Column Elements and Expressions

The expression API consists of a series of classes each of which represents a specific lexical element within a SQL string. Composed together into a larger structure, they form a statement construct that may be compiled into a string representation that can be passed to a database. The classes are organized into a hierarchy that begins at the basemost ClauseElement class. Key subclasses include ColumnElement, which represents the role of any column-based expression in a SQL statement, such as in the columns clause, WHERE clause, and ORDER BY clause, and FromClause, which represents the role of a token that is placed in the FROM clause of a SELECT statement.

Column Element Foundational Constructors

Standalone functions imported from the sqlalchemy namespace which are used when building up SQLAlchemy Expression Language constructs.

Object NameDescription

and(*clauses)

Produce a conjunction of expressions joined by AND.

bindparam(key[, value, type, unique, …])

Produce a “bound expression”.

case(whens, kw)

Produce a CASE expression.

cast(expression, type)

Produce a CAST expression.

column(text[, type, is_literal, _selectable])

Produce a ColumnClause object.

custom_op

Represent a ‘custom’ operator.

distinct(expr)

Produce an column-expression-level unary DISTINCT clause.

extract(field, expr, kwargs)

Return a Extract construct.

false()

Return a False construct.

func

Generate SQL function expressions.

lambda_stmt(lmb[, enable_tracking, track_closure_variables, track_on, …])

Produce a SQL statement that is cached as a lambda.

literal(value[, type])

Return a literal clause, bound to a bind parameter.

literalcolumn(text[, type])

Produce a ColumnClause object that has the column.isliteral flag set to True.

<a class=”reference internal” href=”#sqlalchemy.sql.expression.not“>not(clause)

Return a negation of the given clause, i.e. NOT(clause).

null()

Return a constant Null construct.

<a class=”reference internal” href=”#sqlalchemy.sql.expression.or“>or_(clauses)

Produce a conjunction of expressions joined by OR.

outparam(key[, type])

Create an ‘OUT’ parameter for usage in functions (stored procedures), for databases which support them.

quoted_name

Represent a SQL identifier combined with quoting preferences.

text(text[, bind])

Construct a new TextClause clause, representing a textual SQL string directly.

true()

Return a constant <a class=”reference internal” href=”#sqlalchemy.sql.expression.True“ title=”sqlalchemy.sql.expression.True“>True construct.

tuple(clauses, *kw)

Return a Tuple.

type_coerce(expression, type)

Associate a SQL expression with a particular type, without rendering CAST.

function sqlalchemy.sql.expression.``and_(\clauses*)

Produce a conjunction of expressions joined by AND.

E.g.:

  1. from sqlalchemy import and_
  2. stmt = select(users_table).where(
  3. and_(
  4. users_table.c.name == 'wendy',
  5. users_table.c.enrolled == True
  6. )
  7. )

The and_() conjunction is also available using the Python & operator (though note that compound expressions need to be parenthesized in order to function with Python operator precedence behavior):

  1. stmt = select(users_table).where(
  2. (users_table.c.name == 'wendy') &
  3. (users_table.c.enrolled == True)
  4. )

The and_() operation is also implicit in some cases; the Select.where() method for example can be invoked multiple times against a statement, which will have the effect of each clause being combined using and_():

  1. stmt = select(users_table).\
  2. where(users_table.c.name == 'wendy').\
  3. where(users_table.c.enrolled == True)

The and_() construct must be given at least one positional argument in order to be valid; a and_() construct with no arguments is ambiguous. To produce an “empty” or dynamically generated and_() expression, from a given list of expressions, a “default” element of True should be specified:

  1. criteria = and_(True, *expressions)

The above expression will compile to SQL as the expression true or 1 = 1, depending on backend, if no other expressions are present. If expressions are present, then the True value is ignored as it does not affect the outcome of an AND expression that has other elements.

Deprecated since version 1.4: The and_() element now requires that at least one argument is passed; creating the and_() construct with no arguments is deprecated, and will emit a deprecation warning while continuing to produce a blank SQL string.

See also

or_()

function sqlalchemy.sql.expression.``bindparam(key, value=symbol(‘NO_ARG’), type_=None, unique=False, required=symbol(‘NO_ARG’), quote=None, callable_=None, expanding=False, isoutparam=False, literal_execute=False, _compared_to_operator=None, _compared_to_type=None, _is_crud=False)

Produce a “bound expression”.

The return value is an instance of BindParameter; this is a ColumnElement subclass which represents a so-called “placeholder” value in a SQL expression, the value of which is supplied at the point at which the statement in executed against a database connection.

In SQLAlchemy, the bindparam() construct has the ability to carry along the actual value that will be ultimately used at expression time. In this way, it serves not just as a “placeholder” for eventual population, but also as a means of representing so-called “unsafe” values which should not be rendered directly in a SQL statement, but rather should be passed along to the DBAPI as values which need to be correctly escaped and potentially handled for type-safety.

When using bindparam() explicitly, the use case is typically one of traditional deferment of parameters; the bindparam() construct accepts a name which can then be referred to at execution time:

  1. from sqlalchemy import bindparam
  2. stmt = select(users_table).\
  3. where(users_table.c.name == bindparam('username'))

The above statement, when rendered, will produce SQL similar to:

  1. SELECT id, name FROM user WHERE name = :username

In order to populate the value of :username above, the value would typically be applied at execution time to a method like Connection.execute():

  1. result = connection.execute(stmt, username='wendy')

Explicit use of bindparam() is also common when producing UPDATE or DELETE statements that are to be invoked multiple times, where the WHERE criterion of the statement is to change on each invocation, such as:

  1. stmt = (users_table.update().
  2. where(user_table.c.name == bindparam('username')).
  3. values(fullname=bindparam('fullname'))
  4. )
  5. connection.execute(
  6. stmt, [{"username": "wendy", "fullname": "Wendy Smith"},
  7. {"username": "jack", "fullname": "Jack Jones"},
  8. ]
  9. )

SQLAlchemy’s Core expression system makes wide use of bindparam() in an implicit sense. It is typical that Python literal values passed to virtually all SQL expression functions are coerced into fixed bindparam() constructs. For example, given a comparison operation such as:

  1. expr = users_table.c.name == 'Wendy'

The above expression will produce a BinaryExpression construct, where the left side is the Column object representing the name column, and the right side is a BindParameter representing the literal value:

  1. print(repr(expr.right))
  2. BindParameter('%(4327771088 name)s', 'Wendy', type_=String())

The expression above will render SQL such as:

  1. user.name = :name_1

Where the :name_1 parameter name is an anonymous name. The actual string Wendy is not in the rendered string, but is carried along where it is later used within statement execution. If we invoke a statement like the following:

  1. stmt = select(users_table).where(users_table.c.name == 'Wendy')
  2. result = connection.execute(stmt)

We would see SQL logging output as:

  1. SELECT "user".id, "user".name
  2. FROM "user"
  3. WHERE "user".name = %(name_1)s
  4. {'name_1': 'Wendy'}

Above, we see that Wendy is passed as a parameter to the database, while the placeholder :name_1 is rendered in the appropriate form for the target database, in this case the PostgreSQL database.

Similarly, bindparam() is invoked automatically when working with CRUD statements as far as the “VALUES” portion is concerned. The insert() construct produces an INSERT expression which will, at statement execution time, generate bound placeholders based on the arguments passed, as in:

  1. stmt = users_table.insert()
  2. result = connection.execute(stmt, name='Wendy')

The above will produce SQL output as:

  1. INSERT INTO "user" (name) VALUES (%(name)s)
  2. {'name': 'Wendy'}

The Insert construct, at compilation/execution time, rendered a single bindparam() mirroring the column name name as a result of the single name parameter we passed to the Connection.execute() method.

  • Parameters

    • key – the key (e.g. the name) for this bind param. Will be used in the generated SQL statement for dialects that use named parameters. This value may be modified when part of a compilation operation, if other BindParameter objects exist with the same key, or if its length is too long and truncation is required.

    • value – Initial value for this bind param. Will be used at statement execution time as the value for this parameter passed to the DBAPI, if no other value is indicated to the statement execution method for this particular parameter name. Defaults to None.

    • callable_ – A callable function that takes the place of “value”. The function will be called at statement execution time to determine the ultimate value. Used for scenarios where the actual bind value cannot be determined at the point at which the clause construct is created, but embedded bind values are still desirable.

    • type_

      A TypeEngine class or instance representing an optional datatype for this bindparam(). If not passed, a type may be determined automatically for the bind, based on the given value; for example, trivial Python types such as str, int, bool may result in the String, Integer or Boolean types being automatically selected.

      The type of a bindparam() is significant especially in that the type will apply pre-processing to the value before it is passed to the database. For example, a bindparam() which refers to a datetime value, and is specified as holding the DateTime type, may apply conversion needed to the value (such as stringification on SQLite) before passing the value to the database.

    • unique – if True, the key name of this BindParameter will be modified if another BindParameter of the same name already has been located within the containing expression. This flag is used generally by the internals when producing so-called “anonymous” bound expressions, it isn’t generally applicable to explicitly-named bindparam() constructs.

    • required – If True, a value is required at execution time. If not passed, it defaults to True if neither bindparam.value or bindparam.callable were passed. If either of these parameters are present, then bindparam.required defaults to False.

    • quote – True if this parameter name requires quoting and is not currently known as a SQLAlchemy reserved word; this currently only applies to the Oracle backend, where bound names must sometimes be quoted.

    • isoutparam – if True, the parameter should be treated like a stored procedure “OUT” parameter. This applies to backends such as Oracle which support OUT parameters.

    • expanding

      if True, this parameter will be treated as an “expanding” parameter at execution time; the parameter value is expected to be a sequence, rather than a scalar value, and the string SQL statement will be transformed on a per-execution basis to accommodate the sequence with a variable number of parameter slots passed to the DBAPI. This is to allow statement caching to be used in conjunction with an IN clause.

      See also

      ColumnOperators.in_()

      Using IN expressions - with baked queries

      Note

      The “expanding” feature does not support “executemany”- style parameter sets.

      New in version 1.2.

      Changed in version 1.3: the “expanding” bound parameter feature now supports empty lists.

See also

Bind Parameter Objects

Insert Expressions

outparam()

  • Parameters

    literal_execute

    if True, the bound parameter will be rendered in the compile phase with a special “POSTCOMPILE” token, and the SQLAlchemy compiler will render the final value of the parameter into the SQL statement at statement execution time, omitting the value from the parameter dictionary / list passed to DBAPI cursor.execute(). This produces a similar effect as that of using the literal_binds, compilation flag, however takes place as the statement is sent to the DBAPI cursor.execute() method, rather than when the statement is compiled. The primary use of this capability is for rendering LIMIT / OFFSET clauses for database drivers that can’t accommodate for bound parameters in these contexts, while allowing SQL constructs to be cacheable at the compilation level.

    New in version 1.4: Added “post compile” bound parameters

    See also

    New “post compile” bound parameters used for LIMIT/OFFSET in Oracle, SQL Server.

function sqlalchemy.sql.expression.``case(\whens, **kw*)

Produce a CASE expression.

The CASE construct in SQL is a conditional object that acts somewhat analogously to an “if/then” construct in other languages. It returns an instance of Case.

case() in its usual form is passed a list of “when” constructs, that is, a list of conditions and results as tuples:

  1. from sqlalchemy import case
  2. stmt = select(users_table).\
  3. where(
  4. case(
  5. (users_table.c.name == 'wendy', 'W'),
  6. (users_table.c.name == 'jack', 'J'),
  7. else_='E'
  8. )
  9. )

The above statement will produce SQL resembling:

  1. SELECT id, name FROM user
  2. WHERE CASE
  3. WHEN (name = :name_1) THEN :param_1
  4. WHEN (name = :name_2) THEN :param_2
  5. ELSE :param_3
  6. END

When simple equality expressions of several values against a single parent column are needed, case() also has a “shorthand” format used via the case.value parameter, which is passed a column expression to be compared. In this form, the case.whens parameter is passed as a dictionary containing expressions to be compared against keyed to result expressions. The statement below is equivalent to the preceding statement:

  1. stmt = select(users_table).\
  2. where(
  3. case(
  4. {"wendy": "W", "jack": "J"},
  5. value=users_table.c.name,
  6. else_='E'
  7. )
  8. )

The values which are accepted as result values in case.whens as well as with case.else_ are coerced from Python literals into bindparam() constructs. SQL expressions, e.g. ColumnElement constructs, are accepted as well. To coerce a literal string expression into a constant expression rendered inline, use the literal_column() construct, as in:

  1. from sqlalchemy import case, literal_column
  2. case(
  3. (
  4. orderline.c.qty > 100,
  5. literal_column("'greaterthan100'")
  6. ),
  7. (
  8. orderline.c.qty > 10,
  9. literal_column("'greaterthan10'")
  10. ),
  11. else_=literal_column("'lessthan10'")
  12. )

The above will render the given constants without using bound parameters for the result values (but still for the comparison values), as in:

  1. CASE
  2. WHEN (orderline.qty > :qty_1) THEN 'greaterthan100'
  3. WHEN (orderline.qty > :qty_2) THEN 'greaterthan10'
  4. ELSE 'lessthan10'
  5. END
  • Parameters

    • *whens

      The criteria to be compared against, case.whens accepts two different forms, based on whether or not case.value is used.

      Changed in version 1.4: the case() function now accepts the series of WHEN conditions positionally; passing the expressions within a list is deprecated.

      In the first form, it accepts a list of 2-tuples; each 2-tuple consists of (<sql expression>, <value>), where the SQL expression is a boolean expression and “value” is a resulting value, e.g.:

      1. case(
      2. (users_table.c.name == 'wendy', 'W'),
      3. (users_table.c.name == 'jack', 'J')
      4. )

      In the second form, it accepts a Python dictionary of comparison values mapped to a resulting value; this form requires case.value to be present, and values will be compared using the == operator, e.g.:

      1. case(
      2. {"wendy": "W", "jack": "J"},
      3. value=users_table.c.name
      4. )
    • value – An optional SQL expression which will be used as a fixed “comparison point” for candidate values within a dictionary passed to case.whens.

    • else_ – An optional SQL expression which will be the evaluated result of the CASE construct if all expressions within case.whens evaluate to false. When omitted, most databases will produce a result of NULL if none of the “when” expressions evaluate to true.

function sqlalchemy.sql.expression.``cast(expression, type_)

Produce a CAST expression.

cast() returns an instance of Cast.

E.g.:

  1. from sqlalchemy import cast, Numeric
  2. stmt = select(cast(product_table.c.unit_price, Numeric(10, 4)))

The above statement will produce SQL resembling:

  1. SELECT CAST(unit_price AS NUMERIC(10, 4)) FROM product

The cast() function performs two distinct functions when used. The first is that it renders the CAST expression within the resulting SQL string. The second is that it associates the given type (e.g. TypeEngine class or instance) with the column expression on the Python side, which means the expression will take on the expression operator behavior associated with that type, as well as the bound-value handling and result-row-handling behavior of the type.

Changed in version 0.9.0: cast() now applies the given type to the expression such that it takes effect on the bound-value, e.g. the Python-to-database direction, in addition to the result handling, e.g. database-to-Python, direction.

An alternative to cast() is the type_coerce() function. This function performs the second task of associating an expression with a specific type, but does not render the CAST expression in SQL.

  • Parameters

    • expression – A SQL expression, such as a ColumnElement expression or a Python string which will be coerced into a bound literal value.

    • type_ – A TypeEngine class or instance indicating the type to which the CAST should apply.

See also

Data Casts and Type Coercion

type_coerce() - an alternative to CAST that coerces the type on the Python side only, which is often sufficient to generate the correct SQL and data coercion.

function sqlalchemy.sql.expression.``column(text, type_=None, is_literal=False, _selectable=None)

Produce a ColumnClause object.

The ColumnClause is a lightweight analogue to the Column class. The column() function can be invoked with just a name alone, as in:

  1. from sqlalchemy import column
  2. id, name = column("id"), column("name")
  3. stmt = select(id, name).select_from("user")

The above statement would produce SQL like:

  1. SELECT id, name FROM user

Once constructed, column() may be used like any other SQL expression element such as within select() constructs:

  1. from sqlalchemy.sql import column
  2. id, name = column("id"), column("name")
  3. stmt = select(id, name).select_from("user")

The text handled by column() is assumed to be handled like the name of a database column; if the string contains mixed case, special characters, or matches a known reserved word on the target backend, the column expression will render using the quoting behavior determined by the backend. To produce a textual SQL expression that is rendered exactly without any quoting, use literal_column() instead, or pass True as the value of column.is_literal. Additionally, full SQL statements are best handled using the text() construct.

column() can be used in a table-like fashion by combining it with the table() function (which is the lightweight analogue to Table ) to produce a working table construct with minimal boilerplate:

  1. from sqlalchemy import table, column, select
  2. user = table("user",
  3. column("id"),
  4. column("name"),
  5. column("description"),
  6. )
  7. stmt = select(user.c.description).where(user.c.name == 'wendy')

A column() / table() construct like that illustrated above can be created in an ad-hoc fashion and is not associated with any MetaData, DDL, or events, unlike its Table counterpart.

Changed in version 1.0.0: column() can now be imported from the plain sqlalchemy namespace like any other SQL element.

  • Parameters

    • text – the text of the element.

    • typeTypeEngine object which can associate this ColumnClause with a type.

    • is_literal – if True, the ColumnClause is assumed to be an exact expression that will be delivered to the output with no quoting rules applied regardless of case sensitive settings. the literal_column() function essentially invokes column() while passing is_literal=True.

