Data Scientist

Wokingham
3 months ago
Applications closed

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Role: Data Scientist – Azure ML Ops & Databricks
Location: Wokingham, UK (Office-based, 5 days per week)
Type: Contract (Inside IR35, 6 months)
Rate: Market rates - INSIDE IR35

About the Role
We’re looking for an experienced Data Scientist to join a leading technology-driven transformation project. This role will suit someone who enjoys building scalable ML models and deploying data-driven solutions in a fast-paced, collaborative environment.

Key Responsibilities:

  • Build and deploy advanced ML models using Python, Azure ML, and Databricks.

  • Manage and optimise ML Ops pipelines within the Azure ecosystem.

  • Perform deep data analysis, feature engineering, and model evaluation.

  • Partner with business and engineering teams to deliver impactful data products.

  • Ensure data quality, governance, and scalable architecture across datasets.

  • Stay current with emerging technologies in AI, ML, and cloud platforms.

    What You’ll Need:

  • Strong proficiency in Python for data science and ML.

  • Hands-on experience with Azure Machine Learning, ML Ops, and Databricks.

  • Solid grasp of data modeling, statistics, and large-scale data management.

  • Excellent problem-solving and stakeholder communication skills.

  • 10+ years of relevant experience preferred

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