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I'm building a Django site and I am looking for a search engine.

A few candidates:

  • Lucene/Lucene with Compass/Solr

  • Sphinx

  • Postgresql built-in full text search

  • MySQl built-in full text search

Selection criteria:

  • result relevance and ranking
  • searching and indexing speed
  • ease of use and ease of integration with Django
  • resource requirements - site will be hosted on a VPS, so ideally the search engine wouldn't require a lot of RAM and CPU
  • scalability
  • extra features such as "did you mean?", related searches, etc

Anyone who has had experience with the search engines above, or other engines not in the list -- I would love to hear your opinions.

EDIT: As for indexing needs, as users keep entering data into the site, those data would need to be indexed continuously. It doesn't have to be real time, but ideally new data would show up in index with no more than 15 - 30 minutes delay

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2¢: MySQL fulltext search and transactions are (presently) mutually exclusive. MySQL fulltext indexes require the MyISAM table type, which doesn't support transactions. (As opposed to the InnoDB table type which supports transactions, but not fulltext indexes.) –  Carl G Jan 31 '10 at 20:56
    
PostgreSQL full-text search, Tsearch does not support phrase search. However, it's on the TODO list sai.msu.su/~megera/wiki/FTS_Todo. –  Gnanam Dec 9 '10 at 14:13
    
Anyone looking at this for Django should checkout the haystack app. haystacksearch.org –  Keyo Jul 2 '11 at 4:56
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slideshare.net/billkarwin/… –  Acute May 7 '12 at 6:40
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@CarlG , Just for everybody's reference. MySQL 5.6+ has Full text search support with innodb engine –  DhruvPathak Dec 18 '12 at 13:36

7 Answers 7

up vote 117 down vote accepted

Good to see someone's chimed in about Lucene - because I've no idea about that.

Sphinx, on the other hand, I know quite well, so let's see if I can be of some help.

  • Result relevance ranking is the default. You can set up your own sorting should you wish, and give specific fields higher weightings.
  • Indexing speed is super-fast, because it talks directly to the database. Any slowness will come from complex SQL queries and un-indexed foreign keys and other such problems. I've never noticed any slowness in searching either.
  • I'm a Rails guy, so I've no idea how easy it is to implement with Django. There is a Python API that comes with the Sphinx source though.
  • The search service daemon (searchd) is pretty low on memory usage - and you can set limits on how much memory the indexer process uses too.
  • Scalability is where my knowledge is more sketchy - but it's easy enough to copy index files to multiple machines and run several searchd daemons. The general impression I get from others though is that it's pretty damn good under high load, so scaling it out across multiple machines isn't something that needs to be dealt with.
  • There's no support for 'did-you-mean', etc - although these can be done with other tools easily enough. Sphinx does stem words though using dictionaries, so 'driving' and 'drive' (for example) would be considered the same in searches.
  • Sphinx doesn't allow partial index updates for field data though. The common approach to this is to maintain a delta index with all the recent changes, and re-index this after every change (and those new results appear within a second or two). Because of the small amount of data, this can take a matter of seconds. You will still need to re-index the main dataset regularly though (although how regularly depends on the volatility of your data - every day? every hour?). The fast indexing speeds keep this all pretty painless though.

I've no idea how applicable to your situation this is, but Evan Weaver compared a few of the common Rails search options (Sphinx, Ferret (a port of Lucene for Ruby) and Solr), running some benchmarks. Could be useful, I guess.

I've not plumbed the depths of MySQL's full-text search, but I know it doesn't compete speed-wise nor feature-wise with Sphinx, Lucene or Solr.

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Sphinx does allow you to update individual attributes of items in current indexes, but not remove/update full records. –  Xorlev Feb 21 '10 at 2:17
    
sphinx RT allows you to do partial updates/removals. it is in early stage but already [almost] works. sphinxsearch.com/wiki/doku.php?id=rt_tutorial –  pQd Jun 25 '10 at 21:42
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Sphinx 2.0-beta1 have already stable RT Indexes :) –  V3ss0n Jun 15 '11 at 5:29
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Here is an answer on Solr that is a good pair to this answer on Sphinx –  New Alexandria Aug 29 '12 at 16:39

I don't know Sphinx, but as for Lucene vs a database full-text search, I think that Lucene performance is unmatched. You should be able to do almost any search in less than 10 ms, no matter how many records you have to search, provided that you have set up your Lucene index correctly.

