Data Scientist

Somerset Council
Taunton
2 months ago
Applications closed

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Overview

Secondment for internal candidates/fixed term for 2 years – Please discuss a secondment with your current Line Manager before applying and obtain their approval.


We’re working to improve the lives of people in Somerset – and as a Senior Data Scientist you’ll be at the heart of this mission. Your day‑to‑day work will involve:


Responsibilities

  • Lead and deliver advanced analytics. You’ll design, develop, and deploy robust machine learning, neural network, and simulation models that drive proactive, data‑informed decision‑making across Somerset Council.
  • Oversee complex data science projects. You’ll manage the end‑to‑end delivery of high‑impact data science projects, translating complex service challenges into actionable solutions and mentoring teams.
  • Champion ethical and explainable analytics. You’ll ensure all models are trusted, explainable, and compliant with governance standards such as GDPR and DPIAs.
  • Mentor and develop the data science community. You’ll provide technical leadership and support to Data Scientists and colleagues across the organisation and foster continuous improvement.
  • Drive innovation and continuous improvement. You’ll stay ahead of emerging technologies, lead trials of new tools (real‑time analytics, AI/ML integration) and modernise our data science platform.

Qualifications

  • Extensive hands‑on experience in data science with a strong track record designing, building, and maintaining complex analytical models and data pipelines at enterprise scale.
  • Deep expertise in modern data science and cloud technologies – highly skilled in machine learning, statistical modelling, and cloud‑based platforms (e.g., Azure ML, Microsoft Fabric) with advanced MLOps knowledge.
  • Strong programming and problem‑solving skills – proficient in Python, R, SQL and simulation/forecasting techniques.
  • Leadership and mentoring abilities – experience leading and supporting data science teams and setting technical standards.
  • Relevant qualifications and certifications – a Master’s degree (or equivalent experience) in Data Science or related field and professional certification such as Microsoft Fabric Data Scientist.

Benefits

  • Healthy work‑life balance with flexible working arrangements, including working from home.
  • Generous annual leave allowance with the opportunity to purchase additional leave.
  • Staff discounts in gyms, shops, restaurants, cinema tickets, insurance benefits and more.
  • Employee Assistance and wellbeing services.
  • Auto enrolment onto our generous Pension Scheme and optional pension enhancement.
  • A Flexible Benefits Scheme via salary sacrifice to obtain a cycle and health screenings.
  • My Staff Shop offering discounts in shops, online shopping, restaurants, cinema tickets, insurance benefits and more.


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