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github.com/doug-martin/goqu
__ _ ___ __ _ _ _
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goqu
is an expressive SQL builder
This library was built with the following goals:
goqu
comes with many features but here are a few of the more notable ones
SELECT * FROM "items" WHERE "id" = ?
-> SELECT * FROM "items" WHERE "id" = 1
)While goqu may support the scanning of rows into structs it is not intended to be used as an ORM if you are looking for common ORM features like associations, or hooks I would recommend looking at some of the great ORM libraries such as:
go get -u gopkg.in/doug-martin/goqu.v5
In order to start using goqu with your database you need to load an adapter. We have included some adapters by default.
import "gopkg.in/doug-martin/goqu.v5/adapters/postgres"
import "gopkg.in/doug-martin/goqu.v5/adapters/mysql"
import "gopkg.in/doug-martin/goqu.v5/adapters/sqlite3"
Adapters in goqu work the same way as a driver with the database in that they register themselves with goqu once loaded.
import (
"database/sql"
"gopkg.in/doug-martin/goqu.v5"
_ "gopkg.in/doug-martin/goqu.v5/adapters/postgres"
_ "github.com/lib/pq"
)
Notice that we imported the adapter and driver for side effect only.
Once you have your adapter and driver loaded you can create a goqu.Database instance
pgDb, err := sql.Open("postgres", "user=postgres dbname=goqupostgres sslmode=disable ")
if err != nil {
panic(err.Error())
}
db := goqu.New("postgres", pgDb)
Now that you have your goqu.Database you can build your SQL and it will be formatted appropriately for the provided dialect.
//interpolated sql
sql, _ := db.From("user").Where(goqu.Ex{
"id": 10,
}).ToSql()
fmt.Println(sql)
//prepared sql
sql, args, _ := db.From("user").
Prepared(true).
Where(goqu.Ex{
"id": 10,
}).
ToSql()
fmt.Println(sql)
Output
SELECT * FROM "user" WHERE "id" = 10
SELECT * FROM "user" WHERE "id" = $1
goqu
provides an idiomatic DSL for generating SQL however the Dataset only provides the different clause methods (e.g. Where, From, Select), most of these clause methods accept Expressions(with a few exceptions) which are the building blocks for your SQL statement, you can think of them as fragments of SQL.
The entry points for expressions are:
Ex{}
- A map where the key will become an Identifier and the Key is the value, this is most commonly used in the Where clause. By default Ex
will use the equality operator except in cases where the equality operator will not work, see the example below.sql, _, _ := db.From("items").Where(goqu.Ex{
"col1": "a",
"col2": 1,
"col3": true,
"col4": false,
"col5": nil,
"col6": []string{"a", "b", "c"},
}).ToSql()
fmt.Println(sql)
Output:
SELECT * FROM "items" WHERE (("col1" = 'a') AND ("col2" = 1) AND ("col3" IS TRUE) AND ("col4" IS FALSE) AND ("col5" IS NULL) AND ("col6" IN ('a', 'b', 'c')))
You can also use the Op
map which allows you to create more complex expressions using the map syntax. When using the Op
map the key is the name of the comparison you want to make (e.g. "neq"
, "like"
, "is"
, "in"
), the key is case insensitive.
sql, _, _ := db.From("items").Where(goqu.Ex{
"col1": goqu.Op{"neq": "a"},
"col3": goqu.Op{"isNot": true},
"col6": goqu.Op{"notIn": []string{"a", "b", "c"}},
}).ToSql()
fmt.Println(sql)
Output:
SELECT * FROM "items" WHERE (("col1" != 'a') AND ("col3" IS NOT TRUE) AND ("col6" NOT IN ('a', 'b', 'c')))
For a more complete examples see the Op
and Ex
docs
ExOr{}
- A map where the key will become an Identifier and the Key is the value, this is most commonly used in the Where clause. By default ExOr
will use the equality operator except in cases where the equality operator will not work, see the example below.sql, _, _ := db.From("items").Where(goqu.ExOr{
"col1": "a",
"col2": 1,
"col3": true,
"col4": false,
"col5": nil,
"col6": []string{"a", "b", "c"},
}).ToSql()
fmt.Println(sql)
Output:
SELECT * FROM "items" WHERE (("col1" = 'a') OR ("col2" = 1) OR ("col3" IS TRUE) OR ("col4" IS FALSE) OR ("col5" IS NULL) OR ("col6" IN ('a', 'b', 'c')))
You can also use the Op
map which allows you to create more complex expressions using the map syntax. When using the Op
map the key is the name of the comparison you want to make (e.g. "neq"
, "like"
, "is"
, "in"
), the key is case insensitive.
