Metadata-Version: 1.1
Name: krypy
Version: 2.1.1
Summary: Krylov subspace methods for linear systems
Home-page: https://github.com/andrenarchy/krypy
Author: André Gaul
Author-email: gaul@web-yard.de
License: UNKNOWN
Description: # KryPy [![Build Status](https://travis-ci.org/andrenarchy/krypy.png?branch=master)](https://travis-ci.org/andrenarchy/krypy)
        
        KryPy is a Python (versions 2 and 3) module for Krylov subspace methods for the solution of linear algebraic systems. This includes enhanced versions of CG, MINRES and GMRES as well as methods for the efficient solution of sequences of linear systems.
        
        # Features
        
        KryPy gives you an easy-to-use yet flexible interface to Krylov subspace methods for linear algebraic systems. Compared to the implementations in [SciPy](http://docs.scipy.org/doc/scipy/reference/sparse.linalg.html) (or MATLAB), KryPy allows you to supply additional arguments that may help you to tune the solver for the specific problem you want to solve. The additional arguments may also be of interest if you are doing research on Krylov subspace methods. 
        
        Some features of KryPy are:
        
        *  **User-defined inner products** - useful when solving a linear algebraic system whose operator is self-adjoined in a non-Euclidean inner-product. This way, CG or MINRES can be applied to self-adjoined (but non-symmetric/non-Hermitian) operators easily.
        *  **Full control of preconditioners** - the order of applying preconditioners matters. This is why you can supply two left preconditioners (one of whom implicitly changes the inner product and thus has to be positive definite) and one right preconditioner. Take a look at the arguments ```M```, ```Ml``` and ```Mr```.
        *  **Get the Arnoldi/Lanczos basis and Hessenberg matrix** - you want to extract further information from the generated vectors (e.g. recycling)? Just pass the optional argument ```store_arnoldi=True```.
        *  **Explicitly computed residuals on demand** - if you do research on Krylov subspace methods or preconditioners, then you sometimes want to know the explicitly computed residual in each iteration (in contrast to an updated residual which can be obtained implicitly). Then you should pass the optional argument ```explicit_residual=True```.
        *  **Compute errors** - if you have (for research purposes) the exact solution at hand and want to monitor the error in each iteration instead of the residual, you can supply the optional argument ```exact_solution=x_exact``` to the ```LinearSystem```.
        
        # Usage
        
        ### Documentation
        The documentation is hosted at
        [krypy.readthedocs.org](http://krypy.readthedocs.org).
        
        ### Example
        ![GMRES convergence history](example.png)
        
        The above convergence history is obtained with the following example where the
        [Gmres](http://krypy.readthedocs.org/en/latest/krypy.linsys.html#krypy.linsys.Gmres)
        method is used to solve the linear system `A*x=b` with the diagonal matrix
        `A=diag(1e-3,2,...,100)` and right hand side `b=[1,...,1]`.
        ```python
        import numpy
        from krypy.linsys import LinearSystem, Gmres
        
        # create linear system and solve
        linear_system = LinearSystem(A=numpy.diag([1e-3]+range(2, 101)),
                                     b=numpy.ones((100, 1)))
        sol = Gmres(linear_system)
        
        # plot residuals
        from matplotlib import pyplot
        pyplot.semilogy(sol.resnorms)
        pyplot.show()
        ```
        Of course, this is just a toy example where you would not use GMRES in
        practice. KryPy can handle arbitrary large matrices - as long as the (hopefully
        sparse) matrices and the generated basis of the Krylov subspace fit into your
        memory. ;)
        Furthermore, in actual applications, you definitely want to adjust
        [Gmres](http://krypy.readthedocs.org/en/latest/krypy.linsys.html#krypy.linsys.Gmres)'
        parameters such as the residual tolerance.
        
        ### Help
        
        Help can be optained via Python's builtin help system. For example, you can use
        the ```?``` in ```ipython```:
        ```ipython
        from krypy.linsys import Gmres
        ?Gmres
        ```
        
        # Installing
        ### pip / PyPi
        Simply run ```pip install krypy```.
        
        ### Ubuntu
        There's an [Ubuntu PPA](https://launchpad.net/~andrenarchy/+archive/python) with packages for Python 2 and Python 3.
        
        ### Installing from source
        KryPy has the following dependencies:
        * NumPy
        * SciPy
        
        # Development
        
        KryPy is currently maintained by [André Gaul](http://www.math.tu-berlin.de/~gaul/). Feel free to contact André. Please submit feature requests and bugs as github issues.
        
        KryPy is developed with continuous integration. Current status: [![Build Status](https://travis-ci.org/andrenarchy/krypy.png?branch=master)](https://travis-ci.org/andrenarchy/krypy)
        
        
        # License
        
        KryPy is free software licensed under the [MIT License](http://opensource.org/licenses/mit-license.php).
        
        # References
        
        KryPy evolved from the [PyNosh](https://bitbucket.org/nschloe/pynosh) package (Python framework for nonlinear Schrödinger equations; joint work with [Nico Schlömer](https://github.com/nschloe)) which was used for experiments in the following publication:
        * [Modified Recycling MINRES with application to nonlinear Schrödinger problems, A. Gaul and N. Schlömer, arxiv: 1208.0264, 2012](http://arxiv.org/abs/1208.0264)
        
Platform: UNKNOWN
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Science/Research
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Classifier: Programming Language :: Python
Classifier: Programming Language :: Python :: 3
Classifier: Topic :: Scientific/Engineering :: Mathematics
Requires: numpy (>=1.7)
Requires: scipy (>=0.12)
