 
> from disk).

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