EU eLearning Conference 2006

Technology Enhanced Learning – Catalyst for Change and Innovation
4-5 July 2006

The event is held during the opening week of Finland’s EU Presidency in July 2006. The conference aims at bringing experts from the fields of technology, education and training, research, industry and governmental organisations together to discuss the European vision on the role of technology in promoting lifelong learning, innovation and desirable change.

In the conference workshops the participants will explore developments and perspectives in the areas of digital literacy, inclusion, research and innovation, foresight and partnerships for lifelong learning. The results of the conference will contribute to the Commission's communication on the use of ICT to support innovation and lifelong learning. The communication will be adopted later this year.

In addition to keynote addresses and interactive workshops the conference exhibition will present the latest project results from across Europe. Presentations and workshop findings will be published after the conference.

Conference will be interactive, a real time event. The working method known as 'Learning Café' is based on 'World Café' and has been successfully implemented in a number of European expert events.

For further information, please visit:
www.elearning2006.fi

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