Data Scientist

Damia Group
Hounslow
1 day ago
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Data Scientist - 3 days per week in Hounslow - Market rates - Inside IR35

My client is a global leading IT consultancy. They are on the hunt for a true data scientists with optimisation expertise or experience.

Purpose: This role is responsible for developing industrialised optimisation and machine learning models as part of a full-stack product squad that delivers operations decision-support software.

Operational research and optimisation experience is a must have.

Skills/capabilities

  • Strong knowledge of either machine learning and optimisation techniques, incl. supervised (regression, tree methods, etc.), unsupervised (clustering) learning, and operations research (linear, mixed integer programming, heuristics)
  • Fluent in Python (required) and other programming languages (preferred) with strong skills in applying DS, ML, and OR packages (scikit-learn, pandas, numpy, gurobi etc.) to solve real-life problems and visualise the outcomes (e.g. seaborn)
  • Proficient in working with cloud platforms (AWS preferred), code versioning (Git), experiment tracking (e.g. MLflow)
  • Experience with cloud-based ML tools (e.g. SageMaker), data and model versioning (e.g. DVC), CI/CD (e.g. GitHub Actions), workflow orchestration (e.g. Airflow/Dagster) and containerised solutions (e.g. Docker, ECS) nice to have
  • Experience in code testing (unit, integ...

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