Skip to main content
Warning: You are using the test version of PyPI. This is a pre-production deployment of Warehouse. Changes made here affect the production instance of TestPyPI (testpypi.python.org).
Help us improve Python packaging - Donate today!

ParALleL frAmework for moDel selectIOn

Project Description

# palladio ParALleL frAmework for moDel selectIOn

### Welcome to PALLADIO. PALLADIO is a machine learning framework whose purpose is to provide robust and reproducible results when dealing with data where the signal to noise ratio is low; it also provides tools to determine whether the dataset being analyzed contains any signal at all. PALLADIO works by repeating the same experiment many times, each time resampling the training and the test set so that the outcome is reliable as it is not determined by a single partition of the dataset. Besides, using permutation tests, a measure of how much experiments produce a reliable result is provided. Since all experiments performed are independent, PALLADIO is designed so that it can exploit a cluster where it is available.

### Dependencies ADENINE is developed using Python 2.7 and inherits its main functionalities from: * numpy * scipy * scikit-learn * mpi4py * matplotlib * seaborn

### Authors and Contributors Current developers: Matteo Barbieri (@matteobarbieri), Samuele Fiorini (@samuelefiorini) and Federico Tomasi (@fdtomasi).

### Support or Contact Having trouble with PALLADIO? Check out our [documentation](http://www.slipguru.unige.it/Software/palladio/) or contact us: * matteo [dot] barbieri [at] dibris [dot] unige [dot] it * samuele [dot] fiorini [at] dibris [dot] unige [dot] it * federico [dot] tomasi [at] dibris [dot] unige [dot] it

Release History

Release History

This version
History Node

0.1.1

Download Files

Download Files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

File Name & Checksum SHA256 Checksum Help Version File Type Upload Date
palladio-0.1.1.tar.gz (8.7 kB) Copy SHA256 Checksum SHA256 Source Jun 23, 2016

Supported By

WebFaction WebFaction Technical Writing Elastic Elastic Search Pingdom Pingdom Monitoring Dyn Dyn DNS Sentry Sentry Error Logging CloudAMQP CloudAMQP RabbitMQ Heroku Heroku PaaS Kabu Creative Kabu Creative UX & Design Fastly Fastly CDN DigiCert DigiCert EV Certificate Rackspace Rackspace Cloud Servers DreamHost DreamHost Log Hosting