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Consolidación Investigadora 2022

Nov 6, 2022

The Ministry of Science and Innovation has just opened the call “Consolidación Investigadora” (Research consolidation). The objective of this call is to consolidate the professional career of researchers, national and foreign, so that they can develop their professional career and is funded with NextGenerationEU funds. The budget is 76 million euros.

Postdoc

The beneficiaries of these grants could be public research organisations, public universities and their university institutes, private universities, public and private non-profit health entities and institutions, accredited health research institutes, state-level technology centers and support centers for state-level technological innovation, and other public and private non-profit R+D+i centres.

This action is within the State Programme for the development, atraction and retainment of the talent. The deadline for applications to this call is 24th November, 2022.

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