Python PostgreSQL adapter to stream results of multi-statement queries without a server-side cursor

Overview

streampq CircleCI Test Coverage

Stream results of multi-statement PostgreSQL queries from Python without server-side cursors. Has benefits over some other Python PostgreSQL libraries:

  • Streams results from complex multi-statement queries even though SQL doesn't allow server-side cursors for such queries - suitable for large amounts of results that don't fit in memory.

  • CTRL+C (SIGINT) by default behaves as expected even during slow queries - a KeyboardInterrupt is raised and quickly bubbles up through streampq code. Unless client code prevents it, the program will exit.

  • Every effort is made to cancel queries on KeyboardInterrupt, SystemExit, or errors - the server doesn't continue needlessly using resources.

Particularly useful when temporary tables are needed to store intermediate results in multi-statement SQL scripts.

Installation

pip install streampq

The libpq binary library is also required. This is typically either already installed, or installed by:

  • macOS + brew: brew install libpq
  • Linux (Debian): apt install libpq5
  • Linux (Red Hat):yum install postgresql-libs

The only runtime dependencies are libpq and Python itself.

Usage

from streampq import streampq_connect

# libpq connection paramters
# https://www.postgresql.org/docs/current/libpq-connect.html#LIBPQ-PARAMKEYWORDS
#
# Any can be ommitted and environment variables will be used instead
# https://www.postgresql.org/docs/current/libpq-envars.html
connection_params = (
    ('host', 'localhost'),
    ('port', '5432'),
    ('dbname', 'postgres'),
    ('user', 'postgres'),
    ('password', 'password'),
)

# SQL statement(s) - if more than one, separate by ;
sql = '''
    SELECT * FROM my_table;
    SELECT * FROM my_other_table;
'''

# Connection and querying is via a context manager
with streampq_connect(connection_params) as query:
    for (columns, rows) in query(sql):
        print(columns)  # Tuple of column names
        for row in rows:
            print(row)  # Tuple of row  values

PostgreSQL types to Python type decoding

There are 164 built-in PostgreSQL data types (including array types), and streampq converts them to Python types. In summary:

PostgreSQL types Python type
null None
text (e.g. varchar), xml, network addresses, and money str
byte (e.g. bytea) bytes
integer (e.g. int4) int
inexact real number (e.g. float4) float
exact real number (e.g. numeric) Decimal
date date
timestamp datetime (without timezone)
timestamptz datetime (with offset timezone)
json and jsonb output of json.loads
interval streampq.Interval
range (e.g. daterange) streampq.Range
multirange (e.g. datemultirange) tuples of streampq.Range
arrays and vectors tuple (of any of the above types, or of nested tuples)

To customise these, override the default value of the get_decoders parameter of the streampq_connect function in streampq.py.

In general, built-in types are preferred over custom types, and immutable types are preferred over mutable.

streampq.Interval

The Python built-in timedelta type is not used for PostgreSQL interval since timedelta does not offer a way to store PostgreSQL intervals of years or months, other than converting to days which would be a loss of information.

Instead, a namedtuple is defined, streampq.Interval, with members:

Member Type
years int
months int
days int
hours int
minutes int
seconds Decimal

streampq.Range

There is no Python built-in type for a PosgreSQL range. So for these, a namedtuple is defined, streampq.Range, with members:

Member Type
lower int, date, datetime (without timezone), or datetime (with offset timezone)
upper int, date, datetime (without timezone), or datetime (with offset timezone)
bounds str - one of (), (], [), or []

Bind parameters - literals

Dynamic SQL literals can be bound using the literals parameter of the query function. It must be an iterable of key-value pairs.

sql = '''
    SELECT * FROM my_table WHERE my_col = {my_col_value};
'''

with streampq_connect(connection_params) as query:
    for (columns, rows) in query(sql, literals=(
        ('my_col_value', 'my-value'),
    )):
        for row in rows:
            pass

Bind parameters - identifiers

Dynamic SQL identifiers, e.g. column names, can be bound using the identifiers parameter of the query function. It must be an iterable of key-value pairs.

sql = '''
    SELECT * FROM my_table WHERE {column_name} = 'my-value';
'''

with streampq_connect(connection_params) as query:
    for (columns, rows) in query(sql, identifiers=(
        ('column_name', 'my_col'),
    )):
        for row in rows:
            pass

Identifiers and literals use different escaping rules - hence the need for 2 different parameters.

Single-statement SQL queries

While this library is specialsed for multi-statement queries, it works fine when there is only one. In this case the iterable returned from the query function yields only a single (columns, rows) pair.

Exceptions

Exceptions derive from streampq.StreamPQError. If there is any more information available on the error, it's added as a string in its args property. This is included in the string representation of the exception by default.

Exception hierarchy

  • StreamPQError

    Base class for all explicitly-thrown exceptions

    • ConnectionError

      An error occurred while attempting to connect to the database.

