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Django-style async ORM library based on SQLAlchemy with chainable queries, Q objects, and relationship loading

Project description

SQLObjects

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Python 3.12+ License: MIT Code style: ruff Type checked: pyright

A modern, Django-style async ORM library built on SQLAlchemy Core with chainable queries, Q objects, and relationship loading. SQLObjects combines the familiar Django ORM API with the performance and flexibility of SQLAlchemy Core.

✨ Key Features

  • 🚀 Django-style API - Familiar and intuitive interface for Django developers
  • ⚡ Async-first design - Built for modern async Python applications
  • 🔗 Chainable queries - Fluent query building with method chaining
  • 🎯 Type safety - Full type annotations and runtime validation
  • 📊 High performance - Built on SQLAlchemy Core for optimal performance
  • 🔄 Smart operations - Automatic CREATE/UPDATE detection and bulk operations
  • 🎣 Lifecycle hooks - Comprehensive signal system for database operations
  • 🗄️ Multi-database support - Seamless multi-database configuration and routing

🚀 Quick Start

Installation

pip install sqlobjects

Basic Usage

from sqlobjects.model import ObjectModel
from sqlobjects.fields import Column, StringColumn, IntegerColumn, BooleanColumn
from sqlobjects.database import init_db, create_tables

# Define your models
class User(ObjectModel):
    username: Column[str] = StringColumn(length=50, unique=True)
    email: Column[str] = StringColumn(length=100, unique=True)
    age: Column[int] = IntegerColumn(nullable=True)
    is_active: Column[bool] = BooleanColumn(default=True)

# Initialize database
await init_db("sqlite+aiosqlite:///app.db")
await create_tables(ObjectModel)

# Create and query data
user = await User.objects.create(
    username="alice", 
    email="alice@example.com", 
    age=25
)

# Chainable queries with Django-style API
active_users = await User.objects.filter(
    User.is_active == True
).order_by("-age").limit(10).all()

# Complex queries with Q objects
from sqlobjects.queries import Q

users = await User.objects.filter(
    Q(User.age >= 18) & (Q(User.username.like("%admin%")) | Q(User.is_active == True))
).all()

📚 Core Concepts

Model Definition

SQLObjects uses a Django-style model definition with automatic table generation:

from sqlobjects.model import ObjectModel
from sqlobjects.fields import Column, StringColumn, DateTimeColumn, foreign_key
from datetime import datetime

class Post(ObjectModel):
    title: Column[str] = StringColumn(length=200)
    content: Column[str] = StringColumn(type="text")
    author_id: Column[int] = foreign_key("users.id")
    created_at: Column[datetime] = DateTimeColumn(default_factory=datetime.now)
    
    class Config:
        table_name = "blog_posts"  # Custom table name
        ordering = ["-created_at"]  # Default ordering

Query Building

Build complex queries with chainable methods:

# Basic filtering and ordering
posts = await Post.objects.filter(
    Post.title.like("%python%")
).order_by("-created_at").limit(5).all()

# Aggregation and annotation
from sqlobjects.expressions import func

user_stats = await User.objects.annotate(
    post_count=func.count(User.posts),
    latest_post=func.max(User.posts.created_at)
).filter(User.post_count > 0).all()

# Relationship loading
posts = await Post.objects.select_related("author").prefetch_related("comments").all()

Bulk Operations

High-performance bulk operations for large datasets:

# Bulk create (10-100x faster than individual creates)
users_data = [
    {"username": f"user{i}", "email": f"user{i}@example.com"} 
    for i in range(1000)
]
await User.objects.bulk_create(users_data, batch_size=500)

# Bulk update
mappings = [
    {"id": 1, "is_active": False},
    {"id": 2, "is_active": True},
]
await User.objects.bulk_update(mappings, match_fields=["id"])

# Bulk delete
user_ids = [1, 2, 3, 4, 5]
await User.objects.bulk_delete(user_ids, id_field="id")

Session Management

Flexible session and transaction management:

from sqlobjects.session import ctx_session, ctx_sessions

# Single database transaction
async with ctx_session() as session:
    user = await User.objects.using(session).create(username="bob")
    posts = await user.posts.using(session).all()
    # Automatic commit on success, rollback on error

