Data Scientist | Machine Learning | Azure | £54k + 10% Bonus

Opus Recruitment Solutions
Bristol
2 days ago
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Principal Consultant at Opus | Building Data Teams Across The UK

Data Scientist


I am looking for a Data Scientist who wants their work to actually matter.


This is an opportunity to join a growing data team within an organisation that plays a critical role in the utilities sector using data, analytics and machine learning to improve services people rely on every day. You’ll be working on real, meaningful problems, not vanity dashboards or proof‑of‑concepts that never leave PowerPoint.


You’ll have the freedom to work across the end‑to‑end data science lifecycle from shaping data pipelines through to building and deploying machine learning models, and turning complex data into insights decision‑makers can genuinely use.


What you’ll be doing:



  • Building, deploying and maintaining machine learning models that are used in production
  • Using statistical and ML techniques to solve practical, real‑world challenges
  • Developing and optimising data pipelines using Python and PySpark
  • Working with Azure Synapse Analytics, Azure Data Explorer (ADX) and Azure Data Lake
  • Creating clear, useful dashboards and reports in Power BI
  • Exploring large, complex datasets to uncover trends, patterns and opportunities
  • Partnering with stakeholders to understand their problems and translate them into data solutions
  • Making sure data is reliable, scalable and fit for purpose

What we’re looking for:



  • Solid, hands‑on experience as a Data Scientist, with a strong focus on machine learning
  • Practical experience working within Azure data platforms, particularly:
  • Experience using Power BI to communicate insights clearly
  • A good understanding of data modelling and analytical best practice
  • Someone who can explain complex ideas to non‑technical stakeholders without jargon

Nice to have (but not essential)



  • Exposure to MLOps or model lifecycle management
  • Experience with Azure ML, Fabric or streaming data
  • A background in statistical modelling or advanced analytics

What’s on offer



  • 10% bonus
  • Excellent pension – up to 20%
  • Hybrid working – 2 days on‑site in Bath, 3 days remote
  • Ongoing learning, development and career progression
  • A genuinely collaborative data team where your work will make a real impact

Seniority level

Mid‑Senior level


Employment type

Full‑time


Job function

Information Technology


Industries

IT Services and IT Consulting


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