Do you want to apply data science to one of the most important challenges in health research: enabling safe use of sensitive data at scale?
In this role, you’ll develop privacy and security controls that protect participants while helping researchers generate insights faster and more safely.
Our Future Health is an ambitious collaboration between the public, charity and private sectors, designed to help people live healthier lives for longer through better prevention, earlier detection and improved treatment of diseases. We will speed up the discovery of new methods of early disease detection, and the evaluation of new diagnostic tools, to help identify and treat diseases early, when outcomes are usually better. With over 2.5M volunteers across the UK, we’re now the world’s biggest health research programme of its kind, and our volunteer group is also more diverse than other, similar health research programmes.
Technology and data are central to our mission. Our systems power web sites, clinics across the UK, secure analytics and research systems, pipelines that process highly sensitive health and genetic data, and we are continuing to grow our data science capability to support this ambition.
To realise our ambition safely, we need to continue developing world-class approaches to data privacy, data security and responsible access to health data. We are looking for a Senior Data Scientist specialising in privacy, security and risk modelling, to help design, build and scale data-driven controls that protect participants while enabling cutting-edge research.
This is a hands-on role where you’ll apply strong data science skills and an engineering mindset to real operational problems: safe outputs review, re-identification risk, privacy risks in trained models, synthetic data, and data-driven security controls. You will work closely with teams across Product, Security, Engineering, Science, Data Protection, and Researcher Operations as well as external experts to develop practical, scalable and evidence-based solutions.
You will be expected to work closely with users of these systems including researchers, Airlock reviewers, access governance reviewers and security specialists, to understand their workflows, pain points and risk decisions. A key part of the role will be turning complex privacy and security problems into trusted algorithms, evidence and automated support.
What you’ll do
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Develop data-driven approaches to disclosure control and safe outputs review, supporting the scaling of our TRE (Trusted Research Environment) Airlock. This may include building algorithms and automated review tools to classify outputs, detect potentially disclosive content, identify patterns of risk, and provide explainable decision support for human reviewers.
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Work directly with Airlock reviewers and operational users to understand where automation can help, where human judgement is essential, and how tools should be designed to support consistent, auditable and proportionate decisions.
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Contribute to our approach to de-identification and re-identification risk assessment, helping us assess how privacy risk changes across datasets, access models and analytical outputs.
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Help us develop our approaches to safe AI using health data, including how we assess and manage privacy risks associated with trained models.
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Explore and develop approaches to synthetic data generation, assessing how synthetic data can be used safely and usefully, and how to evaluate the privacy, fidelity and utility trade-offs of different approaches.
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Collaborate with our Information Security team on data-driven security control assessment, threat detection and monitoring approaches, including identifying signals of risky behaviour, anomalous activity or misuse of data access environments, and cyber risk quantification.
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Build prototypes and production-quality code, working with engineers to turn promising approaches into robust, maintainable and auditable tools.
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Work closely with governance, legal, ethics and operational colleagues to ensure technical controls fulfil their requirements.
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Keep up with emerging methods in statistical disclosure control, privacy-enhancing technologies, AI security, synthetic data, de-identification and privacy-preserving computation.
This role will be fully hybrid with the expectation we get together in our Holborn, London office at least once per month.
Requirements
We welcome applications from all who may not feel they match the full criteria, so if you have most of the below, we'd like to hear from you:
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Significant experience applying data science, machine learning, statistical modelling or advanced analytics to complex real-world datasets.
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Strong applied statistical expertise, including the ability to quantify risk and uncertainty, evaluate assumptions, design validation approaches, interpret imperfect or incomplete evidence, and communicate the limitations of statistical or machine learning models.
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Strong Python skills and experience writing maintainable, production-quality code.
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Experience working in cross-functional teams with software engineers, data engineers or platform teams to design and deliver data products, pipelines, analytical services or decision-support tools.
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A user-focused approach to technical delivery: you are comfortable working with people who operate, review, govern or depend on data systems, and can translate their needs into technical requirements.
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Applied machine learning experience and understanding of common privacy attacks against data and models, such as memorisation, membership inference, attribute inference, model inversion or leakage through model outputs.
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Exposure to privacy-preserving machine learning, privacy-enhancing technologies or adjacent research areas (e.g. federated learning, secure aggregation, differential privacy, or confidential computing)
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Experience working with sensitive, confidential or regulated data and a strong understanding of privacy, confidentiality or information security risks.
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Ability to translate ambiguous operational, governance or security problems into clear data science questions and practical technical requirements.
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Good communication skills, with the ability to explain complex technical concepts to non-specialist stakeholders.
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A pragmatic, delivery-focused mindset
It would be a bonus if you have any of the following experience -
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Working with health data or biomedical research data, electronic health records, and ideally genomic data.
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Developing models, algorithms or rule-based systems that support human decision-making, ideally where explainability, auditability and risk management are important.
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Anomaly detection, behavioural analytics, security monitoring or detection engineering.
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Risk quantification methods from fields such as actuarial science, epidemiology, operational research, or cyber risk.
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Familiarity with UK data protection, research governance or health data access expectations.
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Experience with PETs or privacy-preserving ML frameworks such as Flower, Opacus, TensorFlow Federated or similar.
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Cloud platforms, containerisation, CI/CD, MLOps or production ML systems.
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Experience evaluating synthetic data using both utility and privacy metrics.
Hiring Process
We feel hiring should be transparent and give you a real sense for what Our Future Health is like. Here's what you can expect:
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Initial chat with our Talent team (30 min) to get to know each other, discuss the role, and answer any questions you have.
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1st interview with our Head of Data Operations (25 min) - this is an opportunity to meet your potential line manager and for you both to align on role expectations.
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Technical interview with 2-3 members from our tech and data teams (60 min). This will include a short task you’ll need to prepare in advance of the interview and is designed to get a sense for how you'd approach the real-world responsibilities of this role.
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Final stage competency interview (60 min) with a small cross-functional panel of your potential new stakeholders. This will focus on how you collaborate, work with stakeholders, and navigate ambiguity and challenges in real-world projects.
Benefits
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Competitive base salary from £80,000
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Generous Pension Scheme – We invest in your future with employer contributions of up to 12%
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30 Days Holiday pro rata + Bank Holidays – Enjoy a generous holiday allowance with the flexibility to take bank holidays when it suits you
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Enhanced Parental Leave – Supporting you during life’s biggest moments
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Cycle to Work Scheme – Save 25-39% on a new bike and accessories through salary sacrifice
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Home & Tech Savings – Get up to 8% off on IKEA and Currys products, spreading the cost over 12 months through salary sacrifice
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EV Scheme – Save up to 40% on a brand new electric vehicle all-inclusive package through salary sacrifice
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£1,000 Employee Referral Bonus – Know someone amazing? Get rewarded for bringing them on board!
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Wellbeing Support – Access to Mental Health First Aiders, plus 24/7 online GP services and an Employee Assistance Programme for you and your family
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A Great Place to Work – We have a lovely Central London office in Holborn, and offer flexible and remote working arrangements
Join us - let’s prevent disease together.
We recommend you apply as soon as possible as occasionally due to high volumes of applications, we need to close our postings early.
At Our Future Health, we recognise the importance of having a diverse workforce and ensuring that all candidates, regardless of their background, have equitable access to our application process. We proactively encourage applicants who identify as having a disability, neurodiversity, or long-term health conditions to let us know if they require any reasonable adjustments as part of their application process.
If you do require any reasonable adjustments, please email us at [email protected]