Last active
February 25, 2025 15:58
-
-
Save rphlmr/de869cf24816d02068c3dd089b45ae82 to your computer and use it in GitHub Desktop.
Drizzle ORM, deep sub queries
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
/* -------------------------------------------------------------------------- */ | |
/* More here; */ | |
/* -------------------------------------------------------------------------- */ | |
// https://gist.github.com/rphlmr/0d1722a794ed5a16da0fdf6652902b15 | |
export function distinctOn<Column extends AnyColumn>(column: Column) { | |
return sql<Column["_"]["data"]>`distinct on (${column}) ${column}`; | |
} | |
export function jsonBuildObject<T extends SelectedFields>(shape: T) { | |
const chunks: SQL[] = []; | |
Object.entries(shape).forEach(([key, value]) => { | |
if (chunks.length > 0) { | |
chunks.push(sql.raw(`,`)); | |
} | |
chunks.push(sql.raw(`'${key}',`)); | |
// json_build_object formats to ISO 8601 ... | |
if (is(value, PgTimestampString)) { | |
chunks.push(sql`timezone('UTC', ${value})`); | |
} else { | |
chunks.push(sql`${value}`); | |
} | |
}); | |
return sql<SelectResultFields<T>>`json_build_object(${sql.join( | |
chunks | |
)})`; | |
} | |
export function jsonAggBuildObject< | |
T extends SelectedFields, | |
Column extends AnyColumn, | |
>( | |
shape: T, | |
options?: { orderBy?: { colName: Column; direction: "ASC" | "DESC" } }, | |
) { | |
return sql<SelectResultFields<T>[]>`coalesce( | |
json_agg(${jsonBuildObject(shape)} | |
${ | |
options?.orderBy | |
? sql`ORDER BY ${options.orderBy.colName} ${sql.raw( | |
options.orderBy.direction, | |
)}` | |
: undefined | |
}) | |
FILTER (WHERE ${and( | |
sql.join( | |
Object.values(shape).map((value) => sql`${sql`${value}`} IS NOT NULL`), | |
sql` AND `, | |
), | |
)}) | |
,'${sql`[]`}')`; | |
} | |
export function inJsonArray<T extends SQL.Aliased<unknown[]>>( | |
jsonArray: T, | |
key: keyof T["_"]["type"][number], | |
values: string[] | |
) { | |
const element = sql.raw(`${String(key)}_array_element`); | |
return sql`EXISTS ( | |
SELECT 1 | |
FROM jsonb_array_elements(${jsonArray}) AS ${element} | |
WHERE ${inArray(sql`${element}->>${key}`, values)} | |
)`; | |
} |
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
const commentQuery = db | |
.select({ | |
id: distinctOn(comment.id).mapWith(String).as("comment_id"), | |
fileId: sql`${comment.fileId}`.mapWith(String).as("file_id"), | |
text: comment.text, | |
commenter: { | |
id: sql`${user.id}`.mapWith(String).as("commenter_id"), | |
name: user.name, | |
}, | |
}) | |
.from(comment) | |
.innerJoin(user, eq(comment.commenterId, user.id)) | |
.orderBy(comment.id) | |
.as("comment_query"); | |
const commentsQuery = db | |
.select({ | |
fileId: commentQuery.fileId, | |
comments: jsonAggBuildObject({ | |
id: commentQuery.id, | |
text: commentQuery.text, | |
commenter: jsonBuildObject({ | |
id: commentQuery.commenter.id, | |
name: commentQuery.commenter.name, | |
}), | |
}).as("comments"), | |
}) | |
.from(commentQuery) | |
.groupBy(commentQuery.fileId) | |
.as("comments_query"); | |
const tagQuery = db | |
.select({ | |
id: distinctOn(tagsPivot.id).mapWith(String).as("tag_link_id"), | |
tagId: sql`${tagsPivot.tagId}`.mapWith(String).as("tag_id"), | |
fileId: sql`${tagsPivot.fileId}` | |
.mapWith(String) | |
.as("tagged_file_id"), | |
name: tag.name, | |
}) | |
.from(tagsPivot) | |
.innerJoin(tag, eq(tag.id, tagsPivot.tagId)) | |
.orderBy(tagsPivot.id) | |
.as("tag_query"); | |
const tagsQuery = db | |
.select({ | |
fileId: tagQuery.fileId, | |
tags: jsonAggBuildObject({ | |
id: tagQuery.tagId, | |
name: tagQuery.name, | |
}).as("tags"), | |
}) | |
