Simplified database ORM connections with support for multiple database engines
Project description
ddcDatabases
A Python library for database connections and ORM queries with support for multiple database engines including SQLite, PostgreSQL, MySQL, MSSQL, Oracle, and MongoDB.
Table of Contents
- Features
- Installation
- Database Classes
- Database Engines
- Database Utilities
- Logging
- Development
- License
- Support
Features
- Multiple Database Support: SQLite, PostgreSQL, MySQL/MariaDB, MSSQL, Oracle, and MongoDB
- Sync and Async Support: Both synchronous and asynchronous operations
- Environment Configuration: Optional parameters with
.envfile fallback - SQLAlchemy Integration: Built on top of SQLAlchemy ORM
- Connection Pooling: Configurable connection pooling for better performance
- Retry Logic: Automatic retry with exponential backoff for connection errors
- Persistent Connections: Singleton connection managers with idle timeout and auto-reconnection
Default Session Settings
autoflush = Falseexpire_on_commit = Falseecho = False
Note: All constructor parameters are optional and fall back to .env file variables.
Configuration Classes
Database classes use structured configuration dataclasses instead of flat keyword arguments:
| Class | Purpose | Fields |
|---|---|---|
PoolConfig |
Connection pool settings | pool_size, max_overflow, pool_recycle, connection_timeout |
SessionConfig |
SQLAlchemy session settings | echo, autoflush, expire_on_commit, autocommit |
RetryConfig |
Connection-level retry settings | enable_retry, max_retries, initial_retry_delay, max_retry_delay |
PersistentConnectionConfig |
Persistent connection settings | idle_timeout, health_check_interval, auto_reconnect |
Database-specific SSL/TLS configs:
| Class | Database |
|---|---|
PostgreSQLSSLConfig |
PostgreSQL (ssl_mode, ssl_ca_cert_path, ssl_client_cert_path, ssl_client_key_path) |
MySQLSSLConfig |
MySQL/MariaDB (ssl_mode, ssl_ca_cert_path, ssl_client_cert_path, ssl_client_key_path) |
MSSQLSSLConfig |
MSSQL (ssl_encrypt, ssl_trust_server_certificate, ssl_ca_cert_path) |
OracleSSLConfig |
Oracle (ssl_enabled, ssl_wallet_path) |
MongoDBTLSConfig |
MongoDB (tls_enabled, tls_ca_cert_path, tls_cert_key_path, tls_allow_invalid_certificates) |
MongoDB-specific config:
| Class | Purpose | Fields |
|---|---|---|
MongoDBQueryConfig |
Query settings | query, sort_column, sort_order, batch_size, limit |
Retry Logic
Retry with exponential backoff is enabled by default at two levels:
1. Connection Level - Retries when establishing database connections:
from ddcDatabases import PostgreSQL, RetryConfig
with PostgreSQL(
retry_config=RetryConfig(
enable_retry=True, # Enable/disable retry (default: True)
max_retries=3, # Maximum retry attempts (default: 3)
initial_retry_delay=1.0, # Initial delay in seconds (default: 1.0)
max_retry_delay=30.0, # Maximum delay in seconds (default: 30.0)
),
) as session:
# Connection errors will automatically retry with exponential backoff
pass
2. Operation Level - Retries individual database operations (fetchall, insert, etc.):
from ddcDatabases import DBUtils, PostgreSQL
from ddcDatabases.core.retry import RetryPolicy
with PostgreSQL() as session:
# Custom retry policy for operations
retry_policy = RetryPolicy(
enable_retry=True, # Enable/disable (default: True)
max_retries=3, # Max attempts (default: 3)
initial_delay=1.0, # Initial delay in seconds (default: 1.0)
max_delay=30.0, # Max delay in seconds (default: 30.0)
jitter=0.1, # Randomization factor (default: 0.1)
)
db_utils = DBUtils(session, retry_config=retry_policy)
# Operations will retry on connection errors
results = db_utils.fetchall(stmt)
Retry Settings by Database:
| Database | enable_retry |
max_retries |
|---|---|---|
| PostgreSQL | True |
3 |
| MySQL | True |
3 |
| MSSQL | True |
3 |
| Oracle | True |
3 |
| MongoDB | True |
3 |
| SQLite | False |
1 |
Persistent Connections
For long-running applications, use persistent connections with automatic reconnection and idle timeout:
from ddcDatabases import (
PostgreSQLPersistent,
MySQLPersistent,
MongoDBPersistent,
PersistentConnectionConfig,
close_all_persistent_connections,
)
# Get or create a persistent connection (singleton per connection params)
conn = PostgreSQLPersistent(
host="localhost",
user="postgres",
password="postgres",
database="mydb",
config=PersistentConnectionConfig(
idle_timeout=300, # seconds before idle disconnect (default: 300)
health_check_interval=30, # seconds between health checks (default: 30)
auto_reconnect=True, # auto-reconnect on failure (default: True)
),
)
# Use as context manager (doesn't disconnect on exit, just updates last-used time)
with conn as session:
