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3 PhD positions in Sociology, Uppsala University

Uppsala University welcomes applications for two doctoral student positions in sociology based at the Department of Sociology. One further doctoral position will be appointed in urban sociology linked to the Institute for housing and urban research. https://www.ibf.uu.se/?languageId=1 Research groups at the Department include the Urban Sociology Research Group: https://www.soc.uu.se/research/research-groups/urban-sociology-group/

The Department seeks to appoint candidates with excellent academic merits who can demonstrate their potential for research in any area of sociology (two candidates) or in urban sociology (one candidate).

Type of employment: Successful candidates will be awarded employment as doctoral candidates for a full period of four years. Scope of employment: 100 % 

Contact the following for further information: Director of Graduate studies, Professor mailto: studierektor-fu@soc.uu.se, phone +46 18 471 51 83, or the Head of Department, Professor mailto: ilkka_henrik.makinen@soc.uu.se, phone +46 18 471 14 84. For the position in urban sociology, contact Professor Miguel Martinez mailto:miguel.martinez@ibf.uu.se, phone +4618 471 65 45.

You are welcome to submit your application no later than 12 March of 2020, UFV-PA 2020/533.

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