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Data Science Lead

Michael Page (UK)
City of London
1 week ago
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  • Opportunity to lead a team of Data Scientists and lead on Data Science Strategy
  • Opportunity to join an organisation which is highly adoptive of Data Science
About Our Client

The organisation is a well-established public sector entity with a significant focus on leveraging data to improve services and inform strategic decisions. As an organisation, they are committed to fostering innovation and maintaining high operational standards

Job Description
  • Support the Director of Risk, Data Analysis and Insight to develop the analysis programme in line with the overall Strategic Plan
  • Lead and manage the Data Science department, ensuring the delivery of high-quality data insights.
  • Develop and implement data science strategies to support organisational objectives.
  • Collaborate with cross-functional teams to identify and solve complex data challenges.
  • Oversee the design, development, and deployment of predictive models and algorithms.
  • Ensure compliance with data governance and ethical guidelines in all analytics activities.
  • Provide mentorship and professional development opportunities for team members.
  • Communicate findings and actionable insights to senior leadership and key stakeholders.
  • Select and apply the most appropriate analysis, data science and statistical techniques given the research objectives and the data
  • Develop appropriate analytical methods in firm-based risk assessment and thematic risks
  • Provide internal consultancy across Directorates and Programmes on analytical methods and techniques
  • Stay informed about industry trends and emerging technologies in the public sector.
The Successful Applicant

A successful Head of Data Science should have:

  • Proven experience in data science and analytics, ideally within the public sector or regulatory body.
  • A strong background in statistical modelling, machine learning, and data visualisation tools
  • Expert use of standard statistical tools e.g. R/Python and relevant associated libraries
  • Deep expertise in building and maintaining AI and machine learning models, including use of deep learning, natural language processing, and LLMs
  • Excellent leadership and team management skills.
  • A solid understanding of data governance and ethical considerations.
  • Outstanding communication skills to present complex data in an accessible manner.
  • A degree or equivalent qualification in data science, mathematics, or a related field.
  • Demonstrated ability to collaborate across departments and with senior stakeholders.
What\'s on Offer
  • Competitive salary range of £65,000 to £77,000 (London) per annum.
  • 25 days of annual leave, increasing to 27 after 2 years of service.
  • Generous pension contributions (up to 19.25%).
  • Income protection, life assurance and Private Medical benefits.
  • 3% of annual salary available for additional benefits, including dental insurance and travel insurance.
  • Opportunities to work on meaningful projects within the public sector in Birmingham.

Take the next step in your career as a Head of Data Science and apply today to make a real impact in the public sector!


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