Background:
Unilever’s Personal Care Science & Technology (S&T) team develops future fit technologies that enable superior, benefit led products. The Physical Sciences platform combines deep expertise in chemistry, emulsions, materials, surface and colloid science, and process engineering with advanced data science, AI/ML, and modelling techniques to translate cutting edge science into scalable product solutions. Our models and tools support ingredient selection, formulation optimisation, and claim substantiation, and are delivered as governed, self service assets for scientists and partners across S&T. Research outputs typically include next generation product technologies scaled to at least pilot plant level, alongside novel claims, new methods, and reusable digital assets such as datasets, R&D tools, and dashboards. The team works closely with Design, Analytical, and Process groups to address complex product challenges, provide deeper insight into emerging technologies, and translate scientific understanding into consumer relevant performance at speed and scale.
Purpose:
In this role, the individual will apply computational and data-driven methods to support material and formulation development in Personal Care. By integrating chemistry, modelling, and data science, the position is responsible for providing predictive insights and digital tools to assist scientists across S&T in designing products relevant to consumers.
Main Accountabilities:
• Capture, organise, and standardise structured and unstructured data for modelling and insight generation.
• Build and maintain predictive models (e.g., QSAR, ML, statistical) to support material and formulation innovation.
• Apply AI/ML techniques and LLM based approaches to extract insights, optimise formulations, and accelerate decision making.
• Curate and analyse experimental and literature data, ensuring data quality and integrity.
• Develop user friendly tools, dashboards, and visualisations to make models and insights accessible to scientists.
• Translate business needs into technical solutions and deliver modelling projects in collaboration with subject matter experts.
• Stay updated on emerging computational and AI/ML techniques relevant to chemistry and materials science; share best practices within the team.
Skills & Experience
Essential:
• Degree in Chemistry, Chemical Engineering, Materials Science with experience in Data Science.
• Hands-on experience in Python (and/or R) for data analysis and modelling, including data curation, robust train/validation/test splits, and model evaluation.
• Exposure to RDKit and other descriptor generation techniques for QSAR or predictive modelling.
• Knowledge of AI/ML techniques and familiarity with LLM applications for scientific workflows (e.g., text mining, knowledge retrieval, summarisation).
• Comfortable working in Linux-based environments and using version control tools (e.g., Git).
• Strong statistical and machine learning knowledge applied to chemical or formulation data.
• Ability to communicate technical insights clearly to non-specialists.
Desirable:
• Experience deploying models as dashboards or lightweight tools (e.g., Dash, Flask, Power BI).
• Understanding of model explainability and visualization techniques.
• Awareness of molecular modelling concepts.
Our commitment to Equality, Diversity & Inclusion
Unilever embraces diversity and encourages applicants from all walks of life! This means giving full and fair consideration to all applicants and continuing development of all employees regardless of age, disability, gender reassignment, race, religion or belief, sex, sexual orientation, marriage and civil partnership, and pregnancy and maternity.
"All official offers from Unilever are issued only via our Applicant Tracking System (ATS). Offers from individuals or unofficial sources may be fraudulent—please verify before proceeding."
Join our
talent network
Make sure you see job opportunities when they become available. Just leave a few details below to stay up to date with jobs that suit you and your skills.
* Indicates required field
Connect with us
We’re always looking to connect with those who share an interest in a sustainable future.
Contact us
Get in touch with Unilever PLC and specialist teams in our headquarters, or find contacts around the world.
Contact us