sql, _, _ := db.From("items").Where(goqu.ExOr{
"col1": goqu.Op{"neq": "a"},
"col3": goqu.Op{"isNot": true},
"col6": goqu.Op{"notIn": []string{"a", "b", "c"}},
}).ToSql()
fmt.Println(sql)
Output:
SELECT * FROM "items" WHERE (("col1" != 'a') OR ("col3" IS NOT TRUE) OR ("col6" NOT IN ('a', 'b', 'c')))
For a more complete examples see the Op
and ExOr
docs
I()
- An Identifier represents a schema, table, or column or any combination. You can use this when your expression cannot be expressed via the Ex
map (e.g. Cast).goqu.I("my_schema.table.col")
goqu.I("table.col")
goqu.I("col")
If you look at the IdentiferExpression
docs it implements many of your common sql operations that you would perform.
goqu.I("col").Eq(10)
goqu.I("col").In([]int64{1,2,3,4})
goqu.I("col").Like(regexp.MustCompile("^(a|b)")
goqu.I("col").IsNull()
Please see the exmaples for I()
to see more in depth examples
L()
- An SQL literal. You may find yourself in a situation where an IdentifierExpression cannot expression an SQL fragment that your database supports. In that case you can use a LiteralExpressiongoqu.L(`"col"::TEXT = ""other_col"::text`)
You can also use placeholders in your literal. When using the LiteralExpressions placeholders are normalized to the ? character and will be transformed to the correct placeholder for your adapter (e.g. ?
mysql, $1
postgres, ?
sqlite3)
goqu.L("col IN (?, ?, ?)", "a", "b", "c")
Putting it together
sql, _, _ := db.From("test").Where(
goqu.I("col").Eq(10),
goqu.L(`"json"::TEXT = "other_json"::TEXT`),
).ToSql()
fmt.Println(sql)
SELECT * FROM "test" WHERE (("col" = 10) AND "json"::TEXT = "other_json"::TEXT)
Both the Identifier and Literal expressions will be ANDed together by default.
You may however want to have your expressions ORed together you can use the Or()
function to create an ExpressionList
sql, _, _ := db.From("test").Where(
goqu.Or(
goqu.I("col").Eq(10),
goqu.L(`"col"::TEXT = "other_col"::TEXT`),
),
).ToSql()
fmt.Println(sql)
SELECT * FROM "test" WHERE (("col" = 10) OR "col"::TEXT = "other_col"::TEXT)
sql, _, _ := db.From("test").Where(
Or(
goqu.I("col").Eq(10),
goqu.L(`"col"::TEXT = "other_col"::TEXT`),
),
).ToSql()
fmt.Println(sql)
SELECT * FROM "test" WHERE (("col" = 10) OR "col"::TEXT = "other_col"::TEXT)
You can also use Or and the And function in tandem which will give you control not only over how the Expressions are joined together, but also how they are grouped
sql, _, _ := db.From("test").Where(
goqu.Or(
goqu.I("a").Gt(10),
goqu.And(
goqu.I("b").Eq(100),
goqu.I("c").Neq("test"),
),
),
).ToSql()
fmt.Println(sql)
Output:
SELECT * FROM "test" WHERE (("a" > 10) OR (("b" = 100) AND ("c" != 'test')))
You can also use Or with the map syntax
sql, _, _ := db.From("test").Where(
goqu.Or(
//Ex will be anded together
goqu.Ex{
"col1": nil,
"col2": true,
},
goqu.Ex{
"col3": nil,
"col4": false,
},
goqu.L(`"col"::TEXT = "other_col"::TEXT`),
),
).ToSql()
fmt.Println(sql)
Output:
SELECT * FROM "test" WHERE ((("col1" IS NULL) AND ("col2" IS TRUE)) OR (("col3" IS NULL) AND ("col4" IS FALSE)) OR "col"::TEXT = "other_col"::TEXT)
Using the Ex map syntax
sql, _, _ := db.From("test").
Select(goqu.COUNT("*")).
InnerJoin(goqu.I("test2"), goqu.On(goqu.I("test.fkey").Eq(goqu.I("test2.id")))).
LeftJoin(goqu.I("test3"), goqu.On(goqu.I("test2.fkey").Eq(goqu.I("test3.id")))).
