Проще будет при построении схемы воспользоваться метаданными из БД, использовав DB object reflection:
messages = Table('messages', meta, autoload=True, autoload_with=engine)
[c.name for c in messages.columns]
#['message_id', 'message_name', 'date']
Ограничения:
Limitations of Reflection
It’s important to note that the reflection process recreates Table
metadata using only information which is represented in the relational
database. This process by definition cannot restore aspects of a
schema that aren’t actually stored in the database. State which is not
available from reflection includes but is not limited to:
Client side defaults, either Python functions or SQL expressions
defined using the default keyword of Column (note this is separate
from server_default, which specifically is what’s available via
reflection). Column information, e.g. data that might have been placed
into the Column.info dictionary The value of the .quote setting for
Column or Table The association of a particular Sequence with a given
Column The relational database also in many cases reports on table
metadata in a different format than what was specified in SQLAlchemy.
The Table objects returned from reflection cannot be always relied
upon to produce the identical DDL as the original Python-defined Table
objects. Areas where this occurs includes server defaults,
column-associated sequences and various idosyncrasies regarding
constraints and datatypes. Server side defaults may be returned with
cast directives (typically PostgreSQL will include a :: cast) or
different quoting patterns than originally specified.
Another category of limitation includes schema structures for which
reflection is only partially or not yet defined. Recent improvements
to reflection allow things like views, indexes and foreign key options
to be reflected. As of this writing, structures like CHECK
constraints, table comments, and triggers are not reflected.