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Here's an example of what I need in sql:

SELECT name FROM employ WHERE name LIKE %bro%

How do I create view like that in couchdb?

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4 Answers 4

up vote 4 down vote accepted

The simple answer is that CouchDB views aren't ideal for this.

The more complicated answer is that this type of query tends to be very inefficient in typical SQL engines too, and so if you grant that there will be tradeoffs with any solution then CouchDB actually has the benefit of letting you choose your tradeoff.

1. The SQL Way

When you do SELECT ... WHERE name LIKE %bro%, all the SQL engines I'm familiar with must do what's called a "full table scan". This means the server reads every row in the relevant table, and brute force scans the field to see if it matches.

You can do this in CouchDB too, with a temporary view:

POST /some_database/_temp_view

{"map": "function (doc) { if (doc.name && doc.name.indexOf('bro') !== -1) emit(null); }"}

This will look through every single document in the database and give you a list of matching documents. You can tweak the map function to also match on a document type, or to emit with a certain key for ordering — emit(doc.timestamp) — or some data value useful to your purpose — emit(null, doc.name).

2. The "tons of disk space available" way

Depending on your source data size you could create an index that emits every possible "interior string" as its permanent (on-disk) view key. That is to say for a name like "Dobros" you would emit("dobros"); emit("obros"); emit("bros"); emit("ros"); emit("os"); emit("s");. Then for a term like '%bro%' you could query your view with startkey="bro"&endkey="bro\uFFFF" to get all occurrences of the lookup term. Your index will be approximately the size of your text content squared, but if you need to do an arbitrary "find in string" faster than the full DB scan above and have the space this might work. You'd be better served by a data structure designed for substring searching though.

Which brings us too...

3. The Full Text Search way

You could use a CouchDB plugin (couchdb-lucene, ElasticSearch, SQLite's FTS) to generate an auxiliary text-oriented index into your documents.

Note that most full text search indexes don't naturally support arbitrary wildcard prefixes either, likely for similar reasons of space efficiency as we saw above. Usually full text search doesn't imply "brute force binary search", but "word search". YMMV though, take a look around at the options available in your full text engine.

If you don't really need to find "bro" anywhere in a field, you can implement basic "find a word starting with X" search with regular CouchDB views by just splitting on various locale-specific word separators and omitting these "words" as your view keys. This will be more efficient than above, scaling proportionally to the amount of data indexed.

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for the answer, number 1. actually i'm used bigcouch not couchdb, and bigcouch haven't temporary view... number 2. that's bad idea, because i have a lot of document that have more than 2 word as a key... number 3. i already try it, but i check elasticsearch and couchdb-lucene performance was realy bad (i check it with apache benchmark) –  yuda Mar 1 '12 at 2:58

Unfortunately, doing searches using LIKE %...% aren't really how CouchDB Views work, but you can accomplish a great deal of search capability by installing couchdb-lucene, it's a fulltext search engine that creates indexes on your database that you can do more sophisticated searches with.

The typical way to "search" a database for a given key, without any 3rd party tools, is to create a view that emits the value you are looking for as the key. In your example:

function (doc) {
    emit(doc.name, doc);

This outputs a list of all the names in your database.

Now, you would "search" based on the first letters of your key. For example, if you are searching for names that start with "bro".


Notice I took the last letter of the search parameter, and "incremented" the last letter in it. Again, if you want to perform searches, rather than aggregating statistics, you should use a fulltext search engine like lucene. (see above)

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As suggested by kowsik, you should avoid to emit the doc as the value. Do emit(doc.name, null) and use include_docs=true when querying the view. –  Marcello Nuccio Apr 2 '11 at 10:30
couchdb lucene is a correct answer... but i need a simple code... i want to find a word in sentence... and there is a lot of sentence... simple explain is i want to create simple search engine... whitout addon or some thing like couchdb lucene... sorry my english is bad.. –  yuda Apr 4 '11 at 5:03

i found a simple view code for my problem...

       { "map": "function(doc) {
           var prefix = doc['productid'].match(/[A-Za-z0-9]+/g);
              for(var pre in prefix) { emit(prefix[pre],null); }

from this view code if i split a key sentence into a key word... and i can call


but i need more complex code because if i run this code i can only find word wich i type (ex: eat, food, etc)...

but if i want to type not a complete word (ex: ea from eat, or foo from food) that code does not work..

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You could use a levenshtein distance algorithm on your returned keys. Whether this is a good idea or not depends on the amount of data you are searching. Example: github.com/lysdexia/Lookahead-Lev. –  lysdexia Apr 8 '11 at 13:02
thank's but i'm still confuse... –  yuda Apr 19 '11 at 5:28
Pondering it a bit further, I don't think that using my example would be of help since you wish to do arbitrary searches within text, rather than "zeroing in" on mapped values. Lucene is definitely going to be the way to go. You might want to have a look at solr, while you are at it. lucene.apache.org/solr –  lysdexia Apr 19 '11 at 15:06

You could emit your documents like normal. emit(doc.name, null); I would throw a toLowerCase() on that name to remove case sensitivity.

and then query the view with a slew of keys to see if something "like" the query shows up.

keys = differentVersions("bro"); // returns ["bro", "br", "bo", "ro", "cro", "dro", ..., "zro"]
$.couch("db").view("employeesByName", { keys: keys, success: dealWithIt } )

Some considerations

  1. Obviously that array can get really big really fast depending on what differentVersions returns. You might hit a post data limit at some point or conceivably get slow lookups.

  2. The results are only as good as differentVersions is at giving you guesses for what the person meant to spell. Obviously this function can be as simple or complex as you like. In this example I tried two strategies, a) removed a letter and pushed that, and b) replaced the letter at position n with all other letters. So if someone had been looking for "bro" but typed in "gro" or "bri" or even "bgro", differentVersions would have permuted that to "bro" at some point.

  3. While not ideal, it's still pretty fast since a look up in Couch's b-trees is fast.

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