Manager Data Science in City of Westminster

Manager Data Science in City of Westminster

City of Westminster Full-Time 70000 - 90000 £ / year (est.) No working from home possible
RELX Group

At a Glance

  • Tasks: Lead a team of data scientists to innovate in life sciences through advanced data science methods.
  • Company: Join Elsevier, a leader in scientific content and analytics, making a real-world impact.
  • Benefits: Enjoy flexible working hours, competitive salary, and opportunities for professional growth.
  • Other info: Collaborative environment with a focus on responsible AI and continuous improvement.
  • Why this job: Shape the future of healthcare by applying cutting-edge AI and data science techniques.
  • Qualifications: Master's or PhD in relevant fields with 5+ years of data science experience required.

The predicted salary is between 70000 - 90000 £ per year.

Elsevier's mission is to help researchers, clinicians, and life sciences professionals advance discovery and improve health outcomes through trusted content, data, and analytics. The Corporate Markets Data Science team supports Elsevier's Life Sciences products and platforms, including solutions used by pharmaceutical, biotechnology, chemistry, biomedical, and research organizations. Our work helps customers discover, connect, and act on high-quality scientific and clinical information across areas such as drug discovery, chemistry, biomedical research, clinical evidence, safety, and competitive intelligence.

The team applies a broad range of data science methods, including traditional machine learning, statistical modelling, natural language processing, neural networks, information retrieval, knowledge graphs, semantic enrichment, and generative AI. These capabilities support products such as PharmaPendium, Reaxys, Embase, and next-generation Life Sciences discovery platforms.

Leadership & team management

Lead, coach, and develop a team of data scientists, supporting their technical growth, delivery, and career development. Set the strategy, priorities, and operating rhythm for the team in alignment with Corporate Markets and Life Sciences data science business goals. Plan, delegate, and manage team resources across multiple projects and product areas. Create a culture of scientific rigor, collaboration, responsible AI, customer focus, and continuous improvement. Guide the team in defining and applying best practices for data science, experimentation, model evaluation, data quality, and production collaboration.

Data science delivery

Lead the application of data science methods across a broad portfolio, including machine learning, statistical modelling, NLP, neural networks, search, recommendation, knowledge graphs, and generative AI. Oversee the development and improvement of models and pipelines for tasks such as classification, entity recognition, entity linking, document understanding, ranking, extraction, enrichment, prediction, and decision support. Support the integration of structured and unstructured scientific data, including chemical entities, drugs, genes, diseases, clinical trials, safety data, publications, patents, metadata, and ontologies. Guide the use of modern AI approaches, including embeddings, LLMs, RAG, prompt-based workflows, and GenAI evaluation, where they add clear customer and business value. Partner with engineering to ensure solutions are robust, scalable, maintainable, and suitable for production use.

Evaluation, experimentation & quality

Define and improve evaluation approaches for data science models, search systems, NLP pipelines, and AI-powered product features. Ensure appropriate use of metrics for model quality, retrieval quality, ranking performance, data accuracy, user outcomes, and business impact. Guide offline evaluation, A/B testing, error analysis, annotation workflows, and human-in-the-loop evaluation where needed. Promote responsible AI practices, including transparency, fairness, bias assessment, explainability, privacy, and risk management. Ensure the team makes evidence-based decisions and communicates results clearly to stakeholders.

Stakeholder collaboration

Work closely with product managers, engineers, content specialists, ontology experts, biomedical informaticians, and commercial stakeholders. Translate customer and business needs into clear data science opportunities, project plans, and measurable outcomes. Communicate technical findings, trade-offs, risks, and recommendations to both technical and non-technical audiences. Represent the team in cross-functional planning and contribute to the broader Life Sciences data science and AI strategy.

