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What’s Next in Libraries? 2015 : What’s Next in Libraries? Trends, Space, and Partnership


When Jan 21, 2015 - Jan 23, 2015
Where National Institute of Technology Silchar
Abstract Registration Due Nov 15, 2014
Submission Deadline Nov 20, 2014
Notification Due Dec 1, 2014
Final Version Due Dec 10, 2014

Call For Papers

I: Trends
•New Trends, Innovations LIS
•Lib 2.0: New Practices, Smart Mobile Applications in LIS,
•E-Learning and Information Literacy, Scholarly Publishing, Open Access, and Digital Libraries,
•Quality Assurance & Best Practices, Innovative Library Products & Services.

II: Space
•Recent Trends in Library Space,
•Space Design, Positioning, and service transformation,
•Case studies on library building and space planning,
•Users Perspective of Library Space,
•Green Library, Norms and Standards for Library Space,
•Security of Library Resources,
•Disaster Management in Libraries.

III. Partnerships
•Networking among Professionals,
•Collaborations, Joint Projects.

•Scholarly commons
•Library Spaces
•Library & Community Development

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