See also

Column

literal_column()

table()

text()

Using More Specific Text with table(), _expression.literal_column(), and _expression.column()

class sqlalchemy.sql.expression.``custom_op(opstring, precedence=0, is_comparison=False, return_type=None, natural_self_precedent=False, eager_grouping=False)

Represent a ‘custom’ operator.

custom_op is normally instantiated when the Operators.op() or Operators.bool_op() methods are used to create a custom operator callable. The class can also be used directly when programmatically constructing expressions. E.g. to represent the “factorial” operation:

  1. from sqlalchemy.sql import UnaryExpression
  2. from sqlalchemy.sql import operators
  3. from sqlalchemy import Numeric
  4. unary = UnaryExpression(table.c.somecolumn,
  5. modifier=operators.custom_op("!"),
  6. type_=Numeric)

See also

Operators.op()

Operators.bool_op()

function sqlalchemy.sql.expression.``distinct(expr)

Produce an column-expression-level unary DISTINCT clause.

This applies the DISTINCT keyword to an individual column expression, and is typically contained within an aggregate function, as in:

  1. from sqlalchemy import distinct, func
  2. stmt = select(func.count(distinct(users_table.c.name)))

The above would produce an expression resembling:

  1. SELECT COUNT(DISTINCT name) FROM user

The distinct() function is also available as a column-level method, e.g. ColumnElement.distinct(), as in:

  1. stmt = select(func.count(users_table.c.name.distinct()))

The distinct() operator is different from the Select.distinct() method of Select, which produces a SELECT statement with DISTINCT applied to the result set as a whole, e.g. a SELECT DISTINCT expression. See that method for further information.

See also

ColumnElement.distinct()

Select.distinct()

func

function sqlalchemy.sql.expression.``extract(field, expr, \*kwargs*)

Return a Extract construct.

This is typically available as extract() as well as func.extract from the func namespace.

function sqlalchemy.sql.expression.``false()

Return a False_ construct.

E.g.:

  1. >>> from sqlalchemy import false
  2. >>> print(select(t.c.x).where(false()))
  3. SELECT x FROM t WHERE false

A backend which does not support true/false constants will render as an expression against 1 or 0:

  1. >>> print(select(t.c.x).where(false()))
  2. SELECT x FROM t WHERE 0 = 1

The true() and false() constants also feature “short circuit” operation within an and_() or or_() conjunction:

  1. >>> print(select(t.c.x).where(or_(t.c.x > 5, true())))
  2. SELECT x FROM t WHERE true
  3. >>> print(select(t.c.x).where(and_(t.c.x > 5, false())))
  4. SELECT x FROM t WHERE false

Changed in version 0.9: true() and false() feature better integrated behavior within conjunctions and on dialects that don’t support true/false constants.

See also

true()

sqlalchemy.sql.expression.``func = <sqlalchemy.sql.functions._FunctionGenerator object>

Generate SQL function expressions.

func is a special object instance which generates SQL functions based on name-based attributes, e.g.:

  1. >>> print(func.count(1))
  2. count(:param_1)

The returned object is an instance of Function, and is a column-oriented SQL element like any other, and is used in that way:

  1. >>> print(select(func.count(table.c.id)))
  2. SELECT count(sometable.id) FROM sometable

Any name can be given to func. If the function name is unknown to SQLAlchemy, it will be rendered exactly as is. For common SQL functions which SQLAlchemy is aware of, the name may be interpreted as a generic function which will be compiled appropriately to the target database:

  1. >>> print(func.current_timestamp())
  2. CURRENT_TIMESTAMP

To call functions which are present in dot-separated packages, specify them in the same manner:

  1. >>> print(func.stats.yield_curve(5, 10))
  2. stats.yield_curve(:yield_curve_1, :yield_curve_2)

SQLAlchemy can be made aware of the return type of functions to enable type-specific lexical and result-based behavior. For example, to ensure that a string-based function returns a Unicode value and is similarly treated as a string in expressions, specify Unicode as the type:

  1. >>> print(func.my_string(u'hi', type_=Unicode) + ' ' +
  2. ... func.my_string(u'there', type_=Unicode))
  3. my_string(:my_string_1) || :my_string_2 || my_string(:my_string_3)

The object returned by a func call is usually an instance of Function. This object meets the “column” interface, including comparison and labeling functions. The object can also be passed the Connectable.execute() method of a Connection or Engine, where it will be wrapped inside of a SELECT statement first:

  1. print(connection.execute(func.current_timestamp()).scalar())

In a few exception cases, the func accessor will redirect a name to a built-in expression such as cast() or extract(), as these names have well-known meaning but are not exactly the same as “functions” from a SQLAlchemy perspective.

Functions which are interpreted as “generic” functions know how to calculate their return type automatically. For a listing of known generic functions, see SQL and Generic Functions.

Note

The func construct has only limited support for calling standalone “stored procedures”, especially those with special parameterization concerns.

See the section Calling Stored Procedures for details on how to use the DBAPI-level callproc() method for fully traditional stored procedures.

See also

Functions - in the Core Tutorial

Function

function sqlalchemy.sql.expression.``lambda_stmt(lmb, enable_tracking=True, track_closure_variables=True, track_on=None, global_track_bound_values=True, track_bound_values=True, lambda_cache=None)

Produce a SQL statement that is cached as a lambda.

The Python code object within the lambda is scanned for both Python literals that will become bound parameters as well as closure variables that refer to Core or ORM constructs that may vary. The lambda itself will be invoked only once per particular set of constructs detected.

E.g.:

  1. from sqlalchemy import lambda_stmt
  2. stmt = lambda_stmt(lambda: table.select())
  3. stmt += lambda s: s.where(table.c.id == 5)
  4. result = connection.execute(stmt)

The object returned is an instance of StatementLambdaElement.

New in version 1.4.

  • Parameters

    • lmb – a Python function, typically a lambda, which takes no arguments and returns a SQL expression construct

    • enable_tracking – when False, all scanning of the given lambda for changes in closure variables or bound parameters is disabled. Use for a lambda that produces the identical results in all cases with no parameterization.

    • track_closure_variables – when False, changes in closure variables within the lambda will not be scanned. Use for a lambda where the state of its closure variables will never change the SQL structure returned by the lambda.

    • track_bound_values – when False, bound parameter tracking will be disabled for the given lambda. Use for a lambda that either does not produce any bound values, or where the initial bound values never change.

    • global_track_bound_values – when False, bound parameter tracking will be disabled for the entire statement including additional links added via the StatementLambdaElement.add_criteria() method.

    • lambda_cache – a dictionary or other mapping-like object where information about the lambda’s Python code as well as the tracked closure variables in the lambda itself will be stored. Defaults to a global LRU cache. This cache is independent of the “compiled_cache” used by the Connection object.

See also

Using Lambdas to add significant speed gains to statement production

function sqlalchemy.sql.expression.``literal(value, type_=None)

Return a literal clause, bound to a bind parameter.

Literal clauses are created automatically when non- ClauseElement objects (such as strings, ints, dates, etc.) are used in a comparison operation with a ColumnElement subclass, such as a Column object. Use this function to force the generation of a literal clause, which will be created as a BindParameter with a bound value.

  • Parameters

    • value – the value to be bound. Can be any Python object supported by the underlying DB-API, or is translatable via the given type argument.

    • type_ – an optional TypeEngine which will provide bind-parameter translation for this literal.

function sqlalchemy.sql.expression.``literal_column(text, type_=None)

Produce a ColumnClause object that has the column.is_literal flag set to True.

literal_column() is similar to column(), except that it is more often used as a “standalone” column expression that renders exactly as stated; while column() stores a string name that will be assumed to be part of a table and may be quoted as such, literal_column() can be that, or any other arbitrary column-oriented expression.

  • Parameters

    • text – the text of the expression; can be any SQL expression. Quoting rules will not be applied. To specify a column-name expression which should be subject to quoting rules, use the column() function.

    • type_ – an optional TypeEngine object which will provide result-set translation and additional expression semantics for this column. If left as None the type will be NullType.

See also

column()

text()

Using More Specific Text with table(), _expression.literal_column(), and _expression.column()

function sqlalchemy.sql.expression.``not_(clause)

Return a negation of the given clause, i.e. NOT(clause).

The ~ operator is also overloaded on all ColumnElement subclasses to produce the same result.

function sqlalchemy.sql.expression.``null()

Return a constant Null construct.

function sqlalchemy.sql.expression.``or_(\clauses*)

Produce a conjunction of expressions joined by OR.

E.g.:

  1. from sqlalchemy import or_
  2. stmt = select(users_table).where(
  3. or_(
  4. users_table.c.name == 'wendy',
  5. users_table.c.name == 'jack'
  6. )
  7. )

The or_() conjunction is also available using the Python | operator (though note that compound expressions need to be parenthesized in order to function with Python operator precedence behavior):

  1. stmt = select(users_table).where(
  2. (users_table.c.name == 'wendy') |
  3. (users_table.c.name == 'jack')
  4. )

The or_() construct must be given at least one positional argument in order to be valid; a or_() construct with no arguments is ambiguous. To produce an “empty” or dynamically generated or_() expression, from a given list of expressions, a “default” element of False should be specified:

  1. or_criteria = or_(False, *expressions)

The above expression will compile to SQL as the expression false or 0 = 1, depending on backend, if no other expressions are present. If expressions are present, then the False value is ignored as it does not affect the outcome of an OR expression which has other elements.

Deprecated since version 1.4: The or_() element now requires that at least one argument is passed; creating the or_() construct with no arguments is deprecated, and will emit a deprecation warning while continuing to produce a blank SQL string.

See also

and_()

function sqlalchemy.sql.expression.``outparam(key, type_=None)

Create an ‘OUT’ parameter for usage in functions (stored procedures), for databases which support them.

The outparam can be used like a regular function parameter. The “output” value will be available from the CursorResult object via its out_parameters attribute, which returns a dictionary containing the values.

function sqlalchemy.sql.expression.``text(text, bind=None)

Construct a new TextClause clause, representing a textual SQL string directly.

E.g.:

  1. from sqlalchemy import text
  2. t = text("SELECT * FROM users")
  3. result = connection.execute(t)

The advantages text() provides over a plain string are backend-neutral support for bind parameters, per-statement execution options, as well as bind parameter and result-column typing behavior, allowing SQLAlchemy type constructs to play a role when executing a statement that is specified literally. The construct can also be provided with a .c collection of column elements, allowing it to be embedded in other SQL expression constructs as a subquery.

Bind parameters are specified by name, using the format :name. E.g.:

  1. t = text("SELECT * FROM users WHERE id=:user_id")
  2. result = connection.execute(t, user_id=12)

For SQL statements where a colon is required verbatim, as within an inline string, use a backslash to escape:

  1. t = text("SELECT * FROM users WHERE name='\:username'")

The TextClause construct includes methods which can provide information about the bound parameters as well as the column values which would be returned from the textual statement, assuming it’s an executable SELECT type of statement. The TextClause.bindparams() method is used to provide bound parameter detail, and TextClause.columns() method allows specification of return columns including names and types:

  1. t = text("SELECT * FROM users WHERE id=:user_id").\
  2. bindparams(user_id=7).\
  3. columns(id=Integer, name=String)
  4. for id, name in connection.execute(t):
  5. print(id, name)

The text() construct is used in cases when a literal string SQL fragment is specified as part of a larger query, such as for the WHERE clause of a SELECT statement:

  1. s = select(users.c.id, users.c.name).where(text("id=:user_id"))
  2. result = connection.execute(s, user_id=12)

text() is also used for the construction of a full, standalone statement using plain text. As such, SQLAlchemy refers to it as an Executable object, and it supports the Executable.execution_options() method. For example, a text() construct that should be subject to “autocommit” can be set explicitly so using the Connection.execution_options.autocommit option:

  1. t = text("EXEC my_procedural_thing()").\
  2. execution_options(autocommit=True)

Deprecated since version 1.4: The “autocommit” execution option is deprecated and will be removed in SQLAlchemy 2.0. See Library-level (but not driver level) “Autocommit” removed from both Core and ORM for discussion.

  • Parameters

    • text

      the text of the SQL statement to be created. Use :<param> to specify bind parameters; they will be compiled to their engine-specific format.

      Warning

      The text.text argument to text() can be passed as a Python string argument, which will be treated as trusted SQL text and rendered as given. DO NOT PASS UNTRUSTED INPUT TO THIS PARAMETER.

    • bind

      an optional connection or engine to be used for this text query.

      Deprecated since version 1.4: The text.bind argument is deprecated and will be removed in SQLAlchemy 2.0.

See also

Using Textual SQL - in the Core tutorial

function sqlalchemy.sql.expression.``true()

Return a constant True_ construct.

E.g.:

  1. >>> from sqlalchemy import true
  2. >>> print(select(t.c.x).where(true()))
  3. SELECT x FROM t WHERE true

A backend which does not support true/false constants will render as an expression against 1 or 0:

  1. >>> print(select(t.c.x).where(true()))
  2. SELECT x FROM t WHERE 1 = 1

The true() and false() constants also feature “short circuit” operation within an and_() or or_() conjunction:

  1. >>> print(select(t.c.x).where(or_(t.c.x > 5, true())))
  2. SELECT x FROM t WHERE true
  3. >>> print(select(t.c.x).where(and_(t.c.x > 5, false())))
  4. SELECT x FROM t WHERE false

Changed in version 0.9: true() and false() feature better integrated behavior within conjunctions and on dialects that don’t support true/false constants.

See also

false()

function sqlalchemy.sql.expression.``tuple_(\clauses, **kw*)

Return a Tuple.

Main usage is to produce a composite IN construct using ColumnOperators.in_()

  1. from sqlalchemy import tuple_
  2. tuple_(table.c.col1, table.c.col2).in_(
  3. [(1, 2), (5, 12), (10, 19)]
  4. )

Changed in version 1.3.6: Added support for SQLite IN tuples.

Warning

The composite IN construct is not supported by all backends, and is currently known to work on PostgreSQL, MySQL, and SQLite. Unsupported backends will raise a subclass of DBAPIError when such an expression is invoked.

function sqlalchemy.sql.expression.``type_coerce(expression, type_)

Associate a SQL expression with a particular type, without rendering CAST.

E.g.:

  1. from sqlalchemy import type_coerce
  2. stmt = select(type_coerce(log_table.date_string, StringDateTime()))

The above construct will produce a TypeCoerce object, which does not modify the rendering in any way on the SQL side, with the possible exception of a generated label if used in a columns clause context:

  1. SELECT date_string AS date_string FROM log

When result rows are fetched, the StringDateTime type processor will be applied to result rows on behalf of the date_string column.

Note

the type_coerce() construct does not render any SQL syntax of its own, including that it does not imply parenthesization. Please use TypeCoerce.self_group() if explicit parenthesization is required.

In order to provide a named label for the expression, use ColumnElement.label():

  1. stmt = select(
  2. type_coerce(log_table.date_string, StringDateTime()).label('date')
  3. )

A type that features bound-value handling will also have that behavior take effect when literal values or bindparam() constructs are passed to type_coerce() as targets. For example, if a type implements the TypeEngine.bind_expression() method or TypeEngine.bind_processor() method or equivalent, these functions will take effect at statement compilation/execution time when a literal value is passed, as in:

  1. # bound-value handling of MyStringType will be applied to the
  2. # literal value "some string"
  3. stmt = select(type_coerce("some string", MyStringType))

When using type_coerce() with composed expressions, note that parenthesis are not applied. If type_coerce() is being used in an operator context where the parenthesis normally present from CAST are necessary, use the TypeCoerce.self_group() method:

  1. >>> some_integer = column("someint", Integer)
  2. >>> some_string = column("somestr", String)
  3. >>> expr = type_coerce(some_integer + 5, String) + some_string
  4. >>> print(expr)
  5. someint + :someint_1 || somestr
  6. >>> expr = type_coerce(some_integer + 5, String).self_group() + some_string
  7. >>> print(expr)
  8. (someint + :someint_1) || somestr
  • Parameters

    • expression – A SQL expression, such as a ColumnElement expression or a Python string which will be coerced into a bound literal value.

    • type_ – A TypeEngine class or instance indicating the type to which the expression is coerced.

See also

Data Casts and Type Coercion

cast()

class sqlalchemy.sql.expression.``quoted_name(value, quote)

Represent a SQL identifier combined with quoting preferences.

quoted_name is a Python unicode/str subclass which represents a particular identifier name along with a quote flag. This quote flag, when set to True or False, overrides automatic quoting behavior for this identifier in order to either unconditionally quote or to not quote the name. If left at its default of None, quoting behavior is applied to the identifier on a per-backend basis based on an examination of the token itself.

A quoted_name object with quote=True is also prevented from being modified in the case of a so-called “name normalize” option. Certain database backends, such as Oracle, Firebird, and DB2 “normalize” case-insensitive names as uppercase. The SQLAlchemy dialects for these backends convert from SQLAlchemy’s lower-case-means-insensitive convention to the upper-case-means-insensitive conventions of those backends. The quote=True flag here will prevent this conversion from occurring to support an identifier that’s quoted as all lower case against such a backend.

The quoted_name object is normally created automatically when specifying the name for key schema constructs such as Table, Column, and others. The class can also be passed explicitly as the name to any function that receives a name which can be quoted. Such as to use the Engine.has_table() method with an unconditionally quoted name:

  1. from sqlalchemy import create_engine
  2. from sqlalchemy.sql import quoted_name
  3. engine = create_engine("oracle+cx_oracle://some_dsn")
  4. engine.has_table(quoted_name("some_table", True))

The above logic will run the “has table” logic against the Oracle backend, passing the name exactly as "some_table" without converting to upper case.

New in version 0.9.0.

Changed in version 1.2: The quoted_name construct is now importable from sqlalchemy.sql, in addition to the previous location of sqlalchemy.sql.elements.

