At a Glance
- Tasks: Design and build machine learning and AI solutions for scientific discovery and knowledge extraction.
- Company: Join a forward-thinking organisation focused on innovation and collaboration.
- Benefits: Enjoy flexible hours, wellbeing initiatives, and opportunities for professional growth.
- Other info: Collaborative environment with excellent career development opportunities.
- Why this job: Make a real impact in science with cutting-edge technology and data-driven solutions.
- Qualifications: Experience in data science, machine learning, and strong Python skills required.
The predicted salary is between 60000 - 80000 £ per year.
About the Role
In this role, you will design and build machine learning, NLP, and generative AI solutions that support scientific discovery, knowledge extraction, decision support, and intelligent content understanding. You will work with large‑scale scientific content and data, applying the right techniques to solve complex problems and deliver reliable, production‑ready systems. Working closely with cross‑functional partners, you will help turn ambiguous challenges into measurable outcomes that improve how researchers discover and use knowledge.
Responsibilities
- Design and build machine learning, NLP, and generative AI systems for scientific discovery, knowledge extraction, decision support, and intelligent content understanding.
- Work with large‑scale, complex, and heterogeneous data, including scientific publications, research datasets, knowledge graphs, ontologies, taxonomies, citations, metadata, and content from every scientific discipline.
- Apply the right technique to each problem, using approaches such as classification, regression, clustering, ranking, feature engineering, deep learning, embeddings, LLMs, retrieval, and generative AI.
- Develop capabilities for semantic search, information retrieval, entity extraction, content classification, recommendation, ranking, summarization, question answering, and evidence‑grounded generation.
- Build, evaluate, fine‑tune, prompt, and integrate models into robust production systems, while continuously improving quality, relevance, reliability, and user value.
- Write clean, tested, production‑quality Python and contribute reusable data‑science components, packages, and scalable data pipelines for preprocessing, inference, experimentation, monitoring, and continuous improvement.
- Support deployment, monitoring, model maintenance, drift detection, automated retraining, and ongoing optimization of data‑science systems.
- Collaborate with engineering, product, UX, analytics, research, and domain experts, and communicate technical concepts, model behavior, insights, trade‑offs, and recommendations clearly to technical and non‑technical audiences.
Requirements
- Experience in data science, machine learning, artificial intelligence, NLP, statistics, applied mathematics, computer science, or a related quantitative area.
- Experience working with frontier LLMs such as OpenAI's GPTs, Anthropic's Claude, and Google's Gemini, including fine‑tuning LLMs and/or SLMs.
- Strong Python skills and a habit of writing clean, maintainable, well‑tested code.
- A solid grasp of machine learning fundamentals, including supervised and unsupervised learning, feature engineering, model evaluation, model selection, and performance measurement.
- Experience working with structured, semi‑structured, or unstructured data, especially large‑scale text or content datasets.
- Familiarity with common data‑science and machine learning tools such as Pandas, NumPy, SciPy, Scikit‑learn, PyTorch, TensorFlow, or Matplotlib.
- The ability to translate complex and ambiguous requirements into practical, measurable, data‑driven solutions, with strong analytical thinking, problem‑solving skills, and attention to quality.
- Clear communication skills, a collaborative approach to working with engineering, product, and business stakeholders, and a genuine interest in building production‑ready systems that deliver real user value.
Benefits
We promote a healthy work/life balance across the organisation. With numerous wellbeing initiatives, shared parental leave, study assistance, and sabbaticals, we help you meet your immediate responsibilities and your long‑term goals. Working flexible hours and flexing the times you work during the day allows you to fit everything in and work when you are the most productive.
Data Scientist employer: Elsevier Inc.
As a Data Scientist at our company, you will thrive in a dynamic and supportive work environment that prioritises your professional growth and well-being. We offer flexible working hours, numerous wellbeing initiatives, and opportunities for continuous learning, ensuring you can balance your personal and professional life while contributing to groundbreaking scientific advancements. Join us to collaborate with cross-functional teams and leverage cutting-edge technologies in a role that not only challenges you but also allows you to make a meaningful impact in the field of research.
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We think this is how you could land Data Scientist
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We think you need these skills to ace Data Scientist
Some tips for your application 🫡
Show Off Your Projects:In the world of data science, your projects can speak volumes about your skills. Make sure to showcase a few key projects in your CV or portfolio, especially those that highlight your ability to work with data sets, build models, or use relevant tools like Python, R, or SQL. Don’t forget to include links to any GitHub repositories if applicable!
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How to prepare for a job interview at Elsevier Inc.
✨Brush Up on Your Statistics
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✨Get Comfortable with Python and R
Most data science positions require us to be proficient in programming languages like Python and R. We should practice common libraries like pandas, NumPy, and scikit-learn, and be ready for live coding exercises or algorithm questions. Showing off our coding chops can really impress the interviewers at Elsevier Inc.!
✨Prepare for Case Studies
Expect to encounter real-world case studies during the interview. We might be asked how we’d approach a data problem or analyse a dataset to extract insights. It's essential to think out loud and demonstrate our problem-solving process so that the interviewer can see our logical thinking in action.