Skip to content

Anirudh257/libtim-py

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

libtim-py: miscellaneous data manipulation utils
================================================

About
=====

This library provides some routines to work with wavefront analysis, which can
be useful for (offline) wavefront sensor data processing.

Created by Tim van Werkhoven (werkhoven@strw.leidenuniv.nl).

Installation
============

This module can be installed using the standard NumPy distutils. Therefore,
simply running

   python setup.py install

will install this module to the default installation location. Running

   python setup.py

will start an interactive installation process.

Usage
=====

Documentation of routines can be found in the docstrings of the respective 
modules. Also, running doxygen in ./doc will extract the docstrings and present nicely formatted HTML documentation.

Testing
=======

To test this module, simply run

    nosetests

from the root directory, if you have it installed. Otherwise, run the test_* 
files in libtim/

To get more information, run

    nosetests-2.7  --pdb --with-coverage --with-profile

Add the flag --processes -1 to add multiprocessing (not working on my machine)

Version history
===============

20130123, 0.4.1
   * Added uptime parsing script
20130115, 0.4.0
   * Added dmmodel.py, models membrane mirrors
   * Various fixes/improvements
20121029, 0.3.0
   * Revamped unit tests
   * Added lightcurve.py 
20120531, 0.2.0
   * Various minor fixes
   * Added lightcurve.py 
20120510, v0.1.3
   * Added file I/O functions
   * Improved unit tests for file.py, util.py
20120509, v0.1.2
   * Improved Zernike performance
20120407, v0.1.1
   * Updated documentation
20120404
   * Resurrection, major code overhaul and restructuring
20100519, v0.1.0:
   * Initial version

About

Personal utility library

Resources

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 100.0%