Class signature

class sqlalchemy.sql.expression.quoted_name (sqlalchemy.util.langhelpers.MemoizedSlots, builtins.str)

Column Element Modifier Constructors

Functions listed here are more commonly available as methods from any ColumnElement construct, for example, the label() function is usually invoked via the ColumnElement.label() method.

Object NameDescription

all(expr)

Produce an ALL expression.

<a class=”reference internal” href=”#sqlalchemy.sql.expression.any“>any(expr)

Produce an ANY expression.

asc(column)

Produce an ascending ORDER BY clause element.

between(expr, lower_bound, upper_bound[, symmetric])

Produce a BETWEEN predicate clause.

collate(expression, collation)

Return the clause expression COLLATE collation.

desc(column)

Produce a descending ORDER BY clause element.

funcfilter(func, *criterion)

Produce a FunctionFilter object against a function.

label(name, element[, type])

Return a Label object for the given ColumnElement.

nullsfirst(column)

Produce the NULLS FIRST modifier for an ORDER BY expression.

nulls_last(column)

Produce the NULLS LAST modifier for an ORDER BY expression.

over(element[, partition_by, order_by, range, …])

Produce an Over object against a function.

within_group(element, *order_by)

Produce a WithinGroup object against a function.

function sqlalchemy.sql.expression.``all_(expr)

Produce an ALL expression.

This may apply to an array type for some dialects (e.g. postgresql), or to a subquery for others (e.g. mysql). e.g.:

  1. # postgresql '5 = ALL (somearray)'
  2. expr = 5 == all_(mytable.c.somearray)
  3. # mysql '5 = ALL (SELECT value FROM table)'
  4. expr = 5 == all_(select(table.c.value))

The operator is more conveniently available from any ColumnElement object that makes use of the ARRAY datatype:

  1. expr = mytable.c.somearray.all(5)

See also

any_()

Comparator.all()

function sqlalchemy.sql.expression.``any_(expr)

Produce an ANY expression.

This may apply to an array type for some dialects (e.g. postgresql), or to a subquery for others (e.g. mysql). e.g.:

  1. # postgresql '5 = ANY (somearray)'
  2. expr = 5 == any_(mytable.c.somearray)
  3. # mysql '5 = ANY (SELECT value FROM table)'
  4. expr = 5 == any_(select(table.c.value))

The operator is more conveniently available from any ColumnElement object that makes use of the ARRAY datatype:

  1. expr = mytable.c.somearray.any(5)

See also

all_()

ARRAY.any()

function sqlalchemy.sql.expression.``asc(column)

Produce an ascending ORDER BY clause element.

e.g.:

  1. from sqlalchemy import asc
  2. stmt = select(users_table).order_by(asc(users_table.c.name))

will produce SQL as:

  1. SELECT id, name FROM user ORDER BY name ASC

The asc() function is a standalone version of the ColumnElement.asc() method available on all SQL expressions, e.g.:

  1. stmt = select(users_table).order_by(users_table.c.name.asc())
  • Parameters

    column – A ColumnElement (e.g. scalar SQL expression) with which to apply the asc() operation.

See also

desc()

nulls_first()

nulls_last()

Select.order_by()

function sqlalchemy.sql.expression.``between(expr, lower_bound, upper_bound, symmetric=False)

Produce a BETWEEN predicate clause.

E.g.:

  1. from sqlalchemy import between
  2. stmt = select(users_table).where(between(users_table.c.id, 5, 7))

Would produce SQL resembling:

  1. SELECT id, name FROM user WHERE id BETWEEN :id_1 AND :id_2

The between() function is a standalone version of the ColumnElement.between() method available on all SQL expressions, as in:

  1. stmt = select(users_table).where(users_table.c.id.between(5, 7))

All arguments passed to between(), including the left side column expression, are coerced from Python scalar values if a the value is not a ColumnElement subclass. For example, three fixed values can be compared as in:

  1. print(between(5, 3, 7))

Which would produce:

  1. :param_1 BETWEEN :param_2 AND :param_3
  • Parameters

    • expr – a column expression, typically a ColumnElement instance or alternatively a Python scalar expression to be coerced into a column expression, serving as the left side of the BETWEEN expression.

    • lower_bound – a column or Python scalar expression serving as the lower bound of the right side of the BETWEEN expression.

    • upper_bound – a column or Python scalar expression serving as the upper bound of the right side of the BETWEEN expression.

    • symmetric

      if True, will render ” BETWEEN SYMMETRIC “. Note that not all databases support this syntax.

      New in version 0.9.5.

See also

ColumnElement.between()

function sqlalchemy.sql.expression.``collate(expression, collation)

Return the clause expression COLLATE collation.

e.g.:

  1. collate(mycolumn, 'utf8_bin')

produces:

  1. mycolumn COLLATE utf8_bin

The collation expression is also quoted if it is a case sensitive identifier, e.g. contains uppercase characters.

Changed in version 1.2: quoting is automatically applied to COLLATE expressions if they are case sensitive.

function sqlalchemy.sql.expression.``desc(column)

Produce a descending ORDER BY clause element.

e.g.:

  1. from sqlalchemy import desc
  2. stmt = select(users_table).order_by(desc(users_table.c.name))

will produce SQL as:

  1. SELECT id, name FROM user ORDER BY name DESC

The desc() function is a standalone version of the ColumnElement.desc() method available on all SQL expressions, e.g.:

  1. stmt = select(users_table).order_by(users_table.c.name.desc())
  • Parameters

    column – A ColumnElement (e.g. scalar SQL expression) with which to apply the desc() operation.

See also

asc()

nulls_first()

nulls_last()

Select.order_by()

function sqlalchemy.sql.expression.``funcfilter(func, \criterion*)

Produce a FunctionFilter object against a function.

Used against aggregate and window functions, for database backends that support the “FILTER” clause.

E.g.:

  1. from sqlalchemy import funcfilter
  2. funcfilter(func.count(1), MyClass.name == 'some name')

Would produce “COUNT(1) FILTER (WHERE myclass.name = ‘some name’)”.

This function is also available from the func construct itself via the FunctionElement.filter() method.

New in version 1.0.0.

See also

Special Modifiers WITHIN GROUP, FILTER - in the SQLAlchemy 1.4 / 2.0 Tutorial

FunctionElement.filter()

function sqlalchemy.sql.expression.``label(name, element, type_=None)

Return a Label object for the given ColumnElement.

A label changes the name of an element in the columns clause of a SELECT statement, typically via the AS SQL keyword.

This functionality is more conveniently available via the ColumnElement.label() method on ColumnElement.

function sqlalchemy.sql.expression.``nulls_first(column)

Produce the NULLS FIRST modifier for an ORDER BY expression.

nulls_first() is intended to modify the expression produced by asc() or desc(), and indicates how NULL values should be handled when they are encountered during ordering:

  1. from sqlalchemy import desc, nulls_first
  2. stmt = select(users_table).order_by(
  3. nulls_first(desc(users_table.c.name)))

The SQL expression from the above would resemble:

  1. SELECT id, name FROM user ORDER BY name DESC NULLS FIRST

Like asc() and desc(), nulls_first() is typically invoked from the column expression itself using ColumnElement.nulls_first(), rather than as its standalone function version, as in:

  1. stmt = select(users_table).order_by(
  2. users_table.c.name.desc().nulls_first())

Changed in version 1.4: nulls_first() is renamed from nullsfirst() in previous releases. The previous name remains available for backwards compatibility.

See also

asc()

desc()

nulls_last()

Select.order_by()

function sqlalchemy.sql.expression.``nulls_last(column)

Produce the NULLS LAST modifier for an ORDER BY expression.

nulls_last() is intended to modify the expression produced by asc() or desc(), and indicates how NULL values should be handled when they are encountered during ordering:

  1. from sqlalchemy import desc, nulls_last
  2. stmt = select(users_table).order_by(
  3. nulls_last(desc(users_table.c.name)))

The SQL expression from the above would resemble:

  1. SELECT id, name FROM user ORDER BY name DESC NULLS LAST

Like asc() and desc(), nulls_last() is typically invoked from the column expression itself using ColumnElement.nulls_last(), rather than as its standalone function version, as in:

  1. stmt = select(users_table).order_by(
  2. users_table.c.name.desc().nulls_last())

Changed in version 1.4: nulls_last() is renamed from nullslast() in previous releases. The previous name remains available for backwards compatibility.

See also

asc()

desc()

nulls_first()

Select.order_by()

function sqlalchemy.sql.expression.``over(element, partition_by=None, order_by=None, range_=None, rows=None)

Produce an Over object against a function.

Used against aggregate or so-called “window” functions, for database backends that support window functions.

over() is usually called using the FunctionElement.over() method, e.g.:

  1. func.row_number().over(order_by=mytable.c.some_column)

Would produce:

  1. ROW_NUMBER() OVER(ORDER BY some_column)

Ranges are also possible using the over.range_ and over.rows parameters. These mutually-exclusive parameters each accept a 2-tuple, which contains a combination of integers and None:

  1. func.row_number().over(
  2. order_by=my_table.c.some_column, range_=(None, 0))

The above would produce:

  1. ROW_NUMBER() OVER(ORDER BY some_column
  2. RANGE BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW)

A value of None indicates “unbounded”, a value of zero indicates “current row”, and negative / positive integers indicate “preceding” and “following”:

  • RANGE BETWEEN 5 PRECEDING AND 10 FOLLOWING:

    1. func.row_number().over(order_by='x', range_=(-5, 10))
  • ROWS BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW:

    1. func.row_number().over(order_by='x', rows=(None, 0))
  • RANGE BETWEEN 2 PRECEDING AND UNBOUNDED FOLLOWING:

    1. func.row_number().over(order_by='x', range_=(-2, None))
  • RANGE BETWEEN 1 FOLLOWING AND 3 FOLLOWING:

    1. func.row_number().over(order_by='x', range_=(1, 3))

New in version 1.1: support for RANGE / ROWS within a window

  • Parameters

    • element – a FunctionElement, WithinGroup, or other compatible construct.

    • partition_by – a column element or string, or a list of such, that will be used as the PARTITION BY clause of the OVER construct.

    • order_by – a column element or string, or a list of such, that will be used as the ORDER BY clause of the OVER construct.

    • range_

      optional range clause for the window. This is a tuple value which can contain integer values or None, and will render a RANGE BETWEEN PRECEDING / FOLLOWING clause.

      New in version 1.1.

    • rows

      optional rows clause for the window. This is a tuple value which can contain integer values or None, and will render a ROWS BETWEEN PRECEDING / FOLLOWING clause.

      New in version 1.1.

This function is also available from the func construct itself via the FunctionElement.over() method.

See also

Using Window Functions - in the SQLAlchemy 1.4 / 2.0 Tutorial

func

within_group()

function sqlalchemy.sql.expression.``within_group(element, \order_by*)

Produce a WithinGroup object against a function.

Used against so-called “ordered set aggregate” and “hypothetical set aggregate” functions, including percentile_cont, rank, dense_rank, etc.

within_group() is usually called using the FunctionElement.within_group() method, e.g.:

  1. from sqlalchemy import within_group
  2. stmt = select(
  3. department.c.id,
  4. func.percentile_cont(0.5).within_group(
  5. department.c.salary.desc()
  6. )
  7. )

The above statement would produce SQL similar to SELECT department.id, percentile_cont(0.5) WITHIN GROUP (ORDER BY department.salary DESC).

  • Parameters

    • element – a FunctionElement construct, typically generated by func.

    • *order_by – one or more column elements that will be used as the ORDER BY clause of the WITHIN GROUP construct.

New in version 1.1.

See also

Special Modifiers WITHIN GROUP, FILTER - in the SQLAlchemy 1.4 / 2.0 Tutorial

func

over()

Column Element Class Documentation

The classes here are generated using the constructors listed at Column Element Foundational Constructors and Column Element Modifier Constructors.

Object NameDescription

BinaryExpression

Represent an expression that is LEFT <operator> RIGHT.

BindParameter

Represent a “bound expression”.

CacheKey

Case

Represent a CASE expression.

Cast

Represent a CAST expression.

ClauseElement

Base class for elements of a programmatically constructed SQL expression.

ClauseList

Describe a list of clauses, separated by an operator.

ColumnClause

Represents a column expression from any textual string.

ColumnCollection

Collection of ColumnElement instances, typically for selectables.

ColumnElement

Represent a column-oriented SQL expression suitable for usage in the “columns” clause, WHERE clause etc. of a statement.

ColumnOperators

Defines boolean, comparison, and other operators for ColumnElement expressions.

DialectKWArgs

Establish the ability for a class to have dialect-specific arguments with defaults and constructor validation.

Extract

Represent a SQL EXTRACT clause, extract(field FROM expr).

False

Represent the false keyword, or equivalent, in a SQL statement.

FunctionFilter

Represent a function FILTER clause.

Label

Represents a column label (AS).

LambdaElement

A SQL construct where the state is stored as an un-invoked lambda.

Null

Represent the NULL keyword in a SQL statement.

Operators

Base of comparison and logical operators.

Over

Represent an OVER clause.

StatementLambdaElement

Represent a composable SQL statement as a LambdaElement.

TextClause

Represent a literal SQL text fragment.

<a class=”reference internal” href=”#sqlalchemy.sql.expression.True“>True_

Represent the true keyword, or equivalent, in a SQL statement.

Tuple

Represent a SQL tuple.

TypeCoerce

Represent a Python-side type-coercion wrapper.

UnaryExpression

Define a ‘unary’ expression.

WithinGroup

Represent a WITHIN GROUP (ORDER BY) clause.

WrapsColumnExpression

Mixin that defines a ColumnElement as a wrapper with special labeling behavior for an expression that already has a name.

class sqlalchemy.sql.expression.``BinaryExpression(left, right, operator, type_=None, negate=None, modifiers=None)

Represent an expression that is LEFT <operator> RIGHT.

A BinaryExpression is generated automatically whenever two column expressions are used in a Python binary expression:

  1. >>> from sqlalchemy.sql import column
  2. >>> column('a') + column('b')
  3. <sqlalchemy.sql.expression.BinaryExpression object at 0x101029dd0>
  4. >>> print(column('a') + column('b'))
  5. a + b

Class signature

class sqlalchemy.sql.expression.BinaryExpression (sqlalchemy.sql.expression.ColumnElement)

  • method sqlalchemy.sql.expression.BinaryExpression.self_group(against=None)

    Apply a ‘grouping’ to this ClauseElement.

    This method is overridden by subclasses to return a “grouping” construct, i.e. parenthesis. In particular it’s used by “binary” expressions to provide a grouping around themselves when placed into a larger expression, as well as by select() constructs when placed into the FROM clause of another select(). (Note that subqueries should be normally created using the Select.alias() method, as many platforms require nested SELECT statements to be named).

    As expressions are composed together, the application of self_group() is automatic - end-user code should never need to use this method directly. Note that SQLAlchemy’s clause constructs take operator precedence into account - so parenthesis might not be needed, for example, in an expression like x OR (y AND z) - AND takes precedence over OR.

    The base self_group() method of ClauseElement just returns self.

class sqlalchemy.sql.expression.``BindParameter(key, value=symbol(‘NO_ARG’), type_=None, unique=False, required=symbol(‘NO_ARG’), quote=None, callable_=None, expanding=False, isoutparam=False, literal_execute=False, _compared_to_operator=None, _compared_to_type=None, _is_crud=False)

Represent a “bound expression”.

BindParameter is invoked explicitly using the bindparam() function, as in:

  1. from sqlalchemy import bindparam
  2. stmt = select(users_table).\
  3. where(users_table.c.name == bindparam('username'))

Detailed discussion of how BindParameter is used is at bindparam().

See also

bindparam()

Class signature

class sqlalchemy.sql.expression.BindParameter (sqlalchemy.sql.roles.InElementRole, sqlalchemy.sql.expression.ColumnElement)

  • method sqlalchemy.sql.expression.BindParameter.__init__(key, value=symbol(‘NO_ARG’), type_=None, unique=False, required=symbol(‘NO_ARG’), quote=None, callable_=None, expanding=False, isoutparam=False, literal_execute=False, _compared_to_operator=None, _compared_to_type=None, _is_crud=False)

    Construct a new BindParameter object.

    This constructor is mirrored as a public API function; see sqlalchemy.sql.expression.bindparam() for a full usage and argument description.

  • attribute sqlalchemy.sql.expression.BindParameter.effective_value

    Return the value of this bound parameter, taking into account if the callable parameter was set.

    The callable value will be evaluated and returned if present, else value.

class sqlalchemy.sql.expression.``CacheKey(key, bindparams)

Class signature

class sqlalchemy.sql.expression.CacheKey (sqlalchemy.sql.traversals.CacheKey)

  • method sqlalchemy.sql.expression.CacheKey.to_offline_string(statement_cache, statement, parameters)

    Generate an “offline string” form of this CacheKey

    The “offline string” is basically the string SQL for the statement plus a repr of the bound parameter values in series. Whereas the CacheKey object is dependent on in-memory identities in order to work as a cache key, the “offline” version is suitable for a cache that will work for other processes as well.

    The given statement_cache is a dictionary-like object where the string form of the statement itself will be cached. This dictionary should be in a longer lived scope in order to reduce the time spent stringifying statements.

class sqlalchemy.sql.expression.``Case(\whens, **kw*)

Represent a CASE expression.

Case is produced using the case() factory function, as in:

  1. from sqlalchemy import case
  2. stmt = select(users_table). where(
  3. case(
  4. (users_table.c.name == 'wendy', 'W'),
  5. (users_table.c.name == 'jack', 'J'),
  6. else_='E'
  7. )
  8. )

Details on Case usage is at case().

