Banking Data Engineer – Cloud, Big Data & ETL (Glasgow)

N Consulting Global
Glasgow, G2 1AL, United Kingdom
2 months ago
Applications closed

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A technology consultancy is seeking a Data Engineer based in Glasgow, UK, to work on contract with a focus on banking datasets and big data technologies. The ideal candidate must possess over 5 years of experience, strong knowledge of SQL and Python/Scala, and familiarity with cloud platforms like AWS, Azure, or GCP. The role requires hands-on experience with ETL processes and big data tools such as Spark and Kafka, alongside an understanding of the banking domain regulations. This position is a 2-day onsite requirement.
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