Squeal is a deep embedding of SQL into Haskell. By "deep embedding", I am abusing the term somewhat. What I mean is that Squeal embeds both SQL terms and SQL types into Haskell at the term and type levels respectively. This leads to a very high level of type-safety in Squeal.
Squeal embeds not just the structured query language of SQL but also the
data manipulation language and the data definition language; that's SELECT
,
INSERT
, UPDATE
, DELETE
, WITH
, CREATE
, DROP
, and ALTER
commands.
Squeal expressions closely match their corresponding SQL expressions so that the SQL they actually generate is completely predictable. They are also highly composable and cover a large portion of SQL.
- generic encoding of Haskell tuples and records into query parameters
and generic decoding of query results into Haskell records
using
generics-sop
- access to SQL alias system using the
OverloadedLabels
extension - type-safe
NULL
andDEFAULT
- type-safe SQL constraints
CHECK
,UNIQUE
,PRIMARY KEY
andFOREIGN KEY
- type-safe aggregation
- escape hatches for writing raw SQL
mtl
compatible monad transformer for executing as well as preparing queries and manipulations and Atkey indexed monad transformer for executing definitions.- linear, pure or impure, one-way or rewindable migrations
- connection pools
- transactions
- views
- array, composite and enumerated types
- json functions and operations
- multischema support
- correlated subqueries
- window functions
- text search
- time functions
- ranges
- indexes
- inlining
stack install squeal-postgresql
Start postgres on localhost port 5432
and create a database named exampledb
.
On macOS, you can create the database using createdb exampledb
.
stack test
We welcome contributors.
Please make pull requests on the dev
branch instead of master
.
The Issues
page is a good place to communicate.
Let's see an example!
First, we need some language extensions because Squeal uses modern GHC features.
>>> :set -XDataKinds -XDeriveGeneric -XOverloadedLabels -XFlexibleContexts
>>> :set -XOverloadedStrings -XTypeApplications -XTypeOperators -XGADTs
We'll need some imports.
>>> import Control.Monad.IO.Class (liftIO)
>>> import Data.Int (Int32)
>>> import Data.Text (Text)
>>> import Squeal.PostgreSQL
We'll use generics to easily convert between Haskell and PostgreSQL values.
>>> import qualified Generics.SOP as SOP
>>> import qualified GHC.Generics as GHC
The first step is to define the schema of our database. This is where
we use DataKinds
and TypeOperators
.
>>> :{
type UsersColumns =
'[ "id" ::: 'Def :=> 'NotNull 'PGint4
, "name" ::: 'NoDef :=> 'NotNull 'PGtext ]
type UsersConstraints = '[ "pk_users" ::: 'PrimaryKey '["id"] ]
type EmailsColumns =
'[ "id" ::: 'Def :=> 'NotNull 'PGint4
, "user_id" ::: 'NoDef :=> 'NotNull 'PGint4
, "email" ::: 'NoDef :=> 'Null 'PGtext ]
type EmailsConstraints =
'[ "pk_emails" ::: 'PrimaryKey '["id"]
, "fk_user_id" ::: 'ForeignKey '["user_id"] "public" "users" '["id"] ]
type Schema =
'[ "users" ::: 'Table (UsersConstraints :=> UsersColumns)
, "emails" ::: 'Table (EmailsConstraints :=> EmailsColumns) ]
type DB = Public Schema
:}
Notice the use of type operators.
:::
is used to pair an alias Symbol
with a SchemasType
, a SchemumType
,
a TableConstraint
or a ColumnType
. It is intended to connote Haskell's ::
operator.
:=>
is used to pair TableConstraints
with a ColumnsType
,
yielding a TableType
, or to pair an Optionality
with a NullType
,
yielding a ColumnType
. It is intended to connote Haskell's =>
operator
Next, we'll write Definition
s to set up and tear down the schema. In
Squeal, a Definition
like createTable
, alterTable
or dropTable
has two type parameters, corresponding to the schema
before being run and the schema after. We can compose definitions using >>>
.
Here and in the rest of our commands we make use of overloaded
labels to refer to named tables and columns in our schema.
>>> :{
let
setup :: Definition (Public '[]) DB
setup =
createTable #users
( serial `as` #id :*
(text & notNullable) `as` #name )
( primaryKey #id `as` #pk_users ) >>>
createTable #emails
( serial `as` #id :*
(int & notNullable) `as` #user_id :*
(text & nullable) `as` #email )
( primaryKey #id `as` #pk_emails :*
foreignKey #user_id #users #id
(OnDelete Cascade) (OnUpdate Cascade) `as` #fk_user_id )
:}
We can easily see the generated SQL is unsurprising looking.
