Database Meta Data {@name=metadata}
==================

### Describing Databases with MetaData {@name=tables}    

The core of SQLAlchemy's query and object mapping operations is database metadata, which are Python objects that describe tables and other schema-level objects.  Metadata objects can be created by explicitly naming the various components and their properties, using the Table, Column, ForeignKey, Index, and Sequence objects imported from `sqlalchemy.schema`.  There is also support for *reflection*, which means you only specify the *name* of the entities and they are recreated from the database automatically.

A collection of metadata entities is stored in an object aptly named `MetaData`.  This object takes an optional `name` parameter:

    {python}
    from sqlalchemy import *
    
    metadata = MetaData(name='my metadata')

Then to construct a Table, use the `Table` class:

    {python}
    users = Table('users', metadata, 
        Column('user_id', Integer, primary_key = True),
        Column('user_name', String(16), nullable = False),
        Column('email_address', String(60), key='email'),
        Column('password', String(20), nullable = False)
    )
    
    user_prefs = Table('user_prefs', metadata, 
        Column('pref_id', Integer, primary_key=True),
        Column('user_id', Integer, ForeignKey("users.user_id"), nullable=False),
        Column('pref_name', String(40), nullable=False),
        Column('pref_value', String(100))
    )

The specific datatypes for each Column, such as Integer, String, etc. are described in [types](rel:types), and exist within the module `sqlalchemy.types` as well as the global `sqlalchemy` namespace.

The `MetaData` object supports some handy methods, such as getting a list of Tables in the order (or reverse) of their dependency:

    {python}
    >>> for t in metadata.table_iterator(reverse=False):
    ...    print t.name
    users
    user_prefs
        
And `Table` provides an interface to the table's properties as well as that of its columns:
        
    {python}
    employees = Table('employees', metadata, 
        Column('employee_id', Integer, primary_key=True),
        Column('employee_name', String(60), nullable=False, key='name'),
        Column('employee_dept', Integer, ForeignKey("departments.department_id"))
    )
    
    # access the column "EMPLOYEE_ID":
    employees.columns.employee_id
    
    # or just
    employees.c.employee_id
    
    # via string
    employees.c['employee_id']
    
    # iterate through all columns
    for c in employees.c:
        # ...
        
    # get the table's primary key columns
    for primary_key in employees.primary_key:
        # ...
    
    # get the table's foreign key objects:
    for fkey in employees.foreign_keys:
        # ...
        
    # access the table's MetaData:
    employees.metadata
    
    # access the table's Engine, if its MetaData is bound:
    employees.engine
    
    # access a column's name, type, nullable, primary key, foreign key
    employees.c.employee_id.name
    employees.c.employee_id.type
    employees.c.employee_id.nullable
    employees.c.employee_id.primary_key
    employees.c.employee_dept.foreign_key
    
    # get the "key" of a column, which defaults to its name, but can 
    # be any user-defined string:
    employees.c.name.key
    
    # access a column's table:
    employees.c.employee_id.table is employees
    >>> True
    
    # get the table related by a foreign key
    fcolumn = employees.c.employee_dept.foreign_key.column.table

#### Binding MetaData to an Engine {@name=binding}

A MetaData object can be associated with one or more Engine instances.  This allows the MetaData and the elements within it to perform operations automatically, using the connection resources of that Engine.  This includes being able to "reflect" the columns of tables, as well as to perform create and drop operations without needing to pass an `Engine` or `Connection` around.  It also allows SQL constructs to be created which know how to execute themselves (called "implicit execution").

To bind `MetaData` to a single `Engine`, use `BoundMetaData`:

    {python}
    engine = create_engine('sqlite://', **kwargs)
    
    # create BoundMetaData from an Engine
    meta = BoundMetaData(engine)
    
    # create the Engine and MetaData in one step
    meta = BoundMetaData('postgres://db/', **kwargs)
    
Another form of `MetaData` exists which allows connecting to any number of engines, within the context of the current thread.  This is `DynamicMetaData`:

    {python}
    meta = DynamicMetaData()
    
    meta.connect(engine)    # connect to an existing Engine
    
    meta.connect('mysql://user@host/dsn')   # create a new Engine and connect

`DynamicMetaData` is ideal for applications that need to use the same set of `Tables` for many different database connections in the same process, such as a CherryPy web application which handles multiple application instances in one process.

