Skip to content

webNeat/sql-single-vs-multiple-queries

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

15 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Drizzle single vs multiple queries performance comparaison

This sentence from Drizzle documentation was surprising to me:

Regardless of how many nested relations you query - Drizzle will always make exactly one SQL query to the database, it makes it extremely explicit and easy to tune performance with indexes.

In my mind, using exactly one SQL query will not be performant in all cases. In fact, I have seen some cases where doing multiple joins hurt the performance a lot. Am I missing something?! maybe Drizzle is doing something I don't know ...

So I created this benchmark to experiment with Drizzle a bit and see what I am understanding wrong.

The benchmark

  • I used Postgres inside a docker container
  • I created a simple blog database
users
  id int primary key auto-increment
  name varchar(255)
  email varchar(255)
  bio text

posts
  id primary key auto-increment
  user_id int foreign key (users.id)
  title text
  content text

comments
  id primary key auto-increment
  user_id int foreign key (users.id)
  post_id int foreign key (posts.id)
  content text
  • I inserted a lot of data into the database: 100k users, 500k posts and 5M comments
  • I wrote two scripts to fetch the same data: a number of comments with their author name, post title and post author name. The count of comments to fetch is given as a parameter to the script.
    • The first script src/single.ts uses Drizzle db.query... to fetch all the data using a single query.
    • The second script src/multiple.ts uses Drizzle db.query... three times to fetch data from the 3 tables and combine them manually. Both scripts give exactly the same data!

The results

count of comments single query on v0.26.5 multiple queries + combination on v0.26.5 single query on v0.28.0 multiple queries + combination on v0.28.0 single query with Orchid ORM v1.10.5
1 1900 ms 27 ms 11 ms 17 ms 12 ms
100 3250 ms 30 ms 13 ms 21 ms 13 ms
1000 16_000 ms 55 ms 23 ms 37 ms 21 ms
5000 71_000 ms 150 ms 57 ms 120 ms 50 ms

SQL produced by Drizzle ORM v0.26.5

SELECT "id",
       "user_id",
       "post_id",
       "content",
       "user"::JSON,
       "post"::JSON
FROM
  (SELECT "comments".*,
          CASE
              WHEN count("comments_post"."id") = 0 THEN '[]'
              ELSE json_agg(json_build_array("comments_post"."title", "comments_post"."user"::JSON))::text
          END AS "post"
   FROM
     (SELECT "comments".*,
             CASE
                 WHEN count("comments_user"."id") = 0 THEN '[]'
                 ELSE json_agg(json_build_array("comments_user"."name"))::text
             END AS "user"
      FROM "comments"
      LEFT JOIN
        (SELECT "comments_user".*
         FROM "users" "comments_user") "comments_user" ON "comments"."user_id" = "comments_user"."id"
      GROUP BY "comments"."id",
               "comments"."user_id",
               "comments"."post_id",
               "comments"."content") "comments"
   LEFT JOIN
     (SELECT "comments_post".*
      FROM
        (SELECT "comments_post".*,
                CASE
                    WHEN count("comments_post_user"."id") = 0 THEN '[]'
                    ELSE json_agg(json_build_array("comments_post_user"."name"))
                END AS "user"
         FROM "posts" "comments_post"
         LEFT JOIN
           (SELECT "comments_post_user".*
            FROM "users" "comments_post_user") "comments_post_user" ON "comments_post"."user_id" = "comments_post_user"."id"
         GROUP BY "comments_post"."id") "comments_post") "comments_post" ON "comments"."post_id" = "comments_post"."id"
   GROUP BY "comments"."id",
            "comments"."user_id",
            "comments"."post_id",
            "comments"."content",
            "comments"."user") "comments"
LIMIT 1

SQL produced by Drizzle ORM v0.28.0

select "comments"."id",
  "comments"."user_id",
  "comments"."post_id",
  "comments"."content",
  "comments_user"."data" as "user",
  "comments_post"."data" as "post"
from "comments"
left join lateral (select json_build_array("comments_user"."name")   as "data"
from (select *
    from "users" "comments_user"
    where "comments_user"."id" = "comments"."user_id"
    limit 1) "comments_user") "comments_user" on true
left join lateral (select json_build_array("comments_post"."title", "comments_post_user"."data") as "data"
from (select *
    from "posts" "comments_post"
    where "comments_post"."id" = "comments"."post_id"
    limit 1) "comments_post"
        left join lateral (select json_build_array("comments_post_user"."name") as "data"
            from (select *
                from "users" "comments_post_user"
                where "comments_post_user"."id" = "comments_post"."user_id"
                limit 1) "comments_post_user") "comments_post_user"
        on true) "comments_post" on true
order by "comments"."id"
limit 1