# Use session...
pass
# Connection stays alive and will auto-reconnect if needed
# Idle connections are automatically closed after timeout (default: 300s)
# For async connections
conn = PostgreSQLPersistent(host="localhost", database="mydb", async_mode=True)
async with conn as session:
# Use async session...
pass
# Cleanup all persistent connections on application shutdown
close_all_persistent_connections()
Available Persistent Connection Classes:
PostgreSQLPersistent- PostgreSQL (sync/async)MySQLPersistent- MySQL/MariaDB (sync/async)MSSQLPersistent- MSSQL (sync/async)OraclePersistent- Oracle (sync only)MongoDBPersistent- MongoDB (sync only)
Installation
Basic Installation (SQLite only)
pip install ddcDatabases
Note: The basic installation includes only SQlite. Database-specific drivers are optional extras that you can install as needed.
Database-Specific Installations
Install only the database drivers you need:
# All database drivers
pip install "ddcDatabases[all]"
# SQL Server / MSSQL
pip install "ddcDatabases[mssql]"
# MySQL/MariaDB
pip install "ddcDatabases[mysql]"
# PostgreSQL
pip install "ddcDatabases[pgsql]"
# Oracle Database
pip install "ddcDatabases[oracle]"
# MongoDB
pip install "ddcDatabases[mongodb]"
# Multiple databases (example)
pip install "ddcDatabases[mysql,pgsql,mongodb]"
Available Database Extras:
all- All database driversmssql- Microsoft SQL Server (pyodbc, aioodbc)mysql- MySQL and MariaDB (pymysql, aiomysql)pgsql- PostgreSQL (psycopg2-binary, asyncpg)oracle- Oracle Database (oracledb)mongodb- MongoDB (pymongo)
Platform Notes:
- SQLite support is included by default (no extra installation required)
- PostgreSQL extras may have compilation requirements on some systems
- All extras support both synchronous and asynchronous operations where applicable
Database Classes
SQLite
Example:
import sqlalchemy as sa
from ddcDatabases import DBUtils, Sqlite
from your_models import Model # Your SQLAlchemy model
with Sqlite(filepath="data.db") as session:
db_utils = DBUtils(session)
stmt = sa.select(Model).where(Model.id == 1)
results = db_utils.fetchall(stmt)
for row in results:
print(row)
MSSQL (SQL Server)
Synchronous Example:
import sqlalchemy as sa
from ddcDatabases import DBUtils, MSSQL, PoolConfig, SessionConfig
from ddcDatabases import MSSQLSSLConfig
from your_models import Model
with MSSQL(
host="127.0.0.1",
port=1433,
user="sa",
password="password",
database="master",
schema="dbo",
pool_config=PoolConfig(
pool_size=25,
max_overflow=50,
pool_recycle=3600,
connection_timeout=30,
),
session_config=SessionConfig(
echo=True,
autoflush=True,
expire_on_commit=True,
autocommit=True,
),
ssl_config=MSSQLSSLConfig(
ssl_encrypt=False,
ssl_trust_server_certificate=True,
),
) as session:
stmt = sa.select(Model).where(Model.id == 1)
db_utils = DBUtils(session)
results = db_utils.fetchall(stmt)
for row in results:
print(row)
Asynchronous Example:
import asyncio
import sqlalchemy as sa
from ddcDatabases import DBUtilsAsync, MSSQL
from your_models import Model
async def main():
async with MSSQL(host="127.0.0.1", database="master") as session:
stmt = sa.select(Model).where(Model.id == 1)
db_utils = DBUtilsAsync(session)
results = await db_utils.fetchall(stmt)
for row in results:
print(row)
asyncio.run(main())
PostgreSQL
