www.acad.jobs : academic jobs worldwide – and the best jobs in industry
                
     
Position: Senior Research Fellow: IGP Data Lead
Institution: University College London
Department: Institute for Global Prosperity
Location: London, United Kingdom
Duties: The IGP is now looking for a creative individual who is passionate about using their data skills to make a difference to lead the IGPs data work in Lebanon, London and Kenya. This will mean leading the Prosperity Index team which works globally and exploring, innovative multidisciplinary methods to investigate and analyse secure livelihoods and pathways to global prosperity. This will include a range of insights, methods and tools from econometrics, anthropology, psychology, and behavioural economics; The post holder will be involved in all aspects of the IGPs work on data and will work closely with the Executive Leads of the IGPs global work and the Institute Director
Requirements: A good first degree (2: 1 or above), together with a PhD in Economics, Statistics or Quantitative Political and Social Sciences; The successful post holder will have excellent writing and presentation skills for promoting and reporting on research, and a demonstrable, active research profile at an international level and a substantial publication list. S/he will enjoy working as part of a diverse time on a project with international partners
   
Text: Senior Research Fellow: IGP Data Lead, - Ref:1878420 Click here to go back to search results Apply Now UCL Department / Division Institute for Global Prosperity Location of position London Grade 8 Hours Full Time Salary (inclusive of London allowance) £44,737 - £52,764 per annum Duties and Responsibilities The IGP is now looking for a creative individual who is passionate about using their data skills to make a difference to lead the IGPs data work in Lebanon, London and Kenya. This will mean leading the Prosperity Index team which works globally and exploring, innovative multidisciplinary methods to investigate and analyse secure livelihoods and pathways to global prosperity. This will include a range of insights, methods and tools from econometrics, anthropology, psychology, and behavioural economics. The post holder will be involved in all aspects of the IGPs work on data and will work closely with the Executive Leads of the IGPs global work and the Institute Director. Examples of the IGPs work can be found on https://seriouslydifferent.org/. This post is available immediately and funded until 31st March 2022 in the first instance, with the likelihood of extension by a further 9 months. Key Requirements A good first degree (2:1 or above), together with a PhD in Economics, Statistics or Quantitative Political and Social Sciences. The successful post holder will have excellent writing and presentation skills for promoting and reporting on research, and a demonstrable, active research profile at an international level and a substantial publication list. S/he will enjoy working as part of a diverse time on a project with international partners. Further Details A job description and person specification can be accessed at the bottom of this page. To apply, please click on the "Apply Now" button below. For further information on this role, please contact Dr Saffron Woodcraft: saffron.woodcraft@ucl.ac.uk. If you have any queries regarding the application process, please contact Yukiko Fujimoto: yukiko.fujimoto@ucl.ac.uk. UCL Taking Action for Equality Closing Date 19 Sep 2021 Latest time for the submission of applications 23:59 Interview date TBC This appointment is subject to UCL Terms and Conditions of Service for Research and Support Staff. Please use these links to find out more about UCL working life including the benefits we offer and UCL Terms and Conditions related to this job. Senior RA IGP Data Lead JD Apply Now
Please click here, if the job didn't load correctly.
Your browser does not support iframes. Please click <a href="https://www.acad.jobs/job.php?t_id=J000351487&redirect" target="_parent" style="color:#7A7A7A">here</a>, if the job didn't load correctly.