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5th IPBLS 2017 : 5th Interntaional Problem-Based Learning (PBL) Symposium 2017

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Link: http://www.rp.edu.sg/Call-for-Papers.aspx
 
When Mar 15, 2017 - Mar 17, 2017
Where Republic Polytechnic Singapore
Submission Deadline Oct 15, 2016
Notification Due Nov 1, 2016
Categories    curriculum and pedagogy   student learning experience   assessment and evaluation   professional development
 

Call For Papers

Symposium Theme: PBL and the Future of Skills

As the theme suggests, we contend that PBL provides a solutions-focused approach to learning which promotes inquiry, sense-making, and collaboration – these are critical attributes needed for the further development of skills in existing and emerging industries. In addition, it nurtures resourcefulness and communication capabilities.

The 5th IPBLS2017 brings together a community of professionals comprising teachers, academics, trainers, practitioners and industry partners to deliberate on ideas and contributions in exploring PBL as a pedagogical leverage, together with technological advancements, to produce a skilful, responsive and adaptable workforce in an increasingly fast-changing and complex work environment in the 21st century.

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