Data Engineer – Databricks & Azure Pipelines (Hybrid)

Harvey Nash Group
Glasgow
2 days ago
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A leading technology firm is looking for a contract Data Engineer in Glasgow. This hybrid role involves designing and optimizing data pipelines for Data Scientists and Traders, focusing on Python development on Databricks and Streamlit. The ideal candidate will have extensive data engineering experience and programming skills in Python and SQL, along with strong stakeholder management and communication skills. This position offers a day rate of up to £675 for a duration of 6 months.
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