#### Using the global Metadata object

Some users prefer to create `Table` objects without specifying a `MetaData` object, having Tables scoped on an application-wide basis.  For them the `default_metadata` object and the `global_connect()` function is supplied.  `default_metadata` is simply an instance of `DynamicMetaData` that exists within the `sqlalchemy` namespace, and `global_connect()` is a synonym for `default_metadata.connect()`.  Defining a `Table` that has no `MetaData` argument will automatically use this default metadata as follows:

    {python}
    from sqlalchemy import *

    # a Table with just a name and its Columns
    mytable = Table('mytable', 
        Column('col1', Integer, primary_key=True),
        Column('col2', String(40))
        )

    # connect all the "anonymous" tables to a postgres uri in the current thread    
    global_connect('postgres://foo:bar@lala/test')

    # create all tables in the default metadata
    default_metadata.create_all()

    # the table is bound
    mytable.insert().execute(col1=5, col2='some value')
    
#### Reflecting Tables

Once you have a `BoundMetaData` or a connected `DynamicMetaData`, you can create `Table` objects without specifying their columns, just their names, using `autoload=True`:

    {python}
    >>> messages = Table('messages', meta, autoload = True)
    >>> [c.name for c in messages.columns]
    ['message_id', 'message_name', 'date']

At the moment the Table is constructed, it will query the database for the columns and constraints of the `messages` table.

Note that if a reflected table has a foreign key referencing another table, then the metadata for the related table will be loaded as well, even if it has not been defined by the application:              
        
    {python}
    >>> shopping_cart_items = Table('shopping_cart_items', meta, autoload = True)
    >>> print shopping_cart_items.c.cart_id.table.name
    shopping_carts
        
To get direct access to 'shopping_carts', simply instantiate it via the Table constructor.  You'll get the same instance of the shopping cart Table as the one that is attached to shopping_cart_items:

    {python}
    >>> shopping_carts = Table('shopping_carts', meta)
    >>> shopping_carts is shopping_cart_items.c.cart_id.table.name
    True
        
This works because when the Table constructor is called for a particular name and `MetaData` object, if the table has already been created then the instance returned will be the same as the original.  This is a <b>singleton</b> constructor:

    {python}
    >>> news_articles = Table('news', meta, 
    ... Column('article_id', Integer, primary_key = True),
    ... Column('url', String(250), nullable = False)
    ... )
    >>> othertable = Table('news', meta)
    >>> othertable is news_articles
    True

#### Specifying the Schema Name {@name=schema}

Some databases support the concept of multiple schemas.  A `Table` can reference this by specifying the `schema` keyword argument:

    {python}
    financial_info = Table('financial_info', meta,
        Column('id', Integer, primary_key=True),
        Column('value', String(100), nullable=False),
        schema='remote_banks'
    )

Within the `MetaData` collection, this table will be identified by the combination of `financial_info` and `remote_banks`.  If another table called `financial_info` is referenced without the `remote_banks` schema, it will refer to a different `Table`.  `ForeignKey` objects can reference columns in this table using the form `remote_banks.financial_info.id`.

#### Other Options {@name=options}

`Tables` may support database-specific options, such as MySQL's `engine` option that can specify "MyISAM", "InnoDB", and other backends for the table:

    {python}
    addresses = Table('engine_email_addresses', meta,
        Column('address_id', Integer, primary_key = True),
        Column('remote_user_id', Integer, ForeignKey(users.c.user_id)),
        Column('email_address', String(20)),
        mysql_engine='InnoDB'
    )
    
### Creating and Dropping Database Tables {@name=creating}    

Creating and dropping individual tables can be done via the `create()` and `drop()` methods of `Table`; these methods take an optional `engine` parameter which references an `Engine` or a `Connection`.  If not supplied, the `Engine` bound to the `MetaData` will be used, else an error is raised:

    {python}
    meta = BoundMetaData('sqlite:///:memory:')
    employees = Table('employees', meta, 
        Column('employee_id', Integer, primary_key=True),
        Column('employee_name', String(60), nullable=False, key='name'),
        Column('employee_dept', Integer, ForeignKey("departments.department_id"))
    )
    {sql}employees.create()
    CREATE TABLE employees(
    employee_id SERIAL NOT NULL PRIMARY KEY,
    employee_name VARCHAR(60) NOT NULL,
    employee_dept INTEGER REFERENCES departments(department_id)
    )
    {}            

`drop()` method:
    
    {python}
    {sql}employees.drop(engine=e)
    DROP TABLE employees
    {}            

Entire groups of Tables can be created and dropped directly from the `MetaData` object with `create_all()` and `drop_all()`, each of which take an optional `engine` keyword argument which can reference an `Engine` or a `Connection`, else the underlying bound `Engine` is used:

