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sqlalchemy-pgview/README.md
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# SQLAlchemy-PGView
A SQLAlchemy 2.0+ extension that provides first-class support for PostgreSQL views and materialized views.
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## Features
- **Declarative Views** - Class-based view definitions using multiple inheritance with SQLAlchemy ORM
- **View & MaterializedView Classes** - Define PostgreSQL views as Python objects with full DDL support
- **Alembic Integration** - Database migration operations (`op.create_view()`, `op.drop_view()`, etc.)
- **Auto-Refresh** - Automatically refresh materialized views on data changes
- **Async Support** - Works with asyncpg and SQLAlchemy's async engines
- **Dependency Tracking** - Query PostgreSQL system catalogs for view dependencies
- **Type Safety** - Full type annotations for modern Python development
## Requirements
- Python 3.10+
- SQLAlchemy 2.0+
- PostgreSQL database
- Alembic 1.10+ (optional, for migrations)
## Installation
Base package
```bash
uv pip install "sqlalchemy-pgview"
```
With alembic support
```bash
uv pip install "sqlalchemy-pgview[alembic]"
```
## Quick Start
```python
from decimal import Decimal
from sqlalchemy import create_engine, select, func, String, Numeric, Integer
from sqlalchemy.orm import DeclarativeBase, Mapped, mapped_column, Session
from sqlalchemy_pgview import ViewBase, MaterializedViewBase
# Define your base and models
class Base(DeclarativeBase):
pass
class User(Base):
__tablename__ = "users"
id: Mapped[int] = mapped_column(primary_key=True)
name: Mapped[str] = mapped_column(String(100))
is_active: Mapped[bool] = mapped_column(default=True)
class Order(Base):
__tablename__ = "orders"
id: Mapped[int] = mapped_column(primary_key=True)
user_id: Mapped[int] = mapped_column(Integer)
total: Mapped[Decimal] = mapped_column(Numeric(10, 2))
# Define a regular view (computed on every query)
class ActiveUsers(ViewBase, Base):
__tablename__ = "active_users"
__select__ = select(User.id, User.name).where(User.is_active == True)
# Define a materialized view (cached results, needs refresh)
class UserStats(MaterializedViewBase, Base):
__tablename__ = "user_stats"
__select__ = select(
User.id.label("user_id"),
User.name,
func.count(Order.id).label("order_count"),
func.coalesce(func.sum(Order.total), 0).label("total_spent"),
).select_from(User.__table__.outerjoin(Order.__table__, User.id == Order.user_id)
).group_by(User.id, User.name)
# Create everything (tables + views)
engine = create_engine("postgresql://user:pass@localhost/mydb")
Base.metadata.create_all(engine)
# Query the view
with engine.connect() as conn:
result = conn.execute(select(ActiveUsers.as_table())).fetchall()
for row in result:
print(f"{row.name}")
# Refresh materialized view
with engine.begin() as conn:
UserStats.refresh(conn)
```
Automatically refresh materialized views when underlying data changes:
```python
from sqlalchemy.orm import Session
# Enable auto-refresh when Order table changes
UserStats.auto_refresh_on(Session, Order.__table__)
# Now commits automatically refresh the materialized view
with Session(engine) as session:
session.add(Order(user_id=1, total=Decimal("100.00")))
session.commit() # UserStats is automatically refreshed
```
## Alembic Integration
SQLAlchemy-PGView integrates with Alembic for automatic view detection and migration generation.
Import the alembic module in your `env.py` to enable autogenerate:
```python
# env.py
import sqlalchemy_pgview.alembic # Registers autogenerate support
```
Then generate migrations automatically:
```bash
alembic revision --autogenerate -m "add user views"
```
Alembic will detect:
- **New views**: Views in metadata but not in database
- **Removed views**: Views in database but not in metadata
You also can manually add refresh in existing migration:
```python
def upgrade():
# After data changes, refresh materialized views
op.refresh_materialized_view("user_stats", concurrently=True)
```
## API Reference
### ViewBase (Declarative)
```python
class MyView(ViewBase, Base):
__tablename__ = "my_view" # Required: view name
__select__ = select(...) # Required: SELECT statement
__schema__ = "public" # Optional: schema name
```
### MaterializedViewBase (Declarative)
```python
class MyMaterializedView(MaterializedViewBase, Base):
__tablename__ = "my_mview" # Required: view name
__select__ = select(...) # Required: SELECT statement
__schema__ = "public" # Optional: schema name
__with_data__ = True # Optional: populate on creation (default: True)
```
### View (Imperative)
```python
View(
name: str, # View name
selectable: Select, # SQLAlchemy SELECT statement
schema: str | None = None, # Schema name (default: public)
metadata: MetaData | None = None, # MetaData for auto-registration
)
```
### MaterializedView (Imperative)
```python
MaterializedView(
name: str, # View name
selectable: Select, # SQLAlchemy SELECT statement
schema: str | None = None, # Schema name (default: public)
metadata: MetaData | None = None, # MetaData for auto-registration
with_data: bool = True, # Populate on creation
)
```
## License
MIT License - see [LICENSE](LICENSE) for details.
## Contributing
Contributions are welcome! Please feel free to submit issues and pull requests.
## Documentation
For full documentation, visit the [docs](docs/) directory.