See also

case()

Class signature

class sqlalchemy.sql.expression.Case (sqlalchemy.sql.expression.ColumnElement)

class sqlalchemy.sql.expression.``Cast(expression, type_)

Represent a CAST expression.

Cast is produced using the cast() factory function, as in:

  1. from sqlalchemy import cast, Numeric
  2. stmt = select(cast(product_table.c.unit_price, Numeric(10, 4)))

Details on Cast usage is at cast().

See also

Data Casts and Type Coercion

cast()

type_coerce() - an alternative to CAST that coerces the type on the Python side only, which is often sufficient to generate the correct SQL and data coercion.

Class signature

class sqlalchemy.sql.expression.Cast (sqlalchemy.sql.expression.WrapsColumnExpression, sqlalchemy.sql.expression.ColumnElement)

class sqlalchemy.sql.expression.``ClauseElement

Base class for elements of a programmatically constructed SQL expression.

Class signature

class sqlalchemy.sql.expression.ClauseElement (sqlalchemy.sql.roles.SQLRole, sqlalchemy.sql.annotation.SupportsWrappingAnnotations, sqlalchemy.sql.traversals.MemoizedHasCacheKey, sqlalchemy.sql.traversals.HasCopyInternals, sqlalchemy.sql.visitors.Traversible)

  • method sqlalchemy.sql.expression.ClauseElement.compare(other, \*kw*)

    Compare this ClauseElement to the given ClauseElement.

    Subclasses should override the default behavior, which is a straight identity comparison.

    **kw are arguments consumed by subclass compare() methods and may be used to modify the criteria for comparison (see ColumnElement).

  • method sqlalchemy.sql.expression.ClauseElement.compile(bind=None, dialect=None, \*kw*)

    Compile this SQL expression.

    The return value is a Compiled object. Calling str() or unicode() on the returned value will yield a string representation of the result. The Compiled object also can return a dictionary of bind parameter names and values using the params accessor.

    • Parameters

      • bind – An Engine or Connection from which a Compiled will be acquired. This argument takes precedence over this ClauseElement’s bound engine, if any.

      • column_keys – Used for INSERT and UPDATE statements, a list of column names which should be present in the VALUES clause of the compiled statement. If None, all columns from the target table object are rendered.

      • dialect – A Dialect instance from which a Compiled will be acquired. This argument takes precedence over the bind argument as well as this ClauseElement ‘s bound engine, if any.

      • compile_kwargs

        optional dictionary of additional parameters that will be passed through to the compiler within all “visit” methods. This allows any custom flag to be passed through to a custom compilation construct, for example. It is also used for the case of passing the literal_binds flag through:

        1. from sqlalchemy.sql import table, column, select
        2. t = table('t', column('x'))
        3. s = select(t).where(t.c.x == 5)
        4. print(s.compile(compile_kwargs={"literal_binds": True}))

        New in version 0.9.0.

  1. See also
  2. [How do I render SQL expressions as strings, possibly with bound parameters inlined?]($23f306fd0cdd485d.md#faq-sql-expression-string)
  • method sqlalchemy.sql.expression.ClauseElement.get_children(omit_attrs=(), \*kw*)

    Return immediate child Traversible elements of this Traversible.

    This is used for visit traversal.

    **kw may contain flags that change the collection that is returned, for example to return a subset of items in order to cut down on larger traversals, or to return child items from a different context (such as schema-level collections instead of clause-level).

  • class memoized_attribute(fget, doc=None)

    A read-only @property that is only evaluated once.

  • method sqlalchemy.sql.expression.ClauseElement.classmethod memoized_instancemethod(fn)

    inherited from the HasMemoized.memoized_instancemethod() method of HasMemoized

    Decorate a method memoize its return value.

  • method sqlalchemy.sql.expression.ClauseElement.params(\optionaldict, **kwargs*)

    Return a copy with bindparam() elements replaced.

    Returns a copy of this ClauseElement with bindparam() elements replaced with values taken from the given dictionary:

    1. >>> clause = column('x') + bindparam('foo')
    2. >>> print(clause.compile().params)
    3. {'foo':None}
    4. >>> print(clause.params({'foo':7}).compile().params)
    5. {'foo':7}
  • method sqlalchemy.sql.expression.ClauseElement.self_group(against=None)

    Apply a ‘grouping’ to this ClauseElement.

    This method is overridden by subclasses to return a “grouping” construct, i.e. parenthesis. In particular it’s used by “binary” expressions to provide a grouping around themselves when placed into a larger expression, as well as by select() constructs when placed into the FROM clause of another select(). (Note that subqueries should be normally created using the Select.alias() method, as many platforms require nested SELECT statements to be named).

    As expressions are composed together, the application of self_group() is automatic - end-user code should never need to use this method directly. Note that SQLAlchemy’s clause constructs take operator precedence into account - so parenthesis might not be needed, for example, in an expression like x OR (y AND z) - AND takes precedence over OR.

    The base self_group() method of ClauseElement just returns self.

  • method sqlalchemy.sql.expression.ClauseElement.unique_params(\optionaldict, **kwargs*)

    Return a copy with bindparam() elements replaced.

    Same functionality as ClauseElement.params(), except adds unique=True to affected bind parameters so that multiple statements can be used.

class sqlalchemy.sql.expression.``ClauseList(\clauses, **kwargs*)

Describe a list of clauses, separated by an operator.

By default, is comma-separated, such as a column listing.

Class signature

class sqlalchemy.sql.expression.ClauseList (sqlalchemy.sql.roles.InElementRole, sqlalchemy.sql.roles.OrderByRole, sqlalchemy.sql.roles.ColumnsClauseRole, sqlalchemy.sql.roles.DMLColumnRole, sqlalchemy.sql.expression.ClauseElement)

  • method sqlalchemy.sql.expression.ClauseList.self_group(against=None)

    Apply a ‘grouping’ to this ClauseElement.

    This method is overridden by subclasses to return a “grouping” construct, i.e. parenthesis. In particular it’s used by “binary” expressions to provide a grouping around themselves when placed into a larger expression, as well as by select() constructs when placed into the FROM clause of another select(). (Note that subqueries should be normally created using the Select.alias() method, as many platforms require nested SELECT statements to be named).

    As expressions are composed together, the application of self_group() is automatic - end-user code should never need to use this method directly. Note that SQLAlchemy’s clause constructs take operator precedence into account - so parenthesis might not be needed, for example, in an expression like x OR (y AND z) - AND takes precedence over OR.

    The base self_group() method of ClauseElement just returns self.

class sqlalchemy.sql.expression.``ColumnClause(text, type_=None, is_literal=False, _selectable=None)

Represents a column expression from any textual string.

The ColumnClause, a lightweight analogue to the Column class, is typically invoked using the column() function, as in:

  1. from sqlalchemy import column
  2. id, name = column("id"), column("name")
  3. stmt = select(id, name).select_from("user")

The above statement would produce SQL like:

  1. SELECT id, name FROM user

ColumnClause is the immediate superclass of the schema-specific Column object. While the Column class has all the same capabilities as ColumnClause, the ColumnClause class is usable by itself in those cases where behavioral requirements are limited to simple SQL expression generation. The object has none of the associations with schema-level metadata or with execution-time behavior that Column does, so in that sense is a “lightweight” version of Column.

Full details on ColumnClause usage is at column().

See also

column()

Column

Class signature

class sqlalchemy.sql.expression.ColumnClause (sqlalchemy.sql.roles.DDLReferredColumnRole, sqlalchemy.sql.roles.LabeledColumnExprRole, sqlalchemy.sql.roles.StrAsPlainColumnRole, sqlalchemy.sql.expression.Immutable, sqlalchemy.sql.expression.NamedColumn)

  • method sqlalchemy.sql.expression.ColumnClause.__init__(text, type_=None, is_literal=False, _selectable=None)

    Construct a new ColumnClause object.

    This constructor is mirrored as a public API function; see sqlalchemy.sql.expression.column() for a full usage and argument description.

  • method sqlalchemy.sql.expression.ColumnClause.get_children(column_tables=False, \*kw*)

    Return immediate child Traversible elements of this Traversible.

    This is used for visit traversal.

    **kw may contain flags that change the collection that is returned, for example to return a subset of items in order to cut down on larger traversals, or to return child items from a different context (such as schema-level collections instead of clause-level).

class sqlalchemy.sql.expression.``ColumnCollection(columns=None)

Collection of ColumnElement instances, typically for selectables.

The ColumnCollection has both mapping- and sequence- like behaviors. A ColumnCollection usually stores Column objects, which are then accessible both via mapping style access as well as attribute access style. The name for which a Column would be present is normally that of the Column.key parameter, however depending on the context, it may be stored under a special label name:

  1. >>> from sqlalchemy import Column, Integer
  2. >>> from sqlalchemy.sql import ColumnCollection
  3. >>> x, y = Column('x', Integer), Column('y', Integer)
  4. >>> cc = ColumnCollection(columns=[(x.name, x), (y.name, y)])
  5. >>> cc.x
  6. Column('x', Integer(), table=None)
  7. >>> cc.y
  8. Column('y', Integer(), table=None)
  9. >>> cc['x']
  10. Column('x', Integer(), table=None)
  11. >>> cc['y']

ColumnCollection also indexes the columns in order and allows them to be accessible by their integer position:

  1. >>> cc[0]
  2. Column('x', Integer(), table=None)
  3. >>> cc[1]
  4. Column('y', Integer(), table=None)

New in version 1.4: ColumnCollection allows integer-based index access to the collection.

Iterating the collection yields the column expressions in order:

  1. >>> list(cc)
  2. [Column('x', Integer(), table=None),
  3. Column('y', Integer(), table=None)]

The base ColumnCollection object can store duplicates, which can mean either two columns with the same key, in which case the column returned by key access is arbitrary:

  1. >>> x1, x2 = Column('x', Integer), Column('x', Integer)
  2. >>> cc = ColumnCollection(columns=[(x1.name, x1), (x2.name, x2)])
  3. >>> list(cc)
  4. [Column('x', Integer(), table=None),
  5. Column('x', Integer(), table=None)]
  6. >>> cc['x'] is x1
  7. False
  8. >>> cc['x'] is x2
  9. True

Or it can also mean the same column multiple times. These cases are supported as ColumnCollection is used to represent the columns in a SELECT statement which may include duplicates.

A special subclass DedupeColumnCollection exists which instead maintains SQLAlchemy’s older behavior of not allowing duplicates; this collection is used for schema level objects like Table and PrimaryKeyConstraint where this deduping is helpful. The DedupeColumnCollection class also has additional mutation methods as the schema constructs have more use cases that require removal and replacement of columns.

Changed in version 1.4: ColumnCollection now stores duplicate column keys as well as the same column in multiple positions. The DedupeColumnCollection class is added to maintain the former behavior in those cases where deduplication as well as additional replace/remove operations are needed.

  1. See also
  2. [`Selectable.corresponding_column()`]($fc2d211e9d1454ca.md#sqlalchemy.sql.expression.Selectable.corresponding_column "sqlalchemy.sql.expression.Selectable.corresponding_column") - invokes this method against the collection returned by [`Selectable.exported_columns`]($fc2d211e9d1454ca.md#sqlalchemy.sql.expression.Selectable.exported_columns "sqlalchemy.sql.expression.Selectable.exported_columns").
  3. Changed in version 1.4: the implementation for `corresponding_column` was moved onto the [`ColumnCollection`](#sqlalchemy.sql.expression.ColumnCollection "sqlalchemy.sql.expression.ColumnCollection") itself.

class sqlalchemy.sql.expression.``ColumnElement

Represent a column-oriented SQL expression suitable for usage in the “columns” clause, WHERE clause etc. of a statement.

While the most familiar kind of ColumnElement is the Column object, ColumnElement serves as the basis for any unit that may be present in a SQL expression, including the expressions themselves, SQL functions, bound parameters, literal expressions, keywords such as NULL, etc. ColumnElement is the ultimate base class for all such elements.

A wide variety of SQLAlchemy Core functions work at the SQL expression level, and are intended to accept instances of ColumnElement as arguments. These functions will typically document that they accept a “SQL expression” as an argument. What this means in terms of SQLAlchemy usually refers to an input which is either already in the form of a ColumnElement object, or a value which can be coerced into one. The coercion rules followed by most, but not all, SQLAlchemy Core functions with regards to SQL expressions are as follows:

  • a literal Python value, such as a string, integer or floating point value, boolean, datetime, Decimal object, or virtually any other Python object, will be coerced into a “literal bound value”. This generally means that a bindparam() will be produced featuring the given value embedded into the construct; the resulting BindParameter object is an instance of ColumnElement. The Python value will ultimately be sent to the DBAPI at execution time as a parameterized argument to the execute() or executemany() methods, after SQLAlchemy type-specific converters (e.g. those provided by any associated TypeEngine objects) are applied to the value.

  • any special object value, typically ORM-level constructs, which feature an accessor called __clause_element__(). The Core expression system looks for this method when an object of otherwise unknown type is passed to a function that is looking to coerce the argument into a ColumnElement and sometimes a SelectBase expression. It is used within the ORM to convert from ORM-specific objects like mapped classes and mapped attributes into Core expression objects.

  • The Python None value is typically interpreted as NULL, which in SQLAlchemy Core produces an instance of null().

A ColumnElement provides the ability to generate new ColumnElement objects using Python expressions. This means that Python operators such as ==, != and < are overloaded to mimic SQL operations, and allow the instantiation of further ColumnElement instances which are composed from other, more fundamental ColumnElement objects. For example, two ColumnClause objects can be added together with the addition operator + to produce a BinaryExpression. Both ColumnClause and BinaryExpression are subclasses of ColumnElement:

  1. >>> from sqlalchemy.sql import column
  2. >>> column('a') + column('b')
  3. <sqlalchemy.sql.expression.BinaryExpression object at 0x101029dd0>
  4. >>> print(column('a') + column('b'))
  5. a + b

See also

Column

column()

Class signature

class sqlalchemy.sql.expression.ColumnElement (sqlalchemy.sql.roles.ColumnArgumentOrKeyRole, sqlalchemy.sql.roles.StatementOptionRole, sqlalchemy.sql.roles.WhereHavingRole, sqlalchemy.sql.roles.BinaryElementRole, sqlalchemy.sql.roles.OrderByRole, sqlalchemy.sql.roles.ColumnsClauseRole, sqlalchemy.sql.roles.LimitOffsetRole, sqlalchemy.sql.roles.DMLColumnRole, sqlalchemy.sql.roles.DDLConstraintColumnRole, sqlalchemy.sql.roles.DDLExpressionRole, sqlalchemy.sql.expression.ColumnOperators, sqlalchemy.sql.expression.ClauseElement)

  1. See also
  2. [How do I render SQL expressions as strings, possibly with bound parameters inlined?]($23f306fd0cdd485d.md#faq-sql-expression-string)
  • method sqlalchemy.sql.expression.ColumnElement.concat(other)

    inherited from the ColumnOperators.concat() method of ColumnOperators

    Implement the ‘concat’ operator.

    In a column context, produces the clause a || b, or uses the concat() operator on MySQL.

  • method sqlalchemy.sql.expression.ColumnElement.contains(other, \*kwargs*)

    inherited from the ColumnOperators.contains() method of ColumnOperators

    Implement the ‘contains’ operator.

    Produces a LIKE expression that tests against a match for the middle of a string value:

    1. column LIKE '%' || <other> || '%'

    E.g.:

    1. stmt = select(sometable).\
    2. where(sometable.c.column.contains("foobar"))

    Since the operator uses LIKE, wildcard characters "%" and "_" that are present inside the <other> expression will behave like wildcards as well. For literal string values, the ColumnOperators.contains.autoescape flag may be set to True to apply escaping to occurrences of these characters within the string value so that they match as themselves and not as wildcard characters. Alternatively, the ColumnOperators.contains.escape parameter will establish a given character as an escape character which can be of use when the target expression is not a literal string.

    • Parameters

      • other – expression to be compared. This is usually a plain string value, but can also be an arbitrary SQL expression. LIKE wildcard characters % and _ are not escaped by default unless the ColumnOperators.contains.autoescape flag is set to True.

      • autoescape

        boolean; when True, establishes an escape character within the LIKE expression, then applies it to all occurrences of "%", "_" and the escape character itself within the comparison value, which is assumed to be a literal string and not a SQL expression.

        An expression such as:

        1. somecolumn.contains("foo%bar", autoescape=True)

        Will render as:

        1. somecolumn LIKE '%' || :param || '%' ESCAPE '/'

        With the value of :param as "foo/%bar".

      • escape

        a character which when given will render with the ESCAPE keyword to establish that character as the escape character. This character can then be placed preceding occurrences of % and _ to allow them to act as themselves and not wildcard characters.

        An expression such as:

        1. somecolumn.contains("foo/%bar", escape="^")

        Will render as:

        1. somecolumn LIKE '%' || :param || '%' ESCAPE '^'

        The parameter may also be combined with ColumnOperators.contains.autoescape:

        1. somecolumn.contains("foo%bar^bat", escape="^", autoescape=True)

        Where above, the given literal parameter will be converted to "foo^%bar^^bat" before being passed to the database.

  1. See also
  2. [`ColumnOperators.startswith()`](#sqlalchemy.sql.expression.ColumnOperators.startswith "sqlalchemy.sql.expression.ColumnOperators.startswith")
  3. [`ColumnOperators.endswith()`](#sqlalchemy.sql.expression.ColumnOperators.endswith "sqlalchemy.sql.expression.ColumnOperators.endswith")
  4. [`ColumnOperators.like()`](#sqlalchemy.sql.expression.ColumnOperators.like "sqlalchemy.sql.expression.ColumnOperators.like")
  • method sqlalchemy.sql.expression.ColumnElement.desc()

    inherited from the ColumnOperators.desc() method of ColumnOperators

    Produce a desc() clause against the parent object.

