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Scholarship Opportunity : ADB-Japan Scholarship Program for Developing Countries in Asia and Pacific

 Programs covered by the ADB-JSP are postgraduate studies in economics, management, health, education, agriculture, environment, natural resource management, science and technology, and other development-related fields.


Click here to apply.

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