Skip to content

exxeleron/qPython

Folders and files

NameName
Last commit message
Last commit date
Nov 25, 2015
Dec 26, 2018
Dec 26, 2018
Dec 26, 2018
May 12, 2017
Oct 22, 2014
Nov 5, 2014
Mar 20, 2017
Dec 26, 2018
Oct 21, 2016
Apr 1, 2014
Apr 16, 2018
May 29, 2014
Oct 22, 2014
Jun 4, 2014
Dec 26, 2018

Repository files navigation

This project is in maintenance mode. We may fix bugs, but no new features will be added in foreseeable future.

qPython

qPython is a Python library providing support for interprocess communication between Python and kdb+ processes, it offers:

  • Synchronous and asynchronous queries
  • Convenient asynchronous callbacks mechanism
  • Support for kdb+ protocol and types: v3.0, v2.6, v<=2.5
  • Uncompression of the IPC data stream
  • Internal representation of data via numpy arrays (lists, complex types) and numpy data types (atoms)
  • Supported on Python 2.7/3.4/3.5/3.6 and numpy 1.8+

For more details please refer to the documentation.

Installation

To install qPython from PyPI:

$ pip install qpython

Please do not use old PyPI package name: exxeleron-qpython.

Building package

Documentation

qPython documentation is generated with help of Sphinx document generator. In order to build the documentation, including the API docs, execute: make html from the doc directory.

Documentation is built into the: doc/build/html/ directory.

Compile Cython extensions

qPython utilizes Cython to tune performance critical parts of the code.

Instructions:

  • Execute: python setup.py build_ext --inplace

Build binary distribution

Instructions:

  • Execute: python setup.py bdist

Testing

qPython uses py.test as a test runner for unit tests.

Instructions:

  • Make sure that top directory is included in the PYTHONPATH
  • Execute: py.test

Requirements

qPython requires numpy 1.8 to run.

Optional requirements have to be met to provide additional features:

  • tune performance of critical parts of the code:
    • Cython 0.20.1
  • support serialization/deserialization of pandas.Series and pandas.DataFrame
    • pandas 0.14.0
  • run Twisted sample:
    • Twisted 13.2.0
  • build documentation via Sphinx:
    • Sphinx 1.2.3
    • mock 1.0.1

Required libraries can be installed using pip.

To install all the required dependencies, execute: pip install -r requirements.txt

Minimal set of required dependencies can be installed by executing: pip install -r requirements-minimal.txt