SQL produced by Orchid ORM v1.10.5

SELECT "comments".*,
       row_to_json("user".*) "user",
       row_to_json("post".*) "post"
FROM "comments"
LEFT JOIN LATERAL
  (SELECT "user"."name"
   FROM "users" AS "user"
   WHERE "user"."id" = "comments"."user_id") "user" ON TRUE
LEFT JOIN LATERAL
  (SELECT "post"."title",
          row_to_json("user2".*) "user"
   FROM "posts" AS "post"
   LEFT JOIN LATERAL
     (SELECT "user"."name"
      FROM "users" AS "user"
      WHERE "user"."id" = "post"."user_id") "user2" ON TRUE
   WHERE "post"."id" = "comments"."post_id") "post" ON TRUE
LIMIT 1

Results for MySQL

count of comments single query with Drizzle ORM on v0.28.0 multiple queries + data combination on v0.28.0
1 17 ms 20 ms
100 18 ms 22 ms
1000 24 ms 35 ms
5000 73 ms 91 ms

SQL produced by Drizzle ORM v0.28.0

select `comments`.`id`,
    `comments`.`user_id`,
    `comments`.`post_id`,
    `comments`.`content`,
    `comments_user`.`data` as `user`,
    `comments_post`.`data` as `post`
from `comments`
    left join lateral (select json_array(`comments_user`.`name`) as `data`
      from (select *
            from `users` `comments_user`
            where `comments_user`.`id` = `comments`.`user_id`
            limit 1) `comments_user`) `comments_user` on true
    left join lateral (select json_array(`comments_post`.`title`, `comments_post_user`.`data`) as `data`
      from (select *
          from `posts` `comments_post`
          where `comments_post`.`id` = `comments`.`post_id`
          limit 1) `comments_post`
              left join lateral (select json_array(`comments_post_user`.`name`) as `data`
                  from (select *
                      from `users` `comments_post_user`
                      where `comments_post_user`.`id` = `comments_post`.`user_id`
                      limit 1) `comments_post_user`) `comments_post_user`
              on true) `comments_post` on true
order by `comments`.`id`
limit 1

Results for SQLite

count of comments single query with Drizzle ORM v0.28.0 multiple queries + data combination on v0.28.0
1 2 ms 2 ms
100 3 ms 4 ms
1000 15 ms 20 ms
5000 47 ms 67 ms

SQL produced by Drizzle ORM v0.28.0:

select "id",
       "user_id",
       "post_id",
       "content",
       (select json_array("name") as "data"
        from (select *
              from "users" "comments_user"
              where "comments_user"."id" = "comments"."user_id"
              limit 1) "comments_user") as "user",
       (select json_array("title", (select json_array("name") as "data"
                                    from (select *
                                          from "users" "comments_post_user"
                                          where "comments_post_user"."id" = "comments_post"."user_id"
                                          limit 1) "comments_post_user")) as "data"
        from (select *
              from "posts" "comments_post"
              where "comments_post"."id" = "comments"."post_id"
              limit 1) "comments_post") as "post"
from "comments"
order by "comments"."id"
limit 1

Run the benchmark yourself

Requirements: You will need to have docker-compose and Nodejs installed on your system.

Then follow these steps:

  • Clone this repo
  • Install dependencies yarn install
  • Generate the SQL file that inserts data into the database yarn generate-seed (You can change the amount of data to generate by changing the counts variable in src/seed/generators.ts)
  • Start the database yarn start-db (This will take some time to insert all the data, it took about 5mins on my system. Wait untill you see database system is ready to accept connections)
    • To seed sqlite database - use yarn seed-sqlite
  • Keep the database running, open a new terminal to run the scripts

For PostgreSQL tests

  • Run the single query script with yarn tsx src/pg/single.ts <count> (example: yarn tsx src/pg/single.ts 100)
  • Run the multiple queries script with yarn tsx src/pg/multiple.ts <count> (example: yarn tsx src/pg/multiple.ts 100)
  • Run the orchid queries script with yarn tsx src/pg/orchid.ts <count> (example: yarn tsx src/pg/orchid.ts 100)

For MySQL tests

  • Run the single query script with yarn tsx src/mysql/single.ts <count> (example: yarn tsx src/mysql/single.ts 100)
  • Run the multiple queries script with yarn tsx src/mysql/multiple.ts <count> (example: yarn tsx src/mysql/multiple.ts 100)

For SQLite tests

  • Run the single query script with yarn tsx src/sqlite/single.ts <count> (example: yarn tsx src/sqlite/single.ts 100)
  • Run the multiple queries script with yarn tsx src/sqlite/multiple.ts <count> (example: yarn tsx src/sqlite/multiple.ts 100)

The two scripts write the loaded data into the files single.json, multiple.json, and orchid.json respectively, so you can inspect the files and check that they fetch the same data.

Got a feedback?

Feel free to open an issue or submit a PR, I created this repo out of curiosity and my goal is to learn new things. if you see that I am doing something wrong, please let me know!

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published