    • QueryError

      An error occurred while attempting to run a query. Typically this is due to a syntax error or a missing column.

    • CancelError

      An error occurred while attempting to cancel a query.

    • CommunicationError

      An error occurred communicating with the database after successful connection.

Owner
Department for International Trade
Department for International Trade
A simple password manager I typed with python using MongoDB .

Python with MongoDB A simple python code example using MongoDB. How do i run this code • First of all you need to have a python on your computer. If y

31 Dec 06, 2022
A database migrations tool for SQLAlchemy.

Alembic is a database migrations tool written by the author of SQLAlchemy. A migrations tool offers the following functionality: Can emit ALTER statem

SQLAlchemy 1.7k Jan 01, 2023
A wrapper for SQLite and MySQL, Most of the queries wrapped into commands for ease.

Before you proceed, make sure you know Some real SQL, before looking at the code, otherwise you probably won't understand anything. Installation pip i

Refined 4 Jul 30, 2022
Python Wrapper For sqlite3 and aiosqlite

Python Wrapper For sqlite3 and aiosqlite

6 May 30, 2022
Databank is an easy-to-use Python library for making raw SQL queries in a multi-threaded environment.

Databank Databank is an easy-to-use Python library for making raw SQL queries in a multi-threaded environment. No ORM, no frills. Thread-safe. Only ra

snapADDY GmbH 4 Apr 04, 2022
A Python-based RPC-like toolkit for interfacing with QuestDB.

pykit A Python-based RPC-like toolkit for interfacing with QuestDB. Requirements Python 3.9 Java Azul

QuestDB 11 Aug 03, 2022
Query multiple mongoDB database collections easily

leakscoop Perform queries across multiple MongoDB databases and collections, where the field names and the field content structure in each database ma

bagel 5 Jun 24, 2021
Asynchronous interface for peewee ORM powered by asyncio

peewee-async Asynchronous interface for peewee ORM powered by asyncio. Important notes Since version 0.6.0a only peewee 3.5+ is supported If you still

05Bit 666 Dec 30, 2022
Use SQL query in a jupyter notebook!

SQL-query Use SQL query in a jupyter notebook! The table I used can be found on UN Data. Or you can just click the link and download the file undata_s

Chuqin 2 Oct 05, 2022
SAP HANA Connector in pure Python

SAP HANA Database Client for Python Important Notice This public repository is read-only and no longer maintained. The active maintained alternative i

SAP Archive 299 Nov 20, 2022
SpyQL - SQL with Python in the middle

SpyQL SQL with Python in the middle Concept SpyQL is a query language that combines: the simplicity and structure of SQL with the power and readabilit

Daniel Moura 853 Dec 30, 2022
A Redis client library for Twisted Python

txRedis Asynchronous Redis client for Twisted Python. Install Install via pip. Usage examples can be found in the examples/ directory of this reposito

Dorian Raymer 127 Oct 23, 2022
A CRUD and REST api with mongodb atlas.

Movies_api A CRUD and REST api with mongodb atlas. Setup First import all the python dependencies in your virtual environment or globally by the follo

Pratyush Kongalla 0 Nov 09, 2022
PostgreSQL database adapter for the Python programming language

psycopg2 - Python-PostgreSQL Database Adapter Psycopg is the most popular PostgreSQL database adapter for the Python programming language. Its main fe

The Psycopg Team 2.8k Jan 05, 2023
ClickHouse Python Driver with native interface support

ClickHouse Python Driver ClickHouse Python Driver with native (TCP) interface support. Asynchronous wrapper is available here: https://github.com/myma

Marilyn System 957 Dec 30, 2022
A HugSQL-inspired database library for Python

PugSQL PugSQL is a simple Python interface for using parameterized SQL, in files. See pugsql.org for the documentation. To install: pip install pugsql

Dan McKinley 558 Dec 24, 2022
Easy-to-use data handling for SQL data stores with support for implicit table creation, bulk loading, and transactions.

dataset: databases for lazy people In short, dataset makes reading and writing data in databases as simple as reading and writing JSON files. Read the

Friedrich Lindenberg 4.2k Jan 02, 2023
A simple python package that perform SQL Server Source Control and Auto Deployment.

deploydb Deploy your database objects automatically when the git branch is updated. Production-ready! ⚙️ Easy-to-use 🔨 Customizable 🔧 Installation I

Mert Güvençli 10 Dec 07, 2022
Make Your Company Data Driven. Connect to any data source, easily visualize, dashboard and share your data.

Redash is designed to enable anyone, regardless of the level of technical sophistication, to harness the power of data big and small. SQL users levera

Redash 22.4k Dec 30, 2022
A selection of SQLite3 databases to practice querying from.

Dummy SQL Databases This is a collection of dummy SQLite3 databases, for learning and practicing SQL querying, generated with the VS Code extension Ge

1 Feb 26, 2022