    {python}
    engine = create_engine('sqlite:///:memory:')
    
    metadata = MetaData()
    
    users = Table('users', metadata, 
        Column('user_id', Integer, primary_key = True),
        Column('user_name', String(16), nullable = False),
        Column('email_address', String(60), key='email'),
        Column('password', String(20), nullable = False)
    )
    
    user_prefs = Table('user_prefs', metadata, 
        Column('pref_id', Integer, primary_key=True),
        Column('user_id', Integer, ForeignKey("users.user_id"), nullable=False),
        Column('pref_name', String(40), nullable=False),
        Column('pref_value', String(100))
    )
    
    {sql}metadata.create_all(engine=engine)
    PRAGMA table_info(users){}
    CREATE TABLE users(
            user_id INTEGER NOT NULL PRIMARY KEY, 
            user_name VARCHAR(16) NOT NULL, 
            email_address VARCHAR(60), 
            password VARCHAR(20) NOT NULL
    )
    PRAGMA table_info(user_prefs){}
    CREATE TABLE user_prefs(
            pref_id INTEGER NOT NULL PRIMARY KEY, 
            user_id INTEGER NOT NULL REFERENCES users(user_id), 
            pref_name VARCHAR(40) NOT NULL, 
            pref_value VARCHAR(100)
    )

### Column Defaults and OnUpdates {@name=defaults}    

SQLAlchemy includes flexible constructs in which to create default values for columns upon the insertion of rows, as well as upon update.  These defaults can take several forms: a constant, a Python callable to be pre-executed before the SQL is executed, a SQL expression or function to be pre-executed before the SQL is executed, a pre-executed Sequence (for databases that support sequences), or a "passive" default, which is a default function triggered by the database itself upon insert, the value of which can then be post-fetched by the engine, provided the row provides a primary key in which to call upon.

#### Pre-Executed Insert Defaults {@name=oninsert}

A basic default is most easily specified by the "default" keyword argument to Column.  This defines a value, function, or SQL expression that will be pre-executed to produce the new value, before the row is inserted:

    {python}
    # a function to create primary key ids
    i = 0
    def mydefault():
        global i
        i += 1
        return i

    t = Table("mytable", meta, 
        # function-based default
        Column('id', Integer, primary_key=True, default=mydefault),
    
        # a scalar default
        Column('key', String(10), default="default")
    )
            
The "default" keyword can also take SQL expressions, including select statements or direct function calls:

    {python}
    t = Table("mytable", meta, 
        Column('id', Integer, primary_key=True),
    
        # define 'create_date' to default to now()
        Column('create_date', DateTime, default=func.now()),
    
        # define 'key' to pull its default from the 'keyvalues' table
        Column('key', String(20), default=keyvalues.select(keyvalues.c.type='type1', limit=1))
        )
            
The "default" keyword argument is shorthand for using a ColumnDefault object in a column definition.  This syntax is optional, but is required for other types of defaults, futher described below:

    {python}
    Column('mycolumn', String(30), ColumnDefault(func.get_data()))

#### Pre-Executed OnUpdate Defaults {@name=onupdate}

Similar to an on-insert default is an on-update default, which is most easily specified by the "onupdate" keyword to Column, which also can be a constant, plain Python function or SQL expression:

    {python}
    t = Table("mytable", meta, 
        Column('id', Integer, primary_key=True),
        
        # define 'last_updated' to be populated with current_timestamp (the ANSI-SQL version of now())
        Column('last_updated', DateTime, onupdate=func.current_timestamp()),
    )
    

To use an explicit ColumnDefault object to specify an on-update, use the "for_update" keyword argument:

    {python}
    Column('mycolumn', String(30), ColumnDefault(func.get_data(), for_update=True))
        
#### Inline Default Execution: PassiveDefault {@name=passive}    

A PassiveDefault indicates a column default or on-update value that is executed automatically by the database.  This construct is used to specify a SQL function that will be specified as "DEFAULT" when creating tables, and also to indicate the presence of new data that is available to be "post-fetched" after an insert or update execution.

