fengyibo / schemaless-pg

使用Postgres实现一个Leancloud clone

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

schemaless-pg

使用Postgres实现一个Leancloud Clone.

结构

  create_table "sl_tables", comment: "schemaless table", force: :cascade do |t|
    t.string "name", comment: "表名"
    t.string "desc", comment: "描述"
    t.integer "user_id", comment: "创建者"
    t.datetime "created_at", null: false
    t.datetime "updated_at", null: false
  end

  create_table "sl_columns", comment: "schemaless column", force: :cascade do |t|
    t.bigint "sl_table_id"
    t.string "name", null: false
    t.integer "position", default: 0, comment: "排序位置"
    t.string "options", default: [], comment: "预设选项", array: true
    t.string "public_type", comment: "外部类型"
    t.string "private_type", null: false, comment: "私有类型:int4,int8,varchar, text, int4[], float, money, timestamp, date, int4range, point"
    t.datetime "created_at", null: false
    t.datetime "updated_at", null: false
    t.bigint "ref_sl_table_id", comment: "引用的sl table id,用于schemaless table和schemaless table之间的关联"
    t.string "ref_table_name", comment: "引用的外部表名,用于和已存在是实体表之间的关联"
    t.index ["sl_table_id", "name"], name: "index_sl_columns_on_sl_table_id_and_name", unique: true
    t.index ["sl_table_id", "position"], name: "index_sl_columns_on_sl_table_id_and_position"
  end

  create_table "sl_rows", comment: "schemaless row", force: :cascade do |t|
    t.bigint "sl_table_id"
    t.jsonb "data", comment: "数据"
    t.datetime "created_at", null: false
    t.datetime "updated_at", null: false
    t.index ["sl_table_id"], name: "index_sl_rows_on_sl_table_id"
  end

演示

setup data

t = SlTable.create(name: '订单表')
t.sl_columns.create(name: '客户名', public_type: '文本框', private_type: 'varchar')
t.sl_columns.create(name: '金额', public_type: '浮点数', private_type: 'decimal(10, 2)')
t.sl_columns.create(name: '下单日期', public_type: '日期', private_type: 'date')
t.sl_columns.create(name: '标签', public_type: '标签', private_type: 'varchar[]')
t.sl_rows.create(data: {'1': 'hooopo', '2': 50.88, '3': Date.today, '4': SlRow.pg_array(%w[土豪 电子产品爱好者])})

view postgres

view专属的schema用来隔离和接口统一

schemaless-pg_development=# \dn
 List of schemas
  Name   | Owner
---------+--------
 public  | hooopo
 sl_view | hooopo // view专用schema,这样可以使表名和view名相同,通过设置search path,可以让使用者操作统一的SQL层查询接口

自动生成用户定义的view

schemaless-pg_development=# set search_path to sl_view;
schemaless-pg_development=# \dv
        List of relations
 Schema  |  Name  | Type | Owner
---------+--------+------+--------
 sl_view | 订单表 | view | hooopo

view的定义语句

schemaless-pg_development=# \d+ 订单表
                        View "sl_view.订单表"
  Column  |        Type         | Modifiers | Storage  | Description
----------+---------------------+-----------+----------+-------------
 id       | bigint              |           | plain    |
 客户名   | character varying   |           | extended |
 金额     | numeric(10,2)       |           | main     |
 下单日期 | date                |           | plain    |
 印象     | character varying[] |           | extended |
View definition:
 SELECT sl_rows.id,
    (sl_rows.data ->> '1'::text)::character varying AS "客户名",
    ((sl_rows.data ->> '2'::text))::numeric(10,2) AS "金额",
    (sl_rows.data ->> '3'::text)::date AS "下单日期",
    (sl_rows.data ->> '4'::text)::character varying[] AS "印象"
   FROM public.sl_rows
  WHERE sl_rows.sl_table_id = 1;

