Lead Data Scientist

SPG Resourcing
united kingdom of great britain and northern ireland, uk
9 months ago
Applications closed

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Lead Data Scientist

Lead Data Scientist

Lead Data Scientist

Lead Data Scientist

Lead Data Scientist

Lead Data Scientist

Senior Data ScientistSalary: £85,000UK-Based (Remote)I’m working with a global, growing data science capability which works across multiple markets.The team is distributed, and they are building on regional depth in Europe, with recent expansion into France and potential future moves into Germany.Role:I’m looking for a seasoned data scientist (8+ years) with strong domain expertise in financial services, ideally someone who has worked across both B2B client-facing engagements. You’ll be working as part of a globally distributed team, collaborating with specialists across time zones. The right candidate would bring technical depth, business context, and the ability to communicate insights with both clients and internal teams.Tech: While they use a range of technologies internally, familiarity with open-source tools is highly valued. Languages & Libraries: Python, R, Pandas, NumPy, scikit-learn, XGBoost, LightGBM, statsmodelsNLP & ML Frameworks: spaCy, Hugging Face Transformers, TensorFlow or PyTorch (where applicable)Data Engineering & Pipelines: dbt, Airflow, SQL, Spark, DaskVisualisation: Plotly, Seaborn, Matplotlib, Dash, StreamlitDev & Collaboration Tools: Jupyter, Git, Docker, VS Code, CI/CD toolsIdeal but Not Required:Fluency in French or German is a strong bonus as it will be advantageous for future client engagements. They are based in the UK with settled status, and comfortable working across time zones with colleagues in the US and South Asia.If this sounds like something you are interested in, please get in contact: Resourcing is an equal opportunities employer and is committed to fostering an inclusive workplace which values and benefits from the diversity of the workforce we hire. We offer reasonable accommodation at every stage of the application and interview process

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