At a Glance
- Tasks: Develop and evaluate statistical models for near-term population forecasting in ecology.
- Company: Join a leading interdisciplinary team across top UK universities.
- Benefits: Competitive salary, collaborative environment, and opportunities for professional growth.
- Other info: Engage with conservation partners and contribute to open science initiatives.
- Why this job: Make a real impact on conservation through innovative ecological forecasting.
- Qualifications: PhD or equivalent experience in quantitative ecology or statistics required.
The predicted salary is between 38784 - 39906 € per year.
We are seeking a highly motivated and quantitatively skilled Research Associate to join an exciting NERC-funded project, Harnessing Ensemble Models for Robust Near‑Term Population Forecasts under Environmental Change. This project addresses a central challenge in ecology and conservation: how to generate reliable, decision‑relevant forecasts of population dynamics in rapidly changing environments. The successful candidate will work at the forefront of near‑term ecological forecasting (NTEF), developing and applying ensemble modelling approaches that integrate multiple sources of ecological information to improve predictive performance.
The role offers a unique opportunity to contribute to a highly interdisciplinary programme that combines theoretical and computational modelling, experimental validation using high‑resolution population data, and application to world‑leading long‑term datasets (e.g. Soay sheep). The postholder will work closely with an established international team spanning the Universities of Sheffield, Bristol, and Edinburgh, and engage with external partners in the conservation sector. The project places strong emphasis on open science, reproducible workflows, and real‑world impact, including the development of forecasting tools for practitioners. This is an ideal role for a researcher looking to develop independence at the interface of quantitative ecology, statistical modelling, and applied conservation science, while contributing to research with societal relevance.
Main duties and responsibilities
- The Research Associate will contribute to all aspects of the project, with a primary focus on the development and evaluation of forecasting models.
- Develop, implement, and evaluate statistical and computational models for near‑term population forecasting, including time‑series (e.g. state‑space/MARSS) approaches and demographic (e.g. IPM/MPM) approaches.
- Design and test ensemble modelling frameworks, including hierarchical/meta‑model approaches for combining forecasts.
- Conduct simulation studies to evaluate forecasting performance across ecological and data scenarios.
- Analyse complex ecological datasets, including experimental microcosm data and long‑term field datasets.
- Contribute to the development of robust, reproducible analytical pipelines in R (or similar environments).
- Integrate across work packages – work across simulation, experimental, and real‑world applications to assess model performance under different sources of uncertainty.
- Contribute to the application of forecasting approaches to long‑term population datasets (e.g. Soay sheep).
Dissemination and outputs
- Publish research findings in high‑quality peer‑reviewed journals.
- Present results at national and international conferences and project meetings.
- Contribute to the development of open‑source tools, codebases, and documentation to support uptake of forecasting methods.
Collaboration and project contribution
- Work collaboratively with project partners across institutions and disciplines.
- Contribute to project meetings, workshops, and synthesis activities.
- Engage with non‑academic stakeholders (e.g. conservation organisations) to support the development of tools and outputs.
Wider contributions
- Support the supervision of postgraduate research students where appropriate.
- Maintain high standards of data management, documentation, and research integrity.
- Carry out other duties, commensurate with the grade and remit of the post.
