I'm running a basic tagging-style system and am wondering how efficient my queries are.
My specific use case involves tagging recipe
objects with ingredients
through a requirement
object, which has a recipe_id
and an ingredient_id
.
Recipes, ingredients and requirements are all completely siloed by user
.
I want to be able to return a user's recipes that include ALL ingredients in a given set.
The way I'm doing this, given a list of ingredient_ids
(1,2) and user_id
of 1, is like this:
SELECT `recipes`.* FROM `recipes`
WHERE `recipes`.`id` IN (
SELECT `requirements`.`recipe_id`
FROM `requirements`
WHERE `requirements`.`ingredient_id` IN (1, 2)
AND `requirements`.`user_id` = 1
GROUP BY `requirements`.`recipe_id`
HAVING COUNT(`requirements`.`recipe_id`) = 2)
This is returning the data I need but I'm worried about its performance. The sub-query doesn't look good because it is grabbing all requirements with ingredient_id 1 or 2, grouping them by recipe and then counting them to match the given array size, simply to create an array against which to further query recipe ids.
But the requirements
table could be massive, as each entry manages one of potentially an n-squared number of bi-directional relationships between recipes and ingredients. So it doesn't make sense to me to query the whole table in this way.
Am I missing something?
I've often heard that IN and NULL equality comparisons are so much faster than JOINs, but surely not when the complexity of the subquery negates the speed saving?
It seems like a very simple problem that I'm over-engineering, how would you improve it?