Senior Research Officer and Data Scientist

Swansea University / Prifysgol Abertawe
Swansea
3 months ago
Applications closed

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Senior Research Officer and Data Scientist

Join to apply for the Senior Research Officer and Data Scientist role at Swansea University / Prifysgol Abertawe


About The University

Swansea University is a research‑led university that has been making a difference since 1920. The University community thrives on exploration and discovery and offers the right balance of excellent teaching and research, matched by an enviable quality of life.


Our stunning waterfront campuses and multicultural community make us a desirable workplace for colleagues from around the world. Our reward and benefits, and ways of working enable those who join us to have enriching careers, matched by an excellent work‑life balance.


About The Role

This is a Fixed Term post until 31st December 2028 working full‑time.


The Population Data Science group at Swansea University (https://popdatasci.swan.ac.uk/) supports world‑leading research to develop cutting‑edge analytical tools and methodologies to address the most pressing health research challenges. Home to Researchers & Data Scientists who focus on a range of projects and programmes that seek to improve services and people's lives through population data science research. This multidisciplinary team works in a fast‑moving, agile environment and is committed to demonstrating the value of data science to a range of technical and non‑technical audiences. Our group works as part of multidisciplinary collaborations involving members of the public, researchers, policymakers, and service leads across a range of organisations, including Welsh Government, academia, public health, health and social care, and third‑sector organisations in Wales and the UK. Utilising the Secure Anonymised Information Linkage (SAIL) Databanks (www.saildatabank.co.uk) rich anonymised population‑scale, individual‑level, linked data sources to answer important population‑level questions that inform policy and evaluate national programmes and projects. The role will also involve using data from across the UK. We are looking for a Senior Research Officer & Data Scientist to join our team, working closely with various stakeholders, organisations, and groups.


The Senior Research Officer & Data Scientist will be part of the Cancer Data Driven (CD3) Programme. CD3 is a new, multidisciplinary and multi‑institutional strategic national research programme dedicated to using data to transform our understanding of cancer risk and enable early interception of cancers. It represents a major, multi‑million‑pound flagship investment funded through a strategic programme award by Cancer Research UK, the National Institute for Health and Care Research (NIHR), Engineering and Physical Sciences Research Council (EPSRC), and the Peter Sowerby Foundation; in partnership with Health Data Research UK (HDR UK) and the Economic and Social Research Council (ESRC) Administrative Data Research UK programme (ADR UK).


Equality, Diversity & Inclusion

The University is committed to supporting and promoting equality and diversity in all its practices and activities. We aim to establish an inclusive environment and welcome diverse applications from the following protected characteristics: age, disability, gender reassignment, marriage and civil partnership, pregnancy and maternity, race (including colour, nationality, ethnic and national origin), religion or belief, sex, sexual orientation. As an inclusive and welcoming workplace, we value people for their skills regardless of their background. Applications are welcome in Welsh and will not be treated less favourably than those submitted in English. Welsh speakers have the right to an interview in Welsh. Applicants for a role where Welsh skills are essential are expected to present their application in Welsh and will be interviewed in Welsh, if shortlisted.


Welsh Language Skills

The Welsh language level required for this role is Level 1 - A little. The role holder will be able to pronounce Welsh words, answer the phone in Welsh (good morning/afternoon) and use very basic everyday words and phrases (thank you, please etc.). Level 1 can be reached by completing a 1 hour course. The University is a proud bilingual institution, our Welsh Language Strategy outlines our aspiration to promote the language and enable our staff to engage with the language as an additional workplace skill and as a gateway to new cultural and social opportunities. Applications are welcome in Welsh and will not be treated less favourably than those submitted in English. Welsh speakers have the right to an interview in Welsh.


Additional Information

Applications for this role will take the format of a CV submission and cover letter.


Seniority level

Mid‑Senior level


Employment type

Full‑time


Job function

Research, Analyst, and Information Technology


Industries

Research Services


Salary: £25,000.00-£25,000.00


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