Here comes the biggest hurdle though: personally, I think integrating Lucene in your project is not easy. Sure, it is not too hard to set it up so you can do some basic search, but if you want to get the most out of it, with optimal performance, then you definitely need a good book about Lucene.

As for CPU & RAM requirements, performing a search in Lucene doesn't task your CPU too much, though indexing your data is, although you don't do that too often (maybe once or twice a day), so that isn't much of a hurdle.

It doesn't answer all of your questions but in short, if you have a lot of data to search, and you want great performance, then I think Lucene is definitely the way to go. If you're not going to have that much data to search, then you might as well go for a database full-text search. Setting up a MySQL full-text search is definitely easier in my book.

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Compare to sphinx , lucence is tooo slow and bulky. I had used both in my project and i finally sticked to sphinx. Lucence is in java , and it takes a lot more CPU and RAM than Sphinx. –  V3ss0n Jun 15 '11 at 5:33
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I have to disagree here. Lucene is lightning fast IF you build a correct index. You can basically do an advanced query over millions of records in just a couple of milliseconds. You just need to know what you are doing. And Lucene is in java... your point being? There's also .NET port, Lucene.NET btw. –  Razzie Aug 24 '11 at 6:54
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but you clearly stated that you don't use sphinx, and v3sson has used both. –  user508546 Jan 23 '12 at 19:20
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how can you state that lucene's performance is unmatched in the same sentence that you state you haven't used sphinx? –  user508546 Jan 23 '12 at 19:21
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Valid questions. I never said that Lucene is faster than Sphinx, I mentioned that Lucene vs a database full-text search is unmatched. And it is. No question about that. Lucene is based upon an inverted index. Now I don't know Sphinx, as mentioned before, but if it also uses an inverted index or a similar indexing method then it is possible that they are equally performing. Stating that Lucene, compared to Sphinx, would be 'tooo slow and bulky' is not based upon facts. Especially not when it is only said that Lucene is in 'Java', which is just a ridiculous non-issue in terms of performance. –  Razzie Jan 25 '12 at 16:27

I am surprised that there isn't more information posted about Solr. Solr is quite similar to Sphinx but has more advanced features (AFAIK as I haven't used Sphinx -- only read about it).

The answer at the link below details a few things about Sphinx which also applies to Solr. Comparison of full text search engine - Lucene, Sphinx, Postgresql, MySQL?

Solr also provides the following additional features:

  1. Supports replication
  2. Multiple cores (think of these as separate databases with their own configuration and own indexes)
  3. Boolean searches
  4. Highlighting of keywords (fairly easy to do in application code if you have regex-fu; however, why not let a specialized tool do a better job for you)
  5. Update index via XML or delimited file
  6. Communicate with the search server via HTTP (it can even return Json, Native PHP/Ruby/Python)
  7. PDF, Word document indexing
  8. Dynamic fields
  9. Facets
  10. Aggregate fields
  11. Stop words, synonyms, etc.
  12. More Like this...
  13. Index directly from the database with custom queries
  14. Auto-suggest
  15. Cache Autowarming
  16. Fast indexing (compare to MySQL full-text search indexing times) -- Lucene uses a binary inverted index format.
  17. Boosting (custom rules for increasing relevance of a particular keyword or phrase, etc.)
  18. Fielded searches (if a search user knows the field he/she wants to search, they narrow down their search by typing the field, then the value, and ONLY that field is searched rather than everything -- much better user experience)

BTW, there are tons more features; however, I've listed just the features that I have actually used in production. BTW, out of the box, MySQL supports #1, #3, and #11 (limited) on the list above. For the features you are looking for, a relational database isn't going to cut it. I'd eliminate those straight away.

