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J. Maize Res. & Dev. 2015 : Journal of Maize Research and Development, ISSN: 2467-9283 (Print)/2467-9291 (Online)


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Submission Deadline TBD

Call For Papers

Journal of Maize Research and Development e-ISSN:2467-9291/p-ISSN:2467-9283 is dedicated to publishing high-quality original research and review articles on maize breeding, genetics, agronomy, entomology, pathology, post harvest, soil science, botany, physiology, conservation agriculture and climate change effect on maize, maize economics, up-scaling research on maize and plant biotechnological approaches for maize improvement. The main objective of this journal is to serve as a platform for the international scholars, academicians, researchers, and extensonists to share the innovative research findings in maize. This journal is an online open access international, peer reviewed and official journal published annually in month of December by National Maize Research Program, Rampur, Chitwan, Nepal.

Call for papers for Vol. 2, No.1, December 2016
Submit your manuscript to below emials ; or

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