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-------- Original Message -------- ---------- Forwarded message ---------- From: mikiobraun <[EMAIL PROTECTED]> Date: 2008/9/8 Subject: [ML-news] Call for Submissions: Workshop on Machine Learning Open Source Software (MLOSS), NIPS*08 To: Machine Learning News <[EMAIL PROTECTED]> ********************************************************************** Call for Submissions Workshop on Machine Learning Open Source Software 2008 http://mloss.org/workshop/nips08 held at NIPS*08, Whistler, Canada, December 12th, 2008 ********************************************************************** The NIPS workshop on Workshop on Machine Learning Open Source Software (MLOSS) will held in Whistler (B.C.) on the 12th of December, 2008. Important Dates =============== * Submission Date: October 1st, 2008 * Notification of Acceptance: October 14th, 2008 * Workshop date: December 12 or 13th, 2008 Call for Contributions ====================== The organizing committee is currently seeking abstracts for talks at MLOSS 2008. 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 nips2008 * 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 1 October 2008, we will collect all projects tagged with nips2008 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. 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 123 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: John Eaton, the lead developer of Octave and John Hunter, the lead developer of matplotlib. * 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 NIPS, decisions and agreements taken at the workshop will have the potential to significantly impact the future of machine learning software. Invited Speakers ================ * John D. Hunter - Main author of matplotlib. * John W. Eaton - Main author of Octave. Tentative 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: 7:30am - 10:30am * Introduction and overview * Octave (John W. Eaton) * Contributed Talks * Discussion: What is a good mloss project? o Review criteria for JMLR mloss o Interoperable software o Test suites Afternoon session: 3:30pm - 6:30pm * Matplotlib (John D. Hunter) * Contributed Talks * Discussion: Reproducible research o Data exchange standards o Shall datasets be open too? How to provide access to data sets. o Reproducible research, the next level after UCI datasets. Program Committee ================= * Jason Weston (NEC Princeton, USA) * Gunnar Rätsch (FML Tuebingen, 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) * William Stafford Noble (Department of Genome Sciences Seattle, USA) * Klaus-Robert Mueller (Fraunhofer Institute First, Germany) * Geoff Holmes (University of Waikato, New Zealand) * Alain Rakotomamonjy (University of Rouen, France) Organizers ========== * Soeren Sonnenburg Fraunhofer FIRST Kekuléstr. 7, 12489 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 Funding ======= The workshop is supported by PASCAL (Pattern Analysis, Statistical Modelling and Computational Learning) --~--~---------~--~----~------------~-------~--~----~ You received this message because you are subscribed to the Google Groups "Machine Learning News" group. To post to this group, send email to [EMAIL PROTECTED] To unsubscribe from this group, send email to [EMAIL PROTECTED] For more options, visit this group at http://groups.google.com/group/ML-news?hl=en -~----------~----~----~----~------~----~------~--~--- _______________________________________________ Numpy-discussion mailing list Numpy-discussion@scipy.org http://projects.scipy.org/mailman/listinfo/numpy-discussion