Also, another benefit is that Solr (well, Lucene actually) is a document database (e.g. NoSQL) so many of the benefits of any other document database can be realized with Solr. In other words, you can use it for more than just search (i.e. Performance). Get creative with it :)

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Sphinx too about Supports replication Multiple cores Boolean searches Highlighting of keywords Update index via XML -or delimited file- PDF, Word document indexing (via xml) Facets Stop words, synonyms, etc. Index directly from the database with custom queries Auto-suggest Fast indexing Boosting Fielded searches About Dynamic fields Aggregate fields Cache Autowarming I just don't know –  Moosh Jun 22 '13 at 6:58

I'm looking at PostgreSQL full-text search right now, and it has all the right features of a modern search engine, really good extended character and multilingual support, nice tight integration with text fields in the database.

But it doesn't have user-friendly search operators like + or AND (uses & | !) and I'm not thrilled with how it works on their documentation site. While it has bolding of match terms in the results snippets, the default algorithm for which match terms is not great. Also, if you want to index rtf, PDF, MS Office, you have to find and integrate a file format converter.

OTOH, it's way better than the MySQL text search, which doesn't even index words of three letters or fewer. It's the default for the MediaWiki search, and I really think it's no good for end-users: http://www.searchtools.com/analysis/mediawiki-search/

In all cases I've seen, Lucene/Solr and Sphinx are really great. They're solid code and have evolved with significant improvements in usability, so the tools are all there to make search that satisfies almost everyone.

for SHAILI - SOLR includes the Lucene search code library and has the components to be a nice stand-alone search engine.

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I believe that by PostgreSQL full-text search you're referring to Tsearch. But Tsearch does not support phrase search. It's still on their TODO list sai.msu.su/~megera/wiki/FTS_Todo. –  Gnanam Dec 9 '10 at 14:10
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Just done a bunch of testing on Postgres 9.0 full text search; was disappointed to find that French text isn't matched if the user forgets to get all the accents right. Matching of word forms is patchy - for example, in English "say" doesn't match text containing "said". Overall fairly impressive though for an integrated feature across the languages tested (en, fr, ru). –  romkyns May 19 '11 at 14:15
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@romkyns: you need to install an unaccent dictionary to strip them out. –  Denis de Bernardy Jun 11 '11 at 9:32
    
"OTOH, it's way better than the MySQL text search, which doesn't even index words of three letters or fewer." That's not a built-in restriction of MySQL -- it's whatever you set in the config file. If you want to index one-letter words, just change one value in the config. –  Canuck Oct 21 '12 at 0:53
    
For phrase searches see the "synonym" dictionary feature. That's an odd name for a feature which allows phrase searches to work well, but I had not trouble setting up a dictionary of legal terms that way. –  kgrittn Aug 27 '13 at 16:42

Just my two cents to this very old question. I would highly recommend taking a look at ElasticSearch.

Elasticsearch is a search server based on Lucene. It provides a distributed, multitenant-capable full-text search engine with a RESTful web interface and schema-free JSON documents. Elasticsearch is developed in Java and is released as open source under the terms of the Apache License.

The advantages over other FTS (full text search) Engines are:

  • RESTful interface
  • Better scalability
  • Large community
  • Built by Lucene developers
  • Extensive documentation
  • There are many open source libraries available (including Django)

We are using this search engine at our project and very happy with it.

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SearchTools-Avi said "MySQL text search, which doesn't even index words of three letters or fewer."

FYIs, The MySQL fulltext min word length is adjustable since at least MySQL 5.0. Google 'mysql fulltext min length' for simple instructions.

That said, MySQL fulltext has limitations: for one, it gets slow to update once you reach a million records or so, ...

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I would add mnoGoSearch to the list. Extremely performant and flexible solution, which works as Google : indexer fetches data from multiple sites, You could use basic criterias, or invent Your own hooks to have maximal search quality. Also it could fetch the data directly from the database.

The solution is not so known today, but it feets maximum needs. You could compile and install it or on standalone server, or even on Your principal server, it doesn't need so much ressources as Solr, as it's written in C and runs perfectly even on small servers.

In the beginning You need to compile it Yourself, so it requires some knowledge. I made a tiny script for Debian, which could help. Any adjustments are welcome.

As You are using Django framework, You could use or PHP client in the middle, or find a solution in Python, I saw some articles.

And, of course mnoGoSearch is open source, GNU GPL.

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