  • attribute sqlalchemy.sql.expression.ColumnElement.description = None

  • method sqlalchemy.sql.expression.ColumnElement.distinct()

    inherited from the ColumnOperators.distinct() method of ColumnOperators

    Produce a distinct() clause against the parent object.

  • method sqlalchemy.sql.expression.ColumnElement.endswith(other, \*kwargs*)

    inherited from the ColumnOperators.endswith() method of ColumnOperators

    Implement the ‘endswith’ operator.

    Produces a LIKE expression that tests against a match for the end of a string value:

    1. column LIKE '%' || <other>

    E.g.:

    1. stmt = select(sometable).\
    2. where(sometable.c.column.endswith("foobar"))

    Since the operator uses LIKE, wildcard characters "%" and "_" that are present inside the <other> expression will behave like wildcards as well. For literal string values, the ColumnOperators.endswith.autoescape flag may be set to True to apply escaping to occurrences of these characters within the string value so that they match as themselves and not as wildcard characters. Alternatively, the ColumnOperators.endswith.escape parameter will establish a given character as an escape character which can be of use when the target expression is not a literal string.

    • Parameters

      • other – expression to be compared. This is usually a plain string value, but can also be an arbitrary SQL expression. LIKE wildcard characters % and _ are not escaped by default unless the ColumnOperators.endswith.autoescape flag is set to True.

      • autoescape

        boolean; when True, establishes an escape character within the LIKE expression, then applies it to all occurrences of "%", "_" and the escape character itself within the comparison value, which is assumed to be a literal string and not a SQL expression.

        An expression such as:

        1. somecolumn.endswith("foo%bar", autoescape=True)

        Will render as:

        1. somecolumn LIKE '%' || :param ESCAPE '/'

        With the value of :param as "foo/%bar".

      • escape

        a character which when given will render with the ESCAPE keyword to establish that character as the escape character. This character can then be placed preceding occurrences of % and _ to allow them to act as themselves and not wildcard characters.

        An expression such as:

        1. somecolumn.endswith("foo/%bar", escape="^")

        Will render as:

        1. somecolumn LIKE '%' || :param ESCAPE '^'

        The parameter may also be combined with ColumnOperators.endswith.autoescape:

        1. somecolumn.endswith("foo%bar^bat", escape="^", autoescape=True)

        Where above, the given literal parameter will be converted to "foo^%bar^^bat" before being passed to the database.

  1. See also
  2. [`ColumnOperators.startswith()`](#sqlalchemy.sql.expression.ColumnOperators.startswith "sqlalchemy.sql.expression.ColumnOperators.startswith")
  3. [`ColumnOperators.contains()`](#sqlalchemy.sql.expression.ColumnOperators.contains "sqlalchemy.sql.expression.ColumnOperators.contains")
  4. [`ColumnOperators.like()`](#sqlalchemy.sql.expression.ColumnOperators.like "sqlalchemy.sql.expression.ColumnOperators.like")
  • attribute sqlalchemy.sql.expression.ColumnElement.expression

    Return a column expression.

    Part of the inspection interface; returns self.

  • attribute sqlalchemy.sql.expression.ColumnElement.foreign_keys = []

  • method sqlalchemy.sql.expression.ColumnElement.get_children(omit_attrs=(), \*kw*)

    inherited from the ClauseElement.get_children() method of ClauseElement

    Return immediate child Traversible elements of this Traversible.

    This is used for visit traversal.

    **kw may contain flags that change the collection that is returned, for example to return a subset of items in order to cut down on larger traversals, or to return child items from a different context (such as schema-level collections instead of clause-level).

  • method sqlalchemy.sql.expression.ColumnElement.ilike(other, escape=None)

    inherited from the ColumnOperators.ilike() method of ColumnOperators

    Implement the ilike operator, e.g. case insensitive LIKE.

    In a column context, produces an expression either of the form:

    1. lower(a) LIKE lower(other)

    Or on backends that support the ILIKE operator:

    1. a ILIKE other

    E.g.:

    1. stmt = select(sometable).\
    2. where(sometable.c.column.ilike("%foobar%"))
    • Parameters

      • other – expression to be compared

      • escape

        optional escape character, renders the ESCAPE keyword, e.g.:

        1. somecolumn.ilike("foo/%bar", escape="/")
  1. See also
  2. [`ColumnOperators.like()`](#sqlalchemy.sql.expression.ColumnOperators.like "sqlalchemy.sql.expression.ColumnOperators.like")
  • method sqlalchemy.sql.expression.ColumnElement.in_(other)

    inherited from the ColumnOperators.in_() method of ColumnOperators

    Implement the in operator.

    In a column context, produces the clause column IN <other>.

    The given parameter other may be:

    • A list of literal values, e.g.:

      1. stmt.where(column.in_([1, 2, 3]))

      In this calling form, the list of items is converted to a set of bound parameters the same length as the list given:

      1. WHERE COL IN (?, ?, ?)
    • A list of tuples may be provided if the comparison is against a tuple_() containing multiple expressions:

      1. from sqlalchemy import tuple_
      2. stmt.where(tuple_(col1, col2).in_([(1, 10), (2, 20), (3, 30)]))
    • An empty list, e.g.:

      1. stmt.where(column.in_([]))

      In this calling form, the expression renders an “empty set” expression. These expressions are tailored to individual backends and are generally trying to get an empty SELECT statement as a subquery. Such as on SQLite, the expression is:

      1. WHERE col IN (SELECT 1 FROM (SELECT 1) WHERE 1!=1)

      Changed in version 1.4: empty IN expressions now use an execution-time generated SELECT subquery in all cases.

    • A bound parameter, e.g. bindparam(), may be used if it includes the bindparam.expanding flag:

      1. stmt.where(column.in_(bindparam('value', expanding=True)))

      In this calling form, the expression renders a special non-SQL placeholder expression that looks like:

      1. WHERE COL IN ([EXPANDING_value])

      This placeholder expression is intercepted at statement execution time to be converted into the variable number of bound parameter form illustrated earlier. If the statement were executed as:

      1. connection.execute(stmt, {"value": [1, 2, 3]})

      The database would be passed a bound parameter for each value:

      1. WHERE COL IN (?, ?, ?)

      New in version 1.2: added “expanding” bound parameters

      If an empty list is passed, a special “empty list” expression, which is specific to the database in use, is rendered. On SQLite this would be:

      1. WHERE COL IN (SELECT 1 FROM (SELECT 1) WHERE 1!=1)

      New in version 1.3: “expanding” bound parameters now support empty lists

    • a select() construct, which is usually a correlated scalar select:

      1. stmt.where(
      2. column.in_(
      3. select(othertable.c.y).
      4. where(table.c.x == othertable.c.x)
      5. )
      6. )

      In this calling form, ColumnOperators.in_() renders as given:

      1. WHERE COL IN (SELECT othertable.y
      2. FROM othertable WHERE othertable.x = table.x)
    • Parameters

      other – a list of literals, a select() construct, or a bindparam() construct that includes the bindparam.expanding flag set to True.

  • method sqlalchemy.sql.expression.ColumnElement.is_(other)

    inherited from the ColumnOperators.is_() method of ColumnOperators

    Implement the IS operator.

    Normally, IS is generated automatically when comparing to a value of None, which resolves to NULL. However, explicit usage of IS may be desirable if comparing to boolean values on certain platforms.

    See also

    ColumnOperators.is_not()

  • attribute sqlalchemy.sql.expression.ColumnElement.is_clause_element = True

  • method sqlalchemy.sql.expression.ColumnElement.is_distinct_from(other)

    inherited from the ColumnOperators.is_distinct_from() method of ColumnOperators

    Implement the IS DISTINCT FROM operator.

    Renders “a IS DISTINCT FROM b” on most platforms; on some such as SQLite may render “a IS NOT b”.

    New in version 1.1.

  • method sqlalchemy.sql.expression.ColumnElement.is_not(other)

    inherited from the ColumnOperators.is_not() method of ColumnOperators

    Implement the IS NOT operator.

    Normally, IS NOT is generated automatically when comparing to a value of None, which resolves to NULL. However, explicit usage of IS NOT may be desirable if comparing to boolean values on certain platforms.

    Changed in version 1.4: The is_not() operator is renamed from isnot() in previous releases. The previous name remains available for backwards compatibility.

    See also

    ColumnOperators.is_()

  • method sqlalchemy.sql.expression.ColumnElement.is_not_distinct_from(other)

    inherited from the ColumnOperators.is_not_distinct_from() method of ColumnOperators

    Implement the IS NOT DISTINCT FROM operator.

    Renders “a IS NOT DISTINCT FROM b” on most platforms; on some such as SQLite may render “a IS b”.

    Changed in version 1.4: The is_not_distinct_from() operator is renamed from isnot_distinct_from() in previous releases. The previous name remains available for backwards compatibility.

    New in version 1.1.

  • attribute sqlalchemy.sql.expression.ColumnElement.is_selectable = False

  • method sqlalchemy.sql.expression.ColumnElement.isnot(other)

    inherited from the ColumnOperators.isnot() method of ColumnOperators

    Implement the IS NOT operator.

    Normally, IS NOT is generated automatically when comparing to a value of None, which resolves to NULL. However, explicit usage of IS NOT may be desirable if comparing to boolean values on certain platforms.

    Changed in version 1.4: The is_not() operator is renamed from isnot() in previous releases. The previous name remains available for backwards compatibility.

    See also

    ColumnOperators.is_()

  • method sqlalchemy.sql.expression.ColumnElement.isnot_distinct_from(other)

    inherited from the ColumnOperators.isnot_distinct_from() method of ColumnOperators

    Implement the IS NOT DISTINCT FROM operator.

    Renders “a IS NOT DISTINCT FROM b” on most platforms; on some such as SQLite may render “a IS b”.

    Changed in version 1.4: The is_not_distinct_from() operator is renamed from isnot_distinct_from() in previous releases. The previous name remains available for backwards compatibility.

    New in version 1.1.

  • attribute sqlalchemy.sql.expression.ColumnElement.key = None

    The ‘key’ that in some circumstances refers to this object in a Python namespace.

    This typically refers to the “key” of the column as present in the .c collection of a selectable, e.g. sometable.c["somekey"] would return a Column with a .key of “somekey”.

  • method sqlalchemy.sql.expression.ColumnElement.label(name)

    Produce a column label, i.e. <columnname> AS <name>.

    This is a shortcut to the label() function.

    If ‘name’ is None, an anonymous label name will be generated.

  • method sqlalchemy.sql.expression.ColumnElement.like(other, escape=None)

    inherited from the ColumnOperators.like() method of ColumnOperators

    Implement the like operator.

    In a column context, produces the expression:

    1. a LIKE other

    E.g.:

    1. stmt = select(sometable).\
    2. where(sometable.c.column.like("%foobar%"))
    • Parameters

      • other – expression to be compared

      • escape

        optional escape character, renders the ESCAPE keyword, e.g.:

        1. somecolumn.like("foo/%bar", escape="/")
  1. See also
  2. [`ColumnOperators.ilike()`](#sqlalchemy.sql.expression.ColumnOperators.ilike "sqlalchemy.sql.expression.ColumnOperators.ilike")
  1. See also
  2. [Redefining and Creating New Operators]($993b6f7a0d78cd7b.md#types-operators)
  3. [Using custom operators in join conditions]($e1f42b7742e49253.md#relationship-custom-operator)
  • method sqlalchemy.sql.expression.ColumnElement.operate(op, \other, **kwargs*)

    Operate on an argument.

    This is the lowest level of operation, raises NotImplementedError by default.

    Overriding this on a subclass can allow common behavior to be applied to all operations. For example, overriding ColumnOperators to apply func.lower() to the left and right side:

    1. class MyComparator(ColumnOperators):
    2. def operate(self, op, other):
    3. return op(func.lower(self), func.lower(other))
    • Parameters

      • op – Operator callable.

      • *other – the ‘other’ side of the operation. Will be a single scalar for most operations.

      • **kwargs – modifiers. These may be passed by special operators such as ColumnOperators.contains().

  • method sqlalchemy.sql.expression.ColumnElement.params(\optionaldict, **kwargs*)

    inherited from the ClauseElement.params() method of ClauseElement

    Return a copy with bindparam() elements replaced.

    Returns a copy of this ClauseElement with bindparam() elements replaced with values taken from the given dictionary:

    1. >>> clause = column('x') + bindparam('foo')
    2. >>> print(clause.compile().params)
    3. {'foo':None}
    4. >>> print(clause.params({'foo':7}).compile().params)
    5. {'foo':7}
  • attribute sqlalchemy.sql.expression.ColumnElement.primary_key = False

  • attribute sqlalchemy.sql.expression.ColumnElement.proxy_set

  • method sqlalchemy.sql.expression.ColumnElement.regexp_match(pattern, flags=None)

    inherited from the ColumnOperators.regexp_match() method of ColumnOperators

    Implements a database-specific ‘regexp match’ operator.

    E.g.:

    1. stmt = select(table.c.some_column).where(
    2. table.c.some_column.regexp_match('^(b|c)')
    3. )

    ColumnOperators.regexp_match() attempts to resolve to a REGEXP-like function or operator provided by the backend, however the specific regular expression syntax and flags available are not backend agnostic.

    Examples include:

    • PostgreSQL - renders x ~ y or x !~ y when negated.

    • Oracle - renders REGEXP_LIKE(x, y)

    • SQLite - uses SQLite’s REGEXP placeholder operator and calls into the Python re.match() builtin.

    • other backends may provide special implementations.

    • Backends without any special implementation will emit the operator as “REGEXP” or “NOT REGEXP”. This is compatible with SQLite and MySQL, for example.

    Regular expression support is currently implemented for Oracle, PostgreSQL, MySQL and MariaDB. Partial support is available for SQLite. Support among third-party dialects may vary.

    • Parameters

      • pattern – The regular expression pattern string or column clause.

      • flags – Any regular expression string flags to apply. Flags tend to be backend specific. It can be a string or a column clause. Some backends, like PostgreSQL and MariaDB, may alternatively specify the flags as part of the pattern. When using the ignore case flag ‘i’ in PostgreSQL, the ignore case regexp match operator ~* or !~* will be used.

  1. New in version 1.4.
  2. See also
  3. [`ColumnOperators.regexp_replace()`](#sqlalchemy.sql.expression.ColumnOperators.regexp_replace "sqlalchemy.sql.expression.ColumnOperators.regexp_replace")
  • method sqlalchemy.sql.expression.ColumnElement.regexp_replace(pattern, replacement, flags=None)

    inherited from the ColumnOperators.regexp_replace() method of ColumnOperators

    Implements a database-specific ‘regexp replace’ operator.

    E.g.:

    1. stmt = select(
    2. table.c.some_column.regexp_replace(
    3. 'b(..)',
    4. 'XY',
    5. flags='g'
    6. )
    7. )

    ColumnOperators.regexp_replace() attempts to resolve to a REGEXP_REPLACE-like function provided by the backend, that usually emit the function REGEXP_REPLACE(). However, the specific regular expression syntax and flags available are not backend agnostic.

    Regular expression replacement support is currently implemented for Oracle, PostgreSQL, MySQL 8 or greater and MariaDB. Support among third-party dialects may vary.

    • Parameters

      • pattern – The regular expression pattern string or column clause.

      • pattern – The replacement string or column clause.

      • flags – Any regular expression string flags to apply. Flags tend to be backend specific. It can be a string or a column clause. Some backends, like PostgreSQL and MariaDB, may alternatively specify the flags as part of the pattern.

  1. New in version 1.4.
  2. See also
  3. [`ColumnOperators.regexp_match()`](#sqlalchemy.sql.expression.ColumnOperators.regexp_match "sqlalchemy.sql.expression.ColumnOperators.regexp_match")
  • method sqlalchemy.sql.expression.ColumnElement.reverse_operate(op, other, \*kwargs*)

    Reverse operate on an argument.

    Usage is the same as operate().

  • method sqlalchemy.sql.expression.ColumnElement.self_group(against=None)

    Apply a ‘grouping’ to this ClauseElement.

    This method is overridden by subclasses to return a “grouping” construct, i.e. parenthesis. In particular it’s used by “binary” expressions to provide a grouping around themselves when placed into a larger expression, as well as by select() constructs when placed into the FROM clause of another select(). (Note that subqueries should be normally created using the Select.alias() method, as many platforms require nested SELECT statements to be named).

    As expressions are composed together, the application of self_group() is automatic - end-user code should never need to use this method directly. Note that SQLAlchemy’s clause constructs take operator precedence into account - so parenthesis might not be needed, for example, in an expression like x OR (y AND z) - AND takes precedence over OR.

    The base self_group() method of ClauseElement just returns self.

  • method sqlalchemy.sql.expression.ColumnElement.shares_lineage(othercolumn)

    Return True if the given ColumnElement has a common ancestor to this ColumnElement.

  • method sqlalchemy.sql.expression.ColumnElement.startswith(other, \*kwargs*)

    inherited from the ColumnOperators.startswith() method of ColumnOperators

    Implement the startswith operator.

    Produces a LIKE expression that tests against a match for the start of a string value:

    1. column LIKE <other> || '%'

    E.g.:

    1. stmt = select(sometable).\
    2. where(sometable.c.column.startswith("foobar"))

    Since the operator uses LIKE, wildcard characters "%" and "_" that are present inside the <other> expression will behave like wildcards as well. For literal string values, the ColumnOperators.startswith.autoescape flag may be set to True to apply escaping to occurrences of these characters within the string value so that they match as themselves and not as wildcard characters. Alternatively, the ColumnOperators.startswith.escape parameter will establish a given character as an escape character which can be of use when the target expression is not a literal string.

