SQLAlchemy
| SQLAlchemy | |
|---|---|
Abbreviated SQLAlchemy Logo | |
| Original author | Michael Bayer[1] |
| Initial release | February 14, 2006[2] |
| Stable release | 2.0.50[3] |
| Written in | Python |
| Operating system | Cross-platform |
| Type | Object-relational mapping |
| License | MIT License[4] |
| Website | www |
| Repository | |

SQLAlchemy is an open-source Python library that provides an SQL toolkit (called "SQLAlchemy Core") and an object–relational mapper (ORM) for database interactions. It allows developers to work with databases using Python objects, enabling efficient and flexible database access.
Description
SQLAlchemy offers tools for database schema generation, querying, and object-relational mapping. Key features include:
- A comprehensive embedded domain-specific language for SQL in Python called "SQLAlchemy Core" that provides means to construct and execute SQL queries.
- A powerful ORM that allows the mapping of Python classes to database tables.
- Support for database schema migrations.
- Compatibility with multiple database backends.
- Tools for database connection pooling and transaction management.
History
SQLAlchemy was first released in February 2006. It has evolved to include a wide range of features for database interaction and has gained popularity among Python developers. Notable versions include:
- Version 0.1 (2006):[5] Initial release.
- Version 1.0 (2015):[6] Major enhancements in ORM and SQL expression language.
- Version 1.4 (2021):[7] Introduction of a new ORM API.
Example
The following example represents an n-to-1 relationship between movies and their directors. It is shown how user-defined Python classes create corresponding database tables, how instances with relationships are created from either side of the relationship, and finally how the data can be queried — illustrating automatically generated SQL queries for both lazy and eager loading.
Schema definition
Creating two Python classes and corresponding database tables in the DBMS:
from sqlalchemy import *
from sqlalchemy.ext.declarative import declarative_base
from sqlalchemy.orm import relation, sessionmaker
Base = declarative_base()
class Movie(Base):
__tablename__ = "movies"
id = Column(Integer, primary_key=True)
title = Column(String(255), nullable=False)
year = Column(Integer)
directed_by = Column(Integer, ForeignKey("directors.id"))
director = relation("Director", backref="movies", lazy=False)
def __init__(self, title=None, year=None):
self.title = title
self.year = year
def __repr__(self):
return f"Movie({self.title}, {self.year}, {self.director})"
class Director(Base):
__tablename__ = "directors"
id = Column(Integer, primary_key=True)
name = Column(String(50), nullable=False, unique=True)
def __init__(self, name=None):
self.name = name
def __repr__(self):
return f"Director({self.name})"
engine = create_engine("dbms://user:pwd@host/dbname")
Base.metadata.create_all(engine)
Data insertion
One can insert a director-movie relationship via either entity:
Session = sessionmaker(bind=engine)
session = Session()
m1 = Movie("Robocop", 1987)
m1.director = Director("Paul Verhoeven")
d2 = Director("George Lucas")
d2.movies = [Movie("Star Wars", 1977), Movie("THX 1138", 1971)]
try:
session.add(m1)
session.add(d2)
session.commit()
except:
session.rollback()
Querying
alldata = session.query(Movie).all()
for somedata in alldata:
print(somedata)
SQLAlchemy issues the following query to the DBMS (omitting aliases):
SELECT movies.id, movies.title, movies.year, movies.directed_by, directors.id, directors.name
FROM movies LEFT OUTER JOIN directors ON directors.id = movies.directed_by
The output:
Movie('Robocop', 1987L, Director('Paul Verhoeven'))
Movie('Star Wars', 1977L, Director('George Lucas'))
Movie('THX 1138', 1971L, Director('George Lucas'))
Setting lazy=True (default) instead, SQLAlchemy would first issue a query to get the list of movies and only when needed (lazy) for each director a query to get the name of the corresponding director:
SELECT movies.id, movies.title, movies.year, movies.directed_by
FROM movies
SELECT directors.id, directors.name
FROM directors
WHERE directors.id = %s
See also
References
- ^ Mike Bayer is the creator of SQLAlchemy and Mako Templates for Python.
- ^ "Download - SQLAlchemy". SQLAlchemy. Retrieved 21 February 2015.
- ^ "Release 2.0.50". 24 May 2026. Retrieved 25 May 2026.
- ^ "zzzeek / sqlalchemy / source / LICENSE". BitBucket. Retrieved 21 February 2015.
- ^ "0.1 Changelog — SQLAlchemy 2.0 Documentation". docs.sqlalchemy.org. Retrieved 2024-07-04.
- ^ "1.0 Changelog — SQLAlchemy 2.0 Documentation". docs.sqlalchemy.org. Retrieved 2024-07-04.
- ^ "1.4 Changelog — SQLAlchemy 2.0 Documentation". docs.sqlalchemy.org. Retrieved 2024-07-04.
- Notes
- Gift, Noah (12 Aug 2008). "Using SQLAlchemy". Developerworks. IBM. Retrieved 8 Feb 2011.
- Rick Copeland, Essential SQLAlchemy, O'Reilly, 2008, ISBN 0-596-51614-2
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