Where(
goqu.Ex{
"test.name": goqu.Op{"like": regexp.MustCompile("^(a|b)")},
"test2.amount": goqu.Op{"isNot": nil},
},
goqu.ExOr{
"test3.id": nil,
"test3.status": []string{"passed", "active", "registered"},
}).
Order(goqu.I("test.created").Desc().NullsLast()).
GroupBy(goqu.I("test.user_id")).
Having(goqu.AVG("test3.age").Gt(10)).
ToSql()
fmt.Println(sql)
Using the Expression syntax
sql, _, _ := db.From("test").
Select(goqu.COUNT("*")).
InnerJoin(goqu.I("test2"), goqu.On(goqu.I("test.fkey").Eq(goqu.I("test2.id")))).
LeftJoin(goqu.I("test3"), goqu.On(goqu.I("test2.fkey").Eq(goqu.I("test3.id")))).
Where(
goqu.I("test.name").Like(regexp.MustCompile("^(a|b)")),
goqu.I("test2.amount").IsNotNull(),
goqu.Or(
goqu.I("test3.id").IsNull(),
goqu.I("test3.status").In("passed", "active", "registered"),
)).
Order(goqu.I("test.created").Desc().NullsLast()).
GroupBy(goqu.I("test.user_id")).
Having(goqu.AVG("test3.age").Gt(10)).
ToSql()
fmt.Println(sql)
Both examples generate the following SQL
SELECT COUNT(*)
FROM "test"
INNER JOIN "test2" ON ("test"."fkey" = "test2"."id")
LEFT JOIN "test3" ON ("test2"."fkey" = "test3"."id")
WHERE (
("test"."name" ~ '^(a|b)') AND
("test2"."amount" IS NOT NULL) AND
(
("test3"."id" IS NULL) OR
("test3"."status" IN ('passed', 'active', 'registered'))
)
)
GROUP BY "test"."user_id"
HAVING (AVG("test3"."age") > 10)
ORDER BY "test"."created" DESC NULLS LAST
goqu also has basic query support through the use of either the Database or the Dataset.
ScanStructs
- scans rows into a slice of structsNOTE ScanStructs
will only select the columns that can be scanned in to the structs unless you have explicitly selected certain columns.
type User struct{
FirstName string `db:"first_name"`
LastName string `db:"last_name"`
}
var users []User
//SELECT "first_name", "last_name" FROM "user";
if err := db.From("user").ScanStructs(&users); err != nil{
fmt.Println(err.Error())
return
}
fmt.Printf("\n%+v", users)
var users []User
//SELECT "first_name" FROM "user";
if err := db.From("user").Select("first_name").ScanStructs(&users); err != nil{
fmt.Println(err.Error())
return
}
fmt.Printf("\n%+v", users)
ScanStruct
- scans a row into a slice a struct, returns false if a row wasnt foundNOTE ScanStruct
will only select the columns that can be scanned in to the struct unless you have explicitly selected certain columns.
type User struct{
FirstName string `db:"first_name"`
LastName string `db:"last_name"`
}
var user User
//SELECT "first_name", "last_name" FROM "user" LIMIT 1;
found, err := db.From("user").ScanStruct(&user)
if err != nil{
fmt.Println(err.Error())
return
}
if !found {
fmt.Println("No user found")
} else {
fmt.Printf("\nFound user: %+v", user)
}
ScanVals
- scans a rows of 1 column into a slice of primitive valuesvar ids []int64
if err := db.From("user").Select("id").ScanVals(&ids); err != nil{
fmt.Println(err.Error())
return
}
fmt.Printf("\n%+v", ids)
ScanVal
- scans a row of 1 column into a primitive value, returns false if a row wasnt found. Note when using the dataset a LIMIT
of 1 is automatically applied.var id int64
found, err := db.From("user").Select("id").ScanVal(&id)
if err != nil{
fmt.Println(err.Error())
return
}
if !found{
fmt.Println("No id found")
}else{
fmt.Printf("\nFound id: %d", id)
}
Count
- Returns the count for the current querycount, err := db.From("user").Count()
if err != nil{
fmt.Println(err.Error())
return
}
fmt.Printf("\nCount:= %d", count)
Pluck
- Selects a single column and stores the results into a slice of primitive valuesvar ids []int64
if err := db.From("user").Pluck(&ids, "id"); err != nil{
fmt.Println(err.Error())
return
}
fmt.Printf("\nIds := %+v", ids)
insert := db.From("user").Insert(goqu.Record{"first_name": "Bob", "last_name":"Yukon", "created": time.Now()})
if _, err := insert.Exec(); err != nil{
fmt.Println(err.Error())
return
}
Insert will also handle multi inserts if supported by the database
users := []goqu.Record{
{"first_name": "Bob", "last_name":"Yukon", "created": time.Now()},
{"first_name": "Sally", "last_name":"Yukon", "created": time.Now()},
{"first_name": "Jimmy", "last_name":"Yukon", "created": time.Now()},
}
if _, err := db.From("user").Insert(users).Exec(); err != nil{
fmt.Println(err.Error())
return
}
If your database supports the RETURN
clause you can also use the different Scan methods to get results
var ids []int64
users := []goqu.Record{
{"first_name": "Bob", "last_name":"Yukon", "created": time.Now()},
{"first_name": "Sally", "last_name":"Yukon", "created": time.Now()},
{"first_name": "Jimmy", "last_name":"Yukon", "created": time.Now()},
}
if err := db.From("user").Returning(goqu.I("id")).Insert(users).ScanVals(&ids); err != nil{
fmt.Println(err.Error())
return
}
update := db.From("user").
