Salary: £35,608 to £38,784 per annum
Newcastle University is a great place to work, with excellent benefits. We have a generous holiday package; plus the opportunity to buy more, great pension schemes and a number of health and wellbeing initiatives to support you.
Closing Date: 23 January 2026
The Role
Are you interested in applying machine learning and computational methods to address real-world challenges in sustainable agriculture? We are seeking a highly motivated researcher to join a weed research programme at Newcastle University, delivering specialist expertise in machine learning, data analysis, and modelling. This role will focus on the development, implementation, and validation of advanced ML approaches for weed detection, discrimination, and management using complex biological and spectral imaging datasets.
The postholder will contribute exclusively to research, supporting large-scale data analysis, interpretation, and modelling, as well as contributing to publications and grant deliverables in collaboration with plant scientists. You should enjoy problem solving, working with complex datasets, and translating analytical results into biological and agricultural insights. Experience in machine learning, computational analysis, and handling high-dimensional data is essential with familiarity with agricultural or environmental applications.
You would join researchers within the Agriculture and Animal Science Group, which sits within the School of Natural & Environmental Sciences, working in the group led by Dr Ankush Prashar. The project offers scope for further development, while also providing opportunities to enhance your career through University training and development programmes.
As part of our commitment to career development for research colleagues, the University has developed 3 levels of research role profiles. These profiles set out firstly the generic competences and responsibilities expected of role holders at each level and secondly the general qualifications and experiences needed for entry at a particular level.
The position is fixed term for 6 months, full time (37 hours per week). The start date is expected to be January or February, 2026 and is slightly flexible; flexible working arrangements are negotiable. We are committed to building and maintaining a fair and inclusive working environment.
For more information on The School of Natural and Environmental Sciences please click here.
To apply please send a CV and a cover letter of no more than two pages highlighting why you would be suitable for the position.
For an informal discussion about the project please email Dr Ankush Prashar ([email protected]).
Please note that if you are successful to this role, you will require medical clearance before you can commence in the role.
Key Accountabilities
• Carry out research developing, implementing, and validating machine learning and computational methods for weed detection, discrimination, and management using spectral and imaging data.
• Apply principles of data science, machine learning, and statistical analysis to solve complex biological and agricultural research problems.
• Design and optimise scalable data pipelines for processing high-dimensional spectral and imaging datasets, including feature extraction, model training, validation, and performance evaluation.
• Ensure intellectual rigour and adherence to robust ethical and data governance standards to maintain the integrity of research.
The Person
Knowledge, Skills and Experience
• Strong knowledge of machine learning, statistical modelling, and data science methods applied to biological or environmental datasets.
• Proven ability to analyse high-dimensional spectral and/or imaging data for classification, detection, and discrimination tasks.
• Experience in developing, implementing, and validating computational models
and algorithms using appropriate programming languages and frameworks.
• Ability to design robust analytical workflows, including data preprocessing, feature extraction, model training, and performance evaluation.
• Strong skills in critical data analysis, interpretation of results, and construction of conceptual or computational models to explain biological patterns.
• A proven track record of publishing high-quality research outputs in relevant peer-reviewed journals or conferences.
• Ability to work collaboratively within interdisciplinary teams, applying computational expertise to agricultural and plant science research questions.
Attributes and Behaviour
Work in a team and be proactive in preparing publications Contribute to a positive work culture and engage with internal seminars Mentor undergraduate and master’s students working on their projects
Qualifications
A PhD in Agriculture, Computing, Data Science, Biological Sciences or a closely related discipline (Associate Level) or currently studying close to completion of PhD (Assistant Level) Strong demonstrated knowledge of machine learning methods and their application to data analysis, with relevance to biological, agricultural, or environmental datasets.
Newcastle University is a global University where everyone is treated with dignity and respect. As a University of Sanctuary, we aim to provide a welcoming place of safety for all, offering opportunities to people fleeing violence and persecution.
We are committed to being a fully inclusive university which actively recruits, supports and retains colleagues from all sectors of society. We value diversity as well as celebrate, support and thrive on the contributions of all of our employees and the communities they represent. We are proud to be an equal opportunities employer and encourage applications from individuals who can complement our existing teams, we believe that success is built on having teams whose backgrounds and experiences reflect the diversity of our university and student population.
At Newcastle University we hold a Gold Athena Swan award in recognition of our good employment practices for the advancement of gender equality. We also hold a Race Equality Charter Bronze award in recognition of our work towards tackling race inequality in higher education REC. We are a Disability Confident employer and will offer an interview to disabled applicants who meet the essential criteria for the role as part of the offer and interview scheme.
In addition, we are a member of the Euraxess initiative supporting researchers in Europe.
Requisition ID: 28997