Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I have two tables in a one-to-many relationship. Let's say that for each row in table foo, there can be 0 or more rows in table bar that reference the row in foo.

The client wants to know how many rows in bar reference a row in foo, for all the rows in foo.

I can accomplish this with the following query:

SELECT count(bar_id) FROM bar WHERE bar.foo_id = foo.foo_id;

However, what if the tables foo and bar were large? Say foo has 1 million rows, and bar has 10 million rows. Let's also say that 99% of rows in foo would have a count of less than 1,000 bar rows referencing it. Let's say that the client typically asks for around 100 rows of foo at a time.

Should I use the naive count() query with an index on the foreign key, or would it be better to keep a counter? Is it even possible to keep a counter? By updating the counter with atomic increments and decrements using a trigger on bar, I believe it's possible, but I could be wrong.

share|improve this question
up vote 4 down vote accepted

Perhaps counter-intuitively, you'll probably find that the simple count approach is faster unless your workload is very biased towards reads.

The reason for this is that the effect of the counter table will be to serialize updates, so only one transaction that's updating a given foo can be in flight at any given time. That's because the update for the trigger that updates the counter will take a lock on that foo's entry in the counter table and won't release it until the transaction rolls back or commits.

Worse, if your transaction affects more than one foo and so does another one, you have a high chance of one of the transactions being aborted due to a deadlock.

Stick to a simple count until you have a good reason to change it.

share|improve this answer

The sweet thing about indices is that they offer logarithmic complexity for querying operations. Thus, for 10*10^6 rows, the index just needs about ln(10*10^6)=16.1 comparisons to find one specific id. Make it 100 million rows, and you only have to do 2 to 3 comparisons more. In short: The index does not that much care about the size of a table.

Of course, you may still be able to archive some performance gains using a stored counter. That is a typical tradeoff. Maintaining the counter will make insertions and deletions to bar much more expensive and make your counting query a little bit cheaper.

Thus, if your tables are altered rarely and the query is run frequently (say, thousands of times an hour), you might really gain performance using the stored counter procedure. However, in most cases I would say go for the indexed column and let the database do the rest for you.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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