To accomodate researchers waiting for decisions on their ICML papers (due 
April 16) before committing to travel to Haifa, the submission deadline for the 
Machine Learning Open Source Software (MLOSS) 2010 workshop has been 
extended to April 23. As a result of this, we have also pushed back the 
acceptance notification to May 8.  

The updated Call for Contributions is given below.

**********************************************************************

                     Call for Contributions

     Workshop on Machine Learning Open Source Software 2010
               http://mloss.org/workshop/icml10/

                 at ICML 2010, Haifa, Israel,
                      25th of June, 2010

**********************************************************************

The ICML workshop on Workshop on Machine Learning Open Source Software
(MLOSS) will held in Haifa, Israel on the 25th of June 2010.

Important Dates
===============

        * Submission Date: April 23rd, 2010
        * Notification of Acceptance: May 8th, 2010
        * Workshop date: June 25th, 2010


Call for Contributions
======================

The organizing committee is currently seeking abstracts for talks 
at MLOSS 2010. MLOSS is a great opportunity for you to tell the 
community about your use, development, or philosophy of open source 
software in machine learning. This includes (but is not limited to) 
numeric packages (as e.g. R,octave,numpy), machine learning toolboxes 
and implementations of ML-algorithms. The committee will select several 
submitted abstracts for 20-minute talks.

The submission process is very simple:

 * Tag your mloss.org project with the tag icml2010

 * Ensure that you have a good description (limited to 500 words)

 * Any bells and whistles can be put on your own project page, and
   of course provide this link on mloss.org

On April 23rd 2010, we will collect all projects tagged with icml2010 
for review.

Note: Projects must adhere to a recognized Open Source License
(cf. http://www.opensource.org/licenses/ ) and the source code must
have been released at the time of submission. Submissions will be
reviewed based on the status of the project at the time of the
submission deadline. 


Description
===========

We believe that the wide-spread adoption of open source software
policies will have a tremendous impact on the field of machine
learning. The goal of this workshop is to further support the current
developments in this area and give new impulses to it. Following the
success of the inaugural NIPS-MLOSS workshop held at NIPS 2006, the
Journal of Machine Learning Research (JMLR) has started a new track
for machine learning open source software initiated by the workshop's
organizers. Many prominent machine learning researchers have
co-authored a position paper advocating the need for open source
software in machine learning. To date 11 machine learning open source
software projects have been published in JMLR. Furthermore, the
workshop's organizers have set up a community website mloss.org where
people can register their software projects, rate existing projects
and initiate discussions about projects and related topics. This
website currently lists 221 such projects including many prominent
projects in the area of machine learning.

The main goal of this workshop is to bring the main practitioners in
the area of machine learning open source software together in order to
initiate processes which will help to further improve the development
of this area. In particular, we have to move beyond a mere collection
of more or less unrelated software projects and provide a common
foundation to stimulate cooperation and interoperability between
different projects. An important step in this direction will be a
common data exchange format such that different methods can exchange
their results more easily.

This year's workshop sessions will consist of three parts.

 * We have two invited speakers: Gary Bradski and Victoria Stodden.

 * Researchers are invited to submit their open source project to 
   present it at the workshop.

 * In discussion sessions, important questions regarding the future 
   development of this area will be discussed. In particular, we 
   will discuss what makes a good machine learning software project 
   and how to improve interoperability between programs. In 
   addition, the question of how to deal with data sets and 
   reproducibility will also be addressed.    

Taking advantage of the large number of key research groups which 
attend ICML, decisions and agreements taken at the workshop will have 
the potential to significantly impact the future of machine learning 
software.


Invited Speakers
================

 * Gary Bradski One of the main authors of OpenCV. (tentatively 
   confirmed)

   Gary Bradski was previously responsible for the Open Source 
   Computer Vision Library (OpenCV) that is used globally in 
   research, government and commercial applications. He has also 
   been responsible for the open source statistical Machine 
   Learning Library and the Probabilistic Network Library. More 
   recently Dr. Bradski led the vision team for Stanley, the 
   Stanford robot that won the DARPA Grand Challenge autonomous 
   race in 2005 and most recently helped found the Stanford 
   Artificial Intelligence Robot (STAIR) project under the 
   leadership of Professor Andrew Ng. Dr. Bradski recently published 
   a new book for O'Reilly Press: Learning OpenCV: Computer Vision 
   with the OpenCV Library.

 * Victoria Stodden

   Victoria Stodden is a Postdoctoral Associate in Law and a Kauffman
   Fellow in Law at the Information Society Project at Yale Law
   School. After completing her PhD in statistics at Stanford
   University in 2006 with advisor David Donoho, she obtained a
   Master in Legal Studies in 2007 from Stanford Law School. She is
   developing a new licensing structure for computational research
   and author of the award winning paper "Reproducible Research
   Standard" that describes her ideas.


Workshop Program
================

The 1 day workshop will be a mixture of talks (including a mandatory
demo of the software) and panel/open/hands-on discussions. 

Morning session: 09:00 - 12:00

    * Introduction and overview
    * Contributed Talks
    * Invited Talk: OpenCV (Gary Bradski)
    * Contributed Talks
    * Discussion: Exchanging Software and Data

Afternoon session: 14:00 - 17:00

    * Contributed Talks
    * Invited Talk: The Reproducible Research Standard 
      (Victoria Stodden)
    * Discussion: Reproducible research


Program Committee
=================

 * Jason Weston (Google Research, NY, USA)
 * Leon Bottou (NEC Princeton, USA)
 * Tom Fawcett (Stanford Computational Learning Laboratory, USA)
 * Sebastian Nowozin (Microsoft Research, UK)
 * Konrad Rieck (Technische Universität Berlin, Germany)
 * Lieven Vandenberghe (University of California LA, USA)
 * Joachim Dahl (Aalborg University, Denmark)
 * Torsten Hothorn (Ludwig Maximilians University, Munich, Germany)
 * Asa Ben-Hur (Colorado State University, USA)
 * Klaus-Robert Mueller (Fraunhofer Institute First, Germany)
 * Geoff Holmes (University of Waikato, New Zealand)
 * Peter Reutemann (University of Waikato, New Zealand)
 * Markus Weimer (Yahoo Research, California, USA)
 * Alain Rakotomamonjy (University of Rouen, France)


Organizers
==========

 * Soeren Sonnenburg, 
   Technische Universität Berlin, Franklinstr. 28/29, FR 6-9, 
   10587 Berlin, Germany

 * Mikio Braun
   Technische Universität Berlin, Franklinstr. 28/29, FR 6-9, 
   10587 Berlin, Germany

 * Cheng Soon Ong
   ETH Zürich, Universitätstr. 6, 8092 Zürich, Switzerland

 * Patrik Hoyer
   Helsinki Institute for Information Technology, 
   Gustaf Hällströmin katu 2b, 00560 Helsinki, Finland


Funding
=======

The workshop is supported by PASCAL (Pattern Analysis, Statistical
Modelling and Computational Learning)
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