    {python}
    t = Table('test', meta, 
        Column('mycolumn', DateTime, PassiveDefault("sysdate"))
    )
        
A create call for the above table will produce:

    {code}
    CREATE TABLE test (
        mycolumn datetime default sysdate
    )
        
PassiveDefaults also send a message to the `Engine` that data is available after update or insert.  The object-relational mapper system uses this information to post-fetch rows after insert or update, so that instances can be refreshed with the new data.  Below is a simplified version:

    {python}
    # table with passive defaults
    mytable = Table('mytable', engine, 
        Column('my_id', Integer, primary_key=True),

        # an on-insert database-side default
        Column('data1', Integer, PassiveDefault("d1_func")),

        # an on-update database-side default
        Column('data2', Integer, PassiveDefault("d2_func", for_update=True))
    )
    # insert a row
    r = mytable.insert().execute(name='fred')

    # check the result: were there defaults fired off on that row ?
    if r.lastrow_has_defaults():
        # postfetch the row based on primary key.
        # this only works for a table with primary key columns defined
        primary_key = r.last_inserted_ids()
        row = table.select(table.c.id == primary_key[0])
        
When Tables are reflected from the database using `autoload=True`, any DEFAULT values set on the columns will be reflected in the Table object as PassiveDefault instances.

##### The Catch: Postgres Primary Key Defaults always Pre-Execute {@name=postgres}

Current Postgres support does not rely upon OID's to determine the identity of a row.  This is because the usage of OIDs has been deprecated with Postgres and they are disabled by default for table creates as of PG version 8.  Pyscopg2's "cursor.lastrowid" function only returns OIDs.  Therefore, when inserting a new row which has passive defaults set on the primary key columns, the default function is <b>still pre-executed</b> since SQLAlchemy would otherwise have no way of retrieving the row just inserted.

#### Defining Sequences {@name=sequences}    

A table with a sequence looks like:

    {python}
    table = Table("cartitems", meta, 
        Column("cart_id", Integer, Sequence('cart_id_seq'), primary_key=True),
        Column("description", String(40)),
        Column("createdate", DateTime())
    )
        
The Sequence is used with Postgres or Oracle to indicate the name of a database sequence that will be used to create default values for a column.  When a table with a Sequence on a column is created in the database by SQLAlchemy, the database sequence object is also created.   Similarly, the database sequence is dropped when the table is dropped.  Sequences are typically used with primary key columns.  When using Postgres, if an integer primary key column defines no explicit Sequence or other default method, SQLAlchemy will create the column with the SERIAL keyword, and will pre-execute a sequence named "tablename_columnname_seq" in order to retrieve new primary key values, if they were not otherwise explicitly stated.   Oracle, which has no "auto-increment" keyword, requires that a Sequence be created for a table if automatic primary key generation is desired.  
    
A Sequence object can be defined on a Table that is then used for a non-sequence-supporting database.  In that case, the Sequence object is simply ignored.  Note that a Sequence object is **entirely optional for all databases except Oracle**, as other databases offer options for auto-creating primary key values, such as AUTOINCREMENT, SERIAL, etc.  SQLAlchemy will use these default methods for creating primary key values if no Sequence is present on the table metadata.
    
A sequence can also be specified with `optional=True` which indicates the Sequence should only be used on a database that requires an explicit sequence, and not those that supply some other method of providing integer values.  At the moment, it essentially means "use this sequence only with Oracle and not Postgres".
    
### Defining Indexes {@name=indexes}

Indexes can be defined on table columns, including named indexes, non-unique or unique, multiple column.  Indexes are included along with table create and drop statements.  They are not used for any kind of run-time constraint checking; SQLAlchemy leaves that job to the expert on constraint checking, the database itself.

    {python}
    boundmeta = BoundMetaData('postgres:///scott:tiger@localhost/test')
    mytable = Table('mytable', boundmeta, 
        # define a unique index 
        Column('col1', Integer, unique=True),
        
        # define a unique index with a specific name
        Column('col2', Integer, unique='mytab_idx_1'),
        
        # define a non-unique index
        Column('col3', Integer, index=True),
        
        # define a non-unique index with a specific name
        Column('col4', Integer, index='mytab_idx_2'),
        
        # pass the same name to multiple columns to add them to the same index
        Column('col5', Integer, index='mytab_idx_2'),
        
        Column('col6', Integer),
        Column('col7', Integer)
    )
    
    # create the table.  all the indexes will be created along with it.
    mytable.create()
    
    # indexes can also be specified standalone
    i = Index('mytab_idx_3', mytable.c.col6, mytable.c.col7, unique=False)
    
    # which can then be created separately (will also get created with table creates)
    i.create()
    
### Adapting Tables to Alternate Metadata {@name=adapting}

A `Table` object created against a specific `MetaData` object can be re-created against a new MetaData using the `tometadata` method:

    {python}
    # create two metadata
    meta1 = BoundMetaData('sqlite:///querytest.db')
    meta2 = MetaData()
                        
    # load 'users' from the sqlite engine
    users_table = Table('users', meta1, autoload=True)
    
    # create the same Table object for the plain metadata
    users_table_2 = users_table.tometadata(meta2)
    
    