.from(tagQuery) | |
.groupBy(tagQuery.fileId) | |
.as("tags_query"); | |
const result = await db | |
.select({ | |
...getTableColumns(file), | |
comments: commentsQuery.comments, | |
tags: tagsQuery.tags, | |
}) | |
.from(file) | |
.leftJoin(commentsQuery, eq(commentsQuery.fileId, file.id)) | |
.leftJoin(tagsQuery, eq(tagsQuery.fileId, file.id)); | |
const filterByTagId = await db | |
.select({ | |
...getTableColumns(file), | |
comments: commentsQuery.comments, | |
tags: tagsQuery.tags, | |
}) | |
.from(file) | |
// this line is how to filter | |
.where(inJsonArray(tagsQuery.tags, "id", [tagIdFilter])) | |
.leftJoin(commentsQuery, eq(commentsQuery.fileId, file.id)) | |
.leftJoin(tagsQuery, eq(tagsQuery.fileId, file.id)); | |
console.log(JSON.stringify(result, null, 2)); |
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
[ | |
{ | |
"id": "84d88f3c-ff46-4b52-90b8-3d8838fa0c75", | |
"name": "Jedi code", | |
"comments": [ | |
{ | |
"id": "b7190643-4b2d-4412-a438-3e440f4f5322", | |
"text": "Learn that my apprentice", | |
"commenter": { | |
"id": "01d1fd7a-10a8-4760-900d-72b201d51b45", | |
"name": "Obi-Wan" | |
} | |
} | |
], | |
"tags": [ | |
{ | |
"id": "f19f5f1c-5efb-4e50-ba53-882274529659", | |
"name": "padawan" | |
} | |
] | |
}, | |
{ | |
"id": "592998ec-f0d3-43ff-8ed3-ab10ee8522de", | |
"name": "Sith code", | |
"comments": [ | |
{ | |
"id": "46d1b4c3-89dd-49f1-9159-53eb32372b79", | |
"text": "Agree I am", | |
"commenter": { | |
"id": "6c9f3c61-9f18-44ed-90f7-90b97a1776fa", | |
"name": "Yoda" | |
} | |
}, | |
{ | |
"id": "e3d3d03c-4ae3-4e38-b866-224e29c35fbb", | |
"text": "We should hide that from padawan", | |
"commenter": { | |
"id": "01d1fd7a-10a8-4760-900d-72b201d51b45", | |
"name": "Obi-Wan" | |
} | |
} | |
], | |
"tags": [ | |
{ | |
"id": "0917cf03-a56b-4056-bacd-b6ac84e3adf4", | |
"name": "knight" | |
}, | |
{ | |
"id": "330b7583-ce67-4ce0-aacc-8e34030f75f0", | |
"name": "master" | |
} | |
] | |
} | |
] |
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
export const user = pgTable("user", { | |
id: uuid("id").primaryKey().defaultRandom(), | |
name: text("name").notNull(), | |
}); | |
export const file = pgTable("file", { | |
id: uuid("id").primaryKey().defaultRandom(), | |
name: text("name").notNull(), | |
}); | |
export const tag = pgTable("tag", { | |
id: uuid("id").primaryKey().defaultRandom(), | |
name: text("name").notNull(), | |
}); | |
export const tagsPivot = pgTable( | |
"tags_pivot", | |
{ | |
id: uuid("id").notNull().defaultRandom(), | |
fileId: uuid("file_id") | |
.references(() => file.id) | |
.notNull(), | |
tagId: uuid("tag_id") | |
.references(() => tag.id) | |
.notNull(), | |
}, | |
(t) => ({ | |
cpk: primaryKey({ columns: [t.fileId, t.tagId] }), | |
}), | |
); | |
export const comment = pgTable("comment", { | |
id: uuid("id").primaryKey().defaultRandom(), | |
commenterId: uuid("commenter_id") | |
.references(() => user.id) | |
.notNull(), | |
fileId: uuid("file_id") | |
.references(() => file.id) | |
.notNull(), | |
text: text("text").notNull(), | |
}); |
What is the time complexity of this? For example if I have a user with 100 comments, 100 messages and 100 login attempts will it be equivalent to 100^3 = 1000000 or will it be proportionate to 300? I want to use it for a case in which a user might get hundreds of rows from three different tables and each table could contain a million rows.
Is the performance similar to left joins or is it faster?
Sign up for free
to join this conversation on GitHub.
Already have an account?
Sign in to comment
@tobychidi 🫡
$with
is just like a variable to make the query easier to read, replacing duplications by an alias