Qualifications

Master's, or PhD in Computer Science, Data Science, Machine Learning, Statistics, Bioinformatics, Cheminformatics, Information Retrieval, or a related field, or equivalent practical experience. At least 5 years of experience in data science, machine learning, NLP, statistical modelling, information retrieval, or applied AI. Experience managing or leading technical teams directly. Strong understanding of data science methods, including supervised and unsupervised learning, Gen AI, statistical analysis, model evaluation, and experimentation. Practical experience with Python and common data science, machine learning, or NLP frameworks. Experience working with large, complex, structured and unstructured datasets. Ability to manage multiple projects, prioritize work, and deliver through others. Strong communication and stakeholder management skills. Ability to coach data scientists, review technical work, and improve team practices. Experience with LLMs, RAG pipelines, embeddings, GenAI evaluation, or human-in-the-loop annotation workflows. Experience with modern AI tools and platforms such as Databricks, PyTorch, Hugging Face, LangChain, LangGraph, Haystack, MLflow, or similar. Experience in life sciences, pharmaceuticals, chemistry, biomedical research, clinical data. Familiarity with ontologies, taxonomies, controlled vocabularies, and metadata standards. Experience with NLP, entity extraction, entity linking, semantic enrichment, search, ranking, recommendation, or knowledge graph methods. Exposure to production ML systems, MLOps, data pipelines, and model monitoring.

Benefits

Flexible working hours - flexing the times when you work in the day to help you fit everything in and work when you are the most productive.

Manager Data Science in City of Westminster employer: RELX Group

At Elsevier, we pride ourselves on being an exceptional employer, offering a dynamic work culture that fosters innovation and collaboration within our Corporate Markets Data Science team. Our commitment to employee growth is evident through tailored coaching and development opportunities, while our flexible working hours empower you to achieve a healthy work-life balance. Join us in our mission to advance discovery in life sciences, where your contributions will directly impact the future of healthcare and research.

RELX Group

Contact Details:

RELX Group Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Manager Data Science in City of Westminster

Tip Number 1

Network like a pro! Reach out to folks in the industry, attend meetups, and connect with data science professionals on LinkedIn. You never know who might have the inside scoop on job openings or can refer you directly.

Tip Number 2

Show off your skills! Create a portfolio showcasing your data science projects, especially those involving machine learning and NLP. This gives potential employers a taste of what you can do and sets you apart from the crowd.

Tip Number 3

Prepare for interviews by brushing up on your technical knowledge and soft skills. Practice explaining complex concepts in simple terms, as you'll need to communicate effectively with both technical and non-technical stakeholders.

Tip Number 4

Don't forget to apply through our website! We love seeing applications that come directly from our platform, and it shows you're genuinely interested in joining our team. Plus, it makes tracking your application easier for us!

We think you need these skills to ace Manager Data Science in City of Westminster

Data Science
Machine Learning
Natural Language Processing (NLP)
Statistical Modelling
Neural Networks
Information Retrieval
Knowledge Graphs

Some tips for your application 🫡

Tailor Your CV:Make sure your CV is tailored to the role of Manager Data Science. Highlight your experience with data science methods, team management, and any relevant projects that align with Elsevier's mission. We want to see how your skills can contribute to our goals!

Craft a Compelling Cover Letter:Your cover letter is your chance to shine! Use it to explain why you're passionate about data science and how you can lead a team effectively. Share specific examples of your past successes and how they relate to the responsibilities outlined in the job description.

Showcase Your Technical Skills:Don’t forget to highlight your technical expertise! Mention your experience with Python, machine learning frameworks, and any modern AI tools you've used. We love seeing candidates who are hands-on and familiar with the latest technologies in data science.

Apply Through Our Website:We encourage you to apply through our website for a smoother application process. It helps us keep track of your application and ensures you don’t miss out on any important updates. Plus, it’s super easy to do!

How to prepare for a job interview at RELX Group

Know Your Data Science Stuff

Make sure you brush up on your data science methods, especially those mentioned in the job description like machine learning, NLP, and generative AI. Be ready to discuss how you've applied these techniques in past projects and how they can benefit Elsevier's Life Sciences products.

Show Off Your Leadership Skills

Since this role involves leading a team, be prepared to share examples of how you've successfully managed or coached data scientists before. Highlight your approach to fostering a culture of collaboration and continuous improvement, as well as how you set strategies and priorities for your team.

Communicate Like a Pro

You’ll need to translate complex technical findings into clear insights for both technical and non-technical audiences. Practice explaining your past projects and their impact in simple terms, and think about how you would communicate with stakeholders from different backgrounds.

Prepare for Technical Questions

Expect to dive deep into your technical expertise during the interview. Review common data science frameworks and tools like Python, PyTorch, and Hugging Face. Be ready to discuss your experience with model evaluation, A/B testing, and handling large datasets, as these are crucial for the role.