Person Specification
- PhD (or be close to completion / have equivalent postdoctoral level work experience) in a relevant discipline, such as quantitative ecology, statistics, or a related field. (Essential)
- Strong quantitative and analytical skills, with experience applying statistical approaches to ecological or environmental data. (Essential)
- Experience with relevant modelling approaches, such as time‑series methods or demographic projection models. (Essential)
- Experience using programming tools for data analysis (e.g. R, Stan or similar), with an emphasis on reproducible workflows. (Essential)
- Experience contributing to shared code or research databases, including collaborative development practices such as version control. (Desirable)
- Experience engaging with applied or stakeholder‑relevant research, including translating research outputs for non‑academic users. (Desirable)
- Ability to design, implement, and deliver independent research, contributing to a broader collaborative project. (Essential)
- Strong problem‑solving skills, particularly in working with uncertain, noisy, or incomplete data. (Essential)
- Effective written and verbal communication skills, including the ability to present complex ideas clearly. (Essential)
- Evidence of producing, or clear potential to produce, high‑quality research outputs (e.g. publications, preprints, reports). (Essential)
- Good organisational and time management skills, with the ability to manage multiple priorities and meet deadlines. (Essential)
- Commitment to high standards of research practice, including data management, documentation, and reproducibility. (Essential)
Further Information
- Grade: 7
- Salary: £38,784 – £39,906 per annum
- Work arrangement: Full‑time (100% FTE)
- Duration: Fixed‑term, available from 1 July 2026 (or as soon as possible thereafter) for a period of 36 months
- Line manager: Professor of Population Ecology
- Direct reports: None
- Closing date: 16 06 2026
Research Associate (Statistical Population Ecology) in Sheffield employer: Diversity Dashboard
Join a leading interdisciplinary team at the forefront of ecological forecasting, where your contributions will directly impact conservation efforts and societal relevance. Our collaborative work culture fosters innovation and independence, providing ample opportunities for professional growth and engagement with external partners in the conservation sector. Located within prestigious universities, this role offers access to world-class datasets and a commitment to open science, ensuring that your research not only advances knowledge but also translates into practical tools for real-world applications.
StudySmarter Expert Advice🤫
We think this is how you could land Research Associate (Statistical Population Ecology) in Sheffield
✨Tip Number 1
Network like a pro! Reach out to people in your field, attend conferences, and engage with researchers on social media. Building connections can lead to opportunities that aren’t even advertised.
✨Tip Number 2
Show off your skills! Create a portfolio showcasing your research projects, models, and any publications. This gives potential employers a tangible sense of what you can bring to the table.
✨Tip Number 3
Prepare for interviews by brushing up on your knowledge of statistical modelling and ecological forecasting. Be ready to discuss your past work and how it relates to the role at hand.
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, we love seeing candidates who are proactive about their job search.
We think you need these skills to ace Research Associate (Statistical Population Ecology) in Sheffield
Some tips for your application 🫡
Tailor Your Application:Make sure to customise your CV and cover letter to highlight your relevant skills and experiences. We want to see how your background in quantitative ecology and statistical modelling aligns with the role, so don’t hold back on showcasing your expertise!
Showcase Your Skills:When detailing your experience, focus on your strong quantitative and analytical skills. Mention specific projects where you've applied statistical approaches or modelling techniques, especially if they relate to ecological data. This is your chance to shine!
Be Clear and Concise:Effective communication is key! Make sure your written application is clear and easy to read. Use straightforward language to explain complex ideas, as we value clarity just as much as depth in your research.
Apply Through Our Website:We encourage you to submit your application through our website. It’s the best way for us to receive your materials and ensures you’re considered for the role. Plus, it’s super easy to do!
How to prepare for a job interview at Diversity Dashboard
✨Know Your Models
Make sure you brush up on the statistical and computational models relevant to near-term population forecasting. Be ready to discuss your experience with time-series methods and demographic projection models, as these will likely come up during the interview.
✨Showcase Your Coding Skills
Since the role emphasises reproducible workflows, be prepared to talk about your experience with programming tools like R or Stan. Bring examples of how you've used these tools in past projects, especially in developing analytical pipelines or shared codebases.
✨Engage with Real-World Applications
Demonstrate your understanding of how your research can impact conservation efforts. Be ready to discuss any previous experiences where you've engaged with non-academic stakeholders or translated complex research outputs for practical use.
✨Communicate Clearly
Effective communication is key, especially when presenting complex ideas. Practice explaining your research in simple terms, as you may need to convey your findings to a diverse audience, including those outside of academia.