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Data Scientist

Expleo
City of London
1 week ago
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Overview

  • We are seeking Data Scientists to support the implementation of Health Assessment Outcomes and AI Personalisation Projects. These initiatives are part of a multi-year programme aimed at delivering measurable impact through advanced clinical statistical techniques and innovative AI solutions.
  • The successful candidates will evaluate and quantify the impact of Health Assessments on customer health and wellbeing, while deepening the understanding of customer profiles, health determinants, and personalised healthcare solutions.
  • We are looking for individuals with applied experience in data science within a healthcare or clinical setting, who can also act as subject matter experts by collaborating closely with clinicians, operational teams, and business managers.

Responsibilities

  • Ensure the accuracy, relevance, and robustness of clinical outcomes data through rigorous validation methodologies.
  • Identify, define, and track supplementary metrics to enhance outcomes analysis.
  • Collaborate with stakeholders to agree on analytical assumptions and clearly articulate limitations.
  • Lead the development of research protocols, outlining objectives, scope, and methodological frameworks.
  • Conduct in-depth analysis using appropriate statistical and computational techniques.
  • Contribute to a comprehensive white paper in collaboration with academic partners.
  • Evaluate and tailor clinical risk models to align with datasets and clinical objectives.
  • Map input variables to model requirements, ensuring semantic and structural consistency.
  • Conduct validation and performance testing, including clinical utility assessments.
  • Collaborate with clinical experts to review model assumptions and implications for patient care.
  • Prepare documentation for clinical governance bodies to ensure compliance with ethical and regulatory standards.
  • Integrate validated clinical risk models into AI personalisation algorithms.
  • Design and execute pilot studies using real-world patient cohorts.
  • Collaborate with clinical leadership to review pilot outcomes and refine approaches.
  • Define clinical rules and inclusion/exclusion criteria to guide model application.
  • Enhance AI-driven personalisation by integrating updated clinical risk insights.

Qualifications

  • Applied experience in Data Science within a healthcare or clinical setting.
  • Expertise in medical statistics, epidemiology, and population health.
  • Proficiency in study design, statistical modelling (e.g., survival analysis, regression techniques), and longitudinal data analysis.

Essential skills

  • Proficiency in R and Power BI.
  • Understanding of clinical genomics analysis, including interpretation of genomic variants.
  • Clinical or life sciences background.
  • Understanding of machine learning infrastructure and architecture.
  • Inquisitive mindset with a drive to explore healthcare data and uncover insights.

Experience

  • Experience translating analytical findings into actionable insights for clinical decision-making and programme evaluation.
  • Hands‑on experience with Python and SQL in cloud environments such as Snowflake, Azure, or GCP.
  • Excellent communication skills, capable of presenting complex concepts to non‑technical stakeholders.
  • Experience delivering end‑to‑end AI and GenAI projects, including business case development and deployment.
  • Experience working in agile environments, preferably using Azure DevOps tools.
  • Experience in health economics and economic evaluation methods.

Benefits

  • Collaborative working environment - we stand shoulder to shoulder with our clients and our peers through good times and challenges.
  • We empower all passionate technology loving professionals by allowing them to expand their skills and take part in inspiring projects.
  • Expleo Academy - enables you to acquire and develop the right skills by delivering a suite of accredited training courses.
  • Competitive company benefits.
  • Always working as one team, our people are not afraid to think big and challenge the status quo.
  • As a Disability Confident Committed Employer we have committed to:

    • Ensure our recruitment process is inclusive and accessible.
    • Communicating and promoting vacancies.
    • Offering an interview to disabled people who meet the minimum criteria for the job.
    • Anticipating and providing reasonable adjustments as required.
    • Supporting any existing employee who acquires a disability or long‑term health condition, enabling them to stay in work at least one activity that will make a difference for disabled people.



We are an equal opportunities employer and welcome applications from all suitably qualified persons regardless of their race, sex, disability, religion/belief, sexual orientation or age.


We treat everyone fairly and equitably across the organisation, including providing any additional support and adjustments needed for everyone to thrive.


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