Ruby 调用

Use MiniSql

schemaless-pg(dev)> ap t.rows_from_view
[
    [0] {
          "id" => 2,
         "客户名" => "hooopo",
          "金额" => 50.88,
        "下单日期" => Mon, 17 Dec 2018,
          "印象" => [
            [0] "土豪",
            [1] "电子产品爱好者"
        ]
    },
    [1] {
          "id" => 3,
         "客户名" => "hooopo",
          "金额" => 50.88,
        "下单日期" => Mon, 17 Dec 2018,
          "印象" => [
            [0] "土豪",
            [1] "电子产品爱好者",
            [2] "rubyist"
        ]
    },
    [2] {
          "id" => 4,
         "客户名" => "hooopo",
          "金额" => 50.88,
        "下单日期" => Mon, 17 Dec 2018,
          "印象" => [
            [0] "土豪",
            [1] "电子产品爱好者",
            [2] "rubyist",
            [3] "100"
        ]
    }
]

Use ActiveRecord

schemaless-pg(dev)> sl_table = SlTable.first
  SlTable Load (1.1ms)  SELECT  "sl_tables".* FROM "sl_tables" ORDER BY "sl_tables"."id" ASC LIMIT $1  [["LIMIT", 1]]
=> #<SlTable id: 1, name: "products", desc: nil, user_id: nil, created_at: "2018-12-20 17:06:00", updated_at: "2018-12-20 17:06:00">
schemaless-pg(dev)> ar_class = sl_table.sl_class
=> #<Class:0x00007f915923d4e8>(id: integer, name: string, desc: text, date: date, price: decimal, category: string)
schemaless-pg(dev)> ar_class.count
   (23.3ms)  SELECT COUNT(*) FROM "sl_view"."products"
=> 10000
schemaless-pg(dev)> ar_class.first
   Load (5.4ms)  SELECT  "sl_view"."products".* FROM "sl_view"."products" ORDER BY "sl_view"."products"."id" ASC LIMIT $1  [["LIMIT", 1]]
=> #<#<Class:0x00007f915923d4e8> id: 1, name: "320000", desc: "2700", date: "2016-06-14", price: 0.21999e3, category: "420">
schemaless-pg(dev)> ar_class.where("price > 100").first
   Load (12.5ms)  SELECT  "sl_view"."products".* FROM "sl_view"."products" WHERE (price > 100) ORDER BY "sl_view"."products"."id" ASC LIMIT $1  [["LIMIT", 1]]
=> #<#<Class:0x00007f915923d4e8> id: 1, name: "320000", desc: "2700", date: "2016-06-14", price: 0.21999e3, category: "420">
schemaless-pg(dev)> ar_class.where("price > 100").first.name
   Load (2.9ms)  SELECT  "sl_view"."products".* FROM "sl_view"."products" WHERE (price > 100) ORDER BY "sl_view"."products"."id" ASC LIMIT $1  [["LIMIT", 1]]
=> "320000"

表之间的引用

通过sl_view引用产生的view,和两个普通表一样,可以任意JOIN

schemaless-pg_development=# select o.id from sl_view.orders as o inner join sl_view.products as p on p.id = o.product_id  where p.name = '24' limit 1;
   id
--------
 176068
(1 row)

Time: 0.791 ms

过滤和排序

搜索

报表

性能和索引相关

sl_table_id index

默认情况,通过sl_view进行查询,会使用到sl_table_id这个index。

schemaless-pg_development=#  select count(*) from sl_view.products;
 count
--------
 100000
(1 row)

Time: 68.302 ms
schemaless-pg_development=# explain analyze  select count(*) from sl_view.products;
                                                                           QUERY PLAN
----------------------------------------------------------------------------------------------------------------------------------------------------------------
 Aggregate  (cost=5900.08..5900.09 rows=1 width=8) (actual time=149.594..149.595 rows=1 loops=1)
   ->  Index Only Scan using index_sl_rows_on_sl_table_id on sl_rows  (cost=0.42..5640.25 rows=103933 width=0) (actual time=0.465..129.799 rows=100000 loops=1)
         Index Cond: (sl_table_id = 7)
         Heap Fetches: 100000
 Planning time: 0.639 ms
 Execution time: 150.509 ms
(6 rows)