    • Parameters

      • other – expression to be compared. This is usually a plain string value, but can also be an arbitrary SQL expression. LIKE wildcard characters % and _ are not escaped by default unless the ColumnOperators.startswith.autoescape flag is set to True.

      • autoescape

        boolean; when True, establishes an escape character within the LIKE expression, then applies it to all occurrences of "%", "_" and the escape character itself within the comparison value, which is assumed to be a literal string and not a SQL expression.

        An expression such as:

        1. somecolumn.startswith("foo%bar", autoescape=True)

        Will render as:

        1. somecolumn LIKE :param || '%' ESCAPE '/'

        With the value of :param as "foo/%bar".

      • escape

        a character which when given will render with the ESCAPE keyword to establish that character as the escape character. This character can then be placed preceding occurrences of % and _ to allow them to act as themselves and not wildcard characters.

        An expression such as:

        1. somecolumn.startswith("foo/%bar", escape="^")

        Will render as:

        1. somecolumn LIKE :param || '%' ESCAPE '^'

        The parameter may also be combined with ColumnOperators.startswith.autoescape:

        1. somecolumn.startswith("foo%bar^bat", escape="^", autoescape=True)

        Where above, the given literal parameter will be converted to "foo^%bar^^bat" before being passed to the database.

  1. See also
  2. [`ColumnOperators.endswith()`](#sqlalchemy.sql.expression.ColumnOperators.endswith "sqlalchemy.sql.expression.ColumnOperators.endswith")
  3. [`ColumnOperators.contains()`](#sqlalchemy.sql.expression.ColumnOperators.contains "sqlalchemy.sql.expression.ColumnOperators.contains")
  4. [`ColumnOperators.like()`](#sqlalchemy.sql.expression.ColumnOperators.like "sqlalchemy.sql.expression.ColumnOperators.like")

class sqlalchemy.sql.expression.``ColumnOperators

Defines boolean, comparison, and other operators for ColumnElement expressions.

By default, all methods call down to operate() or reverse_operate(), passing in the appropriate operator function from the Python builtin operator module or a SQLAlchemy-specific operator function from sqlalchemy.expression.operators. For example the __eq__ function:

  1. def __eq__(self, other):
  2. return self.operate(operators.eq, other)

Where operators.eq is essentially:

  1. def eq(a, b):
  2. return a == b

The core column expression unit ColumnElement overrides Operators.operate() and others to return further ColumnElement constructs, so that the == operation above is replaced by a clause construct.

See also

Redefining and Creating New Operators

TypeEngine.comparator_factory

ColumnOperators

PropComparator

Class signature

class sqlalchemy.sql.expression.ColumnOperators (sqlalchemy.sql.expression.Operators)

  1. See also
  2. [`ColumnOperators.startswith()`](#sqlalchemy.sql.expression.ColumnOperators.startswith "sqlalchemy.sql.expression.ColumnOperators.startswith")
  3. [`ColumnOperators.endswith()`](#sqlalchemy.sql.expression.ColumnOperators.endswith "sqlalchemy.sql.expression.ColumnOperators.endswith")
  4. [`ColumnOperators.like()`](#sqlalchemy.sql.expression.ColumnOperators.like "sqlalchemy.sql.expression.ColumnOperators.like")
  • method sqlalchemy.sql.expression.ColumnOperators.desc()

    Produce a desc() clause against the parent object.

  • method sqlalchemy.sql.expression.ColumnOperators.distinct()

    Produce a distinct() clause against the parent object.

  • method sqlalchemy.sql.expression.ColumnOperators.endswith(other, \*kwargs*)

    Implement the ‘endswith’ operator.

    Produces a LIKE expression that tests against a match for the end of a string value:

    1. column LIKE '%' || <other>

    E.g.:

    1. stmt = select(sometable).\
    2. where(sometable.c.column.endswith("foobar"))

    Since the operator uses LIKE, wildcard characters "%" and "_" that are present inside the <other> expression will behave like wildcards as well. For literal string values, the ColumnOperators.endswith.autoescape flag may be set to True to apply escaping to occurrences of these characters within the string value so that they match as themselves and not as wildcard characters. Alternatively, the ColumnOperators.endswith.escape parameter will establish a given character as an escape character which can be of use when the target expression is not a literal string.

    • Parameters

      • other – expression to be compared. This is usually a plain string value, but can also be an arbitrary SQL expression. LIKE wildcard characters % and _ are not escaped by default unless the ColumnOperators.endswith.autoescape flag is set to True.

      • autoescape

        boolean; when True, establishes an escape character within the LIKE expression, then applies it to all occurrences of "%", "_" and the escape character itself within the comparison value, which is assumed to be a literal string and not a SQL expression.

        An expression such as:

        1. somecolumn.endswith("foo%bar", autoescape=True)

        Will render as:

        1. somecolumn LIKE '%' || :param ESCAPE '/'

        With the value of :param as "foo/%bar".

      • escape

        a character which when given will render with the ESCAPE keyword to establish that character as the escape character. This character can then be placed preceding occurrences of % and _ to allow them to act as themselves and not wildcard characters.

        An expression such as:

        1. somecolumn.endswith("foo/%bar", escape="^")

        Will render as:

        1. somecolumn LIKE '%' || :param ESCAPE '^'

        The parameter may also be combined with ColumnOperators.endswith.autoescape:

        1. somecolumn.endswith("foo%bar^bat", escape="^", autoescape=True)

        Where above, the given literal parameter will be converted to "foo^%bar^^bat" before being passed to the database.

  1. See also
  2. [`ColumnOperators.startswith()`](#sqlalchemy.sql.expression.ColumnOperators.startswith "sqlalchemy.sql.expression.ColumnOperators.startswith")
  3. [`ColumnOperators.contains()`](#sqlalchemy.sql.expression.ColumnOperators.contains "sqlalchemy.sql.expression.ColumnOperators.contains")
  4. [`ColumnOperators.like()`](#sqlalchemy.sql.expression.ColumnOperators.like "sqlalchemy.sql.expression.ColumnOperators.like")
  • method sqlalchemy.sql.expression.ColumnOperators.ilike(other, escape=None)

    Implement the ilike operator, e.g. case insensitive LIKE.

    In a column context, produces an expression either of the form:

    1. lower(a) LIKE lower(other)

    Or on backends that support the ILIKE operator:

    1. a ILIKE other

    E.g.:

    1. stmt = select(sometable).\
    2. where(sometable.c.column.ilike("%foobar%"))
    • Parameters

      • other – expression to be compared

      • escape

        optional escape character, renders the ESCAPE keyword, e.g.:

        1. somecolumn.ilike("foo/%bar", escape="/")
  1. See also
  2. [`ColumnOperators.like()`](#sqlalchemy.sql.expression.ColumnOperators.like "sqlalchemy.sql.expression.ColumnOperators.like")
  • method sqlalchemy.sql.expression.ColumnOperators.in_(other)

    Implement the in operator.

    In a column context, produces the clause column IN <other>.

    The given parameter other may be:

    • A list of literal values, e.g.:

      1. stmt.where(column.in_([1, 2, 3]))

      In this calling form, the list of items is converted to a set of bound parameters the same length as the list given:

      1. WHERE COL IN (?, ?, ?)
    • A list of tuples may be provided if the comparison is against a tuple_() containing multiple expressions:

      1. from sqlalchemy import tuple_
      2. stmt.where(tuple_(col1, col2).in_([(1, 10), (2, 20), (3, 30)]))
    • An empty list, e.g.:

      1. stmt.where(column.in_([]))

      In this calling form, the expression renders an “empty set” expression. These expressions are tailored to individual backends and are generally trying to get an empty SELECT statement as a subquery. Such as on SQLite, the expression is:

      1. WHERE col IN (SELECT 1 FROM (SELECT 1) WHERE 1!=1)

      Changed in version 1.4: empty IN expressions now use an execution-time generated SELECT subquery in all cases.

    • A bound parameter, e.g. bindparam(), may be used if it includes the bindparam.expanding flag:

      1. stmt.where(column.in_(bindparam('value', expanding=True)))

      In this calling form, the expression renders a special non-SQL placeholder expression that looks like:

      1. WHERE COL IN ([EXPANDING_value])

      This placeholder expression is intercepted at statement execution time to be converted into the variable number of bound parameter form illustrated earlier. If the statement were executed as:

      1. connection.execute(stmt, {"value": [1, 2, 3]})

      The database would be passed a bound parameter for each value:

      1. WHERE COL IN (?, ?, ?)

      New in version 1.2: added “expanding” bound parameters

      If an empty list is passed, a special “empty list” expression, which is specific to the database in use, is rendered. On SQLite this would be:

      1. WHERE COL IN (SELECT 1 FROM (SELECT 1) WHERE 1!=1)

      New in version 1.3: “expanding” bound parameters now support empty lists

    • a select() construct, which is usually a correlated scalar select:

      1. stmt.where(
      2. column.in_(
      3. select(othertable.c.y).
      4. where(table.c.x == othertable.c.x)
      5. )
      6. )

      In this calling form, ColumnOperators.in_() renders as given:

      1. WHERE COL IN (SELECT othertable.y
      2. FROM othertable WHERE othertable.x = table.x)
    • Parameters

      other – a list of literals, a select() construct, or a bindparam() construct that includes the bindparam.expanding flag set to True.

  • method sqlalchemy.sql.expression.ColumnOperators.is_(other)

    Implement the IS operator.

    Normally, IS is generated automatically when comparing to a value of None, which resolves to NULL. However, explicit usage of IS may be desirable if comparing to boolean values on certain platforms.

    See also

    ColumnOperators.is_not()

  • method sqlalchemy.sql.expression.ColumnOperators.is_distinct_from(other)

    Implement the IS DISTINCT FROM operator.

    Renders “a IS DISTINCT FROM b” on most platforms; on some such as SQLite may render “a IS NOT b”.

    New in version 1.1.

  • method sqlalchemy.sql.expression.ColumnOperators.is_not(other)

    Implement the IS NOT operator.

    Normally, IS NOT is generated automatically when comparing to a value of None, which resolves to NULL. However, explicit usage of IS NOT may be desirable if comparing to boolean values on certain platforms.

    Changed in version 1.4: The is_not() operator is renamed from isnot() in previous releases. The previous name remains available for backwards compatibility.

    See also

    ColumnOperators.is_()

  • method sqlalchemy.sql.expression.ColumnOperators.is_not_distinct_from(other)

    Implement the IS NOT DISTINCT FROM operator.

    Renders “a IS NOT DISTINCT FROM b” on most platforms; on some such as SQLite may render “a IS b”.

    Changed in version 1.4: The is_not_distinct_from() operator is renamed from isnot_distinct_from() in previous releases. The previous name remains available for backwards compatibility.

    New in version 1.1.

  • method sqlalchemy.sql.expression.ColumnOperators.isnot(other)

    Implement the IS NOT operator.

    Normally, IS NOT is generated automatically when comparing to a value of None, which resolves to NULL. However, explicit usage of IS NOT may be desirable if comparing to boolean values on certain platforms.

    Changed in version 1.4: The is_not() operator is renamed from isnot() in previous releases. The previous name remains available for backwards compatibility.

    See also

    ColumnOperators.is_()

  • method sqlalchemy.sql.expression.ColumnOperators.isnot_distinct_from(other)

    Implement the IS NOT DISTINCT FROM operator.

    Renders “a IS NOT DISTINCT FROM b” on most platforms; on some such as SQLite may render “a IS b”.

    Changed in version 1.4: The is_not_distinct_from() operator is renamed from isnot_distinct_from() in previous releases. The previous name remains available for backwards compatibility.

    New in version 1.1.

  • method sqlalchemy.sql.expression.ColumnOperators.like(other, escape=None)

    Implement the like operator.

    In a column context, produces the expression:

    1. a LIKE other

    E.g.:

    1. stmt = select(sometable).\
    2. where(sometable.c.column.like("%foobar%"))
    • Parameters

      • other – expression to be compared

      • escape

        optional escape character, renders the ESCAPE keyword, e.g.:

        1. somecolumn.like("foo/%bar", escape="/")
  1. See also
  2. [`ColumnOperators.ilike()`](#sqlalchemy.sql.expression.ColumnOperators.ilike "sqlalchemy.sql.expression.ColumnOperators.ilike")
  • method sqlalchemy.sql.expression.ColumnOperators.match(other, \*kwargs*)

    Implements a database-specific ‘match’ operator.

    ColumnOperators.match() attempts to resolve to a MATCH-like function or operator provided by the backend. Examples include:

    • PostgreSQL - renders x @@ to_tsquery(y)

    • MySQL - renders MATCH (x) AGAINST (y IN BOOLEAN MODE)

    • Oracle - renders CONTAINS(x, y)

    • other backends may provide special implementations.

    • Backends without any special implementation will emit the operator as “MATCH”. This is compatible with SQLite, for example.

  • method sqlalchemy.sql.expression.ColumnOperators.not_ilike(other, escape=None)

    implement the NOT ILIKE operator.

    This is equivalent to using negation with ColumnOperators.ilike(), i.e. ~x.ilike(y).

    Changed in version 1.4: The not_ilike() operator is renamed from notilike() in previous releases. The previous name remains available for backwards compatibility.

    See also

    ColumnOperators.ilike()

  • method sqlalchemy.sql.expression.ColumnOperators.not_in(other)

    implement the NOT IN operator.

    This is equivalent to using negation with ColumnOperators.in_(), i.e. ~x.in_(y).

    In the case that other is an empty sequence, the compiler produces an “empty not in” expression. This defaults to the expression “1 = 1” to produce true in all cases. The create_engine.empty_in_strategy may be used to alter this behavior.

    Changed in version 1.4: The not_in() operator is renamed from notin_() in previous releases. The previous name remains available for backwards compatibility.

    Changed in version 1.2: The ColumnOperators.in_() and ColumnOperators.not_in() operators now produce a “static” expression for an empty IN sequence by default.

    See also

    ColumnOperators.in_()

  • method sqlalchemy.sql.expression.ColumnOperators.not_like(other, escape=None)

    implement the NOT LIKE operator.

    This is equivalent to using negation with ColumnOperators.like(), i.e. ~x.like(y).

    Changed in version 1.4: The not_like() operator is renamed from notlike() in previous releases. The previous name remains available for backwards compatibility.

    See also

    ColumnOperators.like()

  • method sqlalchemy.sql.expression.ColumnOperators.notilike(other, escape=None)

    implement the NOT ILIKE operator.

    This is equivalent to using negation with ColumnOperators.ilike(), i.e. ~x.ilike(y).

    Changed in version 1.4: The not_ilike() operator is renamed from notilike() in previous releases. The previous name remains available for backwards compatibility.

    See also

    ColumnOperators.ilike()

  • method sqlalchemy.sql.expression.ColumnOperators.notin_(other)

    implement the NOT IN operator.

    This is equivalent to using negation with ColumnOperators.in_(), i.e. ~x.in_(y).

    In the case that other is an empty sequence, the compiler produces an “empty not in” expression. This defaults to the expression “1 = 1” to produce true in all cases. The create_engine.empty_in_strategy may be used to alter this behavior.

    Changed in version 1.4: The not_in() operator is renamed from notin_() in previous releases. The previous name remains available for backwards compatibility.

    Changed in version 1.2: The ColumnOperators.in_() and ColumnOperators.not_in() operators now produce a “static” expression for an empty IN sequence by default.

    See also

    ColumnOperators.in_()

  • method sqlalchemy.sql.expression.ColumnOperators.notlike(other, escape=None)

    implement the NOT LIKE operator.

    This is equivalent to using negation with ColumnOperators.like(), i.e. ~x.like(y).

    Changed in version 1.4: The not_like() operator is renamed from notlike() in previous releases. The previous name remains available for backwards compatibility.

    See also

    ColumnOperators.like()

  • method sqlalchemy.sql.expression.ColumnOperators.nulls_first()

    Produce a nulls_first() clause against the parent object.

    Changed in version 1.4: The nulls_first() operator is renamed from nullsfirst() in previous releases. The previous name remains available for backwards compatibility.

  • method sqlalchemy.sql.expression.ColumnOperators.nulls_last()

    Produce a nulls_last() clause against the parent object.

    Changed in version 1.4: The nulls_last() operator is renamed from nullslast() in previous releases. The previous name remains available for backwards compatibility.

  • method sqlalchemy.sql.expression.ColumnOperators.nullsfirst()

    Produce a nulls_first() clause against the parent object.

    Changed in version 1.4: The nulls_first() operator is renamed from nullsfirst() in previous releases. The previous name remains available for backwards compatibility.

  • method sqlalchemy.sql.expression.ColumnOperators.nullslast()

    Produce a nulls_last() clause against the parent object.

    Changed in version 1.4: The nulls_last() operator is renamed from nullslast() in previous releases. The previous name remains available for backwards compatibility.

  • method sqlalchemy.sql.expression.ColumnOperators.op(opstring, precedence=0, is_comparison=False, return_type=None)

    inherited from the Operators.op() method of Operators

    Produce a generic operator function.

    e.g.:

    1. somecolumn.op("*")(5)

    produces:

    1. somecolumn * 5

    This function can also be used to make bitwise operators explicit. For example:

    1. somecolumn.op('&')(0xff)

    is a bitwise AND of the value in somecolumn.

    • Parameters

      • operator – a string which will be output as the infix operator between this element and the expression passed to the generated function.

      • precedence – precedence to apply to the operator, when parenthesizing expressions. A lower number will cause the expression to be parenthesized when applied against another operator with higher precedence. The default value of 0 is lower than all operators except for the comma (,) and AS operators. A value of 100 will be higher or equal to all operators, and -100 will be lower than or equal to all operators.

