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selection criteria: Potential to conduct research internationally at a high level. Capacity for independent work. A very good knowledge of modern history. Experience of archival research. Knowledge
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high second-class honours undergraduate degree (or equivalent), and: A master’s degree or equivalent, or extensive and relevant research, professional or practitioner experience. Applications from non
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Action Plan for a national noise hot-spot. Ideal profile: honours degree (2.1 +/MSc) in environmental science, data science, public health, geography or similar; experience with R/Python statistics
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should include grades of relevant coursework, academic distinctions, research experience and other practical experiences. Please also include previous oral presentations and scientific writing experience
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motivation letter (max. 1–2 pages) clearly outlining your motivation, research experience, and relevant skills in relation to the project; 2. A full curriculum vitae; 3. The names and contact details
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with intellectual disabilities across counties Dublin, Kildare, and Meath. Stewarts’ mission is to empower and support individuals with different abilities to have an enriched life experience based
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to gain teaching experience. The supervisory team will include Dr Brenda McNally (PI) and co-supervisor Professor Karyn Morrissey. The project is also supported by an advisory board of international experts
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experience, and contact details for two academic referees. Academic transcripts/certificates (undergraduate and postgraduate). Writing sample: PhD proposal, thesis chapter, publication, or policy report
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English Desirable Experience editing or translating Latin texts Excellent communication skills Excellent organisational skills Good skills in medieval and/or early modern palaeography Good understanding
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manufacture. The PhD candidate will gain expertise in gene therapy production as well the experimental and computational steps required to capture and analyse transcriptional data at single cell resolution