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Pure Python DB-API 2.0 driver for CUBRID database

Project description

pycubrid

Pure Python DB-API 2.0 driver for the CUBRID database — no C extensions, no compilation, implements the PEP 249 (DB-API 2.0) interface.

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Status: Beta. The core public API follows semantic versioning; minor releases may add features and bug fixes while the project remains under active development.

Why pycubrid?

CUBRID is a high-performance open-source relational database, widely adopted in Korean public-sector and enterprise applications. The existing C-extension driver (CUBRIDdb) had build dependencies and platform compatibility issues.

pycubrid solves these problems:

  • Pure Python implementation — no C build dependencies, install with pip install only
  • Implements PEP 249 (DB-API 2.0) — standard exception hierarchy, type objects, cursor interface
  • 770 offline tests / 811 total with 97.29% code coverage — most tests run without a database
  • TLS/SSL for sync connections — opt-in ssl=True (verified context) or custom ssl.SSLContext on connect()
  • Native asyncio support — async/await API via pycubrid.aio for high-concurrency applications
  • PEP 561 typed packagepy.typed marker for modern IDE and static analysis support
  • Direct CUBRID CAS protocol implementation — no additional middleware required
  • LOB (CLOB/BLOB) support — handle large text and binary data

Requirements

  • Python 3.10+
  • CUBRID database server 10.2+

Installation

pip install pycubrid

Quick Start

Basic Connection

import pycubrid

conn = pycubrid.connect(
    host="localhost",
    port=33000,
    database="testdb",
    user="dba",
    password="",
)

cur = conn.cursor()
cur.execute("SELECT 1 + 1")
print(cur.fetchone())  # (2,)

cur.close()
conn.close()

Context Manager

import pycubrid

with pycubrid.connect(host="localhost", port=33000, database="testdb", user="dba") as conn:
    with conn.cursor() as cur:
        cur.execute("CREATE TABLE IF NOT EXISTS cookbook_users (id INT AUTO_INCREMENT PRIMARY KEY, name VARCHAR(100))")
        cur.execute("INSERT INTO cookbook_users (name) VALUES (?)", ("Alice",))
        conn.commit()

        cur.execute("SELECT * FROM cookbook_users")
        for row in cur:
            print(row)

Async

import asyncio
import pycubrid.aio

async def main():
    conn = await pycubrid.aio.connect(
        host="localhost", port=33000, database="testdb", user="dba"
    )
    cur = conn.cursor()
    await cur.execute("SELECT 1 + 1")
    print(await cur.fetchone())  # (2,)
    await cur.close()
    await conn.close()

asyncio.run(main())

Parameter Binding

# qmark style (question marks)
cur.execute("SELECT * FROM users WHERE name = ? AND age > ?", ("Alice", 25))

# Batch insert with executemany
data = [("Alice", 30), ("Bob", 25), ("Charlie", 35)]
cur.executemany("INSERT INTO users (name, age) VALUES (?, ?)", data)
conn.commit()

Parameterized Queries

sql = "SELECT * FROM users WHERE department = ?"

cur.execute(sql, ("Engineering",))
engineers = cur.fetchall()

cur.execute(sql, ("Marketing",))
marketers = cur.fetchall()

PEP 249 Compliance

Attribute Value
apilevel "2.0"
threadsafety 1 (connections cannot be shared between threads)
paramstyle "qmark" (positional parameters ?)
  • Full standard exception hierarchy: Warning, Error, InterfaceError, DatabaseError, OperationalError, IntegrityError, InternalError, ProgrammingError, NotSupportedError
  • Standard type objects: STRING, BINARY, NUMBER, DATETIME, ROWID
  • Standard constructors: Date(), Time(), Timestamp(), Binary(), DateFromTicks(), TimeFromTicks(), TimestampFromTicks()

Features

  • Pure Python — no C extensions, no compilation, works everywhere Python runs
  • Complete DB-API 2.0connect(), Cursor, fetchone/many/all, executemany, callproc
  • Parameterized queriescursor.execute(sql, params) with server-side PREPARE_AND_EXECUTE
  • Batch operationsexecutemany() and executemany_batch() for bulk inserts
  • LOB supportcreate_lob(), read/write CLOB and BLOB columns
  • Schema introspectionget_schema_info() for tables, columns, indexes, constraints
  • Auto-commit controlconnection.autocommit property for transaction management
  • Server version detectionconnection.get_server_version() returns version string (e.g., "11.2.0.0378")
  • Iterator protocol — iterate over cursor results with for row in cursor
  • Context managerswith statements for both connections and cursors
  • Async supportpycubrid.aio.connect() with AsyncConnection and AsyncCursor for asyncio event loops