      • is_comparison

        if True, the operator will be considered as a “comparison” operator, that is which evaluates to a boolean true/false value, like ==, >, etc. This flag should be set so that ORM relationships can establish that the operator is a comparison operator when used in a custom join condition.

        New in version 0.9.2: - added the Operators.op.is_comparison flag.

      • return_type – a TypeEngine class or object that will force the return type of an expression produced by this operator to be of that type. By default, operators that specify Operators.op.is_comparison will resolve to Boolean, and those that do not will be of the same type as the left-hand operand.

  1. See also
  2. [Redefining and Creating New Operators]($993b6f7a0d78cd7b.md#types-operators)
  3. [Using custom operators in join conditions]($e1f42b7742e49253.md#relationship-custom-operator)
  • method sqlalchemy.sql.expression.ColumnOperators.operate(op, \other, **kwargs*)

    inherited from the Operators.operate() method of Operators

    Operate on an argument.

    This is the lowest level of operation, raises NotImplementedError by default.

    Overriding this on a subclass can allow common behavior to be applied to all operations. For example, overriding ColumnOperators to apply func.lower() to the left and right side:

    1. class MyComparator(ColumnOperators):
    2. def operate(self, op, other):
    3. return op(func.lower(self), func.lower(other))
    • Parameters

      • op – Operator callable.

      • *other – the ‘other’ side of the operation. Will be a single scalar for most operations.

      • **kwargs – modifiers. These may be passed by special operators such as ColumnOperators.contains().

  • method sqlalchemy.sql.expression.ColumnOperators.regexp_match(pattern, flags=None)

    Implements a database-specific ‘regexp match’ operator.

    E.g.:

    1. stmt = select(table.c.some_column).where(
    2. table.c.some_column.regexp_match('^(b|c)')
    3. )

    ColumnOperators.regexp_match() attempts to resolve to a REGEXP-like function or operator provided by the backend, however the specific regular expression syntax and flags available are not backend agnostic.

    Examples include:

    • PostgreSQL - renders x ~ y or x !~ y when negated.

    • Oracle - renders REGEXP_LIKE(x, y)

    • SQLite - uses SQLite’s REGEXP placeholder operator and calls into the Python re.match() builtin.

    • other backends may provide special implementations.

    • Backends without any special implementation will emit the operator as “REGEXP” or “NOT REGEXP”. This is compatible with SQLite and MySQL, for example.

    Regular expression support is currently implemented for Oracle, PostgreSQL, MySQL and MariaDB. Partial support is available for SQLite. Support among third-party dialects may vary.

    • Parameters

      • pattern – The regular expression pattern string or column clause.

      • flags – Any regular expression string flags to apply. Flags tend to be backend specific. It can be a string or a column clause. Some backends, like PostgreSQL and MariaDB, may alternatively specify the flags as part of the pattern. When using the ignore case flag ‘i’ in PostgreSQL, the ignore case regexp match operator ~* or !~* will be used.

  1. New in version 1.4.
  2. See also
  3. [`ColumnOperators.regexp_replace()`](#sqlalchemy.sql.expression.ColumnOperators.regexp_replace "sqlalchemy.sql.expression.ColumnOperators.regexp_replace")
  • method sqlalchemy.sql.expression.ColumnOperators.regexp_replace(pattern, replacement, flags=None)

    Implements a database-specific ‘regexp replace’ operator.

    E.g.:

    1. stmt = select(
    2. table.c.some_column.regexp_replace(
    3. 'b(..)',
    4. 'XY',
    5. flags='g'
    6. )
    7. )

    ColumnOperators.regexp_replace() attempts to resolve to a REGEXP_REPLACE-like function provided by the backend, that usually emit the function REGEXP_REPLACE(). However, the specific regular expression syntax and flags available are not backend agnostic.

    Regular expression replacement support is currently implemented for Oracle, PostgreSQL, MySQL 8 or greater and MariaDB. Support among third-party dialects may vary.

    • Parameters

      • pattern – The regular expression pattern string or column clause.

      • pattern – The replacement string or column clause.

      • flags – Any regular expression string flags to apply. Flags tend to be backend specific. It can be a string or a column clause. Some backends, like PostgreSQL and MariaDB, may alternatively specify the flags as part of the pattern.

  1. New in version 1.4.
  2. See also
  3. [`ColumnOperators.regexp_match()`](#sqlalchemy.sql.expression.ColumnOperators.regexp_match "sqlalchemy.sql.expression.ColumnOperators.regexp_match")
  • method sqlalchemy.sql.expression.ColumnOperators.reverse_operate(op, other, \*kwargs*)

    inherited from the Operators.reverse_operate() method of Operators

    Reverse operate on an argument.

    Usage is the same as operate().

  • method sqlalchemy.sql.expression.ColumnOperators.startswith(other, \*kwargs*)

    Implement the startswith operator.

    Produces a LIKE expression that tests against a match for the start of a string value:

    1. column LIKE <other> || '%'

    E.g.:

    1. stmt = select(sometable).\
    2. where(sometable.c.column.startswith("foobar"))

    Since the operator uses LIKE, wildcard characters "%" and "_" that are present inside the <other> expression will behave like wildcards as well. For literal string values, the ColumnOperators.startswith.autoescape flag may be set to True to apply escaping to occurrences of these characters within the string value so that they match as themselves and not as wildcard characters. Alternatively, the ColumnOperators.startswith.escape parameter will establish a given character as an escape character which can be of use when the target expression is not a literal string.

    • Parameters

      • other – expression to be compared. This is usually a plain string value, but can also be an arbitrary SQL expression. LIKE wildcard characters % and _ are not escaped by default unless the ColumnOperators.startswith.autoescape flag is set to True.

      • autoescape

        boolean; when True, establishes an escape character within the LIKE expression, then applies it to all occurrences of "%", "_" and the escape character itself within the comparison value, which is assumed to be a literal string and not a SQL expression.

        An expression such as:

        1. somecolumn.startswith("foo%bar", autoescape=True)

        Will render as:

        1. somecolumn LIKE :param || '%' ESCAPE '/'

        With the value of :param as "foo/%bar".

      • escape

        a character which when given will render with the ESCAPE keyword to establish that character as the escape character. This character can then be placed preceding occurrences of % and _ to allow them to act as themselves and not wildcard characters.

        An expression such as:

        1. somecolumn.startswith("foo/%bar", escape="^")

        Will render as:

        1. somecolumn LIKE :param || '%' ESCAPE '^'

        The parameter may also be combined with ColumnOperators.startswith.autoescape:

        1. somecolumn.startswith("foo%bar^bat", escape="^", autoescape=True)

        Where above, the given literal parameter will be converted to "foo^%bar^^bat" before being passed to the database.

  1. See also
  2. [`ColumnOperators.endswith()`](#sqlalchemy.sql.expression.ColumnOperators.endswith "sqlalchemy.sql.expression.ColumnOperators.endswith")
  3. [`ColumnOperators.contains()`](#sqlalchemy.sql.expression.ColumnOperators.contains "sqlalchemy.sql.expression.ColumnOperators.contains")
  4. [`ColumnOperators.like()`](#sqlalchemy.sql.expression.ColumnOperators.like "sqlalchemy.sql.expression.ColumnOperators.like")

class sqlalchemy.sql.base.``DialectKWArgs

Establish the ability for a class to have dialect-specific arguments with defaults and constructor validation.

The DialectKWArgs interacts with the DefaultDialect.construct_arguments present on a dialect.

See also

DefaultDialect.construct_arguments

  • method sqlalchemy.sql.base.DialectKWArgs.classmethod argument_for(dialect_name, argument_name, default)

    Add a new kind of dialect-specific keyword argument for this class.

    E.g.:

    1. Index.argument_for("mydialect", "length", None)
    2. some_index = Index('a', 'b', mydialect_length=5)

    The DialectKWArgs.argument_for() method is a per-argument way adding extra arguments to the DefaultDialect.construct_arguments dictionary. This dictionary provides a list of argument names accepted by various schema-level constructs on behalf of a dialect.

    New dialects should typically specify this dictionary all at once as a data member of the dialect class. The use case for ad-hoc addition of argument names is typically for end-user code that is also using a custom compilation scheme which consumes the additional arguments.

    • Parameters

      • dialect_name – name of a dialect. The dialect must be locatable, else a NoSuchModuleError is raised. The dialect must also include an existing DefaultDialect.construct_arguments collection, indicating that it participates in the keyword-argument validation and default system, else ArgumentError is raised. If the dialect does not include this collection, then any keyword argument can be specified on behalf of this dialect already. All dialects packaged within SQLAlchemy include this collection, however for third party dialects, support may vary.

      • argument_name – name of the parameter.

      • default – default value of the parameter.

  1. New in version 0.9.4.
  • attribute sqlalchemy.sql.base.DialectKWArgs.dialect_kwargs

    A collection of keyword arguments specified as dialect-specific options to this construct.

    The arguments are present here in their original <dialect>_<kwarg> format. Only arguments that were actually passed are included; unlike the DialectKWArgs.dialect_options collection, which contains all options known by this dialect including defaults.

    The collection is also writable; keys are accepted of the form <dialect>_<kwarg> where the value will be assembled into the list of options.

    New in version 0.9.2.

    Changed in version 0.9.4: The DialectKWArgs.dialect_kwargs collection is now writable.

    See also

    DialectKWArgs.dialect_options - nested dictionary form

  • attribute sqlalchemy.sql.base.DialectKWArgs.dialect_options

    A collection of keyword arguments specified as dialect-specific options to this construct.

    This is a two-level nested registry, keyed to <dialect_name> and <argument_name>. For example, the postgresql_where argument would be locatable as:

    1. arg = my_object.dialect_options['postgresql']['where']

    New in version 0.9.2.

    See also

    DialectKWArgs.dialect_kwargs - flat dictionary form

  • attribute sqlalchemy.sql.base.DialectKWArgs.kwargs

    A synonym for DialectKWArgs.dialect_kwargs.

class sqlalchemy.sql.expression.``Extract(field, expr, \*kwargs*)

Represent a SQL EXTRACT clause, extract(field FROM expr).

Class signature

class sqlalchemy.sql.expression.Extract (sqlalchemy.sql.expression.ColumnElement)

class sqlalchemy.sql.expression.``False_(\arg, **kw*)

Represent the false keyword, or equivalent, in a SQL statement.

False_ is accessed as a constant via the false() function.

Class signature

class sqlalchemy.sql.expression.False_ (sqlalchemy.sql.expression.SingletonConstant, sqlalchemy.sql.roles.ConstExprRole, sqlalchemy.sql.expression.ColumnElement)

class sqlalchemy.sql.expression.``FunctionFilter(func, \criterion*)

Represent a function FILTER clause.

This is a special operator against aggregate and window functions, which controls which rows are passed to it. It’s supported only by certain database backends.

Invocation of FunctionFilter is via FunctionElement.filter():

  1. func.count(1).filter(True)

New in version 1.0.0.

See also

FunctionElement.filter()

Class signature

class sqlalchemy.sql.expression.FunctionFilter (sqlalchemy.sql.expression.ColumnElement)

  • method sqlalchemy.sql.expression.FunctionFilter.__init__(func, \criterion*)

    Construct a new FunctionFilter object.

    This constructor is mirrored as a public API function; see sqlalchemy.sql.expression.funcfilter() for a full usage and argument description.

  • method sqlalchemy.sql.expression.FunctionFilter.filter(\criterion*)

    Produce an additional FILTER against the function.

    This method adds additional criteria to the initial criteria set up by FunctionElement.filter().

    Multiple criteria are joined together at SQL render time via AND.

  • method sqlalchemy.sql.expression.FunctionFilter.over(partition_by=None, order_by=None, range_=None, rows=None)

    Produce an OVER clause against this filtered function.

    Used against aggregate or so-called “window” functions, for database backends that support window functions.

    The expression:

    1. func.rank().filter(MyClass.y > 5).over(order_by='x')

    is shorthand for:

    1. from sqlalchemy import over, funcfilter
    2. over(funcfilter(func.rank(), MyClass.y > 5), order_by='x')

    See over() for a full description.

  • method sqlalchemy.sql.expression.FunctionFilter.self_group(against=None)

    Apply a ‘grouping’ to this ClauseElement.

    This method is overridden by subclasses to return a “grouping” construct, i.e. parenthesis. In particular it’s used by “binary” expressions to provide a grouping around themselves when placed into a larger expression, as well as by select() constructs when placed into the FROM clause of another select(). (Note that subqueries should be normally created using the Select.alias() method, as many platforms require nested SELECT statements to be named).

    As expressions are composed together, the application of self_group() is automatic - end-user code should never need to use this method directly. Note that SQLAlchemy’s clause constructs take operator precedence into account - so parenthesis might not be needed, for example, in an expression like x OR (y AND z) - AND takes precedence over OR.

    The base self_group() method of ClauseElement just returns self.

class sqlalchemy.sql.expression.``Label(name, element, type_=None)

Represents a column label (AS).

Represent a label, as typically applied to any column-level element using the AS sql keyword.

Class signature

class sqlalchemy.sql.expression.Label (sqlalchemy.sql.roles.LabeledColumnExprRole, sqlalchemy.sql.expression.ColumnElement)

  • method sqlalchemy.sql.expression.Label.__init__(name, element, type_=None)

    Construct a new Label object.

    This constructor is mirrored as a public API function; see sqlalchemy.sql.expression.label() for a full usage and argument description.

  • attribute sqlalchemy.sql.expression.Label.foreign_keys

  • attribute sqlalchemy.sql.expression.Label.primary_key

  • method sqlalchemy.sql.expression.Label.self_group(against=None)

    Apply a ‘grouping’ to this ClauseElement.

    This method is overridden by subclasses to return a “grouping” construct, i.e. parenthesis. In particular it’s used by “binary” expressions to provide a grouping around themselves when placed into a larger expression, as well as by select() constructs when placed into the FROM clause of another select(). (Note that subqueries should be normally created using the Select.alias() method, as many platforms require nested SELECT statements to be named).

    As expressions are composed together, the application of self_group() is automatic - end-user code should never need to use this method directly. Note that SQLAlchemy’s clause constructs take operator precedence into account - so parenthesis might not be needed, for example, in an expression like x OR (y AND z) - AND takes precedence over OR.

    The base self_group() method of ClauseElement just returns self.

class sqlalchemy.sql.expression.``LambdaElement(fn, role, opts=<class ‘sqlalchemy.sql.lambdas.LambdaOptions’>, apply_propagate_attrs=None)

A SQL construct where the state is stored as an un-invoked lambda.

The LambdaElement is produced transparently whenever passing lambda expressions into SQL constructs, such as:

  1. stmt = select(table).where(lambda: table.c.col == parameter)

The LambdaElement is the base of the StatementLambdaElement which represents a full statement within a lambda.

New in version 1.4.

See also

Using Lambdas to add significant speed gains to statement production

Class signature

class sqlalchemy.sql.expression.LambdaElement (sqlalchemy.sql.expression.ClauseElement)

class sqlalchemy.sql.expression.``Null(\arg, **kw*)

Represent the NULL keyword in a SQL statement.

Null is accessed as a constant via the null() function.

Class signature

class sqlalchemy.sql.expression.Null (sqlalchemy.sql.expression.SingletonConstant, sqlalchemy.sql.roles.ConstExprRole, sqlalchemy.sql.expression.ColumnElement)

class sqlalchemy.sql.expression.``Operators

Base of comparison and logical operators.

Implements base methods Operators.operate() and Operators.reverse_operate(), as well as Operators.__and__(), Operators.__or__(), Operators.__invert__().

Usually is used via its most common subclass ColumnOperators.

  • method sqlalchemy.sql.expression.Operators.__and__(other)

    Implement the & operator.

    When used with SQL expressions, results in an AND operation, equivalent to and_(), that is:

    1. a & b

    is equivalent to:

    1. from sqlalchemy import and_
    2. and_(a, b)

    Care should be taken when using & regarding operator precedence; the & operator has the highest precedence. The operands should be enclosed in parenthesis if they contain further sub expressions:

    1. (a == 2) & (b == 4)
  • method sqlalchemy.sql.expression.Operators.__invert__()

    Implement the ~ operator.

    When used with SQL expressions, results in a NOT operation, equivalent to not_(), that is:

    1. ~a

    is equivalent to:

    1. from sqlalchemy import not_
    2. not_(a)
  • method sqlalchemy.sql.expression.Operators.__or__(other)

    Implement the | operator.

    When used with SQL expressions, results in an OR operation, equivalent to or_(), that is:

    1. a | b

    is equivalent to:

    1. from sqlalchemy import or_
    2. or_(a, b)

    Care should be taken when using | regarding operator precedence; the | operator has the highest precedence. The operands should be enclosed in parenthesis if they contain further sub expressions:

    1. (a == 2) | (b == 4)
  • method sqlalchemy.sql.expression.Operators.bool_op(opstring, precedence=0)

    Return a custom boolean operator.

    This method is shorthand for calling Operators.op() and passing the Operators.op.is_comparison flag with True.

    See also

    Operators.op()

  • method sqlalchemy.sql.expression.Operators.op(opstring, precedence=0, is_comparison=False, return_type=None)

    Produce a generic operator function.

    e.g.:

    1. somecolumn.op("*")(5)

    produces:

    1. somecolumn * 5

    This function can also be used to make bitwise operators explicit. For example:

    1. somecolumn.op('&')(0xff)

    is a bitwise AND of the value in somecolumn.

    • Parameters

      • operator – a string which will be output as the infix operator between this element and the expression passed to the generated function.