Synchronous Example:
import sqlalchemy as sa
from ddcDatabases import DBUtils, PostgreSQL, PoolConfig, SessionConfig
from ddcDatabases import PostgreSQLSSLConfig
from your_models import Model
with PostgreSQL(
host="127.0.0.1",
port=5432,
user="postgres",
password="postgres",
database="postgres",
db_schema="public",
pool_config=PoolConfig(
pool_size=25,
max_overflow=50,
pool_recycle=3600,
connection_timeout=30,
),
session_config=SessionConfig(
echo=True,
autoflush=False,
expire_on_commit=False,
autocommit=True,
),
ssl_config=PostgreSQLSSLConfig(
ssl_mode="disable", # disable, allow, prefer, require, verify-ca, verify-full
ssl_ca_cert_path=None, # Path to CA certificate
ssl_client_cert_path=None, # Path to client certificate
ssl_client_key_path=None, # Path to client key
),
) as session:
stmt = sa.select(Model).where(Model.id == 1)
db_utils = DBUtils(session)
results = db_utils.fetchall(stmt)
for row in results:
print(row)
Asynchronous Example:
import asyncio
import sqlalchemy as sa
from ddcDatabases import DBUtilsAsync, PostgreSQL
from your_models import Model
async def main():
async with PostgreSQL(host="127.0.0.1", database="postgres") as session:
stmt = sa.select(Model).where(Model.id == 1)
db_utils = DBUtilsAsync(session)
results = await db_utils.fetchall(stmt)
for row in results:
print(row)
asyncio.run(main())
MySQL/MariaDB
The MySQL class is fully compatible with both MySQL and MariaDB databases.
Synchronous Example:
import sqlalchemy as sa
from ddcDatabases import DBUtils, MySQL, PoolConfig, SessionConfig
from ddcDatabases import MySQLSSLConfig
with MySQL(
host="127.0.0.1",
port=3306,
user="root",
password="root",
database="dev",
pool_config=PoolConfig(
pool_size=25,
max_overflow=50,
pool_recycle=3600,
connection_timeout=30,
),
session_config=SessionConfig(
echo=True,
autoflush=False,
expire_on_commit=False,
autocommit=True,
),
ssl_config=MySQLSSLConfig(
ssl_mode="DISABLED", # DISABLED, PREFERRED, REQUIRED, VERIFY_CA, VERIFY_IDENTITY
ssl_ca_cert_path=None,
ssl_client_cert_path=None,
ssl_client_key_path=None,
),
) as session:
stmt = sa.text("SELECT * FROM users WHERE id = 1")
db_utils = DBUtils(session)
results = db_utils.fetchall(stmt)
for row in results:
print(row)
Asynchronous Example:
import asyncio
import sqlalchemy as sa
from ddcDatabases import DBUtilsAsync, MySQL
async def main() -> None:
async with MySQL(host="127.0.0.1", database="dev") as session:
stmt = sa.text("SELECT * FROM users")
db_utils = DBUtilsAsync(session)
results = await db_utils.fetchall(stmt)
for row in results:
print(row)
asyncio.run(main())
Oracle
Example:
import sqlalchemy as sa
from ddcDatabases import DBUtils, Oracle, PoolConfig, SessionConfig
from ddcDatabases import OracleSSLConfig
with Oracle(
host="127.0.0.1",
port=1521,
user="system",
password="oracle",
servicename="xe",
pool_config=PoolConfig(
pool_size=25,
max_overflow=50,
pool_recycle=3600,
connection_timeout=30,
),
session_config=SessionConfig(
echo=False,
autoflush=False,
expire_on_commit=False,
autocommit=True,
),
ssl_config=OracleSSLConfig(
ssl_enabled=False,
ssl_wallet_path=None,
),
) as session:
stmt = sa.text("SELECT * FROM dual")
db_utils = DBUtils(session)
results = db_utils.fetchall(stmt)
for row in results:
print(row)
Note: Oracle only supports synchronous connections.
