Dates: June 13 (Monday) to June 24 (Friday), 2011
Venue: Purdue University, West Lafayette, Indiana
Hosts: Departments of Statistics and Computer Science.
Additional support: Purdue University Discovery Park.
The summer school is now over. Thanks to everybody who participated.
Videos of the lectures are available from http://www.youtube.com/playlist?list=PL2A65507F7D725EFB&feature=view_all
Thanks to Vasil Denchev and Hyokun Yun for recording the videos and Pinar Yanardag for uploading them.
Photo credits: My D. Truong
More photos can be found here
Machine Learning is a foundational discipline of the Information Sciences. It combines deep theory from areas as diverse as Statistics, Mathematics, Engineering, and Information Technology with many practical and relevant real life applications. The aim of the summer school is to cover the entire spectrum from theory to practice. It is mainly targeted at research students, IT professionals, and academics from all over the world.
This school is suitable for all levels, both for people without previous knowledge in Machine Learning, and those wishing to broaden their expertise in this area. It will allow the participants to get in touch with international experts in this field. Exchange of students, joint publications and joint projects will result because of this collaboration.
For research students, the summer school provides a unique, high-quality, and intensive period of study. It is ideally suited for students currently pursuing, or intending to pursue, research in Machine Learning or related fields. Limited scholarships are available for students to cover accommodation and registration costs. If funds are available partial travel support might also be provided.
IT professionals who use Machine Learning will find that the summer school provides relevant knowledge and exposure to contemporary techniques. In addition, they will benefit by direct interaction with top-notch researchers and knowledge workers. Previous experience indicates that personnel from both the industry as well as national laboratories benefit immensely from the school.
For academics, the summer school is an excellent opportunity to help getting started in research on novel topics in Machine Learning. It provides an ideal forum for networking and discussions. Academics will also benefit from interaction with IT professionals which will lead to a deeper understanding of real life problems.