      • precedence – precedence to apply to the operator, when parenthesizing expressions. A lower number will cause the expression to be parenthesized when applied against another operator with higher precedence. The default value of 0 is lower than all operators except for the comma (,) and AS operators. A value of 100 will be higher or equal to all operators, and -100 will be lower than or equal to all operators.

      • is_comparison

        if True, the operator will be considered as a “comparison” operator, that is which evaluates to a boolean true/false value, like ==, >, etc. This flag should be set so that ORM relationships can establish that the operator is a comparison operator when used in a custom join condition.

        New in version 0.9.2: - added the Operators.op.is_comparison flag.

      • return_type – a TypeEngine class or object that will force the return type of an expression produced by this operator to be of that type. By default, operators that specify Operators.op.is_comparison will resolve to Boolean, and those that do not will be of the same type as the left-hand operand.

  1. See also
  2. [Redefining and Creating New Operators]($993b6f7a0d78cd7b.md#types-operators)
  3. [Using custom operators in join conditions]($e1f42b7742e49253.md#relationship-custom-operator)
  • method sqlalchemy.sql.expression.Operators.operate(op, \other, **kwargs*)

    Operate on an argument.

    This is the lowest level of operation, raises NotImplementedError by default.

    Overriding this on a subclass can allow common behavior to be applied to all operations. For example, overriding ColumnOperators to apply func.lower() to the left and right side:

    1. class MyComparator(ColumnOperators):
    2. def operate(self, op, other):
    3. return op(func.lower(self), func.lower(other))
    • Parameters

      • op – Operator callable.

      • *other – the ‘other’ side of the operation. Will be a single scalar for most operations.

      • **kwargs – modifiers. These may be passed by special operators such as ColumnOperators.contains().

class sqlalchemy.sql.expression.``Over(element, partition_by=None, order_by=None, range_=None, rows=None)

Represent an OVER clause.

This is a special operator against a so-called “window” function, as well as any aggregate function, which produces results relative to the result set itself. It’s supported only by certain database backends.

Class signature

class sqlalchemy.sql.expression.Over (sqlalchemy.sql.expression.ColumnElement)

class sqlalchemy.sql.expression.``StatementLambdaElement(fn, role, opts=<class ‘sqlalchemy.sql.lambdas.LambdaOptions’>, apply_propagate_attrs=None)

Represent a composable SQL statement as a LambdaElement.

The StatementLambdaElement is constructed using the lambda_stmt() function:

  1. from sqlalchemy import lambda_stmt
  2. stmt = lambda_stmt(lambda: select(table))

Once constructed, additional criteria can be built onto the statement by adding subsequent lambdas, which accept the existing statement object as a single parameter:

  1. stmt += lambda s: s.where(table.c.col == parameter)

New in version 1.4.

See also

Using Lambdas to add significant speed gains to statement production

Class signature

class sqlalchemy.sql.expression.StatementLambdaElement (sqlalchemy.sql.roles.AllowsLambdaRole, sqlalchemy.sql.lambdas.LambdaElement)

  • method sqlalchemy.sql.expression.StatementLambdaElement.add_criteria(other, enable_tracking=True, track_on=None, track_closure_variables=True, track_bound_values=True)

    Add new criteria to this StatementLambdaElement.

    E.g.:

    1. >>> def my_stmt(parameter):
    2. ... stmt = lambda_stmt(
    3. ... lambda: select(table.c.x, table.c.y),
    4. ... )
    5. ... stmt = stmt.add_criteria(
    6. ... lambda: table.c.x > parameter
    7. ... )
    8. ... return stmt

    The StatementLambdaElement.add_criteria() method is equivalent to using the Python addition operator to add a new lambda, except that additional arguments may be added including track_closure_values and track_on:

    1. >>> def my_stmt(self, foo):
    2. ... stmt = lambda_stmt(
    3. ... lambda: select(func.max(foo.x, foo.y)),
    4. ... track_closure_variables=False
    5. ... )
    6. ... stmt = stmt.add_criteria(
    7. ... lambda: self.where_criteria,
    8. ... track_on=[self]
    9. ... )
    10. ... return stmt

    See lambda_stmt() for a description of the parameters accepted.

  • method sqlalchemy.sql.expression.StatementLambdaElement.spoil()

    Return a new StatementLambdaElement that will run all lambdas unconditionally each time.

class sqlalchemy.sql.expression.``TextClause(text, bind=None)

Represent a literal SQL text fragment.

E.g.:

  1. from sqlalchemy import text
  2. t = text("SELECT * FROM users")
  3. result = connection.execute(t)

The TextClause construct is produced using the text() function; see that function for full documentation.

See also

text()

Class signature

class sqlalchemy.sql.expression.TextClause (sqlalchemy.sql.roles.DDLConstraintColumnRole, sqlalchemy.sql.roles.DDLExpressionRole, sqlalchemy.sql.roles.StatementOptionRole, sqlalchemy.sql.roles.WhereHavingRole, sqlalchemy.sql.roles.OrderByRole, sqlalchemy.sql.roles.FromClauseRole, sqlalchemy.sql.roles.SelectStatementRole, sqlalchemy.sql.roles.BinaryElementRole, sqlalchemy.sql.roles.InElementRole, sqlalchemy.sql.expression.Executable, sqlalchemy.sql.expression.ClauseElement)

  • method sqlalchemy.sql.expression.TextClause.bindparams(\binds, **names_to_values*)

    Establish the values and/or types of bound parameters within this TextClause construct.

    Given a text construct such as:

    1. from sqlalchemy import text
    2. stmt = text("SELECT id, name FROM user WHERE name=:name "
    3. "AND timestamp=:timestamp")

    the TextClause.bindparams() method can be used to establish the initial value of :name and :timestamp, using simple keyword arguments:

    1. stmt = stmt.bindparams(name='jack',
    2. timestamp=datetime.datetime(2012, 10, 8, 15, 12, 5))

    Where above, new BindParameter objects will be generated with the names name and timestamp, and values of jack and datetime.datetime(2012, 10, 8, 15, 12, 5), respectively. The types will be inferred from the values given, in this case String and DateTime.

    When specific typing behavior is needed, the positional *binds argument can be used in which to specify bindparam() constructs directly. These constructs must include at least the key argument, then an optional value and type:

    1. from sqlalchemy import bindparam
    2. stmt = stmt.bindparams(
    3. bindparam('name', value='jack', type_=String),
    4. bindparam('timestamp', type_=DateTime)
    5. )

    Above, we specified the type of DateTime for the timestamp bind, and the type of String for the name bind. In the case of name we also set the default value of "jack".

    Additional bound parameters can be supplied at statement execution time, e.g.:

    1. result = connection.execute(stmt,
    2. timestamp=datetime.datetime(2012, 10, 8, 15, 12, 5))

    The TextClause.bindparams() method can be called repeatedly, where it will re-use existing BindParameter objects to add new information. For example, we can call TextClause.bindparams() first with typing information, and a second time with value information, and it will be combined:

    1. stmt = text("SELECT id, name FROM user WHERE name=:name "
    2. "AND timestamp=:timestamp")
    3. stmt = stmt.bindparams(
    4. bindparam('name', type_=String),
    5. bindparam('timestamp', type_=DateTime)
    6. )
    7. stmt = stmt.bindparams(
    8. name='jack',
    9. timestamp=datetime.datetime(2012, 10, 8, 15, 12, 5)
    10. )

    The TextClause.bindparams() method also supports the concept of unique bound parameters. These are parameters that are “uniquified” on name at statement compilation time, so that multiple text() constructs may be combined together without the names conflicting. To use this feature, specify the BindParameter.unique flag on each bindparam() object:

    1. stmt1 = text("select id from table where name=:name").bindparams(
    2. bindparam("name", value='name1', unique=True)
    3. )
    4. stmt2 = text("select id from table where name=:name").bindparams(
    5. bindparam("name", value='name2', unique=True)
    6. )
    7. union = union_all(
    8. stmt1.columns(column("id")),
    9. stmt2.columns(column("id"))
    10. )

    The above statement will render as:

    1. select id from table where name=:name_1
    2. UNION ALL select id from table where name=:name_2

    New in version 1.3.11: Added support for the BindParameter.unique flag to work with text() constructs.

  • method sqlalchemy.sql.expression.TextClause.columns(\cols, **types*)

    Turn this TextClause object into a TextualSelect object that serves the same role as a SELECT statement.

    The TextualSelect is part of the SelectBase hierarchy and can be embedded into another statement by using the TextualSelect.subquery() method to produce a Subquery object, which can then be SELECTed from.

    This function essentially bridges the gap between an entirely textual SELECT statement and the SQL expression language concept of a “selectable”:

    1. from sqlalchemy.sql import column, text
    2. stmt = text("SELECT id, name FROM some_table")
    3. stmt = stmt.columns(column('id'), column('name')).subquery('st')
    4. stmt = select(mytable).\
    5. select_from(
    6. mytable.join(stmt, mytable.c.name == stmt.c.name)
    7. ).where(stmt.c.id > 5)

    Above, we pass a series of column() elements to the TextClause.columns() method positionally. These column() elements now become first class elements upon the TextualSelect.selected_columns column collection, which then become part of the Subquery.c collection after TextualSelect.subquery() is invoked.

    The column expressions we pass to TextClause.columns() may also be typed; when we do so, these TypeEngine objects become the effective return type of the column, so that SQLAlchemy’s result-set-processing systems may be used on the return values. This is often needed for types such as date or boolean types, as well as for unicode processing on some dialect configurations:

    1. stmt = text("SELECT id, name, timestamp FROM some_table")
    2. stmt = stmt.columns(
    3. column('id', Integer),
    4. column('name', Unicode),
    5. column('timestamp', DateTime)
    6. )
    7. for id, name, timestamp in connection.execute(stmt):
    8. print(id, name, timestamp)

    As a shortcut to the above syntax, keyword arguments referring to types alone may be used, if only type conversion is needed:

    1. stmt = text("SELECT id, name, timestamp FROM some_table")
    2. stmt = stmt.columns(
    3. id=Integer,
    4. name=Unicode,
    5. timestamp=DateTime
    6. )
    7. for id, name, timestamp in connection.execute(stmt):
    8. print(id, name, timestamp)

    The positional form of TextClause.columns() also provides the unique feature of positional column targeting, which is particularly useful when using the ORM with complex textual queries. If we specify the columns from our model to TextClause.columns(), the result set will match to those columns positionally, meaning the name or origin of the column in the textual SQL doesn’t matter:

    1. stmt = text("SELECT users.id, addresses.id, users.id, "
    2. "users.name, addresses.email_address AS email "
    3. "FROM users JOIN addresses ON users.id=addresses.user_id "
    4. "WHERE users.id = 1").columns(
    5. User.id,
    6. Address.id,
    7. Address.user_id,
    8. User.name,
    9. Address.email_address
    10. )
    11. query = session.query(User).from_statement(stmt).options(
    12. contains_eager(User.addresses))

    New in version 1.1: the TextClause.columns() method now offers positional column targeting in the result set when the column expressions are passed purely positionally.

    The TextClause.columns() method provides a direct route to calling FromClause.subquery() as well as SelectBase.cte() against a textual SELECT statement:

    1. stmt = stmt.columns(id=Integer, name=String).cte('st')
    2. stmt = select(sometable).where(sometable.c.id == stmt.c.id)
    • Parameters

      • *cols – A series of ColumnElement objects, typically Column objects from a Table or ORM level column-mapped attributes, representing a set of columns that this textual string will SELECT from.

      • **types – A mapping of string names to TypeEngine type objects indicating the datatypes to use for names that are SELECTed from the textual string. Prefer to use the *cols argument as it also indicates positional ordering.

  • method sqlalchemy.sql.expression.TextClause.self_group(against=None)

    Apply a ‘grouping’ to this ClauseElement.

    This method is overridden by subclasses to return a “grouping” construct, i.e. parenthesis. In particular it’s used by “binary” expressions to provide a grouping around themselves when placed into a larger expression, as well as by select() constructs when placed into the FROM clause of another select(). (Note that subqueries should be normally created using the Select.alias() method, as many platforms require nested SELECT statements to be named).

    As expressions are composed together, the application of self_group() is automatic - end-user code should never need to use this method directly. Note that SQLAlchemy’s clause constructs take operator precedence into account - so parenthesis might not be needed, for example, in an expression like x OR (y AND z) - AND takes precedence over OR.

    The base self_group() method of ClauseElement just returns self.

class sqlalchemy.sql.expression.``Tuple(\clauses, **kw*)

Represent a SQL tuple.

Class signature

class sqlalchemy.sql.expression.Tuple (sqlalchemy.sql.expression.ClauseList, sqlalchemy.sql.expression.ColumnElement)

  • method sqlalchemy.sql.expression.Tuple.__init__(\clauses, **kw*)

    Construct a new Tuple object.

    This constructor is mirrored as a public API function; see sqlalchemy.sql.expression.tuple_() for a full usage and argument description.

  • method sqlalchemy.sql.expression.Tuple.self_group(against=None)

    Apply a ‘grouping’ to this ClauseElement.

    This method is overridden by subclasses to return a “grouping” construct, i.e. parenthesis. In particular it’s used by “binary” expressions to provide a grouping around themselves when placed into a larger expression, as well as by select() constructs when placed into the FROM clause of another select(). (Note that subqueries should be normally created using the Select.alias() method, as many platforms require nested SELECT statements to be named).

    As expressions are composed together, the application of self_group() is automatic - end-user code should never need to use this method directly. Note that SQLAlchemy’s clause constructs take operator precedence into account - so parenthesis might not be needed, for example, in an expression like x OR (y AND z) - AND takes precedence over OR.

    The base self_group() method of ClauseElement just returns self.

class sqlalchemy.sql.expression.``WithinGroup(element, \order_by*)

Represent a WITHIN GROUP (ORDER BY) clause.

This is a special operator against so-called “ordered set aggregate” and “hypothetical set aggregate” functions, including percentile_cont(), rank(), dense_rank(), etc.

It’s supported only by certain database backends, such as PostgreSQL, Oracle and MS SQL Server.

The WithinGroup construct extracts its type from the method FunctionElement.within_group_type(). If this returns None, the function’s .type is used.

Class signature

class sqlalchemy.sql.expression.WithinGroup (sqlalchemy.sql.expression.ColumnElement)

class sqlalchemy.sql.elements.``WrapsColumnExpression

Mixin that defines a ColumnElement as a wrapper with special labeling behavior for an expression that already has a name.

New in version 1.4.

See also

Improved column labeling for simple column expressions using CAST or similar

class sqlalchemy.sql.expression.``True_(\arg, **kw*)

Represent the true keyword, or equivalent, in a SQL statement.

True_ is accessed as a constant via the true() function.

Class signature

class sqlalchemy.sql.expression.True_ (sqlalchemy.sql.expression.SingletonConstant, sqlalchemy.sql.roles.ConstExprRole, sqlalchemy.sql.expression.ColumnElement)

class sqlalchemy.sql.expression.``TypeCoerce(expression, type_)

Represent a Python-side type-coercion wrapper.

TypeCoerce supplies the type_coerce() function; see that function for usage details.

Changed in version 1.1: The type_coerce() function now produces a persistent TypeCoerce wrapper object rather than translating the given object in place.

See also

type_coerce()

cast()

Class signature

class sqlalchemy.sql.expression.TypeCoerce (sqlalchemy.sql.expression.WrapsColumnExpression, sqlalchemy.sql.expression.ColumnElement)

  • method sqlalchemy.sql.expression.TypeCoerce.__init__(expression, type_)

    Construct a new TypeCoerce object.

    This constructor is mirrored as a public API function; see sqlalchemy.sql.expression.type_coerce() for a full usage and argument description.

  • method sqlalchemy.sql.expression.TypeCoerce.self_group(against=None)

    Apply a ‘grouping’ to this ClauseElement.

    This method is overridden by subclasses to return a “grouping” construct, i.e. parenthesis. In particular it’s used by “binary” expressions to provide a grouping around themselves when placed into a larger expression, as well as by select() constructs when placed into the FROM clause of another select(). (Note that subqueries should be normally created using the Select.alias() method, as many platforms require nested SELECT statements to be named).

    As expressions are composed together, the application of self_group() is automatic - end-user code should never need to use this method directly. Note that SQLAlchemy’s clause constructs take operator precedence into account - so parenthesis might not be needed, for example, in an expression like x OR (y AND z) - AND takes precedence over OR.

    The base self_group() method of ClauseElement just returns self.

class sqlalchemy.sql.expression.``UnaryExpression(element, operator=None, modifier=None, type_=None, wraps_column_expression=False)

Define a ‘unary’ expression.

A unary expression has a single column expression and an operator. The operator can be placed on the left (where it is called the ‘operator’) or right (where it is called the ‘modifier’) of the column expression.

UnaryExpression is the basis for several unary operators including those used by desc(), asc(), distinct(), nulls_first() and nulls_last().

Class signature

class sqlalchemy.sql.expression.UnaryExpression (sqlalchemy.sql.expression.ColumnElement)

  • method sqlalchemy.sql.expression.UnaryExpression.self_group(against=None)

    Apply a ‘grouping’ to this ClauseElement.

    This method is overridden by subclasses to return a “grouping” construct, i.e. parenthesis. In particular it’s used by “binary” expressions to provide a grouping around themselves when placed into a larger expression, as well as by select() constructs when placed into the FROM clause of another select(). (Note that subqueries should be normally created using the Select.alias() method, as many platforms require nested SELECT statements to be named).

    As expressions are composed together, the application of self_group() is automatic - end-user code should never need to use this method directly. Note that SQLAlchemy’s clause constructs take operator precedence into account - so parenthesis might not be needed, for example, in an expression like x OR (y AND z) - AND takes precedence over OR.

    The base self_group() method of ClauseElement just returns self.