MongoDB
Example:
from ddcDatabases import MongoDB, MongoDBQueryConfig, MongoDBTLSConfig
from bson.objectid import ObjectId
with MongoDB(
host="127.0.0.1",
port=27017,
user="admin",
password="admin",
database="admin",
collection="test_collection",
query_config=MongoDBQueryConfig(
query={"_id": ObjectId("689c9f71dd642a68cfc60477")},
sort_column="_id",
sort_order="asc", # asc or desc
batch_size=2865,
limit=0,
),
tls_config=MongoDBTLSConfig(
tls_enabled=False,
tls_ca_cert_path=None,
tls_cert_key_path=None,
tls_allow_invalid_certificates=False,
),
) as cursor:
for each in cursor:
print(each)
Database Engines
Access the underlying SQLAlchemy engine for advanced operations:
Synchronous Engine:
from ddcDatabases import PostgreSQL
with PostgreSQL() as session:
engine = session.bind
# Use engine for advanced operations
Asynchronous Engine:
import asyncio
from ddcDatabases import PostgreSQL
async def main():
async with PostgreSQL() as session:
engine = session.bind
# Use engine for advanced operations
asyncio.run(main())
Database Utilities
The DBUtils and DBUtilsAsync classes provide convenient methods for common database operations with built-in retry support:
Available Methods
from ddcDatabases import DBUtils, DBUtilsAsync
from ddcDatabases.core.retry import RetryPolicy
# Synchronous utilities (retry enabled by default)
db_utils = DBUtils(session)
results = db_utils.fetchall(stmt) # Returns list of RowMapping objects
results = db_utils.fetchall(stmt, as_dict=True) # Returns list of dictionaries
value = db_utils.fetchvalue(stmt) # Returns single value as string
db_utils.insert(model_instance) # Insert into model table
db_utils.deleteall(Model) # Delete all records from model
db_utils.insertbulk(Model, data_list) # Bulk insert from list of dictionaries
db_utils.execute(stmt) # Execute any SQLAlchemy statement
# With custom retry policy
db_utils = DBUtils(session, retry_config=RetryPolicy(max_retries=5))
# Disable retry for specific operations
db_utils = DBUtils(session, retry_config=RetryPolicy(enable_retry=False))
# Asynchronous utilities (similar interface with await)
db_utils_async = DBUtilsAsync(session)
results = await db_utils_async.fetchall(stmt)
Logging
All database classes accept an optional logger parameter. By default, logs are silenced (NullHandler).
Pass a custom logger to capture connection and retry messages:
import logging
from ddcDatabases import PostgreSQL, DBUtils
log = logging.getLogger("myapp")
log.setLevel(logging.DEBUG)
log.addHandler(logging.StreamHandler())
with PostgreSQL(host="localhost", database="mydb", logger=log) as session:
db_utils = DBUtils(session)
results = db_utils.fetchall(stmt)
Or configure the logging hierarchy (all modules propagate to the parent):
import logging
logging.getLogger("ddcDatabases").setLevel(logging.DEBUG)
logging.getLogger("ddcDatabases").addHandler(logging.StreamHandler())
Development
Must have UV, Black, and Ruff installed.
Building DEV Environment and Running Tests
uv venv
uv sync --all-extras
poe linter
poe test
poe test-integration
Building the wheel from Source
poe build
License
Released under the MIT License
Support
If you find this project helpful, consider supporting development:
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