Where(goqu.I("status").Eq("inactive")).
Update(goqu.Record{"password": nil, "updated": time.Now()})
if _, err := update.Exec(); err != nil{
fmt.Println(err.Error())
return
}
If your database supports the RETURN
clause you can also use the different Scan methods to get results
var ids []int64
update := db.From("user").
Where(goqu.Ex{"status":"inactive"}).
Returning("id").
Update(goqu.Record{"password": nil, "updated": time.Now()})
if err := update.ScanVals(&ids); err != nil{
fmt.Println(err.Error())
return
}
delete := db.From("invoice").
Where(goqu.Ex{"status":"paid"}).
Delete()
if _, err := delete.Exec(); err != nil{
fmt.Println(err.Error())
return
}
If your database supports the RETURN
clause you can also use the different Scan methods to get results
var ids []int64
delete := db.From("invoice").
Where(goqu.I("status").Eq("paid")).
Returning(goqu.I("id")).
Delete()
if err := delete.ScanVals(&ids); err != nil{
fmt.Println(err.Error())
return
}
By default the Dataset
will interpolate all parameters, if you do not want to have values interolated you can use the Prepared
method to prevent this.
Note For the examples all placeholders are ?
this will be adapter specific when using other examples (e.g. Postgres $1, $2...
)
preparedDs := db.From("items").Prepared(true)
sql, args, _ := preparedDs.Where(goqu.Ex{
"col1": "a",
"col2": 1,
"col3": true,
"col4": false,
"col5": []string{"a", "b", "c"},
}).ToSql()
fmt.Println(sql, args)
sql, args, _ = preparedDs.ToInsertSql(
goqu.Record{"name": "Test1", "address": "111 Test Addr"},
goqu.Record{"name": "Test2", "address": "112 Test Addr"},
)
fmt.Println(sql, args)
sql, args, _ = preparedDs.ToUpdateSql(
goqu.Record{"name": "Test", "address": "111 Test Addr"},
)
fmt.Println(sql, args)
sql, args, _ = preparedDs.
Where(goqu.Ex{"id": goqu.Op{"gt": 10}}).
ToDeleteSql()
fmt.Println(sql, args)
// Output:
// SELECT * FROM "items" WHERE (("col1" = ?) AND ("col2" = ?) AND ("col3" IS TRUE) AND ("col4" IS FALSE) AND ("col5" IN (?, ?, ?))) [a 1 a b c]
// INSERT INTO "items" ("address", "name") VALUES (?, ?), (?, ?) [111 Test Addr Test1 112 Test Addr Test2]
// UPDATE "items" SET "address"=?,"name"=? [111 Test Addr Test]
// DELETE FROM "items" WHERE ("id" > ?) [10]
When setting prepared to true executing the SQL using the different querying methods will also use the non-interpolated SQL also.
var items []Item
sql, args, _ := db.From("items").Prepared(true).Where(goqu.Ex{
"col1": "a",
"col2": 1,
}).ScanStructs(&items)
//Is the same as
db.ScanStructs(&items, `SELECT * FROM "items" WHERE (("col1" = ?) AND ("col2" = ?))`, "a", 1)
The Database also allows you to execute queries but expects raw SQL to execute. The supported methods are
goqu
has builtin support for transactions to make the use of the Datasets and querying seamless
tx, err := db.Begin()
if err != nil{
return err
}
//use tx.From to get a dataset that will execute within this transaction
update := tx.From("user").
