I have been seeing quite a large variation in response times regarding LIKE queries to a particular table in my database. Sometimes I will get results within 200-400 ms (very acceptable) but other times it might take as much as 30 seconds to return results.

I understand that LIKE queries are very resource intensive but I just don't understand why there would be such a large difference in response times. I have built a btree index on the owner1 field but I don't think it helps with LIKE queries. Anyone have any ideas?

Sample SQL:

SELECT gid, owner1 FORM parcels
WHERE owner1 ILIKE '%someones name%' LIMIT 10

I've also tried:

SELECT gid, owner1 FROM parcels
WHERE lower(owner1) LIKE lower('%someones name%') LIMIT 10


SELECT gid, owner1 FROM parcels
WHERE lower(owner1) LIKE lower('someones name%') LIMIT 10

With similar results.
Table Row Count: about 95,000.


FTS does not support LIKE

The previously accepted answer was incorrect. Full Text Search with its full text indexes is not for the LIKE operator at all, it has its own operators and doesn't work for arbitrary strings. It operates on words based on dictionaries and stemming. It does support prefix matching for words, but not with the LIKE operator:

Trigram indexes for LIKE

Install the additional module pg_trgm which provides operator classes for GIN and GiST trigram indexes to support all LIKE and ILIKE patterns, not just left-anchored ones:

Example index:

CREATE INDEX tbl_col_gin_trgm_idx  ON tbl USING gin  (col gin_trgm_ops);


CREATE INDEX tbl_col_gist_trgm_idx ON tbl USING gist (col gist_trgm_ops);

Example query:

SELECT * FROM tbl WHERE col LIKE '%foo%';   -- leading wildcard
SELECT * FROM tbl WHERE col ILIKE '%foo%';  -- works case insensitively as well

Trigrams? What about shorter strings?

Words with less than 3 letters in indexed values still work. The manual:

Each word is considered to have two spaces prefixed and one space suffixed when determining the set of trigrams contained in the string.

And search patterns with less than 3 letters? The manual:

For both LIKE and regular-expression searches, keep in mind that a pattern with no extractable trigrams will degenerate to a full-index scan.

Meaning, that index / bitmap index scans still work (query plans for prepared statement won't break), it just won't buy you better performance. Typically no big loss, since 1- or 2-letter strings are hardly selective (more than a few percent of the underlying table matches) and index support would not improve performance to begin with, because a full table scan is faster.

text_pattern_ops for prefix matching

For just left-anchored patterns (no leading wildcard) you get the optimum with a suitable operator class for a btree index: text_pattern_ops or varchar_pattern_ops. Both built-in features of standard Postgres, no additional module needed. Similar performance, but much smaller index.

Example index:

CREATE INDEX tbl_col_text_pattern_ops_idx ON tbl(col text_pattern_ops);

Example query:

SELECT * FROM tbl WHERE col LIKE 'foo%';  -- no leading wildcard

Or, if you should be running your database with the 'C' locale (effectively no locale), then everything is sorted according to byte order anyway and a plain btree index with default operator class does the job.

More details, explanation, examples and links in these related answers on dba.SE:

  • With no leading wildcard on a table of 500K lines, gin index with gin_trgm_ops appears being 10 times faster than btree – nicolas May 25 '16 at 11:27
  • @nicolas: The comparison depends on many variables. Key length, data distribution, pattern length, possible index only scan ... And most importantly: Postgres version. GIN indexes have been improved substantially in pg 9.4 and 9.5. An the new version of pg_trgm (to be released with pg 9.6) is going to bring more improvements. – Erwin Brandstetter May 26 '16 at 5:05
  • 1
    If I got the docs right, with pg_trgm you need query string of at least 3 characters in length, for example fo% would not hit index but do a scan instead. Something to note. – Tuukka Mustonen Nov 29 '17 at 13:13
  • 1
    @TuukkaMustonen: Good point. Well, (bitmap) index scans still work, they just won't buy you better performance. I added some clarification above. – Erwin Brandstetter Nov 29 '17 at 14:56

Possibly the fast ones are anchored patterns with case-sensitive like that can use indexes. i.e. there is no wild card at the beginning of the match string so the executor can use an index range scan. (the relevant comment in the docs is here) Lower and ilike will also lose your ability to use the index unless you specifically create an index for that purpose (see functional indexes).

If you want to search for string in the middle of the field, you should look into full text or trigram indexes. First of them is in Postgres core, the other is available in the contrib modules.

  • I hadn't thought about creating an index on the lowercase value of the field. That way I can convert the query text to lowercase on the backend before querying. – Jason Oct 14 '09 at 15:03

You could install Wildspeed, a different type of index in PostgreSQL. Wildspeed does work with %word% wildcards, no problem. The downside is the size of the index, this can be large, very large.


Please Execute below mentioned query for improve the LIKE query performance in postgresql. create an index like this for bigger tables:

CREATE INDEX <indexname> ON <tablename> USING btree (<fieldname> text_pattern_ops)
  • This only works if the pattern doesn't start with a wildcard - in this case the first two sample queries both start with a wildcard. – cbz Jul 25 at 15:15

I recently had a similar issue with a table containing 200000 records and I need to do repeated LIKE queries. In my case, the string being search was fixed. Other fields varied. Because that, I was able to rewrite:

SELECT owner1 FROM parcels
WHERE lower(owner1) LIKE lower('%someones name%');


CREATE INDEX ix_parcels ON parcels(position(lower('someones name') in lower(owner1)));

SELECT owner1 FROM parcels
WHERE position(lower('someones name') in lower(owner1)) > 0;

I was delighted when the queries came back fast and verified the index is being used with EXPLAIN ANALYZE:

 Bitmap Heap Scan on parcels  (cost=7.66..25.59 rows=453 width=32) (actual time=0.006..0.006 rows=0 loops=1)
   Recheck Cond: ("position"(lower(owner1), 'someones name'::text) > 0)
   ->  Bitmap Index Scan on ix_parcels  (cost=0.00..7.55 rows=453 width=0) (actual time=0.004..0.004 rows=0 loops=1)
         Index Cond: ("position"(lower(owner1), 'someones name'::text) > 0)
 Planning time: 0.075 ms
 Execution time: 0.025 ms

Your like queries probably cannot use the indexes you created because:

1) your LIKE criteria begins with a wildcard.

2) you've used a function with your LIKE criteria.


for what it's worth, Django ORM tends to use UPPER(text) for all LIKE queries to make it case insensitive,

Adding an index on UPPER(column::text) has greatly sped up my system, unlike any other thing.

As far as leading %, yes that will not use an index. See this blog for a great explanation:


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.