>>> printSQL setup
CREATE TABLE "users" ("id" serial, "name" text NOT NULL, CONSTRAINT "pk_users" PRIMARY KEY ("id"));
CREATE TABLE "emails" ("id" serial, "user_id" int NOT NULL, "email" text NULL, CONSTRAINT "pk_emails" PRIMARY KEY ("id"), CONSTRAINT "fk_user_id" FOREIGN KEY ("user_id") REFERENCES "users" ("id") ON DELETE CASCADE ON UPDATE CASCADE);
Notice that setup
starts with an empty public schema (Public '[])
and produces DB
.
In our createTable
commands we included TableConstraint
s to define
primary and foreign keys, making them somewhat complex. Our teardown
Definition
is simpler.
>>> :{
let
teardown :: Definition DB (Public '[])
teardown = dropTable #emails >>> dropTable #users
:}
>>> printSQL teardown
DROP TABLE "emails";
DROP TABLE "users";
We'll need a Haskell type for User
s. We give the type Generics.SOP.Generic
and
Generics.SOP.HasDatatypeInfo
instances so that we can encode and decode User
s.
>>> :set -XDerivingStrategies -XDeriveAnyClass
>>> :{
data User = User { userName :: Text, userEmail :: Maybe Text }
deriving stock (Show, GHC.Generic)
deriving anyclass (SOP.Generic, SOP.HasDatatypeInfo)
:}
Next, we'll write Statement
s to insert User
s into our two tables.
A Statement
has three type parameters, the schemas it refers to,
input parameters and an output row. When
we insert into the users table, we will need a parameter for the name
field but not for the id
field. Since it's serial, we can use a default
value. However, since the emails table refers to the users table, we will
need to retrieve the user id that the insert generates and insert it into
the emails table. We can do this in a single Statement
by using a
with
manipulation
.
>>> :{
let
insertUser :: Statement DB User ()
insertUser = manipulation $ with (u `as` #u) e
where
u = insertInto #users
(Values_ (Default `as` #id :* Set (param @1) `as` #name))
OnConflictDoRaise (Returning_ (#id :* param @2 `as` #email))
e = insertInto_ #emails $ Select
(Default `as` #id :* Set (#u ! #id) `as` #user_id :* Set (#u ! #email) `as` #email)
(from (common #u))
:}
>>> printSQL insertUser
WITH "u" AS (INSERT INTO "users" ("id", "name") VALUES (DEFAULT, ($1 :: text)) RETURNING "id" AS "id", ($2 :: text) AS "email") INSERT INTO "emails" ("user_id", "email") SELECT "u"."id", "u"."email" FROM "u" AS "u"
Next we write a Statement
to retrieve users from the database. We're not
interested in the ids here, just the usernames and email addresses. We
need to use an innerJoin
to get the right result.
>>> :{
let
getUsers :: Statement DB () User
getUsers = query $ select_
(#u ! #name `as` #userName :* #e ! #email `as` #userEmail)
( from (table (#users `as` #u)
& innerJoin (table (#emails `as` #e))
(#u ! #id .== #e ! #user_id)) )
:}
>>> printSQL getUsers
SELECT "u"."name" AS "userName", "e"."email" AS "userEmail" FROM "users" AS "u" INNER JOIN "emails" AS "e" ON ("u"."id" = "e"."user_id")
Let's create some users to add to the database.
>>> :{
let
users :: [User]
users =
[ User "Alice" (Just "[email protected]")
, User "Bob" Nothing
, User "Carole" (Just "[email protected]")
]
:}
Now we can put together all the pieces into a program. The program
connects to the database, sets up the schema, inserts the user data
(using prepared statements as an optimization), queries the user
data and prints it out and finally closes the connection. We can thread
the changing schema information through by using the indexed PQ
monad
transformer and when the schema doesn't change we can use Monad
and
MonadPQ
functionality.
>>> :{
let
session :: PQ DB DB IO ()
session = do
executePrepared_ insertUser users
usersResult <- execute getUsers
usersRows <- getRows usersResult
liftIO $ print usersRows
in
withConnection "host=localhost port=5432 dbname=exampledb user=postgres password=postgres" $
define setup
& pqThen session
& pqThen (define teardown)
:}
[User {userName = "Alice", userEmail = Just "[email protected]"},User {userName = "Bob", userEmail = Nothing},User {userName = "Carole", userEmail = Just "[email protected]"}]
This should get you up and running with Squeal. Once you're writing more complicated queries and need a deeper understanding of Squeal's types and how everything fits together, check out the Core Concepts Handbook.