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ICMSE 2019 : [Ei & SCOPUS] 2019 International Conference on Materials Science and Engineering


When Dec 26, 2019 - Dec 28, 2019
Where Kyoto, Japan
Submission Deadline Sep 10, 2019
Notification Due Sep 30, 2019
Final Version Due Oct 15, 2019

Call For Papers

Prof Masaru Tanaka from Institute for Materials Chemistry and Engineering, Kyushu University, Japan will be our conference chair. Assoc. Prof. Wong Wah Sang from Department of Architecture, University of Hong Kong wil give keynote speach.

After a careful reviewing process by at least 2-3 experts, all accepted and registered papers will be published in "Materials Science Forum" (ISSN: 1662-9752), which will be indexed by Ei Compendex and SCOPUS, SCImago Journal & Country Rank (SJR), Inspec.

Submission Deadline Before Sept 10, 2019
Notification of Acceptance On Sept 30, 2019
Registration Deadline Before Oct 15, 2019
Conference Dates On Dec 26-28, 2019

Paper submission:
1.Conference Submission System:

Conference Secretary: Ms. Hanna Sun
Tell:+852-3115-9549 (Hong Kong)
Conference website:

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