# Multi-database transactions
async with ctx_sessions("main", "analytics") as sessions:
    user = await User.objects.using(sessions["main"]).create(username="alice")
    await Log.objects.using(sessions["analytics"]).create(message="User created")

Lifecycle Hooks

Comprehensive signal system for database operations:

class User(ObjectModel):
    username: Column[str] = StringColumn(length=50)
    
    async def before_save(self, context):
        """Called before any save operation"""
        self.updated_at = datetime.now()
    
    async def after_create(self, context):
        """Called only after creation"""
        await self.send_welcome_email()
    
    async def before_delete(self, context):
        """Called before deletion"""
        await self.cleanup_related_data()

🏗️ Architecture

SQLObjects is built on a solid foundation with clear architectural principles:

  • SQLAlchemy Core - Maximum performance and control over SQL generation
  • Async-first - Native async/await support throughout the library
  • Type safety - Comprehensive type annotations and runtime validation
  • Modular design - Clean separation of concerns and extensible architecture

📖 Documentation

AI Assistant Rules (Quick Reference)

Best practices and usage patterns optimized for AI coding assistants:

Installation:

# Install package
pip install sqlobjects

# Install rules for your AI assistant
sqlobjects-install-rules amazonq  # or cursor, claude, kiro

Feature Documentation

Design Documentation

🔧 Advanced Features

Multi-Database Support

from sqlobjects.database import init_dbs

# Configure multiple databases
main_db, analytics_db = await init_dbs({
    "main": {"url": "postgresql+asyncpg://user:pass@localhost/main"},
    "analytics": {"url": "sqlite+aiosqlite:///analytics.db"}
}, default="main")

# Use specific databases
user = await User.objects.using("analytics").create(username="analyst")

Performance Optimization

# Memory-efficient iteration for large datasets
async for user in User.objects.iterator(chunk_size=1000):
    await process_user(user)

# Field selection for performance
users = await User.objects.only("id", "username", "email").all()  # Load only needed fields
live_data = await User.objects.defer("bio", "profile_image").all()  # Defer heavy fields

# Field-level performance optimization
class User(ObjectModel):
    bio: Column[str] = column(type="text", deferred=True)  # Lazy loading
    profile_image: Column[bytes] = column(type="binary", deferred=True)

Advanced Querying

# Subqueries and complex conditions
avg_age = User.objects.aggregate(avg_age=func.avg(User.age)).subquery(query_type="scalar")
older_users = await User.objects.filter(User.age > avg_age).all()

# Manual joins and locking
posts = await Post.objects.join(
    User,  # Using Model class (recommended)
    Post.author_id == User.id
).select_for_update(nowait=True).all()

# Raw SQL when needed
users = await User.objects.raw(
    "SELECT * FROM users WHERE age > :age", 
    {"age": 18}
)

🧪 Testing

SQLObjects includes comprehensive test coverage:

# Run all tests
uv run pytest

# Run specific test categories
uv run pytest tests/unit/          # Unit tests
uv run pytest tests/integration/   # Integration tests
uv run pytest tests/performance/   # Performance tests

# Run with coverage
uv run pytest --cov=sqlobjects

🤝 Contributing

We welcome contributions! Please see our development guidelines:

  1. Design-first approach - All changes start with design analysis
  2. Type safety - Maintain comprehensive type annotations
  3. Test coverage - Include tests for all new functionality
  4. Documentation - Update docs for any API changes

Development Setup

# Clone the repository
git clone https://github.com/XtraVisionsAI/sqlobjects.git
cd sqlobjects

# Install development dependencies
uv sync --group dev --group test

# Run pre-commit hooks
uv run pre-commit install

# Run tests
uv run pytest

📋 Roadmap

See our TODO.md for planned features:

  • v2.0: Database health checks, window functions, advanced bulk operations
  • v2.1: Advanced field optimization, query performance tools
  • v2.2+: CTE support, advanced SQL functions

📄 License

This project is licensed under the MIT License - see the LICENSE file for details.

🙏 Acknowledgments

  • Built on the excellent SQLAlchemy library
  • Inspired by Django ORM API design
  • Thanks to all contributors and the Python async ecosystem

SQLObjects - Modern async ORM for Python 3.12+

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