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Data Engineer

Proactive Appointments
Berkshire
1 week ago
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Data Engineer

Our financial services client based in Reading is looking to recruit an experienced Data Engineer to join ASAP. The position will be fully remote working with occasional visits to their offices in Reading. To be considered for the role you must have the following essential skills & experience:

Key Skills & Experience

  • Whilst not a pre-requisite, knowledge and experience in the financial services industries would be advantageous.
  • Previous experience as a data engineer or in a similar role with a minimum of 2 years’ experience.
  • Familiarity with data models, data mining, and segmentation techniques.
  • Knowledge of SQL and Azure technologies.
  • Strong analytical skills to interpret trends and patterns in data.
  • Proficiency in database languages.
  • Attention to detail and excellent organizational skills

Technical Skills required

  • Familiarity with the building and deployment of ETL process through Azure Data Factory.
  • Basic understanding of Azure Fabric and appropriate implementation.
  • Familiarity with the management and use cases of Azure Data Lake Storage.
  • Familiarity with the development of analytics Azure Synapse.
  • Familiarity with Azure database service with strong knowledge of the SQL language.
  • An understanding of data modell...

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