Where(goqu.Ex("password": nil}).
Update(goqu.Record{"status": "inactive"})
if _, err = update.Exec(); err != nil{
if rErr := tx.Rollback(); rErr != nil{
return rErr
}
return err
}
if err = tx.Commit(); err != nil{
return err
}
return
The TxDatabase
also has all methods that the Database
has along with
The TxDatabase.Wrap
is a convience method for automatically handling COMMIT
and ROLLBACK
tx, err := db.Begin()
if err != nil{
return err
}
err = tx.Wrap(func() error{
update := tx.From("user").
Where(goqu.Ex("password": nil}).
Update(goqu.Record{"status": "inactive"})
if _, err = update.Exec(); err != nil{
return err
}
return nil
})
//err will be the original error from the update statement, unless there was an error executing ROLLBACK
if err != nil{
return err
}
To enable trace logging of SQL statements use the Database.Logger
method to set your logger.
NOTE The logger must implement the Logger
interface
NOTE If you start a transaction using a database your set a logger on the transaction will inherit that logger automatically
Adapters in goqu are the foundation of building the correct SQL for each DB dialect.
Between most dialects there is a large portion of shared syntax, for this reason we have a DefaultAdapter
that can be used as a base for any new Dialect specific adapter.
In fact for most use cases you will not have to override any methods but instead just override the default values as documented for DefaultAdapter
.
The DefaultAdapter
has a Literal
function which should be used to serialize all sub expressions or values. This method prevents you from having to re-implement each adapter method while having your adapter methods called correctly.
How does it work?
The Literal method delegates back to the Dataset.Literal
method which then calls the appropriate method on the adapter acting as a trampoline, between the DefaultAdapter and your Adapter.
For example if your adapter overrode the DefaultAdapter.QuoteIdentifier
, method which is used by most methods in the DefaultAdapter
, we need to ensure that your Adapters QuoteIdentifier method is called instead of the default implementation.
Because the Dataset has a pointer to your Adapter it will call the correct method, so instead of calling DefaultAdapter.QuoteIdentifier
internally we delegate back to the Dataset by calling the Dataset.Literal
which will the call your Adapters method.
Dataset.Literal -> Adapter.ExpressionListSql -> Adapter.Literal -> Dataset.Literal -> YourAdapter.QuoteIdentifier
It is important to maintain this pattern when writing your own Adapter.
When creating your adapters you must register your adapter with RegisterAdapter
. This method requires 2 arguments.
For example the code for the postgres adapter is fairly short.
package postgres
import (
"gopkg.in/doug-martin/goqu.v5"
)
//postgres requires a $ placeholder for prepared statements
const placeholder_rune = '$'
func newDatasetAdapter(ds *goqu.Dataset) goqu.Adapter {
ret := goqu.NewDefaultAdapter(ds).(*goqu.DefaultAdapter)
//override the settings required
ret.PlaceHolderRune = placeholder_rune
//postgres requires a paceholder number (e.g. $1)
ret.IncludePlaceholderNum = true
return ret
}
func init() {
//register our adapter with goqu
goqu.RegisterAdapter("postgres", newDatasetAdapter)
}
If you are looking to write your own adapter take a look at the postgresm, mysql or sqlite3 adapter located at https://github.com/doug-martin/goqu/tree/master/adapters.
I am always welcoming contributions of any type. Please open an issue or create a PR if you find an issue with any of the following.
If you have an issue with the package please include the following
Without those basics it can be difficult to reproduce your issue locally. You may be asked for more information but that is a good starting point.
New features and/or enhancements are great and I encourage you to either submit a PR or create an issue. In both cases include the following as the need/requirement may not be readily apparent.
If you are issuing a PR also also include the following
If you find an issue you want to work on please comment on it letting other people know you are looking at it and I will assign the issue to you.
If want to work on an issue but dont know where to start just leave a comment and I'll be more than happy to point you in the right direction.
The test suite requires a postgres and mysql database. You can override the mysql/postgres connection strings with the MYSQL_URI
and PG_URI
environment variables*
go test -v -race ./...
You can also run the tests in a container using docker-compose.
GO_VERSION=latest docker-compose run goqu
goqu
is released under the MIT License.
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