Time: 262.017 ms

primary_key index

主键查询可以利用sl_rows_pkey这个索引

schemaless-pg_development=#  select id from sl_view.products where id = 95085;
  id
-------
 95085
(1 row)

Time: 17.260 ms
schemaless-pg_development=# explain analyze select id from sl_view.products where id = 95085;
                                                      QUERY PLAN
----------------------------------------------------------------------------------------------------------------------
 Index Scan using sl_rows_pkey on sl_rows  (cost=0.42..8.45 rows=1 width=8) (actual time=0.643..0.644 rows=1 loops=1)
   Index Cond: (id = 95085)
   Filter: (sl_table_id = 7)
 Planning time: 0.158 ms
 Execution time: 2.491 ms

custom btree index

给 sl_view.orders.age 字段上面加btree索引:

t  = SlTable.last
c  = t.sl_columns.where(name: :age).first
c.create_index!

生成 create index 语句:

(8764.0ms)  CREATE INDEX CONCURRENTLY IF NOT EXISTS "8_btree_42_age"
ON sl_rows
USING BTREE (sl_table_id, CAST ((data ->> '42') AS int4))
WHERE sl_table_id = 8

等值过滤:

schemaless-pg_development=# select * from sl_view.orders where age = 40 limit 1;
   id   | customer_name | total |    date    | age |       tags       | product_id
--------+---------------+-------+------------+-----+------------------+------------
 914599 | 55555555      | 94.30 | 2018-04-07 |  40 | {电击,电动,电子} |      41757
(1 row)

Time: 13.313 ms

explain analyze select id from sl_view.orders where age = 40 limit 10 ;
                                                                QUERY PLAN
------------------------------------------------------------------------------------------------------------------------------------------
 Limit  (cost=0.42..62.64 rows=10 width=8) (actual time=82.712..82.784 rows=10 loops=1)
   ->  Index Scan using "8_btree_42_age" on sl_rows  (cost=0.42..22752.74 rows=3657 width=8) (actual time=82.710..82.782 rows=10 loops=1)
         Index Cond: (((data ->> '42'::text))::integer = 40)
 Planning time: 8.856 ms
 Execution time: 83.890 ms
(5 rows)

Time: 155.321 ms

比较过滤:

由于测试数据生成的分布太均匀,目前用不到索引...

排序:

schemaless-pg_development=# explain analyze select * from sl_view.orders order by age limit 1;
                                                                 QUERY PLAN
--------------------------------------------------------------------------------------------------------------------------------------------
 Limit  (cost=0.42..0.56 rows=1 width=100) (actual time=0.124..0.125 rows=1 loops=1)
   ->  Index Scan using "8_btree_42_age" on sl_rows  (cost=0.42..103273.76 rows=743546 width=100) (actual time=0.123..0.123 rows=1 loops=1)
 Planning time: 0.458 ms
 Execution time: 0.163 ms
(4 rows)

Time: 2.640 ms
schemaless-pg_development=# select * from sl_view.orders order by age limit 1;
   id   | customer_name | total |    date    | age |       tags       | product_id
--------+---------------+-------+------------+-----+------------------+------------
 926757 | 22222222      | 86.78 | 2018-05-14 |   0 | {产品,电子,电击} |      29457
(1 row)

Time: 3.484 ms

custom gin index

custom fulltext index

custom multi-column index

多租和隔离

Sharding

Deployment

Ensure the following environment variables are set in the deployment environment:

  • POSTMARK_API_KEY
  • RACK_ENV
  • RAILS_ENV
  • REDIS_URL
  • SECRET_KEY_BASE
  • SIDEKIQ_WEB_PASSWORD
  • SIDEKIQ_WEB_USERNAME

Optionally:

  • RAILS_LOG_TO_STDOUT
  • RAILS_SERVE_STATIC_FILES

About

使用Postgres实现一个Leancloud clone


Languages

Language:Ruby 87.0%Language:HTML 11.1%Language:JavaScript 1.9%Language:CSS 0.1%