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Data Scientist

Tank Recruitment
Bristol
1 week ago
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Data Scientist

Location: Hybrid (Greater Bristol Area)

Salary: £54,000

Python - PySpark - Azure - Pandas - Scikit-learn - TensorFlow - PyStats - Data Science - Power BI

We're supporting a growing, forward-thinking organisation in their search for an experienced Data Specialist. This is an exciting opportunity to join a dynamic team at a pivotal point in its growth, helping shape data strategy, deliver insightful analytics, and drive intelligent decision-making across the business.

You'll work closely with stakeholders to uncover challenges, identify opportunities, and deliver actionable, measurable solutions through advanced machine learning models, statistical methods, and high-performance data pipelines.

Skills & Experience Required

To be considered, you will need:

  • Strong proficiency in Python and key libraries (pandas, scikit-learn, TensorFlow, PyStats).
  • A solid understanding of machine learning techniques and real-world performance trade-offs.
  • Experience building and maintaining end-to-end machine learning applications.
  • Hands-on experience with Azure cloud technologies: Synapse, Fabric, AzureML, ADX, ADF, Azure Data Lake Storage, Event Hubs.
  • Experience with visualisation tools such as Power BI and Streamlit.
  • Familiarity with Parquet an...

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