Supported CUBRID Versions

The project targets CUBRID 10.x and 11.x and is validated in CI against:

  • 10.2
  • 11.0
  • 11.2
  • 11.4

SQLAlchemy Integration

pycubrid works as a driver for sqlalchemy-cubrid — the SQLAlchemy 2.0 dialect for CUBRID:

pip install "sqlalchemy-cubrid[pycubrid]"
from sqlalchemy import create_engine, text

engine = create_engine("cubrid+pycubrid://dba@localhost:33000/testdb")

with engine.connect() as conn:
    result = conn.execute(text("SELECT 1"))
    print(result.scalar())

SQLAlchemy features (ORM, Core, Alembic migrations, schema reflection) are accessible through the pycubrid driver when used with sqlalchemy-cubrid.

Documentation

Guide Description
Connection Connection strings, URL format, configuration
Type Mapping Full type mapping, CUBRID-specific types, collection types
API Reference Complete API documentation — modules, classes, functions
Protocol CAS wire protocol reference
Development Dev setup, testing, Docker, coverage, CI/CD
Examples Practical usage examples with code
Troubleshooting Connection errors, query problems, LOB handling, debugging

Compatibility

Python 3.10 Python 3.11 Python 3.12 Python 3.13 Python 3.14
Offline Tests
CUBRID 11.4 -- -- --
CUBRID 11.2 -- -- --
CUBRID 11.0 -- -- --
CUBRID 10.2 -- -- --

CI runs the matrix above on every PR/push (Python 3.10 + 3.14 anchors × all CUBRID versions). The full 5 × 4 Python × CUBRID matrix runs nightly, on tagged releases, and on demand via workflow_dispatch.

Architecture

graph TD
    app[Application]
    pycubrid[pycubrid Connection/Cursor]
    cas[CAS Protocol]
    server[CUBRID Server]

    app --> pycubrid
    pycubrid --> cas
    cas --> server
graph TD
    root[pycubrid/]
    init[__init__.py - Public API connect(), types, exceptions, __version__]
    connection[connection.py - Connection class connect/commit/rollback/cursor/LOB]
    cursor[cursor.py - Cursor class execute/fetch/executemany/callproc/iterator]
    types[types.py - DB-API 2.0 type objects and constructors]
    exceptions[exceptions.py - PEP 249 exception hierarchy]
    constants[constants.py - CAS function codes, data types, protocol constants]
    protocol[protocol.py - CAS wire protocol packet classes (18 packet types)]
    packet[packet.py - Low-level packet reader/writer]
    lob[lob.py - LOB support]
    typed[py.typed - PEP 561 marker]

    root --> init
    root --> connection
    root --> cursor
    root --> types
    root --> exceptions
    root --> constants
    root --> protocol
    root --> packet
    root --> lob
    root --> typed
    root --> aio
    aio[aio/ - AsyncConnection, AsyncCursor, async connect()]

FAQ

How do I connect to CUBRID with Python?

import pycubrid
conn = pycubrid.connect(host="localhost", port=33000, database="testdb", user="dba")

How do I install pycubrid?

pip install pycubrid — no C extensions or build tools required.

What parameter style does pycubrid use?

Question mark (qmark) style: cursor.execute("SELECT * FROM users WHERE id = ?", (1,))

Does pycubrid work with SQLAlchemy?

Yes. Install pip install "sqlalchemy-cubrid[pycubrid]" and use the connection URL cubrid+pycubrid://dba@localhost:33000/testdb.

What Python versions are supported?

Python 3.10, 3.11, 3.12, 3.13, and 3.14.

Does pycubrid support LOBs (CLOB/BLOB)?

Yes. Insert strings/bytes directly into CLOB/BLOB columns. For reading, LOB columns return data that can be accessed through the cursor.

Is pycubrid thread-safe?

pycubrid has threadsafety = 1, meaning connections cannot be shared between threads. Create a separate connection per thread.

What CUBRID versions are supported?

CUBRID 10.2, 11.0, 11.2, and 11.4 are tested in CI.

Does pycubrid support async/await?

Yes. Use pycubrid.aio.connect() for native asyncio support. The async surface is similar to the sync API, but AsyncConnection does not expose sync-only ping() or create_lob(), and auto-commit changes use await conn.set_autocommit(...) instead of a property setter.

Related Projects

Roadmap

See ROADMAP.md for this project's direction and next milestones.

For the ecosystem-wide view, see the CUBRID Labs Ecosystem Roadmap and Project Board.

Contributing

See CONTRIBUTING.md for guidelines and docs/DEVELOPMENT.md for development setup.

Security

Report vulnerabilities via email — see SECURITY.md. Do not open public